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Information filter for decentralized data fusion and sensor management

机译:用于分散数据融合和传感器管理的信息过滤器

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Abstract: Previous work in data fusion has seen the development of a range of architectures for multisensor data fusion systems, from fully centralized through distributed to fully decentralized. This paper presents some results obtained from an implementation of a multitarget tracking system built around a fully decentralized Kalman filter (DKF). Explicit use is made of the information available locally to a sensor to control its pointing and target detection. The tracking system integrates an essentially range- only sensor with a bearing-only sensor, and the performance of the system is described in terms of both its ability to produce good tracks and its requirement for communications bandwidth. The sensors run asynchronously from each other, and also exhibit asynchronous first detection. Of particular importance in the way the individual sensors can use the information in the global picture to make decisions about which targets to observe. In the demonstration system, simple sensor management is achieved by fixating on the nearest (interesting) target. First we give some background and describe the decentralized data fusion test bed. Then we consider the realization of the decentralized information filter in terms of the ultrasonic and IR sensors used in our demonstration system. Finally, we draw some conclusions about system performance, and indicate some possible future work. !23
机译:摘要:以前在数据融合方面的工作已经看到了用于多传感器数据融合系统的一系列体系结构的发展,从完全集中到分布式,再到完全分散。本文介绍了从围绕完全分散的卡尔曼滤波器(DKF)构建的多目标跟踪系统的实施中获得的一些结果。明确使用传感器本地可用的信息以控制其指向和目标检测。跟踪系统将基本仅范围的传感器与仅轴承的传感器集成在一起,并且系统的性能以产生良好轨道的能力和对通信带宽的要求来描述。传感器彼此异步运行,并且还显示异步优先检测。在各个传感器可以使用全局图片中的信息来决定要观察的目标的方式上,这尤其重要。在演示系统中,通过固定在最近的(有趣的)目标上可以实现简单的传感器管理。首先,我们给出一些背景知识并描述分散数据融合测试平台。然后,我们根据演示系统中使用的超声波和红外传感器来考虑分散信息过滤器的实现。最后,我们得出有关系统性能的一些结论,并指出一些可能的未来工作。 !23

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