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Trajectory-Based Video Retrieval Using Dirichlet Process Mixture Models
Author(s) -
Xuelong Li,
Weiming Hu,
Z. Zhang,
Xiaofeng Zhang,
Guan Luo
Publication year - 2008
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.22.106
Subject(s) - hierarchical dirichlet process , computer science , latent dirichlet allocation , trajectory , scalability , topic model , probabilistic logic , dirichlet process , process (computing) , matching (statistics) , artificial intelligence , data mining , machine learning , algorithm , pattern recognition (psychology) , bayesian probability , mathematics , statistics , database , physics , astronomy , operating system
In this paper, we present a trajectory-based video retrieval framework using Dirichlet process mixture models. The main contribution of this framework is four-fold. (1) We apply a Dirichlet process mixture model (DPMM) to unsupervised trajectory learning. DPMM is a countably infinite mixture model with its components growing by itself. (2) We employ a time-sensitive Dirichlet process mixture model (tDPMM) to learn trajectories’ time-series characteristics. Furthermore, a novel likelihood estimation algorithm for tDPMM is proposed for the first time. (3) We develop a tDPMM-based probabilistic model matching scheme, which is empirically shown to be more error-tolerating and is able to deliver higher retrieval accuracy than the peer methods in the literature. (4) The framework has a nice scalability and adaptability in the sense that when new cluster data are presented, the framework automatically identifies the new cluster information without having to redo the training. Theoretic analysis and experimental evaluations against the state-of-the-art methods demonstrate the promise and effectiveness of the framework.

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