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- /*M///////////////////////////////////////////////////////////////////////////////////////
- //
- // IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
- //
- // By downloading, copying, installing or using the software you agree to this license.
- // If you do not agree to this license, do not download, install,
- // copy or use the software.
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- // License Agreement
- // For Open Source Computer Vision Library
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- // Copyright (C) 2000-2008, Intel Corporation, all rights reserved.
- // Copyright (C) 2009, Willow Garage Inc., all rights reserved.
- // Copyright (C) 2013, OpenCV Foundation, all rights reserved.
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- // the use of this software, even if advised of the possibility of such damage.
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- //M*/
- #ifndef __OPENCV_TRACKING_HPP__
- #define __OPENCV_TRACKING_HPP__
- #include "opencv2/core.hpp"
- #include "opencv2/imgproc.hpp"
- namespace cv
- {
- //! @addtogroup video_track
- //! @{
- enum { OPTFLOW_USE_INITIAL_FLOW = 4,
- OPTFLOW_LK_GET_MIN_EIGENVALS = 8,
- OPTFLOW_FARNEBACK_GAUSSIAN = 256
- };
- /** @brief Finds an object center, size, and orientation.
- @param probImage Back projection of the object histogram. See calcBackProject.
- @param window Initial search window.
- @param criteria Stop criteria for the underlying meanShift.
- returns
- (in old interfaces) Number of iterations CAMSHIFT took to converge
- The function implements the CAMSHIFT object tracking algorithm @cite Bradski98 . First, it finds an
- object center using meanShift and then adjusts the window size and finds the optimal rotation. The
- function returns the rotated rectangle structure that includes the object position, size, and
- orientation. The next position of the search window can be obtained with RotatedRect::boundingRect()
- See the OpenCV sample camshiftdemo.c that tracks colored objects.
- @note
- - (Python) A sample explaining the camshift tracking algorithm can be found at
- opencv_source_code/samples/python/camshift.py
- */
- CV_EXPORTS_W RotatedRect CamShift( InputArray probImage, CV_IN_OUT Rect& window,
- TermCriteria criteria );
- /** @brief Finds an object on a back projection image.
- @param probImage Back projection of the object histogram. See calcBackProject for details.
- @param window Initial search window.
- @param criteria Stop criteria for the iterative search algorithm.
- returns
- : Number of iterations CAMSHIFT took to converge.
- The function implements the iterative object search algorithm. It takes the input back projection of
- an object and the initial position. The mass center in window of the back projection image is
- computed and the search window center shifts to the mass center. The procedure is repeated until the
- specified number of iterations criteria.maxCount is done or until the window center shifts by less
- than criteria.epsilon. The algorithm is used inside CamShift and, unlike CamShift , the search
- window size or orientation do not change during the search. You can simply pass the output of
- calcBackProject to this function. But better results can be obtained if you pre-filter the back
- projection and remove the noise. For example, you can do this by retrieving connected components
- with findContours , throwing away contours with small area ( contourArea ), and rendering the
- remaining contours with drawContours.
- @note
- - A mean-shift tracking sample can be found at opencv_source_code/samples/cpp/camshiftdemo.cpp
- */
- CV_EXPORTS_W int meanShift( InputArray probImage, CV_IN_OUT Rect& window, TermCriteria criteria );
- /** @brief Constructs the image pyramid which can be passed to calcOpticalFlowPyrLK.
- @param img 8-bit input image.
- @param pyramid output pyramid.
- @param winSize window size of optical flow algorithm. Must be not less than winSize argument of
- calcOpticalFlowPyrLK. It is needed to calculate required padding for pyramid levels.
- @param maxLevel 0-based maximal pyramid level number.
- @param withDerivatives set to precompute gradients for the every pyramid level. If pyramid is
- constructed without the gradients then calcOpticalFlowPyrLK will calculate them internally.
- @param pyrBorder the border mode for pyramid layers.
- @param derivBorder the border mode for gradients.
- @param tryReuseInputImage put ROI of input image into the pyramid if possible. You can pass false
- to force data copying.
- @return number of levels in constructed pyramid. Can be less than maxLevel.
