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arXiv 提交日期: 2026-03-24
📄 Abstract - Edge Radar Material Classification Under Geometry Shifts

Material awareness can improve robotic navigation and interaction, particularly in conditions where cameras and LiDAR degrade. We present a lightweight mmWave radar material classification pipeline designed for ultra-low-power edge devices (TI IWRL6432), using compact range-bin intensity descriptors and a Multilayer Perceptron (MLP) for real-time inference. While the classifier reaches a macro-F1 of 94.2\% under the nominal training geometry, we observe a pronounced performance drop under realistic geometry shifts, including sensor height changes and small tilt angles. These perturbations induce systematic intensity scaling and angle-dependent radar cross section (RCS) effects, pushing features out of distribution and reducing macro-F1 to around 68.5\%. We analyze these failure modes and outline practical directions for improving robustness with normalization, geometry augmentation, and motion-aware features.

顶级标签: robotics systems machine learning
详细标签: mmwave radar material classification edge computing domain shift robustness 或 搜索:

几何变化下的边缘雷达材料分类 / Edge Radar Material Classification Under Geometry Shifts


1️⃣ 一句话总结

这篇论文为低功耗设备开发了一种实时雷达材料识别方法,但在实际应用中,传感器位置或角度的微小变化会显著降低识别准确率,作者分析了原因并提出了改进方向。

源自 arXiv: 2603.23342