OpenCV  5.0.0alpha
Open Source Computer Vision
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cv::ximgproc::SuperpixelSEEDS Class Referenceabstract

Class implementing the SEEDS (Superpixels Extracted via Energy-Driven Sampling) superpixels algorithm described in [283] . More...

#include <opencv2/ximgproc/seeds.hpp>

Collaboration diagram for cv::ximgproc::SuperpixelSEEDS:

Public Member Functions

virtual ~SuperpixelSEEDS ()
 
virtual void getLabelContourMask (OutputArray image, bool thick_line=false)=0
 Returns the mask of the superpixel segmentation stored in SuperpixelSEEDS object.
 
virtual void getLabels (OutputArray labels_out)=0
 Returns the segmentation labeling of the image.
 
virtual int getNumberOfSuperpixels ()=0
 Calculates the superpixel segmentation on a given image stored in SuperpixelSEEDS object.
 
virtual void iterate (InputArray img, int num_iterations=4)=0
 Calculates the superpixel segmentation on a given image with the initialized parameters in the SuperpixelSEEDS object.
 
- Public Member Functions inherited from cv::Algorithm
 Algorithm ()
 
virtual ~Algorithm ()
 
virtual void clear ()
 Clears the algorithm state.
 
virtual bool empty () const
 Returns true if the Algorithm is empty (e.g. in the very beginning or after unsuccessful read.
 
virtual String getDefaultName () const
 
virtual void read (const FileNode &fn)
 Reads algorithm parameters from a file storage.
 
virtual void save (const String &filename) const
 
virtual void write (FileStorage &fs) const
 Stores algorithm parameters in a file storage.
 
void write (FileStorage &fs, const String &name) const
 

Additional Inherited Members

- Static Public Member Functions inherited from cv::Algorithm
template<typename _Tp >
static Ptr< _Tpload (const String &filename, const String &objname=String())
 Loads algorithm from the file.
 
template<typename _Tp >
static Ptr< _TploadFromString (const String &strModel, const String &objname=String())
 Loads algorithm from a String.
 
template<typename _Tp >
static Ptr< _Tpread (const FileNode &fn)
 Reads algorithm from the file node.
 
- Protected Member Functions inherited from cv::Algorithm
void writeFormat (FileStorage &fs) const
 

Detailed Description

Class implementing the SEEDS (Superpixels Extracted via Energy-Driven Sampling) superpixels algorithm described in [283] .

The algorithm uses an efficient hill-climbing algorithm to optimize the superpixels' energy function that is based on color histograms and a boundary term, which is optional. The energy function encourages superpixels to be of the same color, and if the boundary term is activated, the superpixels have smooth boundaries and are of similar shape. In practice it starts from a regular grid of superpixels and moves the pixels or blocks of pixels at the boundaries to refine the solution. The algorithm runs in real-time using a single CPU.

Constructor & Destructor Documentation

◆ ~SuperpixelSEEDS()

virtual cv::ximgproc::SuperpixelSEEDS::~SuperpixelSEEDS ( )
inlinevirtual

Member Function Documentation

◆ getLabelContourMask()

virtual void cv::ximgproc::SuperpixelSEEDS::getLabelContourMask ( OutputArray image,
bool thick_line = false )
pure virtual
Python:
cv.ximgproc.SuperpixelSEEDS.getLabelContourMask([, image[, thick_line]]) -> image

Returns the mask of the superpixel segmentation stored in SuperpixelSEEDS object.

Parameters
imageReturn: CV_8UC1 image mask where -1 indicates that the pixel is a superpixel border, and 0 otherwise.
thick_lineIf false, the border is only one pixel wide, otherwise all pixels at the border are masked.

The function return the boundaries of the superpixel segmentation.

Note
  • (Python) A demo on how to generate superpixels in images from the webcam can be found at opencv_source_code/samples/python2/seeds.py
    • (cpp) A demo on how to generate superpixels in images from the webcam can be found at opencv_source_code/modules/ximgproc/samples/seeds.cpp. By adding a file image as a command line argument, the static image will be used instead of the webcam.
    • It will show a window with the video from the webcam with the superpixel boundaries marked in red (see below). Use Space to switch between different output modes. At the top of the window there are 4 sliders, from which the user can change on-the-fly the number of superpixels, the number of block levels, the strength of the boundary prior term to modify the shape, and the number of iterations at pixel level. This is useful to play with the parameters and set them to the user convenience. In the console the frame-rate of the algorithm is indicated.
image

◆ getLabels()

virtual void cv::ximgproc::SuperpixelSEEDS::getLabels ( OutputArray labels_out)
pure virtual
Python:
cv.ximgproc.SuperpixelSEEDS.getLabels([, labels_out]) -> labels_out

Returns the segmentation labeling of the image.

Each label represents a superpixel, and each pixel is assigned to one superpixel label.

Parameters
labels_outReturn: A CV_32UC1 integer array containing the labels of the superpixel segmentation. The labels are in the range [0, getNumberOfSuperpixels()].

The function returns an image with ssthe labels of the superpixel segmentation. The labels are in the range [0, getNumberOfSuperpixels()].

◆ getNumberOfSuperpixels()

virtual int cv::ximgproc::SuperpixelSEEDS::getNumberOfSuperpixels ( )
pure virtual
Python:
cv.ximgproc.SuperpixelSEEDS.getNumberOfSuperpixels() -> retval

Calculates the superpixel segmentation on a given image stored in SuperpixelSEEDS object.

The function computes the superpixels segmentation of an image with the parameters initialized with the function createSuperpixelSEEDS().

◆ iterate()

virtual void cv::ximgproc::SuperpixelSEEDS::iterate ( InputArray img,
int num_iterations = 4 )
pure virtual
Python:
cv.ximgproc.SuperpixelSEEDS.iterate(img[, num_iterations]) -> None

Calculates the superpixel segmentation on a given image with the initialized parameters in the SuperpixelSEEDS object.

This function can be called again for other images without the need of initializing the algorithm with createSuperpixelSEEDS(). This save the computational cost of allocating memory for all the structures of the algorithm.

Parameters
imgInput image. Supported formats: CV_8U, CV_16U, CV_32F. Image size & number of channels must match with the initialized image size & channels with the function createSuperpixelSEEDS(). It should be in HSV or Lab color space. Lab is a bit better, but also slower.
num_iterationsNumber of pixel level iterations. Higher number improves the result.

The function computes the superpixels segmentation of an image with the parameters initialized with the function createSuperpixelSEEDS(). The algorithms starts from a grid of superpixels and then refines the boundaries by proposing updates of blocks of pixels that lie at the boundaries from large to smaller size, finalizing with proposing pixel updates. An illustrative example can be seen below.

image

The documentation for this class was generated from the following file: