Yi Zhou;Xuliang Yu;Miguel López-Benítez;Limin Yu;Yutao Yue
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引用次数: 0
摘要
基于雷达的人类活动识别(HAR)是一个热门研究领域。尽管这些模型在自收集的数据集上声称具有很高的准确性,但其在数据变化下的鲁棒性却一直被忽视。本文重点分析雷达 HAR 的雷达微多普勒频谱图分类的鲁棒性。首先,本文提出了一种分类法,将损坏分为时间域、多普勒域和强度域,并提出了有效管理损坏严重程度的策略,以便进行均衡评估。其次,提出了一个分析框架来评估雷达传感中损坏的鲁棒性,深入探讨了需要考虑哪些因素以及如何使用专门的损坏度量标准进行评估。最后,一项基准研究评估了不同的模型架构和训练方法,以提高两个基于雷达的 HAR 任务中的损坏鲁棒性。结果表明,容量更大的卷积神经网络(CNN)提高了分类准确性,但也存在过拟合的风险。特别是,对抗训练和数据增强被认为是提高腐败鲁棒性的有效技术。然而,对于雷达 HAR 任务来说,损坏鲁棒性并不是一个已经解决的问题。不同类型的损坏鲁棒性可能取决于数据集和模型。从本质上讲,我们的研究有助于加深对模型架构、训练方法和损坏鲁棒性之间复杂相互作用的理解。
Corruption Robustness Analysis of Radar Micro-Doppler Classification for Human Activity Recognition
Radar-based human activity recognition (HAR) is a popular area of research. Despite claims of high accuracy on self-collected datasets, the robustness of these models under data variations has been overlooked. This article focuses on corruption robustness analysis of radar micro-Doppler spectrogram classification for radar HAR. First, a taxonomy is proposed to classify corruptions into temporal, Doppler, and intensity domains, accompanied by strategies to effectively manage their severity for a balanced evaluation. Second, an analysis framework is presented to assess the robustness of corruption in radar sensing, providing insight into what factors to consider and how to evaluate using a dedicated corruption fmetric. Finally, a benchmarking study evaluates different model architectures and training methods to improve corruption robustness in two radar-based HAR tasks. The results indicate that higher capacity convolutional neural networks (CNNs) show improved classification accuracy, albeit with a risk of overfitting. In particular, adversarial training and data augmentation are identified as effective techniques to improve corruption robustness. However, corruption robustness is not a solved problem for the radar HAR task. Robustness to different types of corruption robustness could be dataset and model-dependent. In essence, our study contributes to a deeper understanding of the complex interplay between model architecture, training methods, and corruption robustness.