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Detection of Multiple, Partially Occluded Humans in a Single Image by Bayesian Combination of Edgelet Part Detectors
Beijing, China October 17-October 20
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICCV.2005.74Tenth IEEE International Conference o ...
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Bo Wu, University of Southern California
Ram Nevatia, University of Southern California
This paper proposes a method for human detection in crowded scene from static images. An individual human is modeled as an assembly of natural body parts. We introduce edgelet features, which are a new type of silhouette oriented features. Part detectors, based on these features, are learned by a boosting method. Responses of part detectors are combined to form a joint likelihood model that includes cases of multiple, possibly inter-occluded humans. The human detection problem is formulated as maximum a posteriori (MAP) estimation. We show results on a commonly used previous dataset as well as new data-sets that could not be processed by earlier methods.
Citation:
Bo Wu, Ram Nevatia, "Detection of Multiple, Partially Occluded Humans in a Single Image by Bayesian Combination of Edgelet Part Detectors," iccv, vol. 1, pp.90-97, Tenth IEEE International Conference on Computer Vision (ICCV'05) Volume 1, 2005
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