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Research on Design of Intelligent Background Differential Model for Training Target Monitoring

Author

Listed:
  • Ya Liu
  • Fusheng Jiang
  • Yuhui Wang
  • Lu OuYang
  • Bo Gao
  • Jinling Jiang
  • Bo Zhang
  • Wei Wang

Abstract

The detection of moving targets is to detect the change area in a sequence of images and extract the moving targets from the background image. It is the basis. Whether the moving targets can be correctly detected and segmented has a huge impact on the subsequent work. Aiming at the problem of high failure rate in the detection of sports targets under complex backgrounds, this paper proposes a research on the design of an intelligent background differential model for training target monitoring. This paper proposes a background difference method based on RGB colour separation. The colour image is separated into independent RGB three-channel images, and the corresponding channels are subjected to the background difference operation to obtain the foreground image of each channel. In order to retain the difference of each channel, the information of the foreground images of the three channels is fused to obtain a complete foreground image. The feature of the edge detection is not affected by light; the foreground image is corrected. From the experimental results, the ordinary background difference method uses grey value processing, and some parts of the target with different colours but similar grey levels to the background cannot be extracted. However, the method in this paper can better solve the defect of misdetection. At the same time, compared with traditional methods, it also has a higher detection efficiency.

Suggested Citation

  • Ya Liu & Fusheng Jiang & Yuhui Wang & Lu OuYang & Bo Gao & Jinling Jiang & Bo Zhang & Wei Wang, 2021. "Research on Design of Intelligent Background Differential Model for Training Target Monitoring," Complexity, Hindawi, vol. 2021, pages 1-12, May.
  • Handle: RePEc:hin:complx:5513788
    DOI: 10.1155/2021/5513788
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