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authorEdoardo Pasca <edo.paskino@gmail.com>2018-01-25 15:41:36 +0000
committerEdoardo Pasca <edo.paskino@gmail.com>2018-01-30 12:03:59 +0000
commit886d74aa7bddf2cf5972ab6516ace2dcb764e844 (patch)
treefb2de1e1464aef8f176e2b495cc8777c06f44169
parent6cdaf1cfd380b3c40908d6b82e24afb99e005c71 (diff)
downloadregularization-886d74aa7bddf2cf5972ab6516ace2dcb764e844.tar.gz
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added cython wrapper for gpu regularizers
-rw-r--r--Wrappers/Python/setup.py22
-rw-r--r--Wrappers/Python/src/fista_module.cpp1047
-rw-r--r--Wrappers/Python/src/fista_module_gpu.pyx154
-rw-r--r--Wrappers/Python/src/multiply.pyx49
4 files changed, 1271 insertions, 1 deletions
diff --git a/Wrappers/Python/setup.py b/Wrappers/Python/setup.py
index d2129b0..c535a34 100644
--- a/Wrappers/Python/setup.py
+++ b/Wrappers/Python/setup.py
@@ -58,8 +58,28 @@ setup(
description='CCPi Core Imaging Library - Image Regularizers',
version=cil_version,
cmdclass = {'build_ext': build_ext},
+ ext_modules = [Extension("ccpi.filters.gpu_regularizers",
+ sources=[
+ os.path.join("." , "src", "fista_module_gpu.pyx" ),
+ #os.path.join("." , "src", "multiply.pyx" )
+ ],
+ include_dirs=extra_include_dirs,
+ library_dirs=extra_library_dirs,
+ extra_compile_args=extra_compile_args,
+ libraries=extra_libraries ),
+
+ ],
+ zip_safe = False,
+ packages = {'ccpi','ccpi.filters'},
+)
+
+setup(
+ name='ccpi',
+ description='CCPi Core Imaging Library - Image Regularizers',
+ version=cil_version,
+ cmdclass = {'build_ext': build_ext},
ext_modules = [Extension("ccpi.filters.cpu_regularizers",
- sources=[os.path.join("." , "fista_module.cpp" ),
+ sources=[os.path.join("." , "src", "fista_module.cpp" ),
# os.path.join("@CMAKE_SOURCE_DIR@" , "main_func" , "regularizers_CPU", "FGP_TV_core.c"),
# os.path.join("@CMAKE_SOURCE_DIR@" , "main_func" , "regularizers_CPU", "SplitBregman_TV_core.c"),
# os.path.join("@CMAKE_SOURCE_DIR@" , "main_func" , "regularizers_CPU", "LLT_model_core.c"),
diff --git a/Wrappers/Python/src/fista_module.cpp b/Wrappers/Python/src/fista_module.cpp
new file mode 100644
index 0000000..3876cad
--- /dev/null
+++ b/Wrappers/Python/src/fista_module.cpp
@@ -0,0 +1,1047 @@
+/*
+This work is part of the Core Imaging Library developed by
+Visual Analytics and Imaging System Group of the Science Technology
+Facilities Council, STFC
+
+Copyright 2017 Daniil Kazantsev
+Copyright 2017 Srikanth Nagella, Edoardo Pasca
+
+Licensed under the Apache License, Version 2.0 (the "License");
+you may not use this file except in compliance with the License.
+You may obtain a copy of the License at
+http://www.apache.org/licenses/LICENSE-2.0
+Unless required by applicable law or agreed to in writing, software
+distributed under the License is distributed on an "AS IS" BASIS,
+WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
+See the License for the specific language governing permissions and
+limitations under the License.
+*/
+
+#define NPY_NO_DEPRECATED_API NPY_1_7_API_VERSION
+
+#include <iostream>
+#include <cmath>
+
+#include <boost/python.hpp>
+#include <boost/python/numpy.hpp>
+#include "boost/tuple/tuple.hpp"
+
+#include "SplitBregman_TV_core.h"
+#include "FGP_TV_core.h"
+#include "LLT_model_core.h"
+#include "PatchBased_Regul_core.h"
+#include "TGV_PD_core.h"
+#include "utils.h"
+
+
+
+#if defined(_WIN32) || defined(_WIN32) || defined(__WIN32__) || defined(_WIN64)
+#include <windows.h>
+// this trick only if compiler is MSVC
+__if_not_exists(uint8_t) { typedef __int8 uint8_t; }
+__if_not_exists(uint16_t) { typedef __int8 uint16_t; }
+#endif
+
+namespace bp = boost::python;
+namespace np = boost::python::numpy;
+
+/*! in the Matlab implementation this is called as
+void mexFunction(
+int nlhs, mxArray *plhs[],
+int nrhs, const mxArray *prhs[])
+where:
+prhs Array of pointers to the INPUT mxArrays
+nrhs int number of INPUT mxArrays
+
+nlhs Array of pointers to the OUTPUT mxArrays
+plhs int number of OUTPUT mxArrays
+
+***********************************************************
+
+***********************************************************
+double mxGetScalar(const mxArray *pm);
+args: pm Pointer to an mxArray; cannot be a cell mxArray, a structure mxArray, or an empty mxArray.
+Returns: Pointer to the value of the first real (nonimaginary) element of the mxArray. In C, mxGetScalar returns a double.
+***********************************************************
+char *mxArrayToString(const mxArray *array_ptr);
+args: array_ptr Pointer to mxCHAR array.
+Returns: C-style string. Returns NULL on failure. Possible reasons for failure include out of memory and specifying an array that is not an mxCHAR array.
+Description: Call mxArrayToString to copy the character data of an mxCHAR array into a C-style string.
+***********************************************************
+mxClassID mxGetClassID(const mxArray *pm);
+args: pm Pointer to an mxArray
+Returns: Numeric identifier of the class (category) of the mxArray that pm points to.For user-defined types,
+mxGetClassId returns a unique value identifying the class of the array contents.
+Use mxIsClass to determine whether an array is of a specific user-defined type.
+
+mxClassID Value MATLAB Type MEX Type C Primitive Type
+mxINT8_CLASS int8 int8_T char, byte
+mxUINT8_CLASS uint8 uint8_T unsigned char, byte
+mxINT16_CLASS int16 int16_T short
+mxUINT16_CLASS uint16 uint16_T unsigned short
+mxINT32_CLASS int32 int32_T int
+mxUINT32_CLASS uint32 uint32_T unsigned int
+mxINT64_CLASS int64 int64_T long long
+mxUINT64_CLASS uint64 uint64_T unsigned long long
+mxSINGLE_CLASS single float float
+mxDOUBLE_CLASS double double double
+
+****************************************************************
+double *mxGetPr(const mxArray *pm);
+args: pm Pointer to an mxArray of type double
+Returns: Pointer to the first element of the real data. Returns NULL in C (0 in Fortran) if there is no real data.
+****************************************************************
+mxArray *mxCreateNumericArray(mwSize ndim, const mwSize *dims,
+mxClassID classid, mxComplexity ComplexFlag);
+args: ndimNumber of dimensions. If you specify a value for ndim that is less than 2, mxCreateNumericArray automatically sets the number of dimensions to 2.
+dims Dimensions array. Each element in the dimensions array contains the size of the array in that dimension.
+For example, in C, setting dims[0] to 5 and dims[1] to 7 establishes a 5-by-7 mxArray. Usually there are ndim elements in the dims array.
