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Active tracking and pursuit under different levels of occlusion: a two-layer approach

机译:在不同遮挡水平下的主动跟踪和追踪:两层方法

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摘要

We present an algorithm for real-time, robust, vision-based active tracking and pursuit. The algorithm was designed to overcome problems arising from active vision-based pursuit, such as target occlusion. Our method employs two layers to deal with occlusions of different lengths. The first layer is for short- or medium-term occlusions: those where a known method-such as mean shift combined with a Kalman filter-fails. For this layer we designed the hybrid filter for active pursuit (HAP). HAP utilizes a Kalman filter modified to respond to two different modes of action: one in which the target is positively identified and one in which the target identification is uncertain. For long-term occlusions we use the second layer. This layer is a decision algorithm that follows a learning procedure and is based on game theory-related reinforcement (Cesa-Bianchi and Lugosi, Prediction Learning and Games, 2006). The learning process is based on trial and error and is designed to perform adequately with a small number of samples. The algorithm produces a data structure that can be shared among agents or sent to a central control of a multi-agent system. The learning process is designed so that agents perform tasks according to their skills: an efficient agent will pursue targets while an inefficient agent will search for entering targets. These capacities make this system well suited for embedding in a multi-agent control system.
机译:我们提出了一种实时,鲁棒,基于视觉的主动跟踪和追踪算法。该算法旨在克服因主动的基于视觉的追踪而引起的问题,例如目标遮挡。我们的方法使用两层来处理不同长度的遮挡。第一层适用于短期或中期遮挡:那些已知方法(例如均值平移和卡尔曼滤波器组合失败)的遮挡。对于这一层,我们设计了用于主动跟踪(HAP)的混合滤波器。 HAP利用经修改的卡尔曼滤波器来响应两种不同的作用模式:一种可以肯定地识别目标,而另一种可以不确定目标的识别。对于长期遮挡,我们使用第二层。该层是一个遵循学习过程的决策算法,它基于与博弈论相关的强化(Cesa-Bianchi和Lugosi,预测学习与博弈,2006年)。学习过程基于反复试验,旨在以少量样本充分执行。该算法产生的数据结构可以在代理之间共享或发送到多代理系统的中央控制。学习过程的设计使代理可以根据自己的技能执行任务:有效率的代理会追求目标,而有效率的代理会搜索输入的目标。这些功能使该系统非常适合嵌入多代理控制系统中。

著录项

  • 来源
    《Machine Vision and Applications 》 |2014年第1期| 173-184| 共12页
  • 作者单位

    Mathematics Department, Technion, Israel Institute of Technology, 32000 Haifa, Israel;

    Computer Science Department, Technion, Israel Institute of Technology, 32000 Haifa, Israel;

    Computer Science Department, Technion, Israel Institute of Technology, 32000 Haifa, Israel;

    Department of Evolutionary and Environmental Biology, University of Haifa, 31905 Mount Carmel, Israel,Department of Marine Biology, University of Haifa, 31905 Mount Carmel, Israel;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Bio-inspired computer vision; Hybrid system; Active pursuit; Reinforcement learning; Tracking with occlusion;

    机译:受生物启发的计算机视觉;混合动力系统;积极追求;强化学习;遮挡跟踪;

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