Scale-invariant contour completion using conditional random fields

ICCV(2005)

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摘要
We present a model of curvilinear grouping using piece-wise linear representations of contours and a conditional random field to capture continuity and the frequency of different junction types. Potential completions are generated by building a constrained Delaunay triangulation (CDT) over the set of contours found by a local edge detector. Maximum likelihood parameters for the model are learned from human labeled ground truth. Using held out test data, we measure how the model, by incorporating continuity structure, improves boundary detection over the local edge detector. We also compare performance with a baseline local classifier that operates on pairs of edgels. Both algorithms consistently dominate the low-level boundary detector at all thresholds. To our knowledge, this is the first time that curvilinear continuity has been shown quantitatively useful for a large variety of natural images. Better boundary detection has immediate application in the problem of object detection and recognition
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关键词
maximum likelihood parameter,curvilinear continuity,low-level boundary detector,baseline local classifier,delaunay triangulation,maximum likelihood estimation,mesh generation,computational geometry,boundary detection,constrained delaunay triangulation,conditional random field,edge detection,better boundary detection,continuity structure,object detection,object recognition,curvilinear grouping,conditional random fields,piecewise linear representation,local edge detector,natural image,scale-invariant contour completion,maximum likelihood,scale invariance
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