Image Segmentation using Two-Layer Pulse Coupled Neural Network with Inhibitory Linking Field

H. Ranganath, A. Bhatnagar
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引用次数: 9

Abstract

For over a decade, the Pulse Coupled Neural Network (PCNN) based algorithms have been used for image segmentation. Though there are several versions of the PCNN based image segmentation methods, almost all of them use singlelayer PCNN with excitatory linking inputs. There are four major issues associated with the single-burst PCNN which need attention. Often, the PCNN parameters including the linking coefficient are determined by trial and error. The segmentation accuracy of the single-layer PCNN is highly sensitive to the value of the linking coefficient. Finally, in the single-burst mode, neurons corresponding to background pixels do not participate in the segmentation process. This paper presents a new 2-layer network organization of PCNN in which excitatory and inhibitory linking inputs exist. The value of the linking coefficient and the threshold signal at which primary firing of neurons start are determined directly from the image statistics. Simulation results show that the new PCNN achieves significant improvement in the segmentation accuracy over the widely known Kuntimad’s single burst image segmentation approach. The two-layer PCNN based image segmentation method overcomes all three drawbacks of the single-layer PCNN.
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基于抑制连接场的双层脉冲耦合神经网络图像分割
十多年来,基于脉冲耦合神经网络(PCNN)的算法被用于图像分割。尽管有几种基于PCNN的图像分割方法,但几乎所有的方法都使用带有兴奋性链接输入的单层PCNN。与单脉冲PCNN相关的四个主要问题需要引起注意。通常,包括连接系数在内的PCNN参数是通过试错法确定的。单层PCNN的分割精度对连接系数的取值高度敏感。最后,在单突发模式下,背景像素对应的神经元不参与分割过程。本文提出了一种新的两层PCNN网络组织,其中存在兴奋性和抑制性连接输入。连接系数的取值和神经元初级放电开始的阈值信号直接由图像统计量确定。仿真结果表明,与Kuntimad的单突发图像分割方法相比,新的PCNN在分割精度上有了显著提高。基于两层PCNN的图像分割方法克服了单层PCNN的三个缺点。
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