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Evaluation of modified adaptive k-means segmentation algorithm 被引量:5
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作者 Taye Girma Debelee Friedhelm Schwenker +1 位作者 samuel rahimeto Dereje Yohannes 《Computational Visual Media》 CSCD 2019年第4期347-361,共15页
Segmentation is the act of partitioning an image into different regions by creating boundaries between regions.k-means image segmentation is the simplest prevalent approach.However,the segmentation quality is continge... Segmentation is the act of partitioning an image into different regions by creating boundaries between regions.k-means image segmentation is the simplest prevalent approach.However,the segmentation quality is contingent on the initial parameters(the cluster centers and their number).In this paper,a convolution-based modified adaptive k-means(MAKM)approach is proposed and evaluated using images collected from different sources(MATLAB,Berkeley image database,VOC2012,BGH,MIAS,and MRI).The evaluation shows that the proposed algorithm is superior to k-means++,fuzzy c-means,histogrambased k-means,and subtractive k-means algorithms in terms of image segmentation quality(Q-value),computational cost,and RMSE.The proposed algorithm was also compared to state-of-the-art learning-based methods in terms of IoU and MIoU;it achieved a higher MIoU value. 展开更多
关键词 CLUSTERING MODIFIED ADAPTIVE k-means(MAKM) SEGMENTATION Q-VALUE
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