+classid Identifier for the class of the array, which determines the way the numerical data is represented in memory.
+For example, specifying mxINT16_CLASS in C causes each piece of numerical data in the mxArray to be represented as a 16-bit signed integer.
+ComplexFlag If the mxArray you are creating is to contain imaginary data, set ComplexFlag to mxCOMPLEX in C (1 in Fortran). Otherwise, set ComplexFlag to mxREAL in C (0 in Fortran).
+Returns: Pointer to the created mxArray, if successful. If unsuccessful in a standalone (non-MEX file) application, returns NULL in C (0 in Fortran).
+If unsuccessful in a MEX file, the MEX file terminates and returns control to the MATLAB prompt. The function is unsuccessful when there is not
+enough free heap space to create the mxArray.
+*/
+
+
+
+bp::list SplitBregman_TV(np::ndarray input, double d_mu, int iter, double d_epsil, int methTV) {
+
+ // the result is in the following list
+ bp::list result;
+
+ int number_of_dims, dimX, dimY, dimZ, ll, j, count;
+ //const int *dim_array;
+ float *A, *U = NULL, *U_old = NULL, *Dx = NULL, *Dy = NULL, *Dz = NULL, *Bx = NULL, *By = NULL, *Bz = NULL, lambda, mu, epsil, re, re1, re_old;
+
+ //number_of_dims = mxGetNumberOfDimensions(prhs[0]);
+ //dim_array = mxGetDimensions(prhs[0]);
+
+ number_of_dims = input.get_nd();
+ int dim_array[3];
+
+ dim_array[0] = input.shape(0);
+ dim_array[1] = input.shape(1);
+ if (number_of_dims == 2) {
+ dim_array[2] = -1;
+ }
+ else {
+ dim_array[2] = input.shape(2);
+ }
+
+ // Parameter handling is be done in Python
+ ///*Handling Matlab input data*/
+ //if ((nrhs < 2) || (nrhs > 5)) mexErrMsgTxt("At least 2 parameters is required: Image(2D/3D), Regularization parameter. The full list of parameters: Image(2D/3D), Regularization parameter, iterations number, tolerance, penalty type ('iso' or 'l1')");
+
+ ///*Handling Matlab input data*/
+ //A = (float *)mxGetData(prhs[0]); /*noisy image (2D/3D) */
+ A = reinterpret_cast<float *>(input.get_data());
+
+ //mu = (float)mxGetScalar(prhs[1]); /* regularization parameter */
+ mu = (float)d_mu;
+
+ //iter = 35; /* default iterations number */
+
+ //epsil = 0.0001; /* default tolerance constant */
+ epsil = (float)d_epsil;
+ //methTV = 0; /* default isotropic TV penalty */
+ //if ((nrhs == 3) || (nrhs == 4) || (nrhs == 5)) iter = (int)mxGetScalar(prhs[2]); /* iterations number */
+ //if ((nrhs == 4) || (nrhs == 5)) epsil = (float)mxGetScalar(prhs[3]); /* tolerance constant */
+ //if (nrhs == 5) {
+ // char *penalty_type;
+ // penalty_type = mxArrayToString(prhs[4]); /* choosing TV penalty: 'iso' or 'l1', 'iso' is the default */
+ // if ((strcmp(penalty_type, "l1") != 0) && (strcmp(penalty_type, "iso") != 0)) mexErrMsgTxt("Choose TV type: 'iso' or 'l1',");
+ // if (strcmp(penalty_type, "l1") == 0) methTV = 1; /* enable 'l1' penalty */
+ // mxFree(penalty_type);
+ //}
+ //if (mxGetClassID(prhs[0]) != mxSINGLE_CLASS) { mexErrMsgTxt("The input image must be in a single precision"); }
+
+ lambda = 2.0f*mu;
+ count = 1;
+ re_old = 0.0f;
+ /*Handling Matlab output data*/
+ dimY = dim_array[0]; dimX = dim_array[1]; dimZ = dim_array[2];
+
+ if (number_of_dims == 2) {
+ dimZ = 1; /*2D case*/
+ //U = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ //U_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ //Dx = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ //Dy = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ //Bx = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ //By = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ bp::tuple shape = bp::make_tuple(dim_array[0], dim_array[1]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+ np::ndarray npU = np::zeros(shape, dtype);
+ np::ndarray npU_old = np::zeros(shape, dtype);
+ np::ndarray npDx = np::zeros(shape, dtype);
+ np::ndarray npDy = np::zeros(shape, dtype);
+ np::ndarray npBx = np::zeros(shape, dtype);
+ np::ndarray npBy = np::zeros(shape, dtype);
+
+ U = reinterpret_cast<float *>(npU.get_data());
+ U_old = reinterpret_cast<float *>(npU_old.get_data());
+ Dx = reinterpret_cast<float *>(npDx.get_data());
+ Dy = reinterpret_cast<float *>(npDy.get_data());
+ Bx = reinterpret_cast<float *>(npBx.get_data());
+ By = reinterpret_cast<float *>(npBy.get_data());
+
+
+
+ copyIm(A, U, dimX, dimY, dimZ); /*initialize */
+
+ /* begin outer SB iterations */
+ for (ll = 0; ll < iter; ll++) {
+
+ /*storing old values*/
+ copyIm(U, U_old, dimX, dimY, dimZ);
+
+ /*GS iteration */
+ gauss_seidel2D(U, A, Dx, Dy, Bx, By, dimX, dimY, lambda, mu);
+
+ if (methTV == 1) updDxDy_shrinkAniso2D(U, Dx, Dy, Bx, By, dimX, dimY, lambda);
+ else updDxDy_shrinkIso2D(U, Dx, Dy, Bx, By, dimX, dimY, lambda);
+
+ updBxBy2D(U, Dx, Dy, Bx, By, dimX, dimY);
+
+ /* calculate norm to terminate earlier */
+ re = 0.0f; re1 = 0.0f;
+ for (j = 0; j < dimX*dimY*dimZ; j++)
+ {
+ re += pow(U_old[j] - U[j], 2);
+ re1 += pow(U_old[j], 2);
+ }
+ re = sqrt(re) / sqrt(re1);
+ if (re < epsil) count++;
+ if (count > 4) break;
+
+ /* check that the residual norm is decreasing */
+ if (ll > 2) {
+ if (re > re_old) break;
+ }
+ re_old = re;
+ /*printf("%f %i %i \n", re, ll, count); */
+
+ /*copyIm(U_old, U, dimX, dimY, dimZ); */
+
+ }
+ //printf("SB iterations stopped at iteration: %i\n", ll);
+ result.append<np::ndarray>(npU);
+ result.append<int>(ll);
+ }
+ if (number_of_dims == 3) {
+ /*U = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ U_old = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ Dx = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ Dy = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ Dz = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ Bx = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ By = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ Bz = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));*/
