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Fast pose estimation with parameter sensitive hashing (2003)

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by Gregory Shakhnarovich , Paul Viola , Trevor Darrell
Venue:In ICCV
Citations:73 - 2 self
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BibTeX

@INPROCEEDINGS{Shakhnarovich03fastpose,
    author = {Gregory Shakhnarovich and Paul Viola and Trevor Darrell},
    title = {Fast pose estimation with parameter sensitive hashing},
    booktitle = {In ICCV},
    year = {2003},
    pages = {750--757}
}

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Abstract

Example-based methods are effective for parameter estimation problems when the underlying system is simple or the dimensionality of the input is low. For complex and high-dimensional problems such as pose estimation, the number of required examples and the computational complexity rapidly become prohibitively high. We introduce a new algorithm that learns a set of hashing functions that efficiently index examples relevant to a particular estimation task. Our algorithm extends a recently developed method for locality-sensitive hashing, which finds approximate neighbors in time sublinear in the number of examples. This method depends critically on the choice of hash functions; we show how to find the set of hash functions that are optimally relevant to a particular estimation problem. Experiments demonstrate that the resulting algorithm, which we call Parameter-Sensitive Hashing, can rapidly and accurately estimate the articulated pose of human figures from a large database of example images. 1.

Citations

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96 Reconstruction of articulated objects from point correspondences in a single image - Taylor
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48 Estimation by the nearest neighbor rule - Cover - 1968
33 An Appearance-Based Framework for 3D Hand Shape Classification and Camera Viewpoint Estimation - Athitsos, Sclaroff - 2002
25 The use of geometric histograms for model-based object recognition - Evans, Thacker, et al. - 1993
18 An Introduction to Kernel and Nearest-Neighbor Nonparametric Regression - Altman - 1992
12 Specialized mappings and the estimation of body pose from a single image - Rosales, Sclaroff - 2000
2 Mean shift based clustering in high dimnensions: A texture classification example - Georgescu, Shimshoni, et al. - 2003
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