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Multiple Human Detection and Tracking by Using Multiple-Stage HOG Detector and PFGPDM

机译:使用多阶段HOG检测器和PFGPDM进行多人检测和跟踪

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摘要

Detection and tracking of a varying number of people is very essential in surveillance sensor systems. In the real applications, due to various human appearance and confusors, as well as various environmental conditions, multiple targets detection and tracking become even more challenging. In this paper, we proposed a new framework integrating a Multiple-Stage Histogram of Oriented Gradients (HOG) based human detector and the Particle Filter Gaussian Process Dynamical Model (PFGPDM) for multiple targets detection and tracking. The Multiple-Stage HOG human detector takes advantage from both the HOG feature set and the human motion cues. The detector enables the framework detecting new targets entering the scene as well as providing potential hypotheses for particle sampling in the PFGPDM. After processing the detection results, the motion of each new target is calculated and projected to the low dimensional latent space of the GPDM to find the most similar trained motion trajectory. In addition, the particle propagation of existing targets integrates both the motion trajectory prediction in the latent space of GPDM and the hypotheses detected by the HOG human detector. Experimental tests are conducted on the IDIAP data set. The test results demonstrate that the proposed approach can robustly detect and track a varying number of targets with reasonable run-time overhead and performance.
机译:在监视传感器系统中,检测和跟踪不同数量的人员非常重要。在实际应用中,由于各种人类外表和拥护者以及各种环境条件,多目标检测和跟踪变得更具挑战性。在本文中,我们提出了一个新的框架,该框架集成了基于多级梯度直方图(HOG)的人体检测器和粒子滤波高斯过程动力学模型(PFGPDM),用于多目标检测和跟踪。多阶段HOG人体检测器可从HOG功能集和人体运动提示中受益。该检测器使框架能够检测进入场景的新目标,并为PFGPDM中的粒子采样提供潜在的假设。处理完检测结果后,将计算每个新目标的运动并将其投影到GPDM的低维潜在空间中,以找到最相似的训练运动轨迹。此外,现有目标的粒子传播结合了GPDM潜在空间中的运动轨迹预测和HOG人类检测器检测到的假设。实验是在IDIAP数据集上进行的。测试结果表明,所提出的方法可以以合理的运行时开销和性能可靠地检测和跟踪各种目标。

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