Using social effects to guide tracking in complex scenes

A. French, Asad Naeem, I. Dryden, T. Pridmore
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引用次数: 15

Abstract

This paper presents a new methodology for improving the tracking of multiple targets in complex scenes. The new method,Motion Parameter Sharing, incorporates social motion information into tracking predictions. This is achieved by allowing a tracker to share motion estimates within groups of targets which have previously been moving in a coordinated fashion. The method is intuitive and, as well as aiding the prediction estimates, allows the implicit formation of 'social groups' of targets as a side effect of the process. The underlying reasoning and method are presented, as well as a description of how the method fits into the framework of a typical Bayesian tracking system. This is followed by some preliminary results which suggest the method is more accurate and robust than algorithms which do not incorporate the social information available in multiple target scenarios.
利用社会效应引导复杂场景的跟踪
本文提出了一种改进复杂场景中多目标跟踪的新方法。新的方法,运动参数共享,将社会运动信息纳入跟踪预测。这是通过允许跟踪器在先前以协调方式移动的目标组内共享运动估计来实现的。该方法是直观的,以及帮助预测估计,允许隐式形成的“社会群体”的目标,作为该过程的副作用。提出了基本的推理和方法,并描述了该方法如何适应典型贝叶斯跟踪系统的框架。随后的一些初步结果表明,该方法比不包含多个目标场景中可用的社会信息的算法更准确、更健壮。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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