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Colour image segmentation using fuzzy clustering techniques and competitive neural network

机译:基于模糊聚类和竞争神经网络的彩色图像分割

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This paper explains the task of segmenting any given colour image using fuzzy clustering algorithms and competitive neural network. The fuzzy clustering algorithms used are Fuzzy C means algorithm, Possibilistic Fuzzy C means. Image segmentation is the process of dividing the pixels into homogeneous classes or clusters so that items in the same class are as similar as possible and items in different classes are as dissimilar as possible. The most basic attribute for image segmentation is the luminance amplitude for a monochrome image and colour components for a colour image. Since there are more than 16 million colours available in any image and it is difficult to analyse the image on all of its colours, the likely colours are grouped together by means of image segmentation. For that purpose soft computing techniques namely Fuzzy C means algorithm (FCM), Possibilistic Fuzzy C means algorithm (PFCM) and competitive neural network (CNN) have been used. A self-estimation algorithm has been developed for determining the number of clusters. The images segmented by these three soft computing techniques are compared using image quality metrics: peak signal to noise ratio (PSNR) and compression ratio. The time taken for image segmentation is also used as a comparison parameter. The techniques have been tested with images of different size and resolution and the results obtained by CNN are proven to be better than the fuzzy clustering technique.
机译:本文介绍了使用模糊聚类算法和竞争神经网络分割任何给定彩色图像的任务。使用的模糊聚类算法是Fuzzy C均值算法,可能的Fuzzy C均值算法。图像分割是将像素分为同类或类的过程,以使同一类别中的项目尽可能相似,而不同类别中的项目则尽可能不相似。图像分割的最基本属性是单色图像的亮度幅度和彩色图像的颜色分量。由于任何图像中都有超过1600万种颜色可用,并且很难对图像的所有颜色进行分析,因此可能的颜色将通过图像分割的方式组合在一起。为此,已经使用了软计算技术,即模糊C均值算法(FCM),可能的模糊C均值算法(PFCM)和竞争神经网络(CNN)。已经开发了一种用于确定聚类数量的自估计算法。使用这三种软计算技术分割的图像使用图像质量指标进行比较:峰值信噪比(PSNR)和压缩率。图像分割所花费的时间也用作比较参数。该技术已经用不同大小和分辨率的图像进行了测试,并且CNN获得的结果被证明比模糊聚类技术更好。

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