An autonomous fuzzy logic architecture for multisensor data fusion

R. E. Gibson, D. Hall, J. Stover
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引用次数: 23

Abstract

Fuzzy logic techniques have become popular to address various processes for multisensor data fusion. Examples include: (1) fuzzy membership functions for data association, (2) evaluation of alternative hypotheses in multiple hypothesis trackers, (3) fuzzy-logic-based pattern recognition (e.g., for feature-based object identification), and (4) fuzzy inference schemes for sensor resource allocation. These approaches have been individually successful but are limited to only a single subprocess within a data fusion system. At The Pennsylvania State University, Applied Research Laboratory, a general-purpose fuzzy logic architecture has been developed that provides for control of sensing resources, fusion of data for tracking, automatic object recognition, control of system resources and elements, and automated situation assessment. This general architecture has been applied to implement an autonomous vehicle capable of self-direction, obstacle avoidance, and mission completion. The fuzzy logic architecture provides interpretation and fusion of multisensor data (i.e., perception) as well as logic for process control (action). This paper provides an overview of the fuzzy logic architecture and a discussion of its application to data fusion in the context of the Department of Defense (DoD) Joint Directors of Laboratories (JDL) Data Fusion Process Model. A new, robust, fuzzy calculus is introduced. An example is provided by modeling a component of the perception processing of a bat.<>
多传感器数据融合的自主模糊逻辑体系结构
模糊逻辑技术已成为解决多传感器数据融合的各种过程的流行。示例包括:(1)用于数据关联的模糊隶属函数,(2)多个假设跟踪器中备选假设的评估,(3)基于模糊逻辑的模式识别(例如,用于基于特征的目标识别),以及(4)用于传感器资源分配的模糊推理方案。这些方法各自都取得了成功,但仅限于数据融合系统中的单个子过程。宾夕法尼亚州立大学应用研究实验室开发了一种通用模糊逻辑架构,可用于控制传感资源、融合跟踪数据、自动目标识别、控制系统资源和元素以及自动态势评估。这一通用架构已被应用于实现具有自主方向、避障和完成任务能力的自动驾驶汽车。模糊逻辑架构提供多传感器数据的解释和融合(即感知)以及过程控制(动作)的逻辑。本文概述了模糊逻辑体系结构,并在国防部实验室联合主任数据融合过程模型的背景下讨论了其在数据融合中的应用。介绍了一种新的鲁棒模糊演算方法。通过对蝙蝠感知处理的一个组件建模,提供了一个示例
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