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An Adaptive Method for Image Filtering with Pulse-coupled Neural Networks

机译:用脉冲耦合神经网络进行图像滤波的自适应方法

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Pulse coupled neural network (PCNN) has a specific feature that the fire of one neuron can capture its adjacent neuron to fire due to their spatial proximity and intensity similarity. In this paper, it is indicated that this feature itself is a very good mechanism for image filtering when the image is damaged with pet and salt type noise (PASN). An adaptive filtering method, in which the noisy pixels are first located and then filtered based on the output of the PCNN is presented. The threshold function of a neuron in the PCNN is designed for random PASN and extreme PASN contaminated image respectively. The filtered image has no distortion for noisy pixels and only less mistiness for non-noisy pixels, compared with the conventional window-based filtering method. Excellent experimental results show great effectiveness and efficiency of the proposed method, especially for the heavily noise contaminated images.
机译:脉冲耦合神经网络(PCNN)具有一种特定的特征,即一个神经元的火焰由于其空间接近和强度相似性而捕获其相邻的神经元以射击。在本文中,表示该特征本身是一种非常好的机制,用于当图像用PET和盐型噪声(PASN)损坏时图像过滤。一种自适应滤波方法,其中呈现噪声像素首先定位,然后基于PCNN的输出来滤波。 PCNN中神经元的阈值函数分别设计用于随机PASN和极端PASN污染图像。与传统的基于窗口的滤波方法相比,滤波后的图像对噪声像素没有对噪声像素的失真并且仅对非噪声像素的误差较少。优异的实验结果表明了拟议方法的效果和效率,特别是对于众多噪声污染的图像。

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