Open Source Computer Vision Library https://opencv.org/
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6.0 KiB

How to Use Background Subtraction Methods

@prev_tutorial{tutorial_stitcher} @next_tutorial{tutorial_meanshift}

Original author Domenico Daniele Bloisi
Compatibility OpenCV >= 3.0
  • Background subtraction (BS) is a common and widely used technique for generating a foreground mask (namely, a binary image containing the pixels belonging to moving objects in the scene) by using static cameras.

  • As the name suggests, BS calculates the foreground mask performing a subtraction between the current frame and a background model, containing the static part of the scene or, more in general, everything that can be considered as background given the characteristics of the observed scene.

  • Background modeling consists of two main steps:

    -# Background Initialization; -# Background Update.

    In the first step, an initial model of the background is computed, while in the second step that model is updated in order to adapt to possible changes in the scene.

  • In this tutorial we will learn how to perform BS by using OpenCV.

Goals

In this tutorial you will learn how to:

-# Read data from videos or image sequences by using @ref cv::VideoCapture ; -# Create and update the background model by using @ref cv::BackgroundSubtractor class; -# Get and show the foreground mask by using @ref cv::imshow ;

Code

In the following you can find the source code. We will let the user choose to process either a video file or a sequence of images.

We will use @ref cv::BackgroundSubtractorMOG2 in this sample, to generate the foreground mask.

The results as well as the input data are shown on the screen.

@add_toggle_cpp

@add_toggle_java

  • Downloadable code: Click here

  • Code at glance: @include samples/java/tutorial_code/video/background_subtraction/BackgroundSubtractionDemo.java @end_toggle

@add_toggle_python

  • Downloadable code: Click here

  • Code at glance: @include samples/python/tutorial_code/video/background_subtraction/bg_sub.py @end_toggle

Explanation

We discuss the main parts of the code above:

  • A @ref cv::BackgroundSubtractor object will be used to generate the foreground mask. In this example, default parameters are used, but it is also possible to declare specific parameters in the create function.

@add_toggle_cpp @snippet samples/cpp/tutorial_code/video/bg_sub.cpp create @end_toggle

@add_toggle_java @snippet samples/java/tutorial_code/video/background_subtraction/BackgroundSubtractionDemo.java create @end_toggle

@add_toggle_python @snippet samples/python/tutorial_code/video/background_subtraction/bg_sub.py create @end_toggle

  • A @ref cv::VideoCapture object is used to read the input video or input images sequence.

@add_toggle_cpp @snippet samples/cpp/tutorial_code/video/bg_sub.cpp capture @end_toggle

@add_toggle_java @snippet samples/java/tutorial_code/video/background_subtraction/BackgroundSubtractionDemo.java capture @end_toggle

@add_toggle_python @snippet samples/python/tutorial_code/video/background_subtraction/bg_sub.py capture @end_toggle

  • Every frame is used both for calculating the foreground mask and for updating the background. If you want to change the learning rate used for updating the background model, it is possible to set a specific learning rate by passing a parameter to the apply method.

@add_toggle_cpp @snippet samples/cpp/tutorial_code/video/bg_sub.cpp apply @end_toggle

@add_toggle_java @snippet samples/java/tutorial_code/video/background_subtraction/BackgroundSubtractionDemo.java apply @end_toggle

@add_toggle_python @snippet samples/python/tutorial_code/video/background_subtraction/bg_sub.py apply @end_toggle

  • The current frame number can be extracted from the @ref cv::VideoCapture object and stamped in the top left corner of the current frame. A white rectangle is used to highlight the black colored frame number.

@add_toggle_cpp @snippet samples/cpp/tutorial_code/video/bg_sub.cpp display_frame_number @end_toggle

@add_toggle_java @snippet samples/java/tutorial_code/video/background_subtraction/BackgroundSubtractionDemo.java display_frame_number @end_toggle

@add_toggle_python @snippet samples/python/tutorial_code/video/background_subtraction/bg_sub.py display_frame_number @end_toggle

  • We are ready to show the current input frame and the results.

@add_toggle_cpp @snippet samples/cpp/tutorial_code/video/bg_sub.cpp show @end_toggle

@add_toggle_java @snippet samples/java/tutorial_code/video/background_subtraction/BackgroundSubtractionDemo.java show @end_toggle

@add_toggle_python @snippet samples/python/tutorial_code/video/background_subtraction/bg_sub.py show @end_toggle

Results

  • With the vtest.avi video, for the following frame:

    The output of the program will look as the following for MOG2 method (gray areas are detected shadows):

    The output of the program will look as the following for the KNN method (gray areas are detected shadows):

References