access icon free Adaptive image segmentation method based on the fuzzy c-means with spatial information

This study presents an adaptive image segmentation method based on the fuzzy c-means with spatial information (FCM_S). First, the advantages of the local FCM_S over the global FCM_S and its segmentation characteristics are introduced, on the basis of which, the accumulated local FCM_S is proposed to classify each pixel in an image by using information from different local windows that contain them. The local window size is calculated automatically, and the classification results of all pixels are stored together in the accumulated result. The grey levels of the background and the object pixels in the accumulated image, which is converted from the accumulated result, are distributed around 0 and the maximal grey level. Thus, it can be segmented by the grey level where the change rate of the count of object pixels reaches the minimum. Experiments are performed on 16 images from the Weizmann's database, as well as two real-world and four synthetic images. The results validated that the proposed method can segment images with inhomogeneity well and can gain better area overlap measure when compared with some new segmentation methods. Moreover, the proposed method is parameterless.

Inspec keywords: image classification; fuzzy set theory; pattern clustering; image segmentation

Other keywords: Weizmann database; adaptive image segmentation method; area overlap measure; pixel classification; global FCM_S; synthetic images; local FCM_S; fuzzy c-means with spatial information; local window size; maximal grey level; object pixels

Subjects: Computer vision and image processing techniques; Combinatorial mathematics; Image recognition; Combinatorial mathematics

http://iet.metastore.ingenta.com/content/journals/10.1049/iet-ipr.2017.0760
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