Real-time people counting using blob descriptor

  title={Real-time people counting using blob descriptor},
  author={Satoshi Yoshinaga and A. Shimada and R. Taniguchi},
  journal={Procedia - Social and Behavioral Sciences},
  • Satoshi Yoshinaga, A. Shimada, R. Taniguchi
  • Published 2010
  • Computer Science
  • Procedia - Social and Behavioral Sciences
  • Abstract We propose a system for counting the number of pedestrians in real-time. This system estimates “how many pedestrians are and where they are in video sequences” by the following procedures. First, candidate regions are segmented into blobs according to background subtraction. Second, a set of features are extracted from each blob and a neural network estimates the number of pedestrians corresponding to each set of features. To realize real-time processing, we used only simple and valid… CONTINUE READING
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