Multimodal Learning 相关度: 6/10

Edge Radar Material Classification Under Geometry Shifts

Jannik Hohmann, Dong Wang, Andreas Nüchter
arXiv: 2603.23342v1 发布: 2026-03-24 更新: 2026-03-24

AI 摘要

提出了一种毫米波雷达材料分类方法,并分析了几何偏移对分类性能的影响。

主要贡献

  • 提出基于毫米波雷达的材料分类pipeline
  • 分析了几何偏移对分类性能的影响
  • 提出了提高鲁棒性的方法:归一化、几何增强、运动感知特征

方法论

使用TI IWRL6432边缘设备,利用紧凑的距离仓强度描述符和多层感知机进行实时推理。

原文摘要

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.

标签

毫米波雷达 材料分类 几何偏移 机器学习 边缘计算

arXiv 分类

cs.RO cs.AI