+ bp::tuple shape = bp::make_tuple(dim_array[0], dim_array[1], dim_array[2]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+ np::ndarray npU = np::zeros(shape, dtype);
+ np::ndarray npU_old = np::zeros(shape, dtype);
+ np::ndarray npDx = np::zeros(shape, dtype);
+ np::ndarray npDy = np::zeros(shape, dtype);
+ np::ndarray npDz = np::zeros(shape, dtype);
+ np::ndarray npBx = np::zeros(shape, dtype);
+ np::ndarray npBy = np::zeros(shape, dtype);
+ np::ndarray npBz = np::zeros(shape, dtype);
+
+ U = reinterpret_cast<float *>(npU.get_data());
+ U_old = reinterpret_cast<float *>(npU_old.get_data());
+ Dx = reinterpret_cast<float *>(npDx.get_data());
+ Dy = reinterpret_cast<float *>(npDy.get_data());
+ Dz = reinterpret_cast<float *>(npDz.get_data());
+ Bx = reinterpret_cast<float *>(npBx.get_data());
+ By = reinterpret_cast<float *>(npBy.get_data());
+ Bz = reinterpret_cast<float *>(npBz.get_data());
+
+ copyIm(A, U, dimX, dimY, dimZ); /*initialize */
+
+ /* begin outer SB iterations */
+ for (ll = 0; ll<iter; ll++) {
+
+ /*storing old values*/
+ copyIm(U, U_old, dimX, dimY, dimZ);
+
+ /*GS iteration */
+ gauss_seidel3D(U, A, Dx, Dy, Dz, Bx, By, Bz, dimX, dimY, dimZ, lambda, mu);
+
+ if (methTV == 1) updDxDyDz_shrinkAniso3D(U, Dx, Dy, Dz, Bx, By, Bz, dimX, dimY, dimZ, lambda);
+ else updDxDyDz_shrinkIso3D(U, Dx, Dy, Dz, Bx, By, Bz, dimX, dimY, dimZ, lambda);
+
+ updBxByBz3D(U, Dx, Dy, Dz, Bx, By, Bz, dimX, dimY, dimZ);
+
+ /* calculate norm to terminate earlier */
+ re = 0.0f; re1 = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++)
+ {
+ re += pow(U[j] - U_old[j], 2);
+ re1 += pow(U[j], 2);
+ }
+ re = sqrt(re) / sqrt(re1);
+ if (re < epsil) count++;
+ if (count > 4) break;
+
+ /* check that the residual norm is decreasing */
+ if (ll > 2) {
+ if (re > re_old) break;
+ }
+ /*printf("%f %i %i \n", re, ll, count); */
+ re_old = re;
+ }
+ //printf("SB iterations stopped at iteration: %i\n", ll);
+ result.append<np::ndarray>(npU);
+ result.append<int>(ll);
+ }
+ return result;
+
+ }
+
+
+
+bp::list FGP_TV(np::ndarray input, double d_mu, int iter, double d_epsil, int methTV) {
+
+ // the result is in the following list
+ bp::list result;
+
+ int number_of_dims, dimX, dimY, dimZ, ll, j, count;
+ float *A, *D = NULL, *D_old = NULL, *P1 = NULL, *P2 = NULL, *P3 = NULL, *P1_old = NULL, *P2_old = NULL, *P3_old = NULL, *R1 = NULL, *R2 = NULL, *R3 = NULL;
+ float lambda, tk, tkp1, re, re1, re_old, epsil, funcval;
+
+ //number_of_dims = mxGetNumberOfDimensions(prhs[0]);
+ //dim_array = mxGetDimensions(prhs[0]);
+
+ number_of_dims = input.get_nd();
+ int dim_array[3];
+
+ dim_array[0] = input.shape(0);
+ dim_array[1] = input.shape(1);
+ if (number_of_dims == 2) {
+ dim_array[2] = -1;
+ }
+ else {
+ dim_array[2] = input.shape(2);
+ }
+ // Parameter handling is be done in Python
+ ///*Handling Matlab input data*/
+ //if ((nrhs < 2) || (nrhs > 5)) mexErrMsgTxt("At least 2 parameters is required: Image(2D/3D), Regularization parameter. The full list of parameters: Image(2D/3D), Regularization parameter, iterations number, tolerance, penalty type ('iso' or 'l1')");
+
+ ///*Handling Matlab input data*/
+ //A = (float *)mxGetData(prhs[0]); /*noisy image (2D/3D) */
+ A = reinterpret_cast<float *>(input.get_data());
+
+ //mu = (float)mxGetScalar(prhs[1]); /* regularization parameter */
+ lambda = (float)d_mu;
+
+ //iter = 35; /* default iterations number */
+
+ //epsil = 0.0001; /* default tolerance constant */
+ epsil = (float)d_epsil;
+ //methTV = 0; /* default isotropic TV penalty */
+ //if ((nrhs == 3) || (nrhs == 4) || (nrhs == 5)) iter = (int)mxGetScalar(prhs[2]); /* iterations number */
+ //if ((nrhs == 4) || (nrhs == 5)) epsil = (float)mxGetScalar(prhs[3]); /* tolerance constant */
+ //if (nrhs == 5) {
+ // char *penalty_type;
+ // penalty_type = mxArrayToString(prhs[4]); /* choosing TV penalty: 'iso' or 'l1', 'iso' is the default */
+ // if ((strcmp(penalty_type, "l1") != 0) && (strcmp(penalty_type, "iso") != 0)) mexErrMsgTxt("Choose TV type: 'iso' or 'l1',");
+ // if (strcmp(penalty_type, "l1") == 0) methTV = 1; /* enable 'l1' penalty */
+ // mxFree(penalty_type);
+ //}
+ //if (mxGetClassID(prhs[0]) != mxSINGLE_CLASS) { mexErrMsgTxt("The input image must be in a single precision"); }
+
+ //plhs[1] = mxCreateNumericMatrix(1, 1, mxSINGLE_CLASS, mxREAL);
+ bp::tuple shape1 = bp::make_tuple(dim_array[0], dim_array[1]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+ np::ndarray out1 = np::zeros(shape1, dtype);
+
+ //float *funcvalA = (float *)mxGetData(plhs[1]);
+ float * funcvalA = reinterpret_cast<float *>(out1.get_data());
+ //if (mxGetClassID(prhs[0]) != mxSINGLE_CLASS) { mexErrMsgTxt("The input image must be in a single precision"); }
+
+ /*Handling Matlab output data*/
+ dimX = dim_array[0]; dimY = dim_array[1]; dimZ = dim_array[2];
+
+ tk = 1.0f;
+ tkp1 = 1.0f;
+ count = 1;
+ re_old = 0.0f;
+
+ if (number_of_dims == 2) {
+ dimZ = 1; /*2D case*/
+ /*D = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ D_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ P1 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ P2 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ P1_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ P2_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ R1 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ R2 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));*/
+
+ bp::tuple shape = bp::make_tuple(dim_array[0], dim_array[1]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+
+ np::ndarray npD = np::zeros(shape, dtype);
+ np::ndarray npD_old = np::zeros(shape, dtype);
+ np::ndarray npP1 = np::zeros(shape, dtype);
+ np::ndarray npP2 = np::zeros(shape, dtype);
+ np::ndarray npP1_old = np::zeros(shape, dtype);
+ np::ndarray npP2_old = np::zeros(shape, dtype);
+ np::ndarray npR1 = np::zeros(shape, dtype);
+ np::ndarray npR2 = np::zeros(shape, dtype);
+
+ D = reinterpret_cast<float *>(npD.get_data());
