CVLGSPOct 13, 2024

Large Model for Small Data: Foundation Model for Cross-Modal RF Human Activity Recognition

arXiv:2410.19766v121 citationsh-index: 21SenSys
Originality Incremental advance
AI Analysis

This work addresses the challenge of limited labeled data in RF-based human activity recognition, which is incremental as it adapts existing foundation model techniques to a new modality.

The paper tackles the problem of scarce labeled RF data for human activity recognition by introducing FM-Fi, a cross-modal framework that transfers knowledge from vision-based foundation models to RF systems, achieving performance comparable to vision-based methods.

Radio-Frequency (RF)-based Human Activity Recognition (HAR) rises as a promising solution for applications unamenable to techniques requiring computer visions. However, the scarcity of labeled RF data due to their non-interpretable nature poses a significant obstacle. Thanks to the recent breakthrough of foundation models (FMs), extracting deep semantic insights from unlabeled visual data become viable, yet these vision-based FMs fall short when applied to small RF datasets. To bridge this gap, we introduce FM-Fi, an innovative cross-modal framework engineered to translate the knowledge of vision-based FMs for enhancing RF-based HAR systems. FM-Fi involves a novel cross-modal contrastive knowledge distillation mechanism, enabling an RF encoder to inherit the interpretative power of FMs for achieving zero-shot learning. It also employs the intrinsic capabilities of FM and RF to remove extraneous features for better alignment between the two modalities. The framework is further refined through metric-based few-shot learning techniques, aiming to boost the performance for predefined HAR tasks. Comprehensive evaluations evidently indicate that FM-Fi rivals the effectiveness of vision-based methodologies, and the evaluation results provide empirical validation of FM-Fi's generalizability across various environments.

Foundations

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