142 lines
5.9 KiB
C++
142 lines
5.9 KiB
C++
// This file is part of OpenCV project.
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// It is subject to the license terms in the LICENSE file found in the top-level directory
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// of this distribution and at http://opencv.org/license.html.
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#ifndef OPENCV_IMGPROC_SEGMENTATION_HPP
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#define OPENCV_IMGPROC_SEGMENTATION_HPP
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#include "opencv2/imgproc.hpp"
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namespace cv {
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namespace segmentation {
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//! @addtogroup imgproc_segmentation
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//! @{
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/** @brief Intelligent Scissors image segmentation
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*
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* This class is used to find the path (contour) between two points
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* which can be used for image segmentation.
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*
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* Usage example:
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* @snippet snippets/imgproc_segmentation.cpp usage_example_intelligent_scissors
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*
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* Reference: <a href="http://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.138.3811&rep=rep1&type=pdf">"Intelligent Scissors for Image Composition"</a>
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* algorithm designed by Eric N. Mortensen and William A. Barrett, Brigham Young University
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* @cite Mortensen95intelligentscissors
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*/
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class CV_EXPORTS_W_SIMPLE IntelligentScissorsMB
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{
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public:
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CV_WRAP
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IntelligentScissorsMB();
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/** @brief Specify weights of feature functions
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*
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* Consider keeping weights normalized (sum of weights equals to 1.0)
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* Discrete dynamic programming (DP) goal is minimization of costs between pixels.
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*
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* @param weight_non_edge Specify cost of non-edge pixels (default: 0.43f)
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* @param weight_gradient_direction Specify cost of gradient direction function (default: 0.43f)
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* @param weight_gradient_magnitude Specify cost of gradient magnitude function (default: 0.14f)
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*/
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CV_WRAP
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IntelligentScissorsMB& setWeights(float weight_non_edge, float weight_gradient_direction, float weight_gradient_magnitude);
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/** @brief Specify gradient magnitude max value threshold
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*
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* Zero limit value is used to disable gradient magnitude thresholding (default behavior, as described in original article).
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* Otherwize pixels with `gradient magnitude >= threshold` have zero cost.
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*
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* @note Thresholding should be used for images with irregular regions (to avoid stuck on parameters from high-contract areas, like embedded logos).
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*
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* @param gradient_magnitude_threshold_max Specify gradient magnitude max value threshold (default: 0, disabled)
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*/
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CV_WRAP
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IntelligentScissorsMB& setGradientMagnitudeMaxLimit(float gradient_magnitude_threshold_max = 0.0f);
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/** @brief Switch to "Laplacian Zero-Crossing" edge feature extractor and specify its parameters
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*
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* This feature extractor is used by default according to article.
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*
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* Implementation has additional filtering for regions with low-amplitude noise.
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* This filtering is enabled through parameter of minimal gradient amplitude (use some small value 4, 8, 16).
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*
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* @note Current implementation of this feature extractor is based on processing of grayscale images (color image is converted to grayscale image first).
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*
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* @note Canny edge detector is a bit slower, but provides better results (especially on color images): use setEdgeFeatureCannyParameters().
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*
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* @param gradient_magnitude_min_value Minimal gradient magnitude value for edge pixels (default: 0, check is disabled)
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*/
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CV_WRAP
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IntelligentScissorsMB& setEdgeFeatureZeroCrossingParameters(float gradient_magnitude_min_value = 0.0f);
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/** @brief Switch edge feature extractor to use Canny edge detector
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*
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* @note "Laplacian Zero-Crossing" feature extractor is used by default (following to original article)
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*
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* @sa Canny
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*/
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CV_WRAP
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IntelligentScissorsMB& setEdgeFeatureCannyParameters(
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double threshold1, double threshold2,
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int apertureSize = 3, bool L2gradient = false
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);
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/** @brief Specify input image and extract image features
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*
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* @param image input image. Type is #CV_8UC1 / #CV_8UC3
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*/
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CV_WRAP
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IntelligentScissorsMB& applyImage(InputArray image);
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/** @brief Specify custom features of input image
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*
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* Customized advanced variant of applyImage() call.
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*
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* @param non_edge Specify cost of non-edge pixels. Type is CV_8UC1. Expected values are `{0, 1}`.
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* @param gradient_direction Specify gradient direction feature. Type is CV_32FC2. Values are expected to be normalized: `x^2 + y^2 == 1`
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* @param gradient_magnitude Specify cost of gradient magnitude function: Type is CV_32FC1. Values should be in range `[0, 1]`.
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* @param image **Optional parameter**. Must be specified if subset of features is specified (non-specified features are calculated internally)
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*/
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CV_WRAP
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IntelligentScissorsMB& applyImageFeatures(
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InputArray non_edge, InputArray gradient_direction, InputArray gradient_magnitude,
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InputArray image = noArray()
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);
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/** @brief Prepares a map of optimal paths for the given source point on the image
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*
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* @note applyImage() / applyImageFeatures() must be called before this call
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*
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* @param sourcePt The source point used to find the paths
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*/
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CV_WRAP void buildMap(const Point& sourcePt);
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/** @brief Extracts optimal contour for the given target point on the image
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*
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* @note buildMap() must be called before this call
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*
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* @param targetPt The target point
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* @param[out] contour The list of pixels which contains optimal path between the source and the target points of the image. Type is CV_32SC2 (compatible with `std::vector<Point>`)
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* @param backward Flag to indicate reverse order of retrived pixels (use "true" value to fetch points from the target to the source point)
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*/
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CV_WRAP void getContour(const Point& targetPt, OutputArray contour, bool backward = false) const;
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#ifndef CV_DOXYGEN
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struct Impl;
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inline Impl* getImpl() const { return impl.get(); }
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protected:
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std::shared_ptr<Impl> impl;
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#endif
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};
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//! @}
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} // namespace segmentation
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} // namespace cv
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#endif // OPENCV_IMGPROC_SEGMENTATION_HPP
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