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http://dx.doi.org/10.5391/IJFIS.2016.16.2.104

Adaptive Bayesian Object Tracking with Histograms of Dense Local Image Descriptors  

Kim, Minyoung (Department of Electronics & IT Media Engineering, Seoul National University of Science & Technology)
Publication Information
International Journal of Fuzzy Logic and Intelligent Systems / v.16, no.2, 2016 , pp. 104-110 More about this Journal
Abstract
Dense local image descriptors like SIFT are fruitful for capturing salient information about image, shown to be successful in various image-related tasks when formed in bag-of-words representation (i.e., histograms). In this paper we consider to utilize these dense local descriptors in the object tracking problem. A notable aspect of our tracker is that instead of adopting a point estimate for the target model, we account for uncertainty in data noise and model incompleteness by maintaining a distribution over plausible candidate models within the Bayesian framework. The target model is also updated adaptively by the principled Bayesian posterior inference, which admits a closed form within our Dirichlet prior modeling. With empirical evaluations on some video datasets, the proposed method is shown to yield more accurate tracking than baseline histogram-based trackers with the same types of features, often being superior to the appearance-based (visual) trackers.
Keywords
Computer vision; Object tracking; Bayesian methods; Dense local image descriptors;
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