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A New Method of Semantic Feature Extraction for Medical Images Data

A New Method of Semantic Feature Extraction for Medical Images Data
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摘要 In order to overcome the disadvantages of color, shape and texture-based features definition for medical images, this paper defines a new kind of semantic feature and its extraction algorithm. We firstly use kernel density estimation statistical model to describe the complicated medical image data, secondly, define some typical representative pixels of images as feature and finally, take hill-climbing strategy of Artificial Intelligence to extract those semantic features. Results of a content-based medial image retrieve system show that our semantic features have better distinguishing ability than those color, shape and texture-based features and can improve the ratios of recall and precision of this system smartly. In order to overcome the disadvantages of color, shape and texture-based features definition for medical images, this paper defines a new kind of semantic feature and its extraction algorithm. We firstly use kernel density estimation statistical model to describe the complicated medical image data, secondly, define some typical representative pixels of images as feature and finally, take hill-climbing strategy of Artificial Intelligence to extract those semantic features. Results of a content-based medial image retrieve system show that our semantic features have better distinguishing ability than those color, shape and texture-based features and can improve the ratios of recall and precision of this system smartly.
出处 《Wuhan University Journal of Natural Sciences》 CAS 2006年第5期1152-1156,共5页 武汉大学学报(自然科学英文版)
基金 Supported by the National Natural Science Foun-dation of China(60572112) the Jiangsu High Education Natural Sci-ence Research Project (03KJD51002) the Fourth Group StudentResearch Project of Jiangsu University.
关键词 feature extraction kernel density estimation hill-climbing algorithm content-based image retrieve feature extraction kernel density estimation hill-climbing algorithm content-based image retrieve
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