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			403 lines
		
	
	
		
			14 KiB
		
	
	
	
		
			C++
		
	
		
		
			
		
	
	
			403 lines
		
	
	
		
			14 KiB
		
	
	
	
		
			C++
		
	
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											3 years ago
										 
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								/*M///////////////////////////////////////////////////////////////////////////////////////
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								//                          License Agreement
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								//                For Open Source Computer Vision Library
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								// Copyright (C) 2000-2008, Intel Corporation, all rights reserved.
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								// Copyright (C) 2009, Willow Garage Inc., all rights reserved.
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								// Copyright (C) 2013, OpenCV Foundation, all rights reserved.
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								// This software is provided by the copyright holders and contributors "as is" and
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								//
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								//M*/
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								#ifndef OPENCV_CORE_EIGEN_HPP
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								#define OPENCV_CORE_EIGEN_HPP
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								#ifndef EIGEN_WORLD_VERSION
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								#error "Wrong usage of OpenCV's Eigen utility header. Include Eigen's headers first. See https://github.com/opencv/opencv/issues/17366"
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								#endif
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								#include "opencv2/core.hpp"
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								#if defined _MSC_VER && _MSC_VER >= 1200
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								#define NOMINMAX // fix https://github.com/opencv/opencv/issues/17548
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								#pragma warning( disable: 4714 ) //__forceinline is not inlined
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								#pragma warning( disable: 4127 ) //conditional expression is constant
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								#pragma warning( disable: 4244 ) //conversion from '__int64' to 'int', possible loss of data
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								#endif
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								#if !defined(OPENCV_DISABLE_EIGEN_TENSOR_SUPPORT)
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								#if EIGEN_WORLD_VERSION == 3 && EIGEN_MAJOR_VERSION >= 3 \
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								    && defined(CV_CXX11) && defined(CV_CXX_STD_ARRAY)
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								#include <unsupported/Eigen/CXX11/Tensor>
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								#define OPENCV_EIGEN_TENSOR_SUPPORT 1
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								#endif  // EIGEN_WORLD_VERSION == 3 && EIGEN_MAJOR_VERSION >= 3
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								#endif  // !defined(OPENCV_DISABLE_EIGEN_TENSOR_SUPPORT)
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								namespace cv
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								{
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								/** @addtogroup core_eigen
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								These functions are provided for OpenCV-Eigen interoperability. They convert `Mat`
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								objects to corresponding `Eigen::Matrix` objects and vice-versa. Consult the [Eigen
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								documentation](https://eigen.tuxfamily.org/dox/group__TutorialMatrixClass.html) for
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								information about the `Matrix` template type.
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								@note Using these functions requires the `Eigen/Dense` or similar header to be
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								included before this header.
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								*/
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								//! @{
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								#if defined(OPENCV_EIGEN_TENSOR_SUPPORT) || defined(CV_DOXYGEN)
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								/** @brief Converts an Eigen::Tensor to a cv::Mat.
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								The method converts an Eigen::Tensor with shape (H x W x C) to a cv::Mat where:
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								 H = number of rows
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								 W = number of columns
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								 C = number of channels
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								Usage:
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								\code
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								Eigen::Tensor<float, 3, Eigen::RowMajor> a_tensor(...);
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								// populate tensor with values
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								Mat a_mat;
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								eigen2cv(a_tensor, a_mat);
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								\endcode
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								*/
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								template <typename _Tp, int _layout> static inline
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								void eigen2cv( const Eigen::Tensor<_Tp, 3, _layout> &src, OutputArray dst )
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								{
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								    if( !(_layout & Eigen::RowMajorBit) )
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								    {
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								        const std::array<int, 3> shuffle{2, 1, 0};
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								        Eigen::Tensor<_Tp, 3, !_layout> row_major_tensor = src.swap_layout().shuffle(shuffle);
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								        Mat _src(src.dimension(0), src.dimension(1), CV_MAKETYPE(DataType<_Tp>::type, src.dimension(2)), row_major_tensor.data());
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								        _src.copyTo(dst);
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								    }
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								    else
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								    {
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								        Mat _src(src.dimension(0), src.dimension(1), CV_MAKETYPE(DataType<_Tp>::type, src.dimension(2)), (void *)src.data());
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								        _src.copyTo(dst);
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								    }
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								}
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								/** @brief Converts a cv::Mat to an Eigen::Tensor.
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								The method converts a cv::Mat to an Eigen Tensor with shape (H x W x C) where:
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								 H = number of rows
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								 W = number of columns
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								 C = number of channels
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								Usage:
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								\code
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								Mat a_mat(...);
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								// populate Mat with values
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								Eigen::Tensor<float, 3, Eigen::RowMajor> a_tensor(...);
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								cv2eigen(a_mat, a_tensor);
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								\endcode
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								*/
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								template <typename _Tp, int _layout> static inline
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								void cv2eigen( const Mat &src, Eigen::Tensor<_Tp, 3, _layout> &dst )
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								{
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								    if( !(_layout & Eigen::RowMajorBit) )
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								    {
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								        Eigen::Tensor<_Tp, 3, !_layout> row_major_tensor(src.rows, src.cols, src.channels());
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								        Mat _dst(src.rows, src.cols, CV_MAKETYPE(DataType<_Tp>::type, src.channels()), row_major_tensor.data());
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								        if (src.type() == _dst.type())