- */
- CV_EXPORTS_W int buildOpticalFlowPyramid( InputArray img, OutputArrayOfArrays pyramid,
- Size winSize, int maxLevel, bool withDerivatives = true,
- int pyrBorder = BORDER_REFLECT_101,
- int derivBorder = BORDER_CONSTANT,
- bool tryReuseInputImage = true );
- /** @brief Calculates an optical flow for a sparse feature set using the iterative Lucas-Kanade method with
- pyramids.
- @param prevImg first 8-bit input image or pyramid constructed by buildOpticalFlowPyramid.
- @param nextImg second input image or pyramid of the same size and the same type as prevImg.
- @param prevPts vector of 2D points for which the flow needs to be found; point coordinates must be
- single-precision floating-point numbers.
- @param nextPts output vector of 2D points (with single-precision floating-point coordinates)
- containing the calculated new positions of input features in the second image; when
- OPTFLOW_USE_INITIAL_FLOW flag is passed, the vector must have the same size as in the input.
- @param status output status vector (of unsigned chars); each element of the vector is set to 1 if
- the flow for the corresponding features has been found, otherwise, it is set to 0.
- @param err output vector of errors; each element of the vector is set to an error for the
- corresponding feature, type of the error measure can be set in flags parameter; if the flow wasn't
- found then the error is not defined (use the status parameter to find such cases).
- @param winSize size of the search window at each pyramid level.
- @param maxLevel 0-based maximal pyramid level number; if set to 0, pyramids are not used (single
- level), if set to 1, two levels are used, and so on; if pyramids are passed to input then
- algorithm will use as many levels as pyramids have but no more than maxLevel.
- @param criteria parameter, specifying the termination criteria of the iterative search algorithm
- (after the specified maximum number of iterations criteria.maxCount or when the search window
- moves by less than criteria.epsilon.
- @param flags operation flags:
- - **OPTFLOW_USE_INITIAL_FLOW** uses initial estimations, stored in nextPts; if the flag is
- not set, then prevPts is copied to nextPts and is considered the initial estimate.
- - **OPTFLOW_LK_GET_MIN_EIGENVALS** use minimum eigen values as an error measure (see
- minEigThreshold description); if the flag is not set, then L1 distance between patches
- around the original and a moved point, divided by number of pixels in a window, is used as a
- error measure.
- @param minEigThreshold the algorithm calculates the minimum eigen value of a 2x2 normal matrix of
- optical flow equations (this matrix is called a spatial gradient matrix in @cite Bouguet00), divided
- by number of pixels in a window; if this value is less than minEigThreshold, then a corresponding
- feature is filtered out and its flow is not processed, so it allows to remove bad points and get a
- performance boost.
- The function implements a sparse iterative version of the Lucas-Kanade optical flow in pyramids. See
- @cite Bouguet00 . The function is parallelized with the TBB library.
- @note
- - An example using the Lucas-Kanade optical flow algorithm can be found at
- opencv_source_code/samples/cpp/lkdemo.cpp
- - (Python) An example using the Lucas-Kanade optical flow algorithm can be found at
- opencv_source_code/samples/python/lk_track.py
- - (Python) An example using the Lucas-Kanade tracker for homography matching can be found at
- opencv_source_code/samples/python/lk_homography.py
- */
- CV_EXPORTS_W void calcOpticalFlowPyrLK( InputArray prevImg, InputArray nextImg,
- InputArray prevPts, InputOutputArray nextPts,
- OutputArray status, OutputArray err,
- Size winSize = Size(21,21), int maxLevel = 3,
- TermCriteria criteria = TermCriteria(TermCriteria::COUNT+TermCriteria::EPS, 30, 0.01),
- int flags = 0, double minEigThreshold = 1e-4 );
- /** @brief Computes a dense optical flow using the Gunnar Farneback's algorithm.
- @param prev first 8-bit single-channel input image.
- @param next second input image of the same size and the same type as prev.
- @param flow computed flow image that has the same size as prev and type CV_32FC2.
- @param pyr_scale parameter, specifying the image scale (\<1) to build pyramids for each image;
- pyr_scale=0.5 means a classical pyramid, where each next layer is twice smaller than the previous
- one.
