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Similarity Fusion for Visual Tracking
by
Bai, Xiang
, Zhou, Yu
, Latecki, Longin Jan
, Liu, Wenyu
in
Algorithms
/ Artificial Intelligence
/ Candidates
/ Computer Imaging
/ Computer Science
/ Computer vision
/ Diffusion
/ Distance learning
/ Image Processing and Computer Vision
/ Mathematical analysis
/ Neighborhoods
/ Pattern Recognition
/ Pattern Recognition and Graphics
/ Similarity
/ Similarity measures
/ State of the art
/ Studies
/ Template matching
/ Tracking
/ Tracking control systems
/ Vision
/ Vision systems
/ Visual
2016
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Similarity Fusion for Visual Tracking
by
Bai, Xiang
, Zhou, Yu
, Latecki, Longin Jan
, Liu, Wenyu
in
Algorithms
/ Artificial Intelligence
/ Candidates
/ Computer Imaging
/ Computer Science
/ Computer vision
/ Diffusion
/ Distance learning
/ Image Processing and Computer Vision
/ Mathematical analysis
/ Neighborhoods
/ Pattern Recognition
/ Pattern Recognition and Graphics
/ Similarity
/ Similarity measures
/ State of the art
/ Studies
/ Template matching
/ Tracking
/ Tracking control systems
/ Vision
/ Vision systems
/ Visual
2016
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Do you wish to request the book?
Similarity Fusion for Visual Tracking
by
Bai, Xiang
, Zhou, Yu
, Latecki, Longin Jan
, Liu, Wenyu
in
Algorithms
/ Artificial Intelligence
/ Candidates
/ Computer Imaging
/ Computer Science
/ Computer vision
/ Diffusion
/ Distance learning
/ Image Processing and Computer Vision
/ Mathematical analysis
/ Neighborhoods
/ Pattern Recognition
/ Pattern Recognition and Graphics
/ Similarity
/ Similarity measures
/ State of the art
/ Studies
/ Template matching
/ Tracking
/ Tracking control systems
/ Vision
/ Vision systems
/ Visual
2016
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Journal Article
Similarity Fusion for Visual Tracking
2016
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Overview
Multiple features’ integration and context structure of unlabeled data have proven their effectiveness in enhancing similarity measures in many applications of computer vision. However, in similarity based object tracking, integration of multiple features has been rarely studied. In contrast to conventional tracking approaches that utilize pairwise similarity for template matching, our approach contributes in two different aspects. First, multiple features are integrated into a unified similarity to enhance the discriminative ability of similarity measurements. Second, the neighborhood context of the samples in forthcoming frame are employed to further improve the measurements. We utilize a diffusion process on a tensor product graph to achieve these goals. The obtained approach is validated on numerous challenging video sequences, and the experimental results demonstrate that it outperforms state-of-the-art t racking methods.
Publisher
Springer US,Springer Nature B.V
Subject
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