Efficient segmentation of degraded images by a neuro-fuzzy classifier

R. Castellanos, S. Mitra
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引用次数: 2

Abstract

The segmentation of degraded images has always been a difficult problem to solve. Efficient object extraction from noisy images can be achieved by neuro-fuzzy clustering algorithms where noise pixels are identified during the clustering process and assigned low weights to avoid their degradation effect on prototype validity. We present a new approach to noise reduction prior to segmentation by using a two-step process named the AFLC-median process. This new two-step process has been specifically tailored to remove speckle noise. The first step is to use an AFLC (adaptive fuzzy leader clustering) network that has been designed to follow leader clustering using a hybrid neuro-fuzzy model developed by integrating a modified ART-1 model with fuzzy c-means (FCM). This integration provides a powerful, yet fast method for recognizing embedded data structure. In speckled imagery, AFLC is used to isolate the speckle noise pixels by segmenting the image into several clusters controlled by a vigilance parameter. Once the speckles have been identified, a median filter is used, centered on each speckle noise pixel. The resulting image, after undergoing the AFLC-median process, demonstrates a reduction in speckle noise whilst retaining sharp edges for improved segmentation.
神经模糊分类器对退化图像的有效分割
退化图像的分割一直是一个难以解决的问题。神经模糊聚类算法在聚类过程中对噪声像素进行识别,并赋予低权重以避免其对原型有效性的退化影响,从而实现对噪声图像的高效目标提取。我们提出了一种新的方法,在分割之前使用一种名为aflc -中值过程的两步过程来降噪。这种新的两步工艺专门用于去除斑点噪声。第一步是使用AFLC(自适应模糊领导者聚类)网络,该网络被设计为遵循领导者聚类,使用通过将改进的ART-1模型与模糊c-means (FCM)相结合而开发的混合神经模糊模型。这种集成为识别嵌入式数据结构提供了一种强大而快速的方法。在斑点图像中,AFLC通过将图像分割成由警戒参数控制的多个聚类来隔离斑点噪声像素。一旦斑点被识别,中值滤波器被使用,以每个斑点噪声像素为中心。经过aflc -中值处理后,得到的图像显示了斑点噪声的减少,同时保留了锐利的边缘,以改进分割。
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