Motion Detection Model Based on PCNN

  • Yoshida, Minoru (Department of Information & Computer Science, Saitama University) ;
  • Tanaka, Masaru (Department of Information & Computer Science, Saitama University) ;
  • Kurita, Takio (National Institute of Advanced Industrial Science and Technology)
  • Published : 2002.07.01

Abstract

Pulse-Coupled Neural Network (PCNN), which can explain the synchronous burst of neurons in a cat visual cortex, is a fundamental model for the biomimetic vision. The PCNN is a kind of pulse coded neural network models. In order to get deep understanding of the visual information Processing, it is important to simulate the visual system through such biologically plausible neural network model. In this paper, we construct the motion detection model based on the PCNN with the receptive field models of neurons in the lateral geniculate nucleus and the primary visual cortex. Then it is shown that this motion detection model can detect the movements and the direction of motion effectively.

Keywords