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3D Object Recognition from Range Images using Local Feature Histograms
Kauai, Hawaii December 08-December 14
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/CVPR.2001.9909882001 IEEE Computer Society Conference ...
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Günter Hetzel, University of Stuttgart
Bastian Leibe, ETH Zurich
Paul Levi, University of Stuttgart
Bernt Schiele, ETH Zurich
This paper explores a view-based approach to recognize free-form objects in range images. We are using a set of local features that are easy to calculate and robust to partial occlusions. By combining those features in a multidimensional histogram, we can obtain highly discriminant classifiers without the need for segmentation. Recognition is performed using either histogram matching or a probabilistic recognition algorithm. We compare the performance of both methods in the presence of occlusions and test the system on a database of almost 2000 full-sphere views of 30 free-form objects. The system achieves a recognition accuracy above 93% on ideal images, and of 89% with 20% occlusion.
Citation:
Günter Hetzel, Bastian Leibe, Paul Levi, Bernt Schiele, "3D Object Recognition from Range Images using Local Feature Histograms," cvpr, vol. 2, pp.394, 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'01) - Volume 2, 2001
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