+ D_old = reinterpret_cast<float *>(npD_old.get_data());
+ P1 = reinterpret_cast<float *>(npP1.get_data());
+ P2 = reinterpret_cast<float *>(npP2.get_data());
+ P1_old = reinterpret_cast<float *>(npP1_old.get_data());
+ P2_old = reinterpret_cast<float *>(npP2_old.get_data());
+ R1 = reinterpret_cast<float *>(npR1.get_data());
+ R2 = reinterpret_cast<float *>(npR2.get_data());
+
+ /* begin iterations */
+ for (ll = 0; ll<iter; ll++) {
+ /* computing the gradient of the objective function */
+ Obj_func2D(A, D, R1, R2, lambda, dimX, dimY);
+
+ /*Taking a step towards minus of the gradient*/
+ Grad_func2D(P1, P2, D, R1, R2, lambda, dimX, dimY);
+
+
+
+
+ /*updating R and t*/
+ tkp1 = (1.0f + sqrt(1.0f + 4.0f*tk*tk))*0.5f;
+ Rupd_func2D(P1, P1_old, P2, P2_old, R1, R2, tkp1, tk, dimX, dimY);
+
+ /* calculate norm */
+ re = 0.0f; re1 = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++)
+ {
+ re += pow(D[j] - D_old[j], 2);
+ re1 += pow(D[j], 2);
+ }
+ re = sqrt(re) / sqrt(re1);
+ if (re < epsil) count++;
+ if (count > 3) {
+ Obj_func2D(A, D, P1, P2, lambda, dimX, dimY);
+ funcval = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++) funcval += pow(D[j], 2);
+ //funcvalA[0] = sqrt(funcval);
+ float fv = sqrt(funcval);
+ std::memcpy(funcvalA, &fv, sizeof(float));
+ break;
+ }
+
+ /* check that the residual norm is decreasing */
+ if (ll > 2) {
+ if (re > re_old) {
+ Obj_func2D(A, D, P1, P2, lambda, dimX, dimY);
+ funcval = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++) funcval += pow(D[j], 2);
+ //funcvalA[0] = sqrt(funcval);
+ float fv = sqrt(funcval);
+ std::memcpy(funcvalA, &fv, sizeof(float));
+ break;
+ }
+ }
+ re_old = re;
+ /*printf("%f %i %i \n", re, ll, count); */
+
+ /*storing old values*/
+ copyIm(D, D_old, dimX, dimY, dimZ);
+ copyIm(P1, P1_old, dimX, dimY, dimZ);
+ copyIm(P2, P2_old, dimX, dimY, dimZ);
+ tk = tkp1;
+
+ /* calculating the objective function value */
+ if (ll == (iter - 1)) {
+ Obj_func2D(A, D, P1, P2, lambda, dimX, dimY);
+ funcval = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++) funcval += pow(D[j], 2);
+ //funcvalA[0] = sqrt(funcval);
+ float fv = sqrt(funcval);
+ std::memcpy(funcvalA, &fv, sizeof(float));
+ }
+ }
+ //printf("FGP-TV iterations stopped at iteration %i with the function value %f \n", ll, funcvalA[0]);
+ result.append<np::ndarray>(npD);
+ result.append<np::ndarray>(out1);
+ result.append<int>(ll);
+ }
+ if (number_of_dims == 3) {
+ /*D = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ D_old = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ P1 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ P2 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ P3 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ P1_old = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ P2_old = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ P3_old = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ R1 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ R2 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ R3 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));*/
+ bp::tuple shape = bp::make_tuple(dim_array[0], dim_array[1], dim_array[2]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+ np::ndarray npD = np::zeros(shape, dtype);
+ np::ndarray npD_old = np::zeros(shape, dtype);
+ np::ndarray npP1 = np::zeros(shape, dtype);
+ np::ndarray npP2 = np::zeros(shape, dtype);
+ np::ndarray npP3 = np::zeros(shape, dtype);
+ np::ndarray npP1_old = np::zeros(shape, dtype);
+ np::ndarray npP2_old = np::zeros(shape, dtype);
+ np::ndarray npP3_old = np::zeros(shape, dtype);
+ np::ndarray npR1 = np::zeros(shape, dtype);
+ np::ndarray npR2 = np::zeros(shape, dtype);
+ np::ndarray npR3 = np::zeros(shape, dtype);
+
+ D = reinterpret_cast<float *>(npD.get_data());
+ D_old = reinterpret_cast<float *>(npD_old.get_data());
+ P1 = reinterpret_cast<float *>(npP1.get_data());
+ P2 = reinterpret_cast<float *>(npP2.get_data());
+ P3 = reinterpret_cast<float *>(npP3.get_data());
+ P1_old = reinterpret_cast<float *>(npP1_old.get_data());
+ P2_old = reinterpret_cast<float *>(npP2_old.get_data());
+ P3_old = reinterpret_cast<float *>(npP3_old.get_data());
+ R1 = reinterpret_cast<float *>(npR1.get_data());
+ R2 = reinterpret_cast<float *>(npR2.get_data());
+ R3 = reinterpret_cast<float *>(npR3.get_data());
+ /* begin iterations */
+ for (ll = 0; ll<iter; ll++) {
+ /* computing the gradient of the objective function */
+ Obj_func3D(A, D, R1, R2, R3, lambda, dimX, dimY, dimZ);
+ /*Taking a step towards minus of the gradient*/
+ Grad_func3D(P1, P2, P3, D, R1, R2, R3, lambda, dimX, dimY, dimZ);
+
+ /* projection step */
+ Proj_func3D(P1, P2, P3, dimX, dimY, dimZ);
+
+ /*updating R and t*/
+ tkp1 = (1.0f + sqrt(1.0f + 4.0f*tk*tk))*0.5f;
+ Rupd_func3D(P1, P1_old, P2, P2_old, P3, P3_old, R1, R2, R3, tkp1, tk, dimX, dimY, dimZ);
+
+ /* calculate norm - stopping rules*/
+ re = 0.0f; re1 = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++)
+ {
+ re += pow(D[j] - D_old[j], 2);
+ re1 += pow(D[j], 2);
+ }
+ re = sqrt(re) / sqrt(re1);
+ /* stop if the norm residual is less than the tolerance EPS */
+ if (re < epsil) count++;
+ if (count > 3) {
+ Obj_func3D(A, D, P1, P2, P3, lambda, dimX, dimY, dimZ);
+ funcval = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++) funcval += pow(D[j], 2);
+ //funcvalA[0] = sqrt(funcval);
+ float fv = sqrt(funcval);
+ std::memcpy(funcvalA, &fv, sizeof(float));
+ break;
+ }
+
+ /* check that the residual norm is decreasing */
+ if (ll > 2) {
+ if (re > re_old) {
+ Obj_func3D(A, D, P1, P2, P3, lambda, dimX, dimY, dimZ);
+ funcval = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++) funcval += pow(D[j], 2);
+ //funcvalA[0] = sqrt(funcval);
+ float fv = sqrt(funcval);
+ std::memcpy(funcvalA, &fv, sizeof(float));
+ break;
+ }
+ }
+
+ re_old = re;
+ /*printf("%f %i %i \n", re, ll, count); */
