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Structured tracking for safety, security, and privacy: Algorithms for fusing noisy estimates from sensor, robot, and camera networks.

机译:安全性,安全性和隐私性的结构化跟踪:用于融合来自传感器,机器人和摄像机网络的噪声估计的算法。

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摘要

Emerging developments in the speed, size, and power requirements of processors, coupled with networking advances, enable new applications for networks of sensors, cameras, and robots. However, we live in a world filled with uncertainty and noise, which affects the sensors we use, the environments we model, and the objects we observe. In this dissertation, we define Structured Tracking, where we apply novel machine learning and inference techniques to leverage environmental and tracked-object structure. This approach improves accuracy and robustness while reducing computation.;We focus on three application areas of societal benefit: safety, security, and privacy. We apply Belief Propagation (BP)[148] algorithms to sensor networks, and describe our modular framework for the more general Reweighted-BP formulation[203]. To improve safety, we track pallets in warehouses. We apply Particle Filtering[162] and model the cardiod-shaped response pattern of ultrasound between static beacons and mobile sensors to improve tracking accuracy by 11%. We also show using inter-distance sensor readings, we can improve accuracy by 3--4x over the recent SMCL+R formulation[46], while being more likely to converge. We use a generalization of Particle Filtering, Nonparametric-BP (NBP)[183], which can model multi-modal and ring-shaped distributions found in inter-distance tracking problems. We develop a novel tracking algorithm based on NBP to fuse dynamics and multi-hop inter-distance information that increases accuracy, reduces computation, and improves convergence. For security, we present a novel approach for intruder surveillance using a robotic camera, controlled by binary motion sensors and use Particle Filtering to model intruder dynamics and environment geometry. We also present a localization-free approach to robot navigation using a distributed set of beacons, which emit a sequence of signals to direct a robot to the goal, modeling the robot's dynamics uncertainty, with up to 93.4% success rate. We introduce an approach to privacy for visual surveillance, "Respectful Cameras," that uses probabilistic Adaptive Boosting[68] to learn an environment-specific 9-dimensional color model to track colored markers, which act as a proxy for each face. We integrate probabilistic Adaptive Boosting with Particle Filtering to improve robustness, and demonstrate a 2% false-negative rate.
机译:处理器速度,尺寸和功耗要求的不断发展,以及网络的不断发展,为传感器,相机和机器人网络提供了新的应用。但是,我们生活在充满不确定性和噪声的世界中,这会影响我们使用的传感器,建模的环境以及观察到的物体。在本文中,我们定义了结构化跟踪,在其中我们应用了新颖的机器学习和推理技术来利用环境和被跟踪对象的结构。这种方法在减少计算量的同时提高了准确性和鲁棒性。我们关注于具有社会效益的三个应用领域:安全性,安全性和隐私性。我们将置信传播(BP)[148]算法应用于传感器网络,并描述了更通用的Reweighted-BP公式[203]的模块化框架。为了提高安全性,我们跟踪仓库中的托盘。我们应用粒子滤波[162]并在静态信标和移动传感器之间对超声的心形响应模式进行建模,以将跟踪精度提高11%。我们还展示了使用距离传感器的读数,与最近的SMCL + R公式相比,我们可以将精度提高3--4倍[46],同时更可能收敛。我们使用粒子滤波的非参数化BP(NBP)[183]​​概化,它可以对在距离间跟踪问题中发现的多峰分布和环形分布进行建模。我们开发了一种基于NBP的新颖跟踪算法,以融合动态信息和多跳距离信息,从而提高准确性,减少计算量并提高收敛性。为了安全起见,我们提出了一种使用机器人摄像机监控入侵者的新颖方法,该摄像机由二进制运动传感器控制,并使用粒子滤波对入侵者的动力学和环境几何进行建模。我们还提出了一种使用分布式信标集的机器人定位的无本地化方法,该信标集发出一系列信号以将机器人定向到目标,从而对机器人的动力学不确定性进行建模,成功率高达93.4%。我们介绍了一种用于视觉监控的隐私保护方法“可尊敬的相机”,该方法使用概率自适应增强[68]来学习特定于环境的9维颜色模型来跟踪彩色标记,这些彩色标记充当每张脸的代理。我们将概率自适应增强与粒子滤波集成在一起,以提高鲁棒性,并证明2%的假阴性率。

著录项

  • 作者

    Schiff, Jeremy Ryan.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Engineering Robotics.;Computer Science.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 209 p.
  • 总页数 209
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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