An adaptive background subtraction method based on kernel density estimation

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Abstract

In this paper, a pixel-based background modeling method, which uses nonparametric kernel density estimation, is proposed. To reduce the burden of image storage, we modify the original KDE method by using the first frame to initialize it and update it subsequently at every frame by controlling the learning rate according to the situations. We apply an adaptive threshold method based on image changes to effectively subtract the dynamic backgrounds. The devised scheme allows the proposed method to automatically adapt to various environments and effectively extract the foreground. The method presented here exhibits good performance and is suitable for dynamic background environments. The algorithm is tested on various video sequences and compared with other state-of-the-art background subtraction methods so as to verify its performance. © 2012 by the authors; licensee MDPI, Basel, Switzerland.

Figures

  • Figure 1. Example of the value of Gt over time.
  • Figure 2. Gaussian probability and an example of histogram approximation; Bd is the width of the histograms in dimension d and Ck is the center of each histogram.
  • Figure 3. An example of how the histogram was updated.
  • Figure 4. An example of possible Gaussians in a bin.
  • Figure 5. Summary of the proposed algorithm.
  • Table 1. A contingency table.
  • Figure 6. Background subtraction results obtained with the proposed scheme and other methods using the Li dataset. The first frame of each video sequence is shown in the first row, the test frames are displayed in the second row, the ground truth data of the test frames are shown in the third row, and the results obtained with the proposed method are displayed in the fourth row. The results acquired with the other methods are shown in the fifth to eighth rows.
  • Figure 7. The recall results obtained with the proposed scheme and other methods for the Li dataset. The AVG column represents the average values of the results in all datasets.

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CITATION STYLE

APA

Lee, J., & Park, M. (2012). An adaptive background subtraction method based on kernel density estimation. Sensors (Switzerland), 12(9), 12279–12300. https://doi.org/10.3390/s120912279

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