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A probabilistic approach for the adaptive integration of multiple visual cues using an agent framework.

机译:一种使用代理框架自适应集成多个视觉提示的概率方法。

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Most current machine vision systems suffer from a lack of flexibility to account for the high variability of unstructured environments. As the state of the world evolves, the potential knowledge provided by different visual attributes can change, breaking the initial assumptions of a non-adaptive vision system. This thesis develops a new comprehensive computational framework for the adaptive integration of information from different visual algorithms.; This framework takes advantage of the richness of visual information by adaptively considering; a variety of visual properties such as color, depth, motion, and shape. Using a probabilistic approach and uncertainty metrics, the resulting framework makes appropriate decisions about the most relevant visual attributes to consider.; The framework is based on an agent paradigm. Each visual algorithm is implemented as an agent that adapts its behavior according to uncertainty considerations. These agents act as a group of experts, where each agent has a specific knowledge area. Cooperation among the agents is given by a probabilistic scheme that uses Bayesian inference to integrate the evidential information provided by them.; To deal with the inherent nonlinearity of visual information, the relevant probability distributions are represented using a stochastic sampling approach. The estimation of the state of relevant visual structures is performed using an enhanced version of the particle filter algorithm. This enhanced version includes novel methods to adaptively select the number of samples used by the filter, and to adaptively find a suitable function to propagate the samples.; The implementation of the computational framework is performed using a distributed multi-agent software architecture. This is tested for the case of visual target tracking using a mobile platform. The evaluation of the implementation using computer simulations and real situations compares positively with current state of the art visual target tracking techniques.
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。随着世界的发展,由不同视觉属性提供的潜在知识可能会发生变化,从而打破了非自适应视觉系统的最初假设。本文为不同视觉算法的信息自适应集成开发了一种新的综合计算框架。该框架通过自适应考虑充分利用了视觉信息的丰富性。各种视觉属性,例如颜色,深度,运动和形状。使用概率方法和不确定性度量,结果框架对要考虑的最相关的视觉属性做出适当的决策。该框架基于代理范例。每个视觉算法都实现为可根据不确定性考虑调整其行为的代理。这些代理充当专家组,其中每个代理都有特定的知识领域。代理之间的合作是通过一个概率方案进行的,该方案使用贝叶斯推理来整合他们提供的证据信息。为了处理视觉信息固有的非线性,使用随机采样方法表示相关的概率分布。使用粒子滤波器算法的增强版本,可以对相关视觉结构的状态进行估算。该增强版本包括新颖的方法,以自适应地选择滤波器使用的样本数量,并自适应地找到合适的函数来传播样本。计算框架的实现是使用分布式多代理软件体系结构执行的。使用移动平台进行视觉目标跟踪的情况对此进行了测试。使用计算机模拟和实际情况对实施进行的评估与当前的视觉目标跟踪技术现状进行了积极的比较。

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