- @param levels number of pyramid layers including the initial image; levels=1 means that no extra
- layers are created and only the original images are used.
- @param winsize averaging window size; larger values increase the algorithm robustness to image
- noise and give more chances for fast motion detection, but yield more blurred motion field.
- @param iterations number of iterations the algorithm does at each pyramid level.
- @param poly_n size of the pixel neighborhood used to find polynomial expansion in each pixel;
- larger values mean that the image will be approximated with smoother surfaces, yielding more
- robust algorithm and more blurred motion field, typically poly_n =5 or 7.
- @param poly_sigma standard deviation of the Gaussian that is used to smooth derivatives used as a
- basis for the polynomial expansion; for poly_n=5, you can set poly_sigma=1.1, for poly_n=7, a
- good value would be poly_sigma=1.5.
- @param flags operation flags that can be a combination of the following:
- - **OPTFLOW_USE_INITIAL_FLOW** uses the input flow as an initial flow approximation.
- - **OPTFLOW_FARNEBACK_GAUSSIAN** uses the Gaussian \f$\texttt{winsize}\times\texttt{winsize}\f$
- filter instead of a box filter of the same size for optical flow estimation; usually, this
- option gives z more accurate flow than with a box filter, at the cost of lower speed;
- normally, winsize for a Gaussian window should be set to a larger value to achieve the same
- level of robustness.
- The function finds an optical flow for each prev pixel using the @cite Farneback2003 algorithm so that
- \f[\texttt{prev} (y,x) \sim \texttt{next} ( y + \texttt{flow} (y,x)[1], x + \texttt{flow} (y,x)[0])\f]
- @note
- - An example using the optical flow algorithm described by Gunnar Farneback can be found at
- opencv_source_code/samples/cpp/fback.cpp
- - (Python) An example using the optical flow algorithm described by Gunnar Farneback can be
- found at opencv_source_code/samples/python/opt_flow.py
- */
- CV_EXPORTS_W void calcOpticalFlowFarneback( InputArray prev, InputArray next, InputOutputArray flow,
- double pyr_scale, int levels, int winsize,
- int iterations, int poly_n, double poly_sigma,
- int flags );
- /** @brief Computes an optimal affine transformation between two 2D point sets.
- @param src First input 2D point set stored in std::vector or Mat, or an image stored in Mat.
- @param dst Second input 2D point set of the same size and the same type as A, or another image.
- @param fullAffine If true, the function finds an optimal affine transformation with no additional
- restrictions (6 degrees of freedom). Otherwise, the class of transformations to choose from is
- limited to combinations of translation, rotation, and uniform scaling (5 degrees of freedom).
- The function finds an optimal affine transform *[A|b]* (a 2 x 3 floating-point matrix) that
- approximates best the affine transformation between:
- * Two point sets
- * Two raster images. In this case, the function first finds some features in the src image and
- finds the corresponding features in dst image. After that, the problem is reduced to the first
- case.
- In case of point sets, the problem is formulated as follows: you need to find a 2x2 matrix *A* and
- 2x1 vector *b* so that:
- \f[[A^*|b^*] = arg \min _{[A|b]} \sum _i \| \texttt{dst}[i] - A { \texttt{src}[i]}^T - b \| ^2\f]
- where src[i] and dst[i] are the i-th points in src and dst, respectively
- \f$[A|b]\f$ can be either arbitrary (when fullAffine=true ) or have a form of
- \f[\begin{bmatrix} a_{11} & a_{12} & b_1 \\ -a_{12} & a_{11} & b_2 \end{bmatrix}\f]
- when fullAffine=false.
- @sa
- getAffineTransform, getPerspectiveTransform, findHomography
- */
- CV_EXPORTS_W Mat estimateRigidTransform( InputArray src, InputArray dst, bool fullAffine );
- enum
- {
- MOTION_TRANSLATION = 0,
- MOTION_EUCLIDEAN = 1,
- MOTION_AFFINE = 2,
- MOTION_HOMOGRAPHY = 3
- };
- /** @brief Finds the geometric transform (warp) between two images in terms of the ECC criterion @cite EP08 .
