Image segmentation based on PCNN model combined with automatic wave and synaptic integration

Caihong Zhu, Shiyang Chen, Jinyong Gao, Wang Xia
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Abstract

A PCNN model combined with synaptic integration and automatic wave is presented in this paper. The fired neurons and unfired neurons in neighborhood are taken as excitatory and inhibitory synapses respectively, and the result of synaptic integration serves as the PCNN linking input; the firing map of the image spreads in decaying automatic wave, then the segmentation result is obtained when the map turn to be stable. The experimental results demonstrate the proposed model perform well in edge areas and restrains the over segmentation phenomenon, the shape measure and the contrast measure are improved at the same time.
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基于自动波突触整合的PCNN模型图像分割
提出了一种结合突触整合和自动波的PCNN模型。将邻近的激活神经元和未激活神经元分别作为兴奋性突触和抑制性突触,突触整合的结果作为PCNN连接输入;图像的发射图在衰减的自动波中扩散,当发射图趋于稳定时得到分割结果。实验结果表明,该模型在边缘区域表现良好,抑制了过度分割现象,同时改进了形状测度和对比度测度。
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