Fusion of Multiple Camera Views for Kernel-Based 3D Tracking

A. Tyagi, G. Potamianos, James W. Davis, Stephen M. Chu
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引用次数: 29

Abstract

We present a computer vision system to robustly track an object in 3D by combining evidence from multiple calibrated cameras. Its novelty lies in the proposed unified approach to 3D kernel based tracking, that amounts to fusing the appearance features from all available camera sensors, as opposed to tracking the object appearance in the individual 2D views and fusing the results. The elegance of the method resides in its inherent ability to handle problems encountered by various 2D trackers, including scale selection, occlusion, view-dependence, and correspondence across different views. We apply the method on the CHIL project database for tracking the presenter¿s head during lectures inside smart rooms equipped with four calibrated cameras. As compared to traditional 2D based mean shift tracking approaches, the proposed algorithm results in 35% relative reduction in overall 3D tracking error and a 70% reduction in the number of tracker re-initializations.
基于核的三维跟踪多摄像机视图融合
我们提出了一种计算机视觉系统,通过结合多个校准相机的证据来鲁棒地跟踪3D物体。它的新颖之处在于提出了统一的基于3D内核的跟踪方法,这相当于融合来自所有可用相机传感器的外观特征,而不是在单个2D视图中跟踪物体外观并融合结果。该方法的优雅之处在于其固有的处理各种2D跟踪器遇到的问题的能力,包括尺度选择、遮挡、视图依赖和不同视图之间的对应。我们将该方法应用于CHIL项目数据库,用于在配有四个校准摄像机的智能房间内跟踪讲者的头部。与传统的基于2D的平均位移跟踪方法相比,该算法的总体3D跟踪误差相对降低了35%,跟踪器重新初始化次数减少了70%。
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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