Abstract

Fuzzy clustering algorithm (FCM) can be directly used to segment images, it takes no account of the neighborhood information of the current pixel and does not have a robust segmentation noise suppression. Fuzzy Local Information C-means Clustering (FLICM) is a widely used robust segmentation algorithm, which combines spatial information with the membership degree of adjacent pixels. In order to further improve the robustness of FLICM algorithm, non-local information is embedded into FLICM algorithm and a fuzzy C-means clustering algorithm has local and non-local information (FLICMLNLI) is obtained. When calculating distance from pixel to cluster center, FLICMLNLI algorithm considers two distances from current pixel and its neighborhood pixels to cluster center. However, the algorithm gives the same weight to two different distances, which incorrectly magnifies the importance of neighborhood information in calculating the distance, resulting in unsatisfactory image segmentation effects and loss of image details. In order to solve this problem, we raise an improved self-learning weighted fuzzy algorithm, which directly obtains different weights in distance calculation through continuous iterative self-learning, then the distance metric with the weights obtained from self-learning is embedded in the objective function of the fuzzy clustering algorithm in order to improve the segmentation performance and robustness of the algorithm. A large number of experiments on different types of images show that the algorithm can not only suppress the noise but also retain the details in the image, the effect of segmenting complex noise images is better, and it provides better image segmentation results than the existing latest fuzzy clustering algorithms.

Highlights

  • With the rapid development of computer technology, digital image technology has spread to industrial inspection, environmental monitoring, military and space exploration and other multidisciplinary fields, making image processing technology attract the attention of many domestic and foreign scholars [1]

  • The segmentation results of the improved algorithm and Fuzzy clustering algorithm (FCM), BCFCM, EnFCM, Fuzzy Local Information Cmeans Clustering (FLICM) and FLICMLNLI are compared

  • Image segmentation has been an active area of research in the fields of computer vision and pattern recognition for the past two decades

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Summary

Introduction

With the rapid development of computer technology, digital image technology has spread to industrial inspection, environmental monitoring, military and space exploration and other multidisciplinary fields, making image processing technology attract the attention of many domestic and foreign scholars [1]. The traditional Fuzzy Mean Clustering(FCM) [27, 28] algorithm proposed by Dunn has been widely used in image segmentation. The BCFCM algorithm can achieve better segmentation results, each iteration needs to calculate the neighborhood information of the pixel, which reduces the segmentation efficiency of the BCFCM algorithm In response to this situation, Chen and Zhang [30] proposed FCM s1 and FCM s2. It is difficult to determine the optimal parameters because the parameters depend heavily on noise, but the type and intensity of noise are unknown in advance For this reason, Cai et al [32] combined local spatial information and pixel gray features, introduced new factors to obtain new linear weighted sum images, and proposed a fast-generalized fuzzy C-means clustering algorithm(FGFCM). Krinidis and Chatzis [33] proposed fuzzy local information mean clustering(FLICM) with a certain adaptive ability, which integrates spatial information to construct local fuzzy factors to ensure noise sensitivity and preservation of details

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