Using maximum consistency context for multiple target association in wide area traffic scenes

Xinchu Shi,Peiyi Li, Haibin Ling,Weiming Hu

Acoustics, Speech and Signal Processing(2013)

Cited 32|Views29
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Abstract
Tracking multiple vehicles in wide area traffic scenes is challenging due to high target density, severe similar target ambiguity, and low frame rate. In this paper, we propose a novel spatio-temporal context model, named maximum consistency context (MCC), to leverage the discriminative power and robustness in the scenario. For a candidate association, its MCC is defined as the most consistent association in its neighborhood. Such a maximum selection picks the reliable neighborhood context information while filtering out noisy distraction. We tested the proposed context modeling on multi-target tracking using three challenging wide area motion sequences. Both quantitative and qualitative results show clearly the effectiveness of MCC, in comparison with algorithms that use no context and standard spatial context respectively.
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Key words
computer vision,natural scenes,surveillance,target tracking,MCC,context modeling,maximum consistency context,multiple target association,multiple vehicles tracking,multitarget tracking,neighborhood context information,spatio-temporal context model,standard spatial context,target density,wide area motion sequences,wide area traffic scenes,Context modeling,multi-target tracking,
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