SPAICVAug 26, 2025

EMind: A Foundation Model for Multi-task Electromagnetic Signals Understanding

arXiv:2508.18785v12 citationsh-index: 3Has Code
Originality Highly original
AI Analysis

This work addresses the problem of dynamic spectrum management and autonomous vehicle perception for engineers and researchers, representing a novel method for a known bottleneck rather than an incremental improvement.

The authors tackled the challenge of understanding electromagnetic signals, which are heterogeneous and noisy, by introducing EMind, a foundation model that achieved strong performance and broad generalization across multiple downstream tasks.

Deep understanding of electromagnetic signals is fundamental to dynamic spectrum management, intelligent transportation, autonomous driving and unmanned vehicle perception. The field faces challenges because electromagnetic signals differ greatly from text and images, showing high heterogeneity, strong background noise and complex joint time frequency structure, which prevents existing general models from direct use. Electromagnetic communication and sensing tasks are diverse, current methods lack cross task generalization and transfer efficiency, and the scarcity of large high quality datasets blocks the creation of a truly general multitask learning framework. To overcome these issue, we introduce EMind, an electromagnetic signals foundation model that bridges large scale pretraining and the unique nature of this modality. We build the first unified and largest standardized electromagnetic signal dataset covering multiple signal types and tasks. By exploiting the physical properties of electromagnetic signals, we devise a length adaptive multi-signal packing method and a hardware-aware training strategy that enable efficient use and representation learning from heterogeneous multi-source signals. Experiments show that EMind achieves strong performance and broad generalization across many downstream tasks, moving decisively from task specific models to a unified framework for electromagnetic intelligence. The code is available at: https://github.com/GabrielleTse/EMind.

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