WANG Zhi-ming, ZHANG Li, BAO Hong. Adaptive Background Model Based on Hybrid Structure Neural Network[J]. Acta Electronica Sinica, 2011, 39(5): 1053-1058.
DOI:
WANG Zhi-ming, ZHANG Li, BAO Hong. Adaptive Background Model Based on Hybrid Structure Neural Network[J]. Acta Electronica Sinica, 2011, 39(5): 1053-1058.DOI:
Adaptive Background Model Based on Hybrid Structure Neural Network
This paper proposed a new background model for motion detection in video surveillance based on neural network (NN).A neural network background model was build for every pixel (or a small local region).It is a four-layer feedforward neural network.Input layer accept HSV pixel value
feature layer extract features form HSV
pattern layer work as a background probability calculator.Output layer classifies the pixel into background or foreground
and finds the activated node.Weights and structure of network updated dynamically along with motion detection and no training video needed.Adaptability of background model includes adaptive learning rate calculated form motion difference between adjacent frames
and number of pattern node changes according to weight variation.Experimental results on benchmark videos show that
without any manual setting of learning rate
the proposed algorithm can detection motion more precisely than other familiar background models
and it can also adapts to sudden background or lighting changes more quickly.