Paper
13 April 2018 Compressed normalized block difference for object tracking
Yun Gao, Dengzhuo Zhang, Donglan Cai, Hao Zhou, Ge Lan
Author Affiliations +
Proceedings Volume 10696, Tenth International Conference on Machine Vision (ICMV 2017); 106960K (2018) https://doi.org/10.1117/12.2310117
Event: Tenth International Conference on Machine Vision, 2017, Vienna, Austria
Abstract
Feature extraction is very important for robust and real-time tracking. Compressive sensing provided a technical support for real-time feature extraction. However, all existing compressive tracking were based on compressed Haar-like feature, and how to compress many more excellent high-dimensional features is worth researching. In this paper, a novel compressed normalized block difference feature (CNBD) was proposed. For resisting noise effectively in a highdimensional normalized pixel difference feature (NPD), a normalized block difference feature extends two pixels in the original formula of NPD to two blocks. A CNBD feature can be obtained by compressing a normalized block difference feature based on compressive sensing theory, with the sparse random Gaussian matrix as the measurement matrix. The comparative experiments of 7 trackers on 20 challenging sequences showed that the tracker based on CNBD feature can perform better than other trackers, especially than FCT tracker based on compressed Haar-like feature, in terms of AUC, SR and Precision.
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Yun Gao, Dengzhuo Zhang, Donglan Cai, Hao Zhou, and Ge Lan "Compressed normalized block difference for object tracking", Proc. SPIE 10696, Tenth International Conference on Machine Vision (ICMV 2017), 106960K (13 April 2018); https://doi.org/10.1117/12.2310117
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KEYWORDS
Compressed sensing

Feature extraction

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