Model based training, detection and pose estimation of texture-less 3d objects in heavily cluttered scenes

ACCV (1)(2012)

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摘要
We propose a framework for automatic modeling, detection, and tracking of 3D objects with a Kinect. The detection part is mainly based on the recent template-based LINEMOD approach [1] for object detection. We show how to build the templates automatically from 3D models, and how to estimate the 6 degrees-of-freedom pose accurately and in real-time. The pose estimation and the color information allow us to check the detection hypotheses and improves the correct detection rate by 13% with respect to the original LINEMOD. These many improvements make our framework suitable for object manipulation in Robotics applications. Moreover we propose a new dataset made of 15 registered, 1100+ frame video sequences of 15 various objects for the evaluation of future competing methods.
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关键词
cluttered scene,recent template-based linemod approach,detection part,object detection,original linemod,correct detection rate,detection hypothesis,object manipulation,automatic modeling,various object,robotics application,pose estimation
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