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Using observations to recognize the behavior of interacting multi-agent systems.

机译:使用观察来识别交互的多主体系统的行为。

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摘要

Behavioral research involves the study of the behaviors of one or more agents (often animals) in order to better understand the agents' thoughts and actions. Identifying subject movements and behaviors based upon those movements is a critical, time-consuming step in behavioral research. To successfully perform behavior analysis, three goals must be met. First, the agents of interest are observed, and their movements recorded. Second, each individual must be uniquely identified. Finally, behaviors must be identified and recognized. I explore a system that can uniquely identify and track agents, then use these tracks to automatically build behavioral models and recognize similar behaviors in the future.;I address the tracking and identification problems using a combination of laser range finders, active RFID sensors, and probabilistic models for real-time tracking. The laser range component adds environmental flexibility over vision based systems, while the RFID tags help disambiguate individual agents. The probabilistic models are important to target identification during the complex interactions with other agents of similar appearance. In addition to tracking, I present work on automatic methods for generating behavioral models based on supervised learning techniques using the agents' tracked data. These models can be used to classify new tracked data and identify the behavior exhibited by the agent, which can then be used to help automate behavior analysis.
机译:行为研究涉及对一种或多种行为者(通常是动物)的行为的研究,以便更好地理解行为者的思想和行为。在行为研究中,基于主体的动作识别主体的动作和行为是至关重要的,耗时的步骤。要成功执行行为分析,必须满足三个目标。首先,观察感兴趣的主体,并记录其运动。其次,必须对每个人进行唯一标识。最后,必须识别和识别行为。我探索了一种可以唯一地识别和跟踪代理的系统,然后使用这些跟踪自动建立行为模型并识别将来的类似行为。我结合使用了激光测距仪,有源RFID传感器和实时跟踪的概率模型。激光测距组件比基于视觉的系统增加了环境灵活性,而RFID标签则有助于消除各个代理商的歧义。概率模型对于与相似外观的其他代理进行复杂交互过程中的目标识别非常重要。除了跟踪之外,我还将介绍有关使用代理的跟踪数据基于监督学习技术生成行为模型的自动方法的工作。这些模型可用于对新的跟踪数据进行分类,并识别代理显示的行为,然后可用于帮助自动化行为分析。

著录项

  • 作者

    Feldman, Adam.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Engineering Robotics.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 163 p.
  • 总页数 163
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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