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Images segmentation based on interval type-2 Fuzzy C-Means

机译:基于间隔Type-2模糊C-inse的图像分割

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Segmentation process helps to find region of interest in a particular image. The main goal is to make image more simple and meaningful. This work is an improvement of an existing method which is Fuzzy C-Means (FCM) to partitioning an image into several constituent components - type 2 Fuzzy C-Means-. First, membership function defined by Hamid R Tizhoosh is used to measure the image fuzziness. Second, new membership functions are proposed. The evaluation of adopted approaches was compared using the validity functions: Partition Coefficient Vpc, Partition Entropy Vpe and Peak Signal and Noise Ratio PSNR. The experimental results on real images prove that the proposed approaches are more accurate and robust than the standard FCM approach.
机译:分割过程有助于找到特定图像的感兴趣区域。主要目标是使图像更简单且有意义。这项工作是改进现有方法,该方法是模糊C-MEARY(FCM),用于将图像分配给几个组成部分 - 类型2模糊C-PLAY-。首先,使用Hamid R Tizhoosh定义的成员资格函数来测量图像模糊性。其次,提出了新的会员职能。使用有效性函数进行比较采用方法的评估:分区系数VPC,分区熵VPE和峰值信号和噪声比PSNR。实验结果证明了所提出的方法比标准的FCM方法更准确且稳健。

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