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Online multi-person tracking with two-stage data association and online appearance model learning

机译:具有两阶段数据关联的在线多人跟踪和在线外观模型学习

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摘要

This study addresses the automatic multi-person tracking problem in complex scenes from a single, static, uncalibrated camera. In contrast with offline tracking approaches, a novel online multi-person tracking method is proposed based on a sequential tracking-by-detection framework, which can be applied to real-time applications. A two-stage data association is first developed to handle the drifting targets stemming from occlusions and people's abrupt motion changes. Subsequently, a novel online appearance learning is developed by using the incremental/decremental support vector machine with an adaptive training sample collection strategy to ensure reliable data association and rapid learning. Experimental results show the effectiveness and robustness of the proposed method while demonstrating its compatibility with real-time applications.
机译:这项研究解决了使用单个静态未经校准的摄像机在复杂场景中自动进行多人跟踪的问题。相对于离线跟踪方法,提出了一种基于逐次检测跟踪框架的在线多人在线跟踪方法,该方法可以应用于实时应用。首先开发了一个两阶段的数据关联,以处理由于遮挡和人们的突然运动变化而产生的漂移目标。随后,通过使用具有自适应训练样本收集策略的增量/递减支持向量机来开发新颖的在线外观学习,以确保可靠的数据关联和快速学习。实验结果表明了该方法的有效性和鲁棒性,同时证明了其与实时应用程序的兼容性。

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