Can Large Language Models Identify Materials from Radar Signals?
Jiangyou Zhu, Hongyu Deng, He Chen

TL;DR
This paper explores using large language models to identify materials directly from raw radar signals, combining physics-informed processing and retrieval-augmented reasoning to enable open-set recognition without task-specific training.
Contribution
It introduces LLMaterial, a novel approach that integrates physics-based signal processing with LLM reasoning for direct radar-based material identification.
Findings
Effective differentiation among common materials
Potential for real-world material recognition applications
Enables open-set recognition without task-specific data
Abstract
Accurately identifying the material composition of objects is a critical capability for AI robots powered by large language models (LLMs) to perform context-aware manipulation. Radar technologies offer a promising sensing modality for material recognition task. When combined with deep learning, radar technologies have demonstrated strong potential in identifying the material of various objects. However, existing radar-based solutions are often constrained to closed-set object categories and typically require task-specific data collection to train deep learning models, largely limiting their practical applicability. This raises an important question: Can we leverage the powerful reasoning capabilities of pre-trained LLMs to directly infer material composition from raw radar signals? Answering this question is non-trivial due to the inherent redundancy of radar signals and the fact that…
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