+
+ /*storing old values*/
+ copyIm(D, D_old, dimX, dimY, dimZ);
+ copyIm(P1, P1_old, dimX, dimY, dimZ);
+ copyIm(P2, P2_old, dimX, dimY, dimZ);
+ copyIm(P3, P3_old, dimX, dimY, dimZ);
+ tk = tkp1;
+
+ if (ll == (iter - 1)) {
+ Obj_func3D(A, D, P1, P2, P3, lambda, dimX, dimY, dimZ);
+ funcval = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++) funcval += pow(D[j], 2);
+ //funcvalA[0] = sqrt(funcval);
+ float fv = sqrt(funcval);
+ std::memcpy(funcvalA, &fv, sizeof(float));
+ }
+
+ }
+ //printf("FGP-TV iterations stopped at iteration %i with the function value %f \n", ll, funcvalA[0]);
+ result.append<np::ndarray>(npD);
+ result.append<np::ndarray>(out1);
+ result.append<int>(ll);
+ }
+
+ return result;
+}
+
+bp::list LLT_model(np::ndarray input, double d_lambda, double d_tau, int iter, double d_epsil, int switcher) {
+ // the result is in the following list
+ bp::list result;
+
+ int number_of_dims, dimX, dimY, dimZ, ll, j, count;
+ //const int *dim_array;
+ float *U0, *U = NULL, *U_old = NULL, *D1 = NULL, *D2 = NULL, *D3 = NULL, lambda, tau, re, re1, epsil, re_old;
+ unsigned short *Map = NULL;
+
+ number_of_dims = input.get_nd();
+ int dim_array[3];
+
+ dim_array[0] = input.shape(0);
+ dim_array[1] = input.shape(1);
+ if (number_of_dims == 2) {
+ dim_array[2] = -1;
+ }
+ else {
+ dim_array[2] = input.shape(2);
+ }
+
+ ///*Handling Matlab input data*/
+ //U0 = (float *)mxGetData(prhs[0]); /*origanal noise image/volume*/
+ //if (mxGetClassID(prhs[0]) != mxSINGLE_CLASS) { mexErrMsgTxt("The input in single precision is required"); }
+ //lambda = (float)mxGetScalar(prhs[1]); /*regularization parameter*/
+ //tau = (float)mxGetScalar(prhs[2]); /* time-step */
+ //iter = (int)mxGetScalar(prhs[3]); /*iterations number*/
+ //epsil = (float)mxGetScalar(prhs[4]); /* tolerance constant */
+ //switcher = (int)mxGetScalar(prhs[5]); /*switch on (1) restrictive smoothing in Z dimension*/
+
+ U0 = reinterpret_cast<float *>(input.get_data());
+ lambda = (float)d_lambda;
+ tau = (float)d_tau;
+ // iter is passed as parameter
+ epsil = (float)d_epsil;
+ // switcher is passed as parameter
+ /*Handling Matlab output data*/
+ dimX = dim_array[0]; dimY = dim_array[1]; dimZ = 1;
+
+ if (number_of_dims == 2) {
+ /*2D case*/
+ /*U = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ U_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ D1 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ D2 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));*/
+
+ bp::tuple shape = bp::make_tuple(dim_array[0], dim_array[1]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+
+ np::ndarray npU = np::zeros(shape, dtype);
+ np::ndarray npU_old = np::zeros(shape, dtype);
+ np::ndarray npD1 = np::zeros(shape, dtype);
+ np::ndarray npD2 = np::zeros(shape, dtype);
+
+ //result.append<np::ndarray>(npU);
+
+ U = reinterpret_cast<float *>(npU.get_data());
+ U_old = reinterpret_cast<float *>(npU_old.get_data());
+ D1 = reinterpret_cast<float *>(npD1.get_data());
+ D2 = reinterpret_cast<float *>(npD2.get_data());
+
+ /*Copy U0 to U*/
+ copyIm(U0, U, dimX, dimY, dimZ);
+
+ count = 1;
+ re_old = 0.0f;
+
+ for (ll = 0; ll < iter; ll++) {
+ copyIm(U, U_old, dimX, dimY, dimZ);
+
+ /*estimate inner derrivatives */
+ der2D(U, D1, D2, dimX, dimY, dimZ);
+ /* calculate div^2 and update */
+ div_upd2D(U0, U, D1, D2, dimX, dimY, dimZ, lambda, tau);
+
+ /* calculate norm to terminate earlier */
+ re = 0.0f; re1 = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++)
+ {
+ re += pow(U_old[j] - U[j], 2);
+ re1 += pow(U_old[j], 2);
+ }
+ re = sqrt(re) / sqrt(re1);
+ if (re < epsil) count++;
+ if (count > 4) break;
+
+ /* check that the residual norm is decreasing */
+ if (ll > 2) {
+ if (re > re_old) break;
+ }
+ re_old = re;
+
+ } /*end of iterations*/
+ // printf("HO iterations stopped at iteration: %i\n", ll);
+ result.append<np::ndarray>(npU);
+
+ }
+ else if (number_of_dims == 3) {
+ /*3D case*/
+ dimZ = dim_array[2];
+ /*U = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ U_old = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ D1 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ D2 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ D3 = (float*)mxGetPr(mxCreateNumericArray(3, dim_array, mxSINGLE_CLASS, mxREAL));
+ if (switcher != 0) {
+ Map = (unsigned short*)mxGetPr(plhs[1] = mxCreateNumericArray(3, dim_array, mxUINT16_CLASS, mxREAL));
+ }*/
+ bp::tuple shape = bp::make_tuple(dim_array[0], dim_array[1], dim_array[2]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+
+ np::ndarray npU = np::zeros(shape, dtype);
+ np::ndarray npU_old = np::zeros(shape, dtype);
+ np::ndarray npD1 = np::zeros(shape, dtype);
+ np::ndarray npD2 = np::zeros(shape, dtype);
+ np::ndarray npD3 = np::zeros(shape, dtype);
+ np::ndarray npMap = np::zeros(shape, np::dtype::get_builtin<unsigned short>());
+ Map = reinterpret_cast<unsigned short *>(npMap.get_data());
+ if (switcher != 0) {
+ //Map = (unsigned short*)mxGetPr(plhs[1] = mxCreateNumericArray(3, dim_array, mxUINT16_CLASS, mxREAL));
+
+ Map = reinterpret_cast<unsigned short *>(npMap.get_data());
+ }
+
+ U = reinterpret_cast<float *>(npU.get_data());
+ U_old = reinterpret_cast<float *>(npU_old.get_data());
+ D1 = reinterpret_cast<float *>(npD1.get_data());
+ D2 = reinterpret_cast<float *>(npD2.get_data());
+ D3 = reinterpret_cast<float *>(npD2.get_data());
+
+ /*Copy U0 to U*/
+ copyIm(U0, U, dimX, dimY, dimZ);
+
+ count = 1;
+ re_old = 0.0f;
+
+
+ if (switcher == 1) {
+ /* apply restrictive smoothing */
+ calcMap(U, Map, dimX, dimY, dimZ);
+ /*clear outliers */
+ cleanMap(Map, dimX, dimY, dimZ);
+ }
+ for (ll = 0; ll < iter; ll++) {
+
+ copyIm(U, U_old, dimX, dimY, dimZ);
+
+ /*estimate inner derrivatives */
+ der3D(U, D1, D2, D3, dimX, dimY, dimZ);
+ /* calculate div^2 and update */
+ div_upd3D(U0, U, D1, D2, D3, Map, switcher, dimX, dimY, dimZ, lambda, tau);
