An adaptive filtering algorithm based on genetic algorithm-backpropagation network

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Abstract

A new image filtering algorithm is proposed. GA-BPN algorithm uses genetic algorithm (GA) to decide weights in a back propagation neural network (BPN). It has better global optimal characteristics than traditional optimal algorithm. In this paper, we used GA-BPN to do image noise filter researching work. Firstly, this paper uses training samples to train GA-BPN as the noise detector. Then, we utilize the well-trained GA-BPN to recognize noise pixels in target image. And at last, an adaptive weighted average algorithm is used to recover noise pixels recognized by GA-BPN. Experiment data shows that this algorithm has better performance than other filters. © 2013 Kai Hu et al.

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Hu, K., Song, A., Xia, M., Ye, X., & Dou, Y. (2013). An adaptive filtering algorithm based on genetic algorithm-backpropagation network. Mathematical Problems in Engineering, 2013. https://doi.org/10.1155/2013/573941

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