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Probabilistic Adaptive Agent Based System for Dynamic State Estimation Using Multiple Visual Cues

机译:基于概率自适应代理的多视觉提示动态状态估计系统

摘要

Most of current machine vision systems suffer from a lack of flexibility to account for the high variability of unstructured environments. Here, as the state of the world evolves the information provided by different visual attributes changes, breaking the initial assumptions of the vision system. This paper describes a new approach for the creation of an adaptive visual system able to selectively combine information from different visual dimensions. Using a probabilistic approach and uncertainty metrics, the system is able to take appropriate decisions about the more relevant visual attributes to consider. The system is based on an intelligent agent paradigm. Each visual algorithm is implemented as an agent, which adapts its behavior according to uncertainty considerations. The proposed system aims to achieve robustness and efficiency. By combining the outputs of multiple vision modules the assumptions and constraints of each module are factored out resulting in a more robust system. Efficiency is achieved through the on-line selection and specialization of the agents. An implementation of the system for the case of human tracking showed encouraging results.
机译:当前大多数机器视觉系统都缺乏灵活性,无法解决非结构化环境的高度可变性。在这里,随着世界形势的发展,由不同视觉属性提供的信息也会发生变化,从而打破了视觉系统的最初假设。本文介绍了一种用于创建自适应视觉系统的新方法,该系统能够选择性地组合来自不同视觉维度的信息。使用概率方法和不确定性度量,系统能够对要考虑的更相关的视觉属性做出适当的决定。该系统基于智能代理范例。每个视觉算法都实现为代理,可根据不确定性考虑调整其行为。所提出的系统旨在实现鲁棒性和效率。通过组合多个视觉模块的输出,每个模块的假设和约束都被排除在外,从而形成了更强大的系统。通过代理的在线选择和专业化来实现效率。该系统在人类追踪情况下的实施显示出令人鼓舞的结果。

著录项

  • 作者

    Soto Alvaro; Khosla Pradeep;

  • 作者单位
  • 年度 2001
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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