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An Occlusion Robust Likelihood Integration Method for Multi-Camera People Head Tracking

机译:多摄像机人头部跟踪的遮挡鲁棒似然集成方法

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摘要

This paper presents a novel method for human head tracking using multiple cameras. Most existing methods estimate 3D target position according to 2D tracking results at different viewpoints. This framework can be easily affected by the inconsistent tracking results on 2D images, which leads 3D tracking failure. For solving this problem, an extension of Condensation using multiple images has been proposed. The method generates many hypotheses on a target (human head) in 3D space and estimates the likelihood of each hypothesis by integrating viewpoint dependent likelihood values of 2D hypotheses projected onto image planes. In theory, viewpoint dependent likelihood values should be integrated by multiplication, however, it is easily affected by occlusions. Thus we investigate this problem and propose a novel likelihood integration method in this paper and implemented a prototype system consisting of six sets of a PC and a camera. We confirmed the robustness against occlusions.
机译:本文提出了一种使用多台摄像机进行人头跟踪的新方法。大多数现有方法根据不同视点的2D跟踪结果估算3D目标位置。该框架很容易受到2D图像上不一致的跟踪结果的影响,从而导致3D跟踪失败。为了解决该问题,已经提出了使用多个图像的冷凝的扩展。该方法在3D空间中的目标(人头)上生成许多假设,并通过对投影到图像平面上的2D假设的视点相关似然值进行积分来估计每个假设的可能性。从理论上讲,视点相关的似然值应通过相乘来积分,但是它很容易受到遮挡的影响。因此,我们研究了这个问题,并在本文中提出了一种新颖的似然积分方法,并实现了由六套PC和一台摄像机组成的原型系统。我们确认了抗阻塞的鲁棒性。

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