Bibliography | Leibe, B.; Hetzel, G.; Levi, P.: Local Feature Histograms for Object Recognition from Range Images. University of Stuttgart, Faculty of Computer Science, Technical Report No. 2001/06. 8 pages, english.
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CR-Schema | I.2.10 (Vision and Scene Understanding)
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Keywords | 3D object recognition; range images; histograms |
Abstract | In this paper, we explore the use of local feature histograms for view-based recognition of free-form objects from range images. Our approach uses a set of local features that are easy to calculate and robust to partial occlusions. By combining them in a multidimensional histogram, we can obtain highly discriminative classifiers without having to solve a segmentation problem.
The system achieves above 91% recognition accuracy on a database of almost 2000 full-sphere views of 30 free-form objects, with only minimal space requirements. In addition, since it only requires the calculation of very simple features, it is extremely fast and can achieve real-time recognition performance.
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Full text and other links | PDF (626236 Bytes) PostScript (5524033 Bytes)
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Contact | hetzel@informatik.uni-stuttgart.de |
Department(s) | University of Stuttgart, Institute of Parallel and Distributed High-Performance Systems, Image Understanding
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Entry date | August 23, 2001 |
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