GPU-based chromatic co-occurrence matrices for tracking moving objects

被引:0
|
作者
Issam Elafi
Mohamed Jedra
Noureddine Zahid
机构
[1] Mohammed V University,Laboratory of Conception and Systems (Electronics, Signals, and Informatics), Faculty of Science
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关键词
Chromatic co-occurrence matrices; Particle filter; Real time; GPU; Embedded system;
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学科分类号
摘要
Generally, a good tracking system requires a huge computation time to localize, with accuracy, the target object. For real-time tracking applications, the running time is a critical factor. In this paper, a GPU implementation of the chromatic co-occurrence matrices (CCM) tracking system is proposed. Indeed, the descriptors based on CCM help to improve the accuracy of the tracking. However, they require a long computation time. To overcome this limitation, a parallel implementation of these matrices based on GPU is incorporated to the tracker. The developed algorithm is then integrated into an embedded system to build a real-time autonomous embedded tracking system. The experimental results show a speed up of 150% in the GPU version of the tracker compared to the CPU version.
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页码:1197 / 1210
页数:13
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