+
+ /* calculate norm to terminate earlier */
+ re = 0.0f; re1 = 0.0f;
+ for (j = 0; j<dimX*dimY*dimZ; j++)
+ {
+ re += pow(U_old[j] - U[j], 2);
+ re1 += pow(U_old[j], 2);
+ }
+ re = sqrt(re) / sqrt(re1);
+ if (re < epsil) count++;
+ if (count > 4) break;
+
+ /* check that the residual norm is decreasing */
+ if (ll > 2) {
+ if (re > re_old) break;
+ }
+ re_old = re;
+
+ } /*end of iterations*/
+ //printf("HO iterations stopped at iteration: %i\n", ll);
+ result.append<np::ndarray>(npU);
+ if (switcher != 0) result.append<np::ndarray>(npMap);
+
+ }
+ return result;
+}
+
+
+bp::list PatchBased_Regul(np::ndarray input, double d_lambda, int SearchW_real, int SimilW, double d_h) {
+ // the result is in the following list
+ bp::list result;
+
+ int N, M, Z, numdims, SearchW, /*SimilW, SearchW_real,*/ padXY, newsizeX, newsizeY, newsizeZ, switchpad_crop;
+ //const int *dims;
+ float *A, *B = NULL, *Ap = NULL, *Bp = NULL, h, lambda;
+
+ numdims = input.get_nd();
+ int dims[3];
+
+ dims[0] = input.shape(0);
+ dims[1] = input.shape(1);
+ if (numdims == 2) {
+ dims[2] = -1;
+ }
+ else {
+ dims[2] = input.shape(2);
+ }
+ /*numdims = mxGetNumberOfDimensions(prhs[0]);
+ dims = mxGetDimensions(prhs[0]);*/
+
+ N = dims[0];
+ M = dims[1];
+ Z = dims[2];
+
+ //if ((numdims < 2) || (numdims > 3)) { mexErrMsgTxt("The input should be 2D image or 3D volume"); }
+ //if (mxGetClassID(prhs[0]) != mxSINGLE_CLASS) { mexErrMsgTxt("The input in single precision is required"); }
+
+ //if (nrhs != 5) mexErrMsgTxt("Five inputs reqired: Image(2D,3D), SearchW, SimilW, Threshold, Regularization parameter");
+
+ ///*Handling inputs*/
+ //A = (float *)mxGetData(prhs[0]); /* the image to regularize/filter */
+ A = reinterpret_cast<float *>(input.get_data());
+ //SearchW_real = (int)mxGetScalar(prhs[1]); /* the searching window ratio */
+ //SimilW = (int)mxGetScalar(prhs[2]); /* the similarity window ratio */
+ //h = (float)mxGetScalar(prhs[3]); /* parameter for the PB filtering function */
+ //lambda = (float)mxGetScalar(prhs[4]); /* regularization parameter */
+
+ //if (h <= 0) mexErrMsgTxt("Parmeter for the PB penalty function should be > 0");
+ //if (lambda <= 0) mexErrMsgTxt(" Regularization parmeter should be > 0");
+
+ lambda = (float)d_lambda;
+ h = (float)d_h;
+ SearchW = SearchW_real + 2 * SimilW;
+
+ /* SearchW_full = 2*SearchW + 1; */ /* the full searching window size */
+ /* SimilW_full = 2*SimilW + 1; */ /* the full similarity window size */
+
+
+ padXY = SearchW + 2 * SimilW; /* padding sizes */
+ newsizeX = N + 2 * (padXY); /* the X size of the padded array */
+ newsizeY = M + 2 * (padXY); /* the Y size of the padded array */
+ newsizeZ = Z + 2 * (padXY); /* the Z size of the padded array */
+ int N_dims[] = { newsizeX, newsizeY, newsizeZ };
+ /******************************2D case ****************************/
+ if (numdims == 2) {
+ ///*Handling output*/
+ //B = (float*)mxGetData(plhs[0] = mxCreateNumericMatrix(N, M, mxSINGLE_CLASS, mxREAL));
+ ///*allocating memory for the padded arrays */
+ //Ap = (float*)mxGetData(mxCreateNumericMatrix(newsizeX, newsizeY, mxSINGLE_CLASS, mxREAL));
+ //Bp = (float*)mxGetData(mxCreateNumericMatrix(newsizeX, newsizeY, mxSINGLE_CLASS, mxREAL));
+ ///**************************************************************************/
+
+ bp::tuple shape = bp::make_tuple(N, M);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+ np::ndarray npB = np::zeros(shape, dtype);
+
+ shape = bp::make_tuple(newsizeX, newsizeY);
+ np::ndarray npAp = np::zeros(shape, dtype);
+ np::ndarray npBp = np::zeros(shape, dtype);
+ B = reinterpret_cast<float *>(npB.get_data());
+ Ap = reinterpret_cast<float *>(npAp.get_data());
+ Bp = reinterpret_cast<float *>(npBp.get_data());
+
+ /*Perform padding of image A to the size of [newsizeX * newsizeY] */
+ switchpad_crop = 0; /*padding*/
+ pad_crop(A, Ap, M, N, 0, newsizeY, newsizeX, 0, padXY, switchpad_crop);
+
+ /* Do PB regularization with the padded array */
+ PB_FUNC2D(Ap, Bp, newsizeY, newsizeX, padXY, SearchW, SimilW, (float)h, (float)lambda);
+
+ switchpad_crop = 1; /*cropping*/
+ pad_crop(Bp, B, M, N, 0, newsizeY, newsizeX, 0, padXY, switchpad_crop);
+
+ result.append<np::ndarray>(npB);
+ }
+ else
+ {
+ /******************************3D case ****************************/
+ ///*Handling output*/
+ //B = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(3, dims, mxSINGLE_CLASS, mxREAL));
+ ///*allocating memory for the padded arrays */
+ //Ap = (float*)mxGetPr(mxCreateNumericArray(3, N_dims, mxSINGLE_CLASS, mxREAL));
+ //Bp = (float*)mxGetPr(mxCreateNumericArray(3, N_dims, mxSINGLE_CLASS, mxREAL));
+ /**************************************************************************/
+ bp::tuple shape = bp::make_tuple(dims[0], dims[1], dims[2]);
+ bp::tuple shape_AB = bp::make_tuple(N_dims[0], N_dims[1], N_dims[2]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+ np::ndarray npB = np::zeros(shape, dtype);
+ np::ndarray npAp = np::zeros(shape_AB, dtype);
+ np::ndarray npBp = np::zeros(shape_AB, dtype);
+ B = reinterpret_cast<float *>(npB.get_data());
+ Ap = reinterpret_cast<float *>(npAp.get_data());
+ Bp = reinterpret_cast<float *>(npBp.get_data());
+ /*Perform padding of image A to the size of [newsizeX * newsizeY * newsizeZ] */
+ switchpad_crop = 0; /*padding*/
+ pad_crop(A, Ap, M, N, Z, newsizeY, newsizeX, newsizeZ, padXY, switchpad_crop);
+
+ /* Do PB regularization with the padded array */
+ PB_FUNC3D(Ap, Bp, newsizeY, newsizeX, newsizeZ, padXY, SearchW, SimilW, (float)h, (float)lambda);
+
+ switchpad_crop = 1; /*cropping*/
+ pad_crop(Bp, B, M, N, Z, newsizeY, newsizeX, newsizeZ, padXY, switchpad_crop);
+
+ result.append<np::ndarray>(npB);
+ } /*end else ndims*/
+
+ return result;
+}
+
+bp::list TGV_PD(np::ndarray input, double d_lambda, double d_alpha1, double d_alpha0, int iter) {
+ // the result is in the following list
