基于活动的无监督摄像机网络结构估计

Pierre Clarot, E. Ermis, Pierre-Marc Jodoin, Venkatesh Saligrama
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引用次数: 5

摘要

本文研究了无标定视觉传感器网络中的无监督拓扑重建问题。我们假设许多摄像机从任意和未知的位置、方向和缩放级别观察一个共同的场景,并证明了摄像机的外在矩阵和校准矩阵、基本矩阵和本质矩阵、单应性矩阵和相互之间的物理配置可以以无监督的方式估计。我们的方法依赖于在不同地点观察到的活动模式的相似性,以及基于这些活动模式的无监督匹配方法。所提出的方法适用于具有明显不同方向和变焦级别的摄像机,在这种情况下,许多现有方法都无法应用。我们解释了如何将该方法扩展到涉及两个以上摄像机的多摄像机情况。我们提出了我们估计的定性和定量结果,并得出结论,这种方法可以应用于广域监控应用,其中部署的系统需要灵活和可扩展,并且校准可能是一个主要挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised camera network structure estimation based on activity
In this paper we consider the problem of unsupervised topology reconstruction in uncalibrated visual sensor networks. We assume that a number of video cameras observe a common scene from arbitrary and unknown locations, orientations and zoom levels, and show that the extrinsic and calibration matrices, fundamental and essential matrices, the homography matrix, and the physical configuration of the cameras with respect to each other can be estimated in an unsupervised manner. Our method relies on the similarity of activity patterns observed at various locations, and an unsupervised matching method based on these activity patterns. The proposed method works in cases with cameras having significantly different orientations and zoom levels, where many of the existing methods cannot be applied. We explain how to extend the method to a multicamera case where more than two cameras are involved. We present both qualitative and quantitative results of our estimates, and conclude that this method can be applied in wide area surveillance applications in which the deployed systems need to be flexible and scalable, and where calibration can be a major challenge.
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