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								            src.copyTo(_dst);
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								        else
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								            src.convertTo(_dst, _dst.type());
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								        const std::array<int, 3> shuffle{2, 1, 0};
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								        dst = row_major_tensor.swap_layout().shuffle(shuffle);
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								    }
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								    else
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								    {
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								        dst.resize(src.rows, src.cols, src.channels());
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								        Mat _dst(src.rows, src.cols, CV_MAKETYPE(DataType<_Tp>::type, src.channels()), dst.data());
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								        if (src.type() == _dst.type())
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								            src.copyTo(_dst);
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								        else
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								            src.convertTo(_dst, _dst.type());
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								    }
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								}
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								/** @brief Maps cv::Mat data to an Eigen::TensorMap.
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								The method wraps an existing Mat data array with an Eigen TensorMap of shape (H x W x C) where:
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								 H = number of rows
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								 W = number of columns
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								 C = number of channels
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								Explicit instantiation of the return type is required.
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								@note Caller should be aware of the lifetime of the cv::Mat instance and take appropriate safety measures.
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								The cv::Mat instance will retain ownership of the data and the Eigen::TensorMap will lose access when the cv::Mat data is deallocated.
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								The example below initializes a cv::Mat and produces an Eigen::TensorMap:
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								\code
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								float arr[] = {0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11};
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								Mat a_mat(2, 2, CV_32FC3, arr);
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								Eigen::TensorMap<Eigen::Tensor<float, 3, Eigen::RowMajor>> a_tensormap = cv2eigen_tensormap<float>(a_mat);
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								\endcode
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								*/
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								template <typename _Tp> static inline
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								Eigen::TensorMap<Eigen::Tensor<_Tp, 3, Eigen::RowMajor>> cv2eigen_tensormap(InputArray src)
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								{
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								    Mat mat = src.getMat();
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								    CV_CheckTypeEQ(mat.type(), CV_MAKETYPE(traits::Type<_Tp>::value, mat.channels()), "");
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								    return Eigen::TensorMap<Eigen::Tensor<_Tp, 3, Eigen::RowMajor>>((_Tp *)mat.data, mat.rows, mat.cols, mat.channels());
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								}
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								#endif // OPENCV_EIGEN_TENSOR_SUPPORT
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								template<typename _Tp, int _rows, int _cols, int _options, int _maxRows, int _maxCols> static inline
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								void eigen2cv( const Eigen::Matrix<_Tp, _rows, _cols, _options, _maxRows, _maxCols>& src, OutputArray dst )
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								{
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								    if( !(src.Flags & Eigen::RowMajorBit) )
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								    {
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								        Mat _src(src.cols(), src.rows(), traits::Type<_Tp>::value,
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								              (void*)src.data(), src.outerStride()*sizeof(_Tp));
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								        transpose(_src, dst);
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								    }
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								    else
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								    {
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								        Mat _src(src.rows(), src.cols(), traits::Type<_Tp>::value,
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								                 (void*)src.data(), src.outerStride()*sizeof(_Tp));
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								        _src.copyTo(dst);
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								    }
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								}
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								// Matx case
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								template<typename _Tp, int _rows, int _cols, int _options, int _maxRows, int _maxCols> static inline
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								void eigen2cv( const Eigen::Matrix<_Tp, _rows, _cols, _options, _maxRows, _maxCols>& src,
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								               Matx<_Tp, _rows, _cols>& dst )
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								{
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								    if( !(src.Flags & Eigen::RowMajorBit) )
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								    {
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								        dst = Matx<_Tp, _cols, _rows>(static_cast<const _Tp*>(src.data())).t();
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								    }
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								    else
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								    {
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								        dst = Matx<_Tp, _rows, _cols>(static_cast<const _Tp*>(src.data()));
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								    }
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								}
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								template<typename _Tp, int _rows, int _cols, int _options, int _maxRows, int _maxCols> static inline
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								void cv2eigen( const Mat& src,
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								               Eigen::Matrix<_Tp, _rows, _cols, _options, _maxRows, _maxCols>& dst )
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								{
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								    CV_DbgAssert(src.rows == _rows && src.cols == _cols);
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								    if( !(dst.Flags & Eigen::RowMajorBit) )
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								    {
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								        const Mat _dst(src.cols, src.rows, traits::Type<_Tp>::value,
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								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
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								        if( src.type() == _dst.type() )
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								            transpose(src, _dst);
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								        else if( src.cols == src.rows )
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								        {
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								            src.convertTo(_dst, _dst.type());
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								            transpose(_dst, _dst);
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								        }
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								        else
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								            Mat(src.t()).convertTo(_dst, _dst.type());
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								    }
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								    else
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								    {
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								        const Mat _dst(src.rows, src.cols, traits::Type<_Tp>::value,
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								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        src.convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								// Matx case
							 | 
						||
| 
								 | 
							
