Semantic stereo: Integrating piecewise planar stereo with segmentation and classification

Information Science and Technology(2014)

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摘要
Piecewise planar model for stereo matching can overcome the challenges presented by poorly textured surfaces. Lots of works employ color segmentation cues to build piecewise planar model. However, segmentation is not sufficient to represent the content-consistency, since segments are usually too small or too messy to ensure pixels from the same object surface to be assigned to the same disparity layer. To obtain more compact piecewise planar models for urban scenes, in this work, a two-layer (pixel-wise and semantic-piecewise) graph structure, which incorporates cues from image segmentation and semantic classification, is proposed. One of the graph layers models pixel color-consistency in image pairs, and the other models the disparity smoothness between image segments of the same object according to semantic classification. Experiments on different urban scenes justify the efficiency of our method.
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关键词
graph theory,image classification,image colour analysis,image matching,image resolution,image segmentation,stereo image processing,color segmentation cues,compact piecewise planar models,disparity layer,image pairs,piecewise planar stereo,pixel color-consistency,pixel-wise graph structure,semantic classification,semantic stereo,semantic-piecewise graph structure,stereo matching,two-layer graph structure,piecewise planar model,computer vision,classification algorithms,stereo vision,semantics
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