使用上下文感知过滤的鲁棒估计

Radoslav Ivanov, Nikolay A. Atanasov, M. Pajic, George J. Pappas, Insup Lee
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引用次数: 11

摘要

本文提出了上下文感知滤波器,这是一种除常规连续测量外,还结合上下文测量的估计技术。上下文测量提供了关于系统上下文的二进制信息,这些信息不直接编码在状态中;例如,机器人通过图像处理检测附近的建筑物,或者医疗设备在生命体征超过预定义阈值时发出警报。这些测量只能从某些状态接收,因此可以将其建模为系统当前状态的函数。我们专注于描述给定当前状态下上下文检测概率的两类函数;这些功能捕获了在实践中可能发生的各种各样的检测。我们推导了相应的上下文感知滤波器、高斯混合滤波器和另一种具有后验分布的闭型滤波器,并推导了它们的矩。最后,我们通过无人驾驶地面车辆的仿真来评估这两类功能的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust estimation using context-aware filtering
This paper presents the context-aware filter, an estimation technique that incorporates context measurements, in addition to the regular continuous measurements. Context measurements provide binary information about the system's context which is not directly encoded in the state; examples include a robot detecting a nearby building using image processing or a medical device alarming that a vital sign has exceeded a predefined threshold. These measurements can only be received from certain states and can therefore be modeled as a function of the system's current state. We focus on two classes of functions describing the probability of context detection given the current state; these functions capture a wide variety of detections that may occur in practice. We derive the corresponding context-aware filters, a Gaussian Mixture filter and another closed-form filter with a posterior distribution whose moments are derived in the paper. Finally, we evaluate the performance of both classes of functions through simulation of an unmanned ground vehicle.
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