Pattern Detection Using a New Haralick Quaternion Color Extraction Model and Support Vector Machine Classifier

Systems, Man, and Cybernetics(2013)

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摘要
There are many applications in image analysis where it is important to detect accurately patterns that include color and texture, e.g., plastic or concrete traffic barriers. This paper proposes a new method and extends a general machine vision approach for on-line pattern detection using color and textural information. Our proposed method includes the following steps: division of each image into sub-images, use of the Haralick and Binary Quaternion-Moment-Preserving methods to extract texture and color features, support vector machines for classification, and a post processing stage using clustering. The method was tested in two databases. The first one with three pattern types and the results yielded a detection rate of 96.4% with 14 false positives. The second database has nine pattern types and the results yielded a detection rate of 98.4% with 9 false positives. The results were compared advantageously with Haralick and BQMP methods separately.
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关键词
on-line pattern detection,extraction model,pattern detection,color feature,support vector machine classifier,new haralick quaternion color,false positive,detection rate,binary quaternion-moment-preserving method,new method,bqmp method,image analysis,pattern type,image classification,feature extraction,support vector machines,image texture
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