2019
DOI: 10.1109/tfuzz.2018.2889018
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Superpixel-Based Fast Fuzzy C-Means Clustering for Color Image Segmentation

Abstract: A great number of improved fuzzy c-means (FCM) clustering algorithms have been widely used for grayscale and color image segmentation. However, most of them are timeconsuming and unable to provide desired segmentation results for color images due to two reasons. The first one is that the incorporation of local spatial information often causes a high computational complexity due to the repeated distance computation between clustering centers and pixels within a local neighboring window. The other one is that a … Show more

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Cited by 248 publications
(157 citation statements)
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“…Based on the superpixel result of an image, one can use a pixel to replace all pixels in a superpixel area to efficiently reduce the number of pixels in an image. Motivated by this, Lei et al proposed SFFCM [23] for color image segmentation. SFFCM addresses two difficulties existing in clustering algorithms for color image segmentation.…”
Section: Superpixel Image Segmentation Results the Original Imagementioning
confidence: 99%
See 3 more Smart Citations
“…Based on the superpixel result of an image, one can use a pixel to replace all pixels in a superpixel area to efficiently reduce the number of pixels in an image. Motivated by this, Lei et al proposed SFFCM [23] for color image segmentation. SFFCM addresses two difficulties existing in clustering algorithms for color image segmentation.…”
Section: Superpixel Image Segmentation Results the Original Imagementioning
confidence: 99%
“…Fig. 6 shows superpixel results provided by different superpixel algorithms such as SLIC [41], DBSCAN [42], LSC [43], GMMSP [44], HS [45], and MMGR-WT [23]. Note that each of SLIC, DBSCAN, LSC, and HS requires one parameter, i.e., the number of superpixel area; GMMSP also requires one parameter that is the size of areas; but MMGR-WT needs two parameters that are the initial structuring element denoted by r 1 and the minimal threshold error denoted by η.…”
Section: A Decision-graph On Superpixel Imagesmentioning
confidence: 99%
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“…FCM clustering is derived based on the idea of uncertainty of belonging, using a membership grading, and can be more instinctive in comparison to hard clustering [43]. Lei et al [44] presented a Superpixel-based Fast FCM algorithm (SFFCM) for color-based image segmentation. Through the proposed algorithm, watershed transformation based on multi-scale morphological reconstruction integrated the color histogram of superpixel results in the objective function of FCM to improve the clustering result and decrease computational time.…”
Section: Superpixel-based Fuzzy C-means Clusteringmentioning
confidence: 99%