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Published July 2003 | Published
Journal Article Open

Unsupervised learning of human motion

Abstract

An unsupervised learning algorithm that can obtain a probabilistic model of an object composed of a collection of parts (a moving human body in our examples) automatically from unlabeled training data is presented. The training data include both useful "foreground" features as well as features that arise from irrelevant background clutter - the correspondence between parts and detected features is unknown. The joint probability density function of the parts is represented by a mixture of decomposable triangulated graphs which allow for fast detection. To learn the model structure as well as model parameters, an EM-like algorithm is developed where the labeling of the data (part assignments) is treated as hidden variables. The unsupervised learning technique is not limited to decomposable triangulated graphs. The efficiency and effectiveness of our algorithm is demonstrated by applying it to generate models of human motion automatically from unlabeled image sequences, and testing the learned models on a variety of sequences.

Additional Information

© 2003 IEEE. Reprinted with permission. Manuscript received 27 Sept. 2002; revised 2 Mar. 2003; accepted 17 Mar. 2003. [Posted online: 2003-06-20] Recommended for acceptance by V. Pavlovic. Part of the work in this paper was published in the Proceedings of IEEE Conference on Computer Vision and Pattern Recognition '01 and NIPS '01. This work was funded by the US National Science Foundation Engineering Research Center for Neuromorphic Systems Engineering (CNSE) at Caltech (NSF9402726), and an Office of Navy Research grant N00014-01-1-0890 under the MURI program. The authors would like to thank Charless Fowlkes for bringing the Chow and Liu paper to their attention.

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August 22, 2023
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