								template<typename _Tp, int _rows, int _cols, int _options, int _maxRows, int _maxCols> static inline
							 | 
						||
| 
								 | 
							
								void cv2eigen( const Matx<_Tp, _rows, _cols>& src,
							 | 
						||
| 
								 | 
							
								               Eigen::Matrix<_Tp, _rows, _cols, _options, _maxRows, _maxCols>& dst )
							 | 
						||
| 
								 | 
							
								{
							 | 
						||
| 
								 | 
							
								    if( !(dst.Flags & Eigen::RowMajorBit) )
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(_cols, _rows, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        transpose(src, _dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								    else
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(_rows, _cols, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        Mat(src).copyTo(_dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								template<typename _Tp>  static inline
							 | 
						||
| 
								 | 
							
								void cv2eigen( const Mat& src,
							 | 
						||
| 
								 | 
							
								               Eigen::Matrix<_Tp, Eigen::Dynamic, Eigen::Dynamic>& dst )
							 | 
						||
| 
								 | 
							
								{
							 | 
						||
| 
								 | 
							
								    dst.resize(src.rows, src.cols);
							 | 
						||
| 
								 | 
							
								    if( !(dst.Flags & Eigen::RowMajorBit) )
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(src.cols, src.rows, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								             dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        if( src.type() == _dst.type() )
							 | 
						||
| 
								 | 
							
								            transpose(src, _dst);
							 | 
						||
| 
								 | 
							
								        else if( src.cols == src.rows )
							 | 
						||
| 
								 | 
							
								        {
							 | 
						||
| 
								 | 
							
								            src.convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								            transpose(_dst, _dst);
							 | 
						||
| 
								 | 
							
								        }
							 | 
						||
| 
								 | 
							
								        else
							 | 
						||
| 
								 | 
							
								            Mat(src.t()).convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								    else
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(src.rows, src.cols, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        src.convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								// Matx case
							 | 
						||
| 
								 | 
							
								template<typename _Tp, int _rows, int _cols> static inline
							 | 
						||
| 
								 | 
							
								void cv2eigen( const Matx<_Tp, _rows, _cols>& src,
							 | 
						||
| 
								 | 
							
								               Eigen::Matrix<_Tp, Eigen::Dynamic, Eigen::Dynamic>& dst )
							 | 
						||
| 
								 | 
							