+ bp::list result;
+ int number_of_dims, /*iter,*/ dimX, dimY, dimZ, ll;
+ //const int *dim_array;
+ float *A, *U, *U_old, *P1, *P2, *Q1, *Q2, *Q3, *V1, *V1_old, *V2, *V2_old, lambda, L2, tau, sigma, alpha1, alpha0;
+
+ //number_of_dims = mxGetNumberOfDimensions(prhs[0]);
+ //dim_array = mxGetDimensions(prhs[0]);
+ number_of_dims = input.get_nd();
+ int dim_array[3];
+
+ dim_array[0] = input.shape(0);
+ dim_array[1] = input.shape(1);
+ if (number_of_dims == 2) {
+ dim_array[2] = -1;
+ }
+ else {
+ dim_array[2] = input.shape(2);
+ }
+ /*Handling Matlab input data*/
+ //A = (float *)mxGetData(prhs[0]); /*origanal noise image/volume*/
+ //if (mxGetClassID(prhs[0]) != mxSINGLE_CLASS) { mexErrMsgTxt("The input in single precision is required"); }
+
+ A = reinterpret_cast<float *>(input.get_data());
+
+ //lambda = (float)mxGetScalar(prhs[1]); /*regularization parameter*/
+ //alpha1 = (float)mxGetScalar(prhs[2]); /*first-order term*/
+ //alpha0 = (float)mxGetScalar(prhs[3]); /*second-order term*/
+ //iter = (int)mxGetScalar(prhs[4]); /*iterations number*/
+ //if (nrhs != 5) mexErrMsgTxt("Five input parameters is reqired: Image(2D/3D), Regularization parameter, alpha1, alpha0, Iterations");
+ lambda = (float)d_lambda;
+ alpha1 = (float)d_alpha1;
+ alpha0 = (float)d_alpha0;
+
+ /*Handling Matlab output data*/
+ dimX = dim_array[0]; dimY = dim_array[1];
+
+ if (number_of_dims == 2) {
+ /*2D case*/
+ dimZ = 1;
+ bp::tuple shape = bp::make_tuple(dim_array[0], dim_array[1]);
+ np::dtype dtype = np::dtype::get_builtin<float>();
+
+ np::ndarray npU = np::zeros(shape, dtype);
+ np::ndarray npP1 = np::zeros(shape, dtype);
+ np::ndarray npP2 = np::zeros(shape, dtype);
+ np::ndarray npQ1 = np::zeros(shape, dtype);
+ np::ndarray npQ2 = np::zeros(shape, dtype);
+ np::ndarray npQ3 = np::zeros(shape, dtype);
+ np::ndarray npV1 = np::zeros(shape, dtype);
+ np::ndarray npV1_old = np::zeros(shape, dtype);
+ np::ndarray npV2 = np::zeros(shape, dtype);
+ np::ndarray npV2_old = np::zeros(shape, dtype);
+ np::ndarray npU_old = np::zeros(shape, dtype);
+
+ U = reinterpret_cast<float *>(npU.get_data());
+ U_old = reinterpret_cast<float *>(npU_old.get_data());
+ P1 = reinterpret_cast<float *>(npP1.get_data());
+ P2 = reinterpret_cast<float *>(npP2.get_data());
+ Q1 = reinterpret_cast<float *>(npQ1.get_data());
+ Q2 = reinterpret_cast<float *>(npQ2.get_data());
+ Q3 = reinterpret_cast<float *>(npQ3.get_data());
+ V1 = reinterpret_cast<float *>(npV1.get_data());
+ V1_old = reinterpret_cast<float *>(npV1_old.get_data());
+ V2 = reinterpret_cast<float *>(npV2.get_data());
+ V2_old = reinterpret_cast<float *>(npV2_old.get_data());
+ //U = (float*)mxGetPr(plhs[0] = mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+
+ /*dual variables*/
+ /*P1 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ P2 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+
+ Q1 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ Q2 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ Q3 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+
+ U_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+
+ V1 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ V1_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ V2 = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));
+ V2_old = (float*)mxGetPr(mxCreateNumericArray(2, dim_array, mxSINGLE_CLASS, mxREAL));*/
+ /*printf("%i \n", i);*/
+ L2 = 12.0; /*Lipshitz constant*/
+ tau = 1.0 / pow(L2, 0.5);
+ sigma = 1.0 / pow(L2, 0.5);
+
+ /*Copy A to U*/
+ copyIm(A, U, dimX, dimY, dimZ);
+ /* Here primal-dual iterations begin for 2D */
+ for (ll = 0; ll < iter; ll++) {
+
+ /* Calculate Dual Variable P */
+ DualP_2D(U, V1, V2, P1, P2, dimX, dimY, dimZ, sigma);
+
+ /*Projection onto convex set for P*/
+ ProjP_2D(P1, P2, dimX, dimY, dimZ, alpha1);
+
+ /* Calculate Dual Variable Q */
+ DualQ_2D(V1, V2, Q1, Q2, Q3, dimX, dimY, dimZ, sigma);
+
+ /*Projection onto convex set for Q*/
+ ProjQ_2D(Q1, Q2, Q3, dimX, dimY, dimZ, alpha0);
+
+ /*saving U into U_old*/
+ copyIm(U, U_old, dimX, dimY, dimZ);
+
+ /*adjoint operation -> divergence and projection of P*/
+ DivProjP_2D(U, A, P1, P2, dimX, dimY, dimZ, lambda, tau);
+
+ /*get updated solution U*/
+ newU(U, U_old, dimX, dimY, dimZ);
+
+ /*saving V into V_old*/
+ copyIm(V1, V1_old, dimX, dimY, dimZ);
+ copyIm(V2, V2_old, dimX, dimY, dimZ);
+
+ /* upd V*/
+ UpdV_2D(V1, V2, P1, P2, Q1, Q2, Q3, dimX, dimY, dimZ, tau);
+
+ /*get new V*/
+ newU(V1, V1_old, dimX, dimY, dimZ);
+ newU(V2, V2_old, dimX, dimY, dimZ);
+ } /*end of iterations*/
+
+ result.append<np::ndarray>(npU);
+ }
+
+
+
+
+ return result;
+}
+
+BOOST_PYTHON_MODULE(cpu_regularizers)
+{
+ np::initialize();
+
+ //To specify that this module is a package
+ bp::object package = bp::scope();
+ package.attr("__path__") = "cpu_regularizers";
+
+ np::dtype dt1 = np::dtype::get_builtin<uint8_t>();
+ np::dtype dt2 = np::dtype::get_builtin<uint16_t>();
+
+ def("SplitBregman_TV", SplitBregman_TV);
+ def("FGP_TV", FGP_TV);
+ def("LLT_model", LLT_model);
+ def("PatchBased_Regul", PatchBased_Regul);
+ def("TGV_PD", TGV_PD);
+}
diff --git a/Wrappers/Python/src/fista_module_gpu.pyx b/Wrappers/Python/src/fista_module_gpu.pyx
new file mode 100644
index 0000000..9d5b15a
--- /dev/null
+++ b/Wrappers/Python/src/fista_module_gpu.pyx
@@ -0,0 +1,154 @@
+# distutils: language=c++
+"""
+Copyright 2018 CCPi
+Licensed under the Apache License, Version 2.0 (the "License");
+you may not use this file except in compliance with the License.
+You may obtain a copy of the License at
+ http://www.apache.org/licenses/LICENSE-2.0
+Unless required by applicable law or agreed to in writing, software
+distributed under the License is distributed on an "AS IS" BASIS,
+WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
+See the License for the specific language governing permissions and
+limitations under the License.
