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基于多模型的实时压缩跟踪算法
引用本文:张建明,金晓康,吴宏林,伍悠.基于多模型的实时压缩跟踪算法[J].电子与信息学报,2018,40(10):2373-2380.
作者姓名:张建明  金晓康  吴宏林  伍悠
基金项目:国家自然科学基金(61402053, 61772454, 61811530332),湖南省教育厅科学研究重点项目(16A008)
摘    要:目标跟踪易受光照、遮挡、尺度、背景及快速运动等因素的影响,还要求较高的实时性。目标跟踪中基于压缩感知的跟踪算法实时性好,但目标外观变化较大时跟踪效果不理想。该文基于压缩感知的框架提出多模型的实时压缩跟踪算法(MMCT),采用压缩感知来降低跟踪过程产生的高维特征,保证实时性能;通过判断前两帧的分类器最大分类分数的差值来选择最合适的模型,提高了定位的准确性;提出新的模型更新策略,按照决策分类器的不同采用固定或动态的学习率,提高了分类精度。MMCT引入的多模型没有增加计算负担,表现出优异的实时性能。实验结果表明,MMCT算法能够很好地适应光照、遮挡、复杂背景及平面旋转的情况。

关 键 词:目标跟踪    压缩感知    实时    多模型    动态学习率
收稿时间:2017-11-30

Multi-model Real-time Compressive Tracking
Jianming ZHANG,Xiaokang JIN,Honglin WU,You WU.Multi-model Real-time Compressive Tracking[J].Journal of Electronics & Information Technology,2018,40(10):2373-2380.
Authors:Jianming ZHANG  Xiaokang JIN  Honglin WU  You WU
Affiliation:1.Hunan Provincial Key Laboratory of Intelligent Processing of Big Data on Transportation, Changsha University of Science and Technology, Changsha 410114, China2.School of Computer and Communication Engineering, Changsha University of Science and Technology, Changsha 410114, China
Abstract:Object tracking is easily influenced by illumination, occlusion, scale, background clutter, and fast motion, and it requires higher real-time performance. The object tracking algorithm based on compressive sensing has a better real-time performance but performs weakly in tracking when object appearance is changed greatly. Based on the framework of compressive sensing, a Multi-Model real-time Compressive Tracking (MMCT) algorithm is proposed, which adopts the compressive sensing to decrease the high dimensional features for the tracking process and to satisfy the real-time performance. The MMCT algorithm selects the most suitable classifier by judging the maximum classification score difference of classifiers in the previous two frames, and enhances the accuracy of location. The MMCT algorithm also presents a new model update strategy, which employs the fixed or dynamic learning rates according to the differences of decision classifiers and improves the precision of classification. The multi-model introduced by MMCT does not increase the computational burden and shows an excellent real-time performance. The experimental results indicate that the MMCT algorithm can well adapt to illumination, occlusion, background clutter and plane-rotation.
Keywords:
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