Rectification, and Segmentation of Coplanar Repeated Patterns

Computer Vision and Pattern Recognition(2014)

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摘要
This paper presents a novel and general method for the detection, rectification and segmentation of imaged coplanar repeated patterns. The only assumption made of the scene geometry is that repeated scene elements are mapped to each other by planar Euclidean transformations. The class of patterns covered is broad and includes nearly all commonly seen, planar, man-made repeated patterns. In addition, novel linear constraints are used to reduce geometric ambiguity between the rectified imaged pattern and the scene pattern. Rectification to within a similarity of the scene plane is achieved from one rotated repeat, or to within a similarity with a scale ambiguity along the axis of symmetry from one reflected repeat. A stratum of constraints is derived that gives the necessary configuration of repeats for each successive level of rectification. A generative model for the imaged pattern is inferred and used to segment the pattern with pixel accuracy. Qualitative results are shown on a broad range of image types on which state-of-the-art methods fail.
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关键词
edge detection,image segmentation,coplanar repeated pattern detection,coplanar repeated pattern rectification,coplanar repeated pattern segmentation,geometric ambiguity reduction,linear constraints,pixel accuracy,planar Euclidean transformations,repeated scene elements,scene geometry,homgraphy,rectification,reflection,repeated pattern,rotation,segmentation,single-view geometry,symmetry
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