Partially supervised clustering for image segmentation

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摘要

All clustering algorithms process unlabeled data and, consequently, suffer from two problems: (P1) choosing and validating the correct number of clusters and (P2) insuring that algorithmic labels correspond to meaningful physical labels. Clustering algorithms such as hard and fuzzy c-means, based on optimizing sums of squared errors objective functions, suffer from a third problem: (P3) a tendency to recommend solutions that equalize cluster populations. The semi-supervised c-means algorithms introduced in this paper attempt to overcome these problems domains where a few data from each clas can be labeled. Segmentation of magnetic resonance images is a problem of this type and we use it to illustrate the new algorithm. Our examples show that the semi-supervised approach provides MRI segmentations that are superior to ordinary fuzzy c-means and to the crisp k-nearest neighbor rule and further, that the new method ameliorates (P1)-(P3).

论文关键词:Cluster analysis,Fuzzy c-means,Image segmentation,Magnetic resonance images,Partial supervision

论文评审过程:Received 12 September 1994, Revised 25 June 1995, Accepted 15 August 1995, Available online 7 June 2001.

论文官网地址:https://doi.org/10.1016/0031-3203(95)00120-4