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Open AccessArticle10.20965/jaciii.2010.p0645

Spatial Object Segmentation Using Stereo Images

Yong Hao,Lifeng He,Tsuyoshi Nakamura,Yuyan Chao,Hidenori Itoh-2010-09-20-Journal of Advanced Computational Intelligence and Intelligent Informatics
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TL;DRAbstract

The framework of our proposed for segmenting objects using spatial location information from stereo images. An efficient graph-based image segmentation algorithm within this framework for combining changes in optical features and physical location to segment reality scenes into perceptually and semantically uniform regions. Optical and physical location are extracted using k -means clustering, and we propose a rules table for combining optical and spatial features together. The performance of our proposed framework is demonstrated in a series of reality-scene images using experimental data from the Middlebury stereo image data (http://vision.middlebury.edu/stereo/data/).

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The framework of our proposed for segmenting objects using spatial location information from stereo images. An efficient graph-based image segmentation algorithm within this framework for combining changes in optical features and physical location to segment reality scenes into perceptually and semantically uniform regions. Optical and physical location are extracted using k -means clustering, and we propose a rules table for combining optical and spatial features together. The performance of our proposed framework is demonstrated in a series of reality-scene images using experimental data from the Middlebury stereo image data (http://vision.middlebury.edu/stereo/data/).

Keywords

Computer scienceArtificial intelligenceComputer visionSegmentationMarket segmentationImage segmentationCluster analysisSpatial analysis

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