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A New Image Segmentation Algorithm Based on PCNN and Maximal Correlative Criterion

机译:一种基于PCNN和最大相关性标准的新图像分割算法

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Pulse Coupled Neural Network (PCNN) is a new generation of artificial neural networks, which has biological background, embodies excellent performance in image segmentation. However, the problem of parameter estimation and threshold iteration in PCNN model has not been resolved yet. This paper combined 1-dimensional Maximal Correlative Criterion with 2-dimensional Maximal Correlative Criterion to estimate neuron parameters, achieved the automation of image segmentation and reduced the complexity of computing. Simulation results showed that the algorithm has prominent improvement in image segmentation effect and computing complexity and has general applicability compared to relevant literatures.
机译:脉冲耦合神经网络(PCNN)是一种新一代人工神经网络,具有生物学背景,体现了图像分割的优异性能。但是,尚未解决PCNN模型中参数估计和阈值迭代的问题。本文与二维最大相关标准组合了二维的最大相关标准,以估计神经元参数,实现了图像分割的自动化,降低了计算的复杂性。仿真结果表明,与相关文献相比,该算法对图像分割效果和计算复杂性具有突出的改进,并且具有一般适用性。

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