								{
							 | 
						||
| 
								 | 
							
								    dst.resize(_rows, _cols);
							 | 
						||
| 
								 | 
							
								    if( !(dst.Flags & Eigen::RowMajorBit) )
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(_cols, _rows, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								             dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        transpose(src, _dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								    else
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(_rows, _cols, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        Mat(src).copyTo(_dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								template<typename _Tp> static inline
							 | 
						||
| 
								 | 
							
								void cv2eigen( const Mat& src,
							 | 
						||
| 
								 | 
							
								               Eigen::Matrix<_Tp, Eigen::Dynamic, 1>& dst )
							 | 
						||
| 
								 | 
							
								{
							 | 
						||
| 
								 | 
							
								    CV_Assert(src.cols == 1);
							 | 
						||
| 
								 | 
							
								    dst.resize(src.rows);
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    if( !(dst.Flags & Eigen::RowMajorBit) )
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(src.cols, src.rows, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        if( src.type() == _dst.type() )
							 | 
						||
| 
								 | 
							
								            transpose(src, _dst);
							 | 
						||
| 
								 | 
							
								        else
							 | 
						||
| 
								 | 
							
								            Mat(src.t()).convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								    else
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(src.rows, src.cols, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        src.convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								// Matx case
							 | 
						||
| 
								 | 
							
								template<typename _Tp, int _rows> static inline
							 | 
						||
| 
								 | 
							
								void cv2eigen( const Matx<_Tp, _rows, 1>& src,
							 | 
						||
| 
								 | 
							
								               Eigen::Matrix<_Tp, Eigen::Dynamic, 1>& dst )
							 | 
						||
| 
								 | 
							
								{
							 | 
						||
| 
								 | 
							
								    dst.resize(_rows);
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    if( !(dst.Flags & Eigen::RowMajorBit) )
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(1, _rows, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        transpose(src, _dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								    else
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(_rows, 1, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        src.copyTo(_dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								template<typename _Tp> static inline
							 | 
						||
| 
								 | 
							
								void cv2eigen( const Mat& src,
							 | 
						||
| 
								 | 
							
								               Eigen::Matrix<_Tp, 1, Eigen::Dynamic>& dst )
							 | 
						||
| 
								 | 
							
								{
							 | 
						||
| 
								 | 
							
								    CV_Assert(src.rows == 1);
							 | 
						||
| 
								 | 
							
								    dst.resize(src.cols);
							 | 
						||
| 
								 | 
							
								    if( !(dst.Flags & Eigen::RowMajorBit) )
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(src.cols, src.rows, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        if( src.type() == _dst.type() )
							 | 
						||
| 
								 | 
							
								            transpose(src, _dst);
							 | 
						||
| 
								 | 
							
								        else
							 | 
						||
| 
								 | 
							
								            Mat(src.t()).convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								    else
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(src.rows, src.cols, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        src.convertTo(_dst, _dst.type());
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								//Matx
							 | 
						||
| 
								 | 
							
								template<typename _Tp, int _cols> static inline
							 | 
						||
| 
								 | 
							
								void cv2eigen( const Matx<_Tp, 1, _cols>& src,
							 | 
						||
| 
								 | 
							
								               Eigen::Matrix<_Tp, 1, Eigen::Dynamic>& dst )
							 | 
						||
| 
								 | 
							
								{
							 | 
						||
| 
								 | 
							
								    dst.resize(_cols);
							 | 
						||
| 
								 | 
							
								    if( !(dst.Flags & Eigen::RowMajorBit) )
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(_cols, 1, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        transpose(src, _dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								    else
							 | 
						||
| 
								 | 
							
								    {
							 | 
						||
| 
								 | 
							
								        const Mat _dst(1, _cols, traits::Type<_Tp>::value,
							 | 
						||
| 
								 | 
							
								                 dst.data(), (size_t)(dst.outerStride()*sizeof(_Tp)));
							 | 
						||
| 
								 | 
							
								        Mat(src).copyTo(_dst);
							 | 
						||
| 
								 | 
							
								    }
							 | 
						||
| 
								 | 
							
								}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								//! @}
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								} // cv
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								#endif
							 |