Introspective Closed-Loop Perception for Energy-efficient Sensors

Kruttidipta Samal, M. Wolf, S. Mukhopadhyay
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引用次数: 2

Abstract

Task-driven closed-loop perception-sensing systems have shown considerable energy savings over traditional open-loop systems. Prior works on such systems have used simple feedback signals such as object detections and tracking which led to poor perception quality. This paper proposes an improved approach based on perceptual risk. First, a method is proposed to estimate the risk of failure to detect a target of interest. The risk estimate is used as a signal in a feedback system to determine how sensor resources are utilized. Two feedback algorithms are proposed: one based on proportional/integral methods and the other based on 0/1 (bang-bang) methods. These feedback algorithms are compared based on the efficiency with which they use available sensor resources as well as their absolute detection rates. Experiments on two real-world autonomous driving datasets show that the proposed system has better object detection recall and lower marginal cost of prediction than prior work.
节能传感器的内省闭环感知
与传统的开环系统相比,任务驱动的闭环感知传感系统显示出相当大的能量节约。在这类系统上,先前的工作使用简单的反馈信号,如物体检测和跟踪,导致感知质量差。本文提出了一种基于感知风险的改进方法。首先,提出了一种估计目标检测失败风险的方法。在反馈系统中,风险评估作为一个信号来决定如何利用传感器资源。提出了两种反馈算法:一种基于比例/积分法,另一种基于0/1 (bang-bang)法。这些反馈算法是基于效率,他们利用可用的传感器资源以及他们的绝对检测率进行比较。在两个真实自动驾驶数据集上的实验表明,该系统具有更好的目标检测召回率和更低的预测边际成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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