HOOD: Real-Time Human Presence and Out-of-Distribution Detection Using FMCW Radar

Sabri Mustafa Kahya;Muhammet Sami Yavuz;Eckehard Steinbach
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Abstract

Detecting human presence indoors with millimeter-wave frequency-modulated continuous-wave (FMCW) radar faces challenges from both moving and stationary clutters. This work proposes a robust and real-time capable human presence and out-of-distribution (OOD) detection method using 60-GHz short-range FMCW radar. HOOD solves the human presence and OOD detection problems simultaneously in a single pipeline. Our solution relies on a reconstruction-based architecture and works with radar macro- and micro-range-Doppler images (RDIs). HOOD aims to accurately detect the presence of humans in the presence or absence of moving and stationary disturbers. Since HOOD is also an OOD detector, it aims to detect moving or stationary clutters as OOD in humans’ absence and predicts the current scene’s output as “no presence.” HOOD performs well in diverse scenarios, demonstrating its effectiveness across different human activities and situations. On our dataset collected with a 60-GHz short-range FMCW radar with only one transmit (Tx) and three receive antennas, we achieved an average area under the receiver operating characteristic curve (AUROC) of 94.36%. Additionally, our extensive evaluations and experiments demonstrate that HOOD outperforms state-of-the-art (SOTA) OOD detection methods in terms of common OOD detection metrics. Importantly, HOOD also perfectly fits on Raspberry Pi 3B+ with a advanced RISC machines (ARM) Cortex-A53 CPU, which showcases its versatility across different hardware environments. Videos of our human presence detection experiments are available at: https://muskahya.github.io/HOOD .
HOOD:利用FMCW雷达实时检测人的存在和分布
利用毫米波调频连续波(FMCW)雷达探测室内人类存在面临着来自移动杂波和静止杂波的挑战。本文提出了一种基于60 ghz近程FMCW雷达的鲁棒、实时的人的存在和分布外(OOD)检测方法。HOOD在单个管道中同时解决了人员存在和OOD检测问题。我们的解决方案依赖于基于重建的架构,并适用于雷达宏距离和微距离多普勒图像(rdi)。HOOD的目标是在移动或静止干扰物存在或不存在的情况下准确检测人类的存在。由于HOOD也是一个OOD检测器,它的目标是在人类缺席的情况下将移动或静止的杂乱物检测为OOD,并将当前场景的输出预测为“不存在”。HOOD在不同的场景中表现良好,证明了它在不同人类活动和情况下的有效性。在60 ghz近程FMCW雷达数据集上,只有一个发射(Tx)和三个接收天线,我们实现了接收机工作特性曲线(AUROC)下的平均面积为94.36%。此外,我们广泛的评估和实验表明,HOOD在常见OOD检测指标方面优于最先进的(SOTA) OOD检测方法。重要的是,HOOD还非常适合树莓派3B+与先进的RISC机器(ARM) Cortex-A53 CPU,这显示了它在不同硬件环境中的多功能性。我们人类存在检测实验的视频可以在https://muskahya.github.io/HOOD上找到。
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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