Detecting occlusion and camouflage during visual tracking

T. Chandesa, Selangor Darul, Ehsan, Malaysia T Pridmore, A. Bargiela
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引用次数: 8

Abstract

Visual tracking is an important scientific problem; the human visual system is capable of tracking moving objects in a wide variety of situations. It is also of considerable practical importance; many actual and potential applications of visual tracking algorithms exist in domains such as surveillance, medicine, robotics and the media. Although many effective tracking algorithms exist, occlusion and camouflage remain a common problem. These can cause a tracker to become dissociated from its target, so that the data it produces is unrelated to the target's behaviour. We focus on the detection of occlusion and camouflage during particle filter-based tracking. We use a Gaussian Mixture Model of particle distribution, extracted via the EM algorithm, to investigate the effects of occlusion and camouflage on the particle set representing a given target. The information gained from this investigation informs the design of process-behaviour chart which alerts the tracker of the occurrence of occlusion or camouflage. Data produced by the process-behaviour chart is also used to map out the boundary of the interfering object, providing valuable information about the viewed environment.
在视觉跟踪中检测遮挡和伪装
视觉跟踪是一个重要的科学问题;人类的视觉系统能够在各种各样的情况下跟踪移动的物体。它也具有相当大的实际重要性;视觉跟踪算法在监控、医学、机器人和媒体等领域有许多实际和潜在的应用。虽然存在许多有效的跟踪算法,但遮挡和伪装仍然是常见的问题。这可能导致跟踪器与目标分离,因此它产生的数据与目标的行为无关。我们主要研究基于粒子滤波的跟踪过程中遮挡和伪装的检测。我们使用通过EM算法提取的粒子分布的高斯混合模型来研究遮挡和伪装对代表给定目标的粒子集的影响。从这次调查中获得的信息为过程行为图的设计提供了信息,该图可以提醒跟踪器发生遮挡或伪装。过程行为图产生的数据也用于绘制干扰对象的边界,提供有关所观察环境的有价值的信息。
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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