- @param templateImage single-channel template image; CV_8U or CV_32F array.
- @param inputImage single-channel input image which should be warped with the final warpMatrix in
- order to provide an image similar to templateImage, same type as temlateImage.
- @param warpMatrix floating-point \f$2\times 3\f$ or \f$3\times 3\f$ mapping matrix (warp).
- @param motionType parameter, specifying the type of motion:
- - **MOTION_TRANSLATION** sets a translational motion model; warpMatrix is \f$2\times 3\f$ with
- the first \f$2\times 2\f$ part being the unity matrix and the rest two parameters being
- estimated.
- - **MOTION_EUCLIDEAN** sets a Euclidean (rigid) transformation as motion model; three
- parameters are estimated; warpMatrix is \f$2\times 3\f$.
- - **MOTION_AFFINE** sets an affine motion model (DEFAULT); six parameters are estimated;
- warpMatrix is \f$2\times 3\f$.
- - **MOTION_HOMOGRAPHY** sets a homography as a motion model; eight parameters are
- estimated;\`warpMatrix\` is \f$3\times 3\f$.
- @param criteria parameter, specifying the termination criteria of the ECC algorithm;
- criteria.epsilon defines the threshold of the increment in the correlation coefficient between two
- iterations (a negative criteria.epsilon makes criteria.maxcount the only termination criterion).
- Default values are shown in the declaration above.
- @param inputMask An optional mask to indicate valid values of inputImage.
- The function estimates the optimum transformation (warpMatrix) with respect to ECC criterion
- (@cite EP08), that is
- \f[\texttt{warpMatrix} = \texttt{warpMatrix} = \arg\max_{W} \texttt{ECC}(\texttt{templateImage}(x,y),\texttt{inputImage}(x',y'))\f]
- where
- \f[\begin{bmatrix} x' \\ y' \end{bmatrix} = W \cdot \begin{bmatrix} x \\ y \\ 1 \end{bmatrix}\f]
- (the equation holds with homogeneous coordinates for homography). It returns the final enhanced
- correlation coefficient, that is the correlation coefficient between the template image and the
- final warped input image. When a \f$3\times 3\f$ matrix is given with motionType =0, 1 or 2, the third
- row is ignored.
- Unlike findHomography and estimateRigidTransform, the function findTransformECC implements an
- area-based alignment that builds on intensity similarities. In essence, the function updates the
- initial transformation that roughly aligns the images. If this information is missing, the identity
- warp (unity matrix) should be given as input. Note that if images undergo strong
- displacements/rotations, an initial transformation that roughly aligns the images is necessary
- (e.g., a simple euclidean/similarity transform that allows for the images showing the same image
- content approximately). Use inverse warping in the second image to take an image close to the first
- one, i.e. use the flag WARP_INVERSE_MAP with warpAffine or warpPerspective. See also the OpenCV
- sample image_alignment.cpp that demonstrates the use of the function. Note that the function throws
- an exception if algorithm does not converges.
- @sa
- estimateRigidTransform, findHomography
- */
- CV_EXPORTS_W double findTransformECC( InputArray templateImage, InputArray inputImage,
- InputOutputArray warpMatrix, int motionType = MOTION_AFFINE,
- TermCriteria criteria = TermCriteria(TermCriteria::COUNT+TermCriteria::EPS, 50, 0.001),
- InputArray inputMask = noArray());
- /** @brief Kalman filter class.
- The class implements a standard Kalman filter <http://en.wikipedia.org/wiki/Kalman_filter>,
- @cite Welch95 . However, you can modify transitionMatrix, controlMatrix, and measurementMatrix to get
- an extended Kalman filter functionality. See the OpenCV sample kalman.cpp.
- @note
- - An example using the standard Kalman filter can be found at
- opencv_source_code/samples/cpp/kalman.cpp
- */
- class CV_EXPORTS_W KalmanFilter
- {
- public:
- /** @brief The constructors.
