C-EFIC: Color and Edge Based Foreground Background Segmentation with Interior Classification

  • Allebosch G
  • Van Hamme D
  • Deboeverie F
  • et al.
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Abstract

The detection of foreground regions in video streams is an essential part of many computer vision algorithms. Considerable con- tributions were made to this field over the past years. However, vary- ing illumination circumstances and changing camera viewpoints provide major challenges for all available algorithms. In this paper, a robust foreground background segmentation algorithm is proposed. Both Local Ternary Pattern based edge descriptors and RGB color information are used to classify individual pixels. Furthermore, camera viewpoints are detected and compensated for. We will show that this algorithm is able to handle challenging conditions and achieves state-of-the-art results on the comprehensive ChangeDetection.NET 2014 dataset.

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Allebosch, G., Van Hamme, D., Deboeverie, F., Veelaert, P., & Philips, W. (2016). C-EFIC: Color and Edge Based Foreground Background Segmentation with Interior Classification (pp. 433–454). https://doi.org/10.1007/978-3-319-29971-6_23

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