Authors
Ying Wu, Ting Yu
Publication date
2006/5
Journal
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Volume
28
Issue
5
Pages
753-765
Publisher
IEEE
Description
The large shape variability and partial occlusions challenge most object detection and tracking methods for nonrigid targets such as pedestrians. This paper presents a new approach based on a two-layer statistical field model that characterizes the prior of the complex shape variations as a Boltzmann distribution and embeds this prior and the complex image likelihood into a Markov field. A probabilistic variational analysis of this model reveals a set of fixed-point equations characterizing the equilibrium of the field. It leads to computationally efficient methods for calculating the image likelihood and for training the model. Based on that, effective algorithms for detecting nonrigid objects are developed. This new approach has several advantages. First, it is intrinsically suitable for capturing local nonrigidity. In addition, due to the distributed likelihood, this approach is robust to partial occlusions. Moreover, the two-layer …
Total citations
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Scholar articles
Y Wu, T Yu - IEEE transactions on pattern analysis and machine …, 2006
Y Wu, T Yu, G Hua - 2005 IEEE Computer Society Conference on Computer …, 2005