A Meta-Heuristic Parameter Selector Based Support Vector Machine for Human Tracking

Zhenyuan Xu, Chao Xu, J. Watada, Lihan Hu
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引用次数: 1

Abstract

Human tracking is one of the most important researches in computer vision. It is quite useful for many applications, such as surveil- lance systems and smart vehicle systems. It is also an important basic step for content analysis for behavior recognition and target detection. Due to the variations in human positions, complicated backgrounds and environmental conditions, human tracking remains challenging work. In particular, difficulties caused by environment and background such as occlusion and noises should be solved. Also, real-time human tracking now seems a critical step in intelligent video surveillance systems because of its huge computational workload. In this paper we propose a Particle Swarm Optimization based Support Vector Machine (PSO-SVM) to overcome these problems. First, we finish the preliminary human tracking step in several frames based on some filters such as particle filter and Kalman filter. Second, for each newly come frame need to be processed, we use the proposed PSO-SVM to process the previous frames as a regression frame work, based on this regression frame work, an estimated location of the target will be calculated out. Third, we process the newly come frame based on the particle filter and calculate out the target location as the basic target location. Finally, based on comparison analysis between basic target location and estimated target location, we can get the tracked target location. Experiment results on several videos will show the effectiveness and robustness of the proposed method.
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基于元启发式参数选择器的支持向量机人体跟踪
人体跟踪是计算机视觉领域的重要研究方向之一。它在监视系统和智能车辆系统等许多应用中都非常有用。它也是行为识别和目标检测的内容分析的重要基础步骤。由于人体位置的变化,复杂的背景和环境条件,人体跟踪仍然是一项具有挑战性的工作。特别是要解决遮挡、噪声等环境和背景造成的困难。此外,由于其巨大的计算工作量,实时人体跟踪现在似乎是智能视频监控系统的关键一步。本文提出了一种基于粒子群优化的支持向量机(PSO-SVM)来克服这些问题。首先,我们基于粒子滤波和卡尔曼滤波等滤波器在几帧内完成初步的人体跟踪步骤。其次,对于每一个需要处理的新帧,我们使用所提出的PSO-SVM将之前的帧作为回归框架进行处理,基于该回归框架计算出目标的估计位置。第三,基于粒子滤波对新帧进行处理,计算出目标位置作为基本目标位置;最后,通过对基本目标位置和估计目标位置的比较分析,得到跟踪目标位置。在多个视频上的实验结果表明了该方法的有效性和鲁棒性。
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