MST Segmentation for Content-Based Medical Image Retrieval

Wuhan(2009)

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Abstract
-This paper describes an improved segmentation algorithm based on Minimum Spanning Tree (MST) for content-based image retrieval system. MST segmentation is computationally efficient and captures both global and local image information, but it is prone to incur over-segmentation because of its neighbor system. To address this problem, an adaptive neighbor mode in the improved segmentation is defined by adding links between non-neighbor pixels of an image. The meaningful regions of an image are segmented automatically, and the region-based color features are exacted for the dominant segmented regions. The texture features are exacted using the Gabor filters, and are combined with the color features for retrieval The Experiments are performed using a medical database containing 370 images and the experimental results are shown and described finally.
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Key words
gabor filter,gabor filters,image segmentation,mst segmentation,minimum spanning tree,feature extraction,image retrieval,color feature extraction,texture feature extraction,adaptive neighbor mode,medical image retrieval,content-based retrieval,medical image processing,pixel,biomedical imaging
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