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RGB-D Segmentation For 3-D Geometry Enhanced Superpixels Using Graph-based Method

Posted on:2015-07-03Degree:MasterType:Thesis
Country:ChinaCandidate:Z Q GanFull Text:PDF
GTID:2348330485493776Subject:Information and Communication Engineering
Abstract/Summary:PDF Full Text Request
With the advances of depth sensing technologies, color image plus depth information(referred to as RGB-D data hereafter) is more and more popular for comprehensive description of 3-D scenes. This paper proposes a two-stage segmentation method for RGB-D data: 1) oversegmentation by 3-D geometry enhanced superpixels; and 2) graph-based merging with label cost from superpixels.In the oversegmentation stage, 3-D geometrical information is reconstructed from the depth map. Then, a Kmeans-like clustering method is applied to the RGB-D data for oversegmentation using an 8-D distance metric constructed from both color and 3-D geometrical information. In the merging stage, treating each superpixel as a node, a graph-based model is set up to relabel the superpixels into semantically-coherent segments. In the graph-based model, RGB-D proximity, texture similarity, and boundary continuity are incorporated into the smoothness term to exploit the correlations of neighboring superpixels. To obtain a compact labeling, the label term is designed to penalize labels linking to similar superpixels that likely belong to the same object.Both the proposed 3-D geometry enhanced superpixel clustering method and the graph-based merging method from superpixels are evaluated by qualitative and quantitative results. By the fusion of color and depth information, the proposed method achieves superior segmentation performance over several state-of-the-art algorithms.
Keywords/Search Tags:RGB-D data, Superpixels, Segmentation, Graph cut, Energy minimization
PDF Full Text Request
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