Matching Maximally Stable Extremal Regions Using Edge Information and the Chamfer Distance Function

Computer and Robot Vision(2010)

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摘要
We consider the problem of image recognition using local features. We present a method for matching Maximally Stable Extremal Regions using edge information and the chamfer distance function. We represent MSERs using the Canny edges of their binary image representation in an affine normalized coordinate frame and find correspondences using chamfer matching. We evaluate the performance of our approach on a large number of data sets commonly used in the computer vision literature and we show that it is useful for matching images under large affine and viewpoint transformations as well as blurring, illumination changes and JPEG compression artifacts.
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关键词
jpeg compression artifact,chamfer distance function,matching maximally stable extremal,chamfer matching,computer vision literature,large affine,image recognition,large number,canny edge,maximally stable extremal,binary image representation,edge information,pixel,computer vision,edge detection,object recognition,feature extraction,mathematical model,robustness,distance function,binary image
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