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Design and analysis of heterogeneous sensors based object tracking systems.

机译:基于异构传感器的目标跟踪系统的设计与分析。

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摘要

In a surveillance system for monitoring objects, there is an increasing need for developing robust algorithm as well as dealing with intelligent interaction among different types of sensors and information. This dissertation describes a design and an analysis of object tracking methodology in heterogeneous sensor network.;In the first part, we consider the object tracking problem in three dimensional (3-D) space when the azimuth and the elevation of the object are available from the passive acoustic sensor. The particle filtering technique can be directly applied to estimate the 3-D location of the object, but we propose to decompose the 3-D particle filter into the three planes' particle filters which are individually designed for the 2-D bearings-only tracking problems. The 2-D bearing information is derived from the azimuth and the elevation of the object to be used for the 2-D particle filter. Two estimates of three planes' particle filters are selected based on the characterization of the acoustic sensor operation in noisy environment. The proposed approach is extended to multiple acoustic sensors and its robustness is analyzed. The Cramer-Rao Lower Bound of the proposed 2-D particle filter-based algorithm is derived and compared against the algorithm based on the direct 3-D particle filter.;In the second part, the object tracking by a single acoustic sensor based on the particle filtering is extended for the multiple objects, and the corresponding inherent limitation is introduced. In order to overcome the limitation of the acoustic sensor for the simultaneous multiple object tracking, the support from the visual sensor with the objects' localization is considered. The cooperation from the visual sensor, however, should be minimized, as the visual sensor's object localization requires much higher computational resources than the acoustic sensor based estimation, and the visual sensor is usually not dedicated to the object tracking and deployed for other applications. The acoustic sensor mainly tracks multiple objects and the visual sensor supports the tracking task only when the acoustic sensor has a difficulty. Several techniques of the particle filtering are used for the multiple object tracking by the acoustic sensor and the limitations of the acoustic sensor are discussed to identify the need of the visual sensor cooperation. Performance of the triggering-based cooperation of the two visual sensors is evaluated and it is compared with a periodic cooperation in a real environment.;In the third part, we address enhancement of object detection with multiple visual sensors. The detection enhancement we introduce is to recover missed object detection given partially detected objects among multiple visual sensors. Once an object is detected by one or more visual sensors, the detected local object positions are transformed into a global object position. Based on a local and global information collaboration, any missed local object position is recovered by the global to local transformation. However, the collaboration may degrade the detection performance by incorrectly recovering the local object position, which is propagated from false object detection. Furthermore, local object positions corresponding to an identical object are transformed into inequivalent global object positions due to detection uncertainty such as a shadow. We minimize the performance degradation by preventing from the propagation of the false object detection. In addition, we present an evaluation method for a final global object position. Finally, the proposed method is analyzed and evaluated with case studies.;In the last part, we summarize and highlight our proposed object tracking methodology in heterogeneous sensor network. In addition, ongoing and future research is presented. The future research includes face identification, robot navigation and other sensors combination based cooperation method. In the face identification issue, we study temporal and spatial face characteristics. In the robot navigation issue, we identify a limitation of the existing method, potential field method, and present a possible solutions. In the other sensors combination based cooperation issue, Radio Frequency Identification (RFID) and visual sensor combination is considered with data traffic analysis. (Abstract shortened by UMI.)
机译:在用于监视对象的监视系统中,越来越需要开发鲁棒的算法以及处理不同类型的传感器和信息之间的智能交互。本文对异构传感器网络中的目标跟踪方法进行了设计和分析。第一部分,当从目标位置获得方位角和仰角时,我们考虑了三维(3-D)空间中的目标跟踪问题。无源声学传感器。粒子滤波技术可以直接应用于估计对象的3-D位置,但是我们建议将3-D粒子滤镜分解为三个平面的粒子滤镜,这些滤镜专门设计用于仅2-D轴承跟踪问题。 2-D方位信息是从要用于2-D粒子过滤器的对象的方位角和高度得出的。基于噪声环境中声学传感器操作的特征,选择三个平面的粒子滤波器的两个估计。提出的方法扩展到多个声学传感器,并分析了其鲁棒性。推导了所提出的基于2-D粒子滤波器的算法的Cramer-Rao下界并将其与基于直接3-D粒子滤波器的算法进行比较。第二部分,基于单个声传感器的目标跟踪扩展了针对多个对象的粒子滤波,并引入了相应的固有限制。为了克服声学传感器同时进行多目标跟踪的局限性,考虑了视觉传感器对目标定位的支持。但是,由于与基于声传感器的估计相比,视觉传感器的对象定位需要更高的计算资源,并且视觉传感器通常不专门用于对象跟踪并部署用于其他应用,因此应最小化视觉传感器的协作。声传感器主要跟踪多个对象,而视觉传感器仅在声传感器有困难时才支持跟踪任务。粒子滤波的几种技术被声传感器用于多目标跟踪,并讨论了声传感器的局限性以识别视觉传感器协作的需要。评估了两个视觉传感器基于触发的协作的性能,并将其与在实际环境中的定期协作进行比较。;第三部分,我们着重介绍了使用多个视觉传感器进行目标检测的方法。我们引入的检测增强功能是在多个视觉传感器之间给定部分检测到的对象的情况下恢复丢失的对象检测。一旦一个或多个视觉传感器检测到物体,检测到的局部物体位置就转换为全局物体位置。基于本地和全局信息协作,可以通过全局到本地转换来恢复任何丢失的本地对象位置。但是,协作可能会通过错误地恢复从错误对象检测传播的局部对象位置而降低检测性能。此外,由于诸如阴影之类的检测不确定性,与相同对象相对应的局部对象位置被转换为不等价的全局对象位置。通过防止错误对象检测的传播,我们将性能下降降至最低。此外,我们提出了一种评估最终全局对象位置的方法。最后,通过案例研究对提出的方法进行了分析和评价。最后,总结并重点介绍了异构传感器网络中提出的目标跟踪方法。此外,还介绍了正在进行的和将来的研究。未来的研究包括基于人脸识别,机器人导航和其他传感器组合的协作方法。在人脸识别问题中,我们研究时空人脸特征。在机器人导航问题中,我们确定了现有方法,势场方法的局限性,并提出了可能的解决方案。在其他基于传感器组合的协作问题中,将射频识别(RFID)和视觉传感器组合与数据流量分析一起考虑。 (摘要由UMI缩短。)

著录项

  • 作者

    Lee, Jinseok.;

  • 作者单位

    State University of New York at Stony Brook.;

  • 授予单位 State University of New York at Stony Brook.;
  • 学科 Engineering Electronics and Electrical.;Artificial Intelligence.;Computer Science.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 174 p.
  • 总页数 174
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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