- @note In C API when CvKalman\* kalmanFilter structure is not needed anymore, it should be released
- with cvReleaseKalman(&kalmanFilter)
- */
- CV_WRAP KalmanFilter();
- /** @overload
- @param dynamParams Dimensionality of the state.
- @param measureParams Dimensionality of the measurement.
- @param controlParams Dimensionality of the control vector.
- @param type Type of the created matrices that should be CV_32F or CV_64F.
- */
- CV_WRAP KalmanFilter( int dynamParams, int measureParams, int controlParams = 0, int type = CV_32F );
- /** @brief Re-initializes Kalman filter. The previous content is destroyed.
- @param dynamParams Dimensionality of the state.
- @param measureParams Dimensionality of the measurement.
- @param controlParams Dimensionality of the control vector.
- @param type Type of the created matrices that should be CV_32F or CV_64F.
- */
- void init( int dynamParams, int measureParams, int controlParams = 0, int type = CV_32F );
- /** @brief Computes a predicted state.
- @param control The optional input control
- */
- CV_WRAP const Mat& predict( const Mat& control = Mat() );
- /** @brief Updates the predicted state from the measurement.
- @param measurement The measured system parameters
- */
- CV_WRAP const Mat& correct( const Mat& measurement );
- CV_PROP_RW Mat statePre; //!< predicted state (x'(k)): x(k)=A*x(k-1)+B*u(k)
- CV_PROP_RW Mat statePost; //!< corrected state (x(k)): x(k)=x'(k)+K(k)*(z(k)-H*x'(k))
- CV_PROP_RW Mat transitionMatrix; //!< state transition matrix (A)
- CV_PROP_RW Mat controlMatrix; //!< control matrix (B) (not used if there is no control)
- CV_PROP_RW Mat measurementMatrix; //!< measurement matrix (H)
- CV_PROP_RW Mat processNoiseCov; //!< process noise covariance matrix (Q)
- CV_PROP_RW Mat measurementNoiseCov;//!< measurement noise covariance matrix (R)
- CV_PROP_RW Mat errorCovPre; //!< priori error estimate covariance matrix (P'(k)): P'(k)=A*P(k-1)*At + Q)*/
- CV_PROP_RW Mat gain; //!< Kalman gain matrix (K(k)): K(k)=P'(k)*Ht*inv(H*P'(k)*Ht+R)
- CV_PROP_RW Mat errorCovPost; //!< posteriori error estimate covariance matrix (P(k)): P(k)=(I-K(k)*H)*P'(k)
- // temporary matrices
- Mat temp1;
- Mat temp2;
- Mat temp3;
- Mat temp4;
- Mat temp5;
- };
- class CV_EXPORTS_W DenseOpticalFlow : public Algorithm
- {
- public:
- /** @brief Calculates an optical flow.
- @param I0 first 8-bit single-channel input image.
- @param I1 second input image of the same size and the same type as prev.
- @param flow computed flow image that has the same size as prev and type CV_32FC2.
- */
- CV_WRAP virtual void calc( InputArray I0, InputArray I1, InputOutputArray flow ) = 0;
- /** @brief Releases all inner buffers.
- */
- CV_WRAP virtual void collectGarbage() = 0;
- };
- /** @brief "Dual TV L1" Optical Flow Algorithm.
- The class implements the "Dual TV L1" optical flow algorithm described in @cite Zach2007 and
- @cite Javier2012 .
- Here are important members of the class that control the algorithm, which you can set after
- constructing the class instance:
- - member double tau
- Time step of the numerical scheme.
- - member double lambda
- Weight parameter for the data term, attachment parameter. This is the most relevant
- parameter, which determines the smoothness of the output. The smaller this parameter is,
- the smoother the solutions we obtain. It depends on the range of motions of the images, so
- its value should be adapted to each image sequence.
- - member double theta
- Weight parameter for (u - v)\^2, tightness parameter. It serves as a link between the
- attachment and the regularization terms. In theory, it should have a small value in order
- to maintain both parts in correspondence. The method is stable for a large range of values
- of this parameter.
- - member int nscales
- Number of scales used to create the pyramid of images.
