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Wavelet Multiscale Products Based Genetic Fuzzy Clustering for Image Edge Detection Analysis

机译:基于小波多尺度产品的图像边缘检测分析基于基于遗传模糊聚类

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A new edge detection algorithm by combining multiscale wavelet technique and genetic fuzzy clustering algoithm is proposed in this paper (called WGFCA), which can realize edge detection of input image automatically. Based on the theory that signals and noise have different characters along wavelet decomposition scales, WGFCA firstly multiply the wavelet coefficient of input image at adjacent scales to enhance edge structure and suppress noise, then, in order to restrain noise further, WGFCA apply fuzzy median filter to the result obtained above. Finally, edge map of input image is obtained by the great unsupervised classifying technique-genetic fuzzy clustering based on an effective feature extraction algorithm. Experiment results demonstrated promising performance of the proposed edge detection algorithm
机译:在本文(称为WGFCA)中提出了一种通过组合多尺度小波技术和遗传模糊聚类算法的新的边缘检测算法,其可以自动实现输入图像的边缘检测。基于信号和噪声沿小波分解尺度具有不同字符的理论,WGFCA首先将输入图像的小波系数乘以在相邻的尺度上乘以增强边缘结构并抑制噪声,然后进一步抑制噪声,WGFCA应用模糊中值滤波器到上面获得的结果。最后,基于有效特征提取算法,通过巨大无监督的分类技术 - 基因模糊聚类获得输入图像的边缘图。实验结果表明了所提出的边缘检测算法的有希望的性能

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