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颗粒流图,自适应规则生成与跟踪。

Granular Flow Graph, Adaptive Rule Generation and Tracking.

出版信息

IEEE Trans Cybern. 2017 Dec;47(12):4096-4107. doi: 10.1109/TCYB.2016.2600271. Epub 2016 Aug 26.

Abstract

A new method of adaptive rule generation in granular computing framework is described based on rough rule base and granular flow graph, and applied for video tracking. In the process, several new concepts and operations are introduced, and methodologies formulated with superior performance. The flow graph enables in defining an intelligent technique for rule base adaptation where its characteristics in mapping the relevance of attributes and rules in decision-making system are exploited. Two new features, namely, expected flow graph and mutual dependency between flow graphs are defined to make the flow graph applicable in the tasks of both training and validation. All these techniques are performed in neighborhood granular level. A way of forming spatio-temporal 3-D granules of arbitrary shape and size is introduced. The rough flow graph-based adaptive granular rule-based system, thus produced for unsupervised video tracking, is capable of handling the uncertainties and incompleteness in frames, able to overcome the incompleteness in information that arises without initial manual interactions and in providing superior performance and gaining in computation time. The cases of partial overlapping and detecting the unpredictable changes are handled efficiently. It is shown that the neighborhood granulation provides a balanced tradeoff between speed and accuracy as compared to pixel level computation. The quantitative indices used for evaluating the performance of tracking do not require any information on ground truth as in the other methods. Superiority of the algorithm to nonadaptive and other recent ones is demonstrated extensively.

摘要

基于粗糙规则基和粒状流程图,描述了一种在粒状计算框架中生成自适应规则的新方法,并将其应用于视频跟踪。在此过程中,引入了一些新概念和操作,并制定了性能更优的方法。流程图能够定义规则基自适应的智能技术,利用其在决策系统中属性和规则相关性映射的特点。定义了两个新特性,即期望流程图和流程图之间的相互依赖性,使流程图可用于训练和验证任务。所有这些技术都是在邻域粒度级别上执行的。介绍了一种形成任意形状和大小的时空 3-D 粒度的方法。基于粗糙流程图的自适应粒状基于规则的系统,用于无监督视频跟踪,能够处理帧中的不确定性和不完整性,克服没有初始手动交互而产生的信息不完整性,并提供更优的性能和减少计算时间。部分重叠和检测不可预测变化的情况也得到了有效处理。与像素级计算相比,邻域粒化在速度和准确性之间提供了平衡的权衡。用于评估跟踪性能的定量指标不需要像其他方法那样的任何地面实况信息。算法对非自适应和其他最新算法的优越性得到了广泛的证明。

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