- - member int warps
- Number of warpings per scale. Represents the number of times that I1(x+u0) and grad(
- I1(x+u0) ) are computed per scale. This is a parameter that assures the stability of the
- method. It also affects the running time, so it is a compromise between speed and
- accuracy.
- - member double epsilon
- Stopping criterion threshold used in the numerical scheme, which is a trade-off between
- precision and running time. A small value will yield more accurate solutions at the
- expense of a slower convergence.
- - member int iterations
- Stopping criterion iterations number used in the numerical scheme.
- C. Zach, T. Pock and H. Bischof, "A Duality Based Approach for Realtime TV-L1 Optical Flow".
- Javier Sanchez, Enric Meinhardt-Llopis and Gabriele Facciolo. "TV-L1 Optical Flow Estimation".
- */
- class CV_EXPORTS_W DualTVL1OpticalFlow : public DenseOpticalFlow
- {
- public:
- //! @brief Time step of the numerical scheme
- /** @see setTau */
- virtual double getTau() const = 0;
- /** @copybrief getTau @see getTau */
- virtual void setTau(double val) = 0;
- //! @brief Weight parameter for the data term, attachment parameter
- /** @see setLambda */
- virtual double getLambda() const = 0;
- /** @copybrief getLambda @see getLambda */
- virtual void setLambda(double val) = 0;
- //! @brief Weight parameter for (u - v)^2, tightness parameter
- /** @see setTheta */
- virtual double getTheta() const = 0;
- /** @copybrief getTheta @see getTheta */
- virtual void setTheta(double val) = 0;
- //! @brief coefficient for additional illumination variation term
- /** @see setGamma */
- virtual double getGamma() const = 0;
- /** @copybrief getGamma @see getGamma */
- virtual void setGamma(double val) = 0;
- //! @brief Number of scales used to create the pyramid of images
- /** @see setScalesNumber */
- virtual int getScalesNumber() const = 0;
- /** @copybrief getScalesNumber @see getScalesNumber */
- virtual void setScalesNumber(int val) = 0;
- //! @brief Number of warpings per scale
- /** @see setWarpingsNumber */
- virtual int getWarpingsNumber() const = 0;
- /** @copybrief getWarpingsNumber @see getWarpingsNumber */
- virtual void setWarpingsNumber(int val) = 0;
- //! @brief Stopping criterion threshold used in the numerical scheme, which is a trade-off between precision and running time
- /** @see setEpsilon */
- virtual double getEpsilon() const = 0;
- /** @copybrief getEpsilon @see getEpsilon */
- virtual void setEpsilon(double val) = 0;
- //! @brief Inner iterations (between outlier filtering) used in the numerical scheme
- /** @see setInnerIterations */
- virtual int getInnerIterations() const = 0;
- /** @copybrief getInnerIterations @see getInnerIterations */
- virtual void setInnerIterations(int val) = 0;
- //! @brief Outer iterations (number of inner loops) used in the numerical scheme
- /** @see setOuterIterations */
- virtual int getOuterIterations() const = 0;
- /** @copybrief getOuterIterations @see getOuterIterations */
- virtual void setOuterIterations(int val) = 0;
- //! @brief Use initial flow
- /** @see setUseInitialFlow */
- virtual bool getUseInitialFlow() const = 0;
- /** @copybrief getUseInitialFlow @see getUseInitialFlow */
- virtual void setUseInitialFlow(bool val) = 0;
- //! @brief Step between scales (<1)
- /** @see setScaleStep */
- virtual double getScaleStep() const = 0;
- /** @copybrief getScaleStep @see getScaleStep */
- virtual void setScaleStep(double val) = 0;
- //! @brief Median filter kernel size (1 = no filter) (3 or 5)
- /** @see setMedianFiltering */
- virtual int getMedianFiltering() const = 0;
- /** @copybrief getMedianFiltering @see getMedianFiltering */
- virtual void setMedianFiltering(int val) = 0;
- };
- /** @brief Creates instance of cv::DenseOpticalFlow
- */
- CV_EXPORTS_W Ptr<DualTVL1OpticalFlow> createOptFlow_DualTVL1();
- //! @} video_track
- } // cv
- #endif
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