Object recognition in RGBD images of cluttered environments using graph-based categorization with unsupervised learning of shape parts

Intelligent Robots and Systems(2013)

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摘要
We present an approach for object class learning using a part-based shape categorization in RGB-augmented 3D point clouds captured from cluttered indoor scenes with a Kinect-like sensor. A graph representation is used to detect and categorize object instances based on part-constellations found in scenes. No assumptions like objects being placed on planar surfaces or constraints on their poses are required. Our approach consists of the following steps: 1) a Mean-Shift-based over-segmentation of a point cloud into atomic patches; 2) use of topological and geometric features to merge surface-homogeneous atomic patches into super patches; 3) an unsupervised classification of these parts that allows to symbolically label distinctively unknown object parts by their surface-structural appearance; and finally, 4) a graph generation procedure that reflects the constellation of the detected parts from object instances of certain shape categories. Furthermore, an inference procedure is presented that processes extracted part constellations of a scene to detect and categorize object instances. Experiments with challenging, cluttered scenes show that the segmentation procedure provides salient parts of objects which lead to a good categorization performance using the graph-based constellation model concept.
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关键词
graph theory,image classification,image representation,image segmentation,image sensors,object detection,object recognition,unsupervised learning,Kinect-like sensor,RGB-augmented 3D point clouds,RGBD images,cluttered indoor scenes,distinctively unknown object part labelling,geometric features,graph generation procedure,graph representation,graph-based categorization,graph-based constellation model,mean-shift-based over-segmentation,object class learning,object instance categorization performance,object instance detection,object recognition,part-based shape categorization,part-constellations,super patches,surface-homogeneous atomic patches,surface-structural appearance,topological features,unsupervised classification
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