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Multi-object Segmentation Based on Improved Pulse Coupled Neural Network

机译:基于改进脉冲耦合神经网络的多对象分割

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This paper introduces an approach for image segmentation by using pulse coupled neural network (PCNN), based on the phenomena of synchronous pulse bursts in the animal visual cortexes. The synchronous bursts of neurons with different input were generated in the proposed PCNN model to realize the multi-object segmentation. The criterion to automatically choose the dominant parameter (the linking strength ?), which determines the synchronous-burst stimulus range, was described in order to stimulate its application in automatic image segmentation. Segmentations on several types of image are implemented with the proposed method and the experimental results demonstrate its validity.
机译:本文介绍了一种通过使用脉冲耦合神经网络(PCNN)的图像分割方法,基于动物视觉皮质中的同步脉冲突发的现象。在所提出的PCNN模型中生成具有不同输入的神经元的同步爆发,以实现多对象分割。描述了自动选择主导参数(链接强度?)的标准,该标准确定了同步突发刺激范围,以便刺激其在自动图像分割中的应用。用拟议的方法实施了几种类型图像的分割,实验结果表明其有效性。

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