Multi-feature Fusion Object Tracking by RBF Neural Networks

Liu Yingming

Integrated Circuits and Embedded Systems ›› 2022, Vol. 22 ›› Issue (3) : 32-35.

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Integrated Circuits and Embedded Systems ›› 2022, Vol. 22 ›› Issue (3) : 32-35.
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Multi-feature Fusion Object Tracking by RBF Neural Networks

  • Liu Yingming
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Abstract

In the paper,a multi-feature fusion target tracking algorithm based on RBF neural network is proposed.RBF neural network is a simple and efficient three-layer neural network,which can greatly improve tracking efficiency.This paper first uses the three-dimensional color histogram,the Canny operator and the gray-scale image with spatial correlation to construct the input feature vector of the RBF neural network.Then use the triangular kernel function as the activation function of the RBF neural network.Finally,the proposed algorithm is used to track the target.The experiment results show that the target tracking algorithm proposed in this paper can track the target reliably,and has good adaptability to problems such as camera movement,illumination changes,target rotation,and shape deformation.

Key words

target tracking / RBF neural network / color histogram / Canny operator / the gray-scale image / generalized pseudo-inverse

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Liu Yingming. Multi-feature Fusion Object Tracking by RBF Neural Networks[J]. Integrated Circuits and Embedded Systems. 2022, 22(3): 32-35

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