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Counting and localizing targets with a camera network.

机译:使用摄像机网络对目标进行计数和定位。

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摘要

Advances in CMOS fabrication have enabled low-cost camera nodes with limited communication and computation capabilities. By combining these capabilities within a small form-factor device, multi-camera networks can readily be built. However, cameras are high-data-rate devices, and many computer vision algorithms are computationally expensive, while these camera nodes are communication and computation constrained. In this dissertation, we present lightweight techniques for distributed scene analysis in such resource-constrained camera networks. We show that in this setting we can compute global aggregates from distributed local measurements. In particular we use the camera network to count and localize targets.; Counting and localizing are useful in many applications in surveillance, security, and monitoring. Counting multiple objects is difficult because objects often occlude one another. A camera network with multiple views can resolve these ambiguities. To satisfy the resource constraints, only a subset of camera nodes can be selected to answer a query, and these nodes must perform lightweight processing and only communicate limited amounts of data. In this work, the local image processing is background subtraction and the communicated data is less than 1/10,000 of the original image size. A two-dimensional visual hull, representing the maximal spatial occupancy, is then inexpensively computed by aggregating this compressed data.; The first part of the dissertation describes the counting algorithm which uses the visual hull. Upper and lower bounds for the number of objects are computed and updated under object motion, and an exact count is reached when the bounds converge. The second part describes how to select camera nodes to compute the visual hull. Selecting an optimal subset can be as effective as using all the cameras and both saves resources and increases scalability. The final part analyzes the best selection and placement of camera nodes for optimal target localization. The formulation is based on linear estimation. Uniform placement is shown to be optimal for cameras with identical noise. The analysis leads to an algorithm for camera selection. The performance of the target counting and localization algorithms is demonstrated in simulation and in real camera networks.
机译:CMOS制造技术的进步使低成本相机节点的通信和计算能力受到限制。通过将这些功能整合到一个小型设备中,可以轻松构建多摄像机网络。但是,相机是高数据速率设备,许多计算机视觉算法的计算量很大,而这些相机节点受到通信和计算的限制。本文提出了一种在资源受限的相机网络中进行分布式场景分析的轻量级技术。我们表明,在此设置下,我们可以从分布式本地度量计算全局聚合。特别是,我们使用摄像头网络对目标进行计数和定位。计数和本地化在监视,安全和监视的许多应用程序中很有用。计数多个对象很困难,因为对象经常相互遮挡。具有多个视图的摄像机网络可以解决这些歧义。为了满足资源限制,只能选择摄像机节点的一个子集来回答查询,并且这些节点必须执行轻量级处理,并且仅传递有限数量的数据。在这项工作中,本地图像处理是背景减法,并且通信的数据小于原始图像大小的1 / 10,000。然后,通过汇总此压缩数据,可以廉价地计算出代表最大空间占用率的二维视觉船体。论文的第一部分描述了使用视觉船体的计数算法。在对象运动下计算并更新对象数目的上限和下限,并且当边界收敛时会达到精确的计数。第二部分介绍如何选择相机节点以计算视觉船体。选择最佳子集与使用所有摄像机一样有效,既节省资源又增加可伸缩性。最后一部分分析了相机节点的最佳选择和放置,以实现最佳目标定位。该公式基于线性估计。对于噪声相同的摄像机,均匀放置是最佳选择。分析得出用于摄像机选择的算法。目标计数和定位算法的性能在仿真和实际摄像机网络中得到了证明。

著录项

  • 作者

    Yang, Danny Bon-Ray.;

  • 作者单位

    Stanford University.;

  • 授予单位 Stanford University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 97 p.
  • 总页数 97
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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