+
+Author: Edoardo Pasca
+"""
+
+import cython
+
+import numpy as np
+cimport numpy as np
+
+
+cdef extern void Diff4th_GPU_kernel(float* A, float* B, int N, int M, int Z,
+ float sigma, int iter, float tau, float lambdaf);
+cdef extern void NLM_GPU_kernel(float *A, float* B, float *Eucl_Vec,
+ int N, int M, int Z, int dimension,
+ int SearchW, int SimilW,
+ int SearchW_real, float denh2, float lambdaf);
+
+def Diff4thHajiaboli(inputData,
+ regularization_parameter,
+ iterations,
+ edge_preserving_parameter):
+ if inputData.ndims == 2:
+ return Diff4thHajiaboli2D(inputData,
+ regularization_parameter,
+ iterations,
+ edge_preserving_parameter)
+ elif inputData.ndims == 3:
+ return Diff4thHajiaboli3D(inputData,
+ regularization_parameter,
+ iterations,
+ edge_preserving_parameter)
+
+def Diff4thHajiaboli2D(np.ndarray[np.float32_t, ndim=2, mode="c"] inputData,
+ float regularization_parameter,
+ int iterations,
+ float edge_preserving_parameter):
+
+ cdef long dims[2]
+ dims[0] = inputData.shape[0]
+ dims[1] = inputData.shape[1]
+ N = dims[0] + 2;
+ M = dims[1] + 2;
+
+ #time step is sufficiently small for an explicit methods
+ tau = 0.01
+
+ #A_L = (float*)mxGetData(mxCreateNumericMatrix(N, M, mxSINGLE_CLASS, mxREAL));
+ #B_L = (float*)mxGetData(mxCreateNumericMatrix(N, M, mxSINGLE_CLASS, mxREAL));
+ A_L = np.zeros((N,M), dtype=np.float)
+ B_L = np.zeros((N,M), dtype=np.float)
+ B = np.zeros((dims[0],dims[1]), dtype=np.float)
+ #A = inputData
+
+ # copy A to the bigger A_L with boundaries
+ #pragma omp parallel for shared(A_L, A) private(i,j)
+ cdef int i, j;
+ for i in range(N):
+ for j in range(M):
+ if (((i > 0) and (i < N-1)) and ((j > 0) and (j < M-1))):
+ #A_L[i*M+j] = A[(i-1)*(dims[1])+(j-1)]
+ A_L[i][j] = inputData[i-1][j-1]
+
+ # Running CUDA code here
+ #Diff4th_GPU_kernel(A_L, B_L, N, M, Z, (float)sigma, iter, (float)tau, lambda);
+# Diff4th_GPU_kernel(
+# #<float*> A_L.data, <float*> B_L.data,
+# &A_L[0,0], &B_L[0,0],
+# N, M, 0,
+# edge_preserving_parameter,
+# iterations ,
+# tau,
+# regularization_parameter)
+ # copy the processed B_L to a smaller B
+ for i in range(N):
+ for j in range(M):
+ if (((i > 0) and (i < N-1)) and ((j > 0) and (j < M-1))):
+ B[i-1][j-1] = B_L[i][j]
+ ##pragma omp parallel for shared(B_L, B) private(i,j)
+ #for (i=0; i < N; i++) {
+ # for (j=0; j < M; j++) {
+ # if (((i > 0) && (i < N-1)) && ((j > 0) && (j < M-1))) B[(i-1)*(dims[1])+(j-1)] = B_L[i*M+j];
+ # }}
+
+ return B
+
+def Diff4thHajiaboli3D(np.ndarray[np.float32_t, ndim=3, mode="c"] inputData,
+ float regularization_parameter,
+ int iterations,
+ float edge_preserving_parameter):
+
+ cdef long dims[3]
+ dims[0] = inputData.shape[0]
+ dims[1] = inputData.shape[1]
+ dims[2] = inputData.shape[2]
+ N = dims[0] + 2
+ M = dims[1] + 2
+ Z = dims[2] + 2
+
+ # Time Step is small for an explicit methods
+ tau = 0.0007;
+
+ #A_L = (float*)mxGetData(mxCreateNumericMatrix(N, M, mxSINGLE_CLASS, mxREAL));
+ #B_L = (float*)mxGetData(mxCreateNumericMatrix(N, M, mxSINGLE_CLASS, mxREAL));
+ A_L = np.zeros((N,M,Z), dtype=np.float)
+ B_L = np.zeros((N,M,Z), dtype=np.float)
+ B = np.zeros((dims[0],dims[1],dims[2]), dtype=np.float)
+ #A = inputData
+
+ # copy A to the bigger A_L with boundaries
+ #pragma omp parallel for shared(A_L, A) private(i,j)
+ cdef int i, j, k;
+ for i in range(N):
+ for j in range(M):
+ for k in range(Z):
+ if (((i > 0) and (i < N-1)) and \
+ ((j > 0) and (j < M-1)) and \
+ ((k > 0) and (k < Z-1))):
+ A_L[i][j][k] = inputData[i-1][j-1][k-1];
+
+ # Running CUDA code here
+ #Diff4th_GPU_kernel(A_L, B_L, N, M, Z, (float)sigma, iter, (float)tau, lambda);
+# Diff4th_GPU_kernel(
+# #<float*> A_L.data, <float*> B_L.data,
+# &A_L[0,0,0], &B_L[0,0,0],
+# N, M, Z,
+# edge_preserving_parameter,
+# iterations ,
+# tau,
+# regularization_parameter)
+ # copy the processed B_L to a smaller B
+ for i in range(N):
+ for j in range(M):
+ for k in range(Z):
+ if (((i > 0) and (i < N-1)) and \
+ ((j > 0) and (j < M-1)) and \
+ ((k > 0) and (k < Z-1))):
+ B[i-1][j-1][k-1] = B_L[i][j][k]
+
+
+ return B
+
+
diff --git a/Wrappers/Python/src/multiply.pyx b/Wrappers/Python/src/multiply.pyx
new file mode 100644
index 0000000..65df1c6
--- /dev/null
+++ b/Wrappers/Python/src/multiply.pyx
@@ -0,0 +1,49 @@
+"""
+multiply.pyx
+
+simple cython test of accessing a numpy array's data
+
+the C function: c_multiply multiplies all the values in a 2-d array by a scalar, in place.
+
+"""
+
+import cython
+
+# import both numpy and the Cython declarations for numpy
+import numpy as np
+cimport numpy as np
+
+# declare the interface to the C code
+cdef extern void c_multiply (double* array, double value, int m, int n)
+
+@cython.boundscheck(False)
+@cython.wraparound(False)
+def multiply(np.ndarray[double, ndim=2, mode="c"] input not None, double value):
+ """
+ multiply (arr, value)
+
+ Takes a numpy arry as input, and multiplies each elemetn by value, in place
+
+ param: array -- a 2-d numpy array of np.float64
+ param: value -- a number that will be multiplied by each element in the array
+
+ """
+ cdef int m, n
+
+ m, n = input.shape[0], input.shape[1]
+
+ c_multiply (&input[0,0], value, m, n)
+
+ return None
+
+def multiply2(np.ndarray[double, ndim=2, mode="c"] input not None, double value):
+ """
+ this method works fine, but is not as future-proof the nupy API might change, etc.
+ """
+ cdef int m, n
+
+ m, n = input.shape[0], input.shape[1]
+
+ c_multiply (<double*> input.data, value, m, n)
+
+ return None \ No newline at end of file