LGETITMar 31, 2025

Over-the-Air Edge Inference via End-to-End Metasurfaces-Integrated Artificial Neural Networks

arXiv:2504.00233v113 citationsh-index: 62
Originality Incremental advance
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This work addresses wireless noise issues in Edge Inference for applications like IoT and mobile computing, though it appears incremental by integrating existing metasurface technologies into neural networks.

The paper tackles the problem of wireless noise in Edge Inference by using programmable metasurfaces to perform over-the-air computing, achieving near-optimal image classification performance with a 50 dB lower testing signal-to-noise ratio compared to training, even without channel knowledge.

In the Edge Inference (EI) paradigm, where a Deep Neural Network (DNN) is split across the transceivers to wirelessly communicate goal-defined features in solving a computational task, the wireless medium has been commonly treated as a source of noise. In this paper, motivated by the emerging technologies of Reconfigurable Intelligent Surfaces (RISs) and Stacked Intelligent Metasurfaces (SIM) that offer programmable propagation of wireless signals, either through controllable reflections or diffractions, we optimize the RIS/SIM-enabled smart wireless environment as a means of over-the-air computing, resembling the operations of DNN layers. We propose a framework of Metasurfaces-Integrated Neural Networks (MINNs) for EI, presenting its modeling, training through a backpropagation variation for fading channels, and deployment aspects. The overall end-to-end DNN architecture is general enough to admit RIS and SIM devices, through controllable reconfiguration before each transmission or fixed configurations after training, while both channel-aware and channel-agnostic transceivers are considered. Our numerical evaluation showcases metasurfaces to be instrumental in performing image classification under link budgets that impede conventional communications or metasurface-free systems. It is demonstrated that our MINN framework can significantly simplify EI requirements, achieving near-optimal performance with $50~$dB lower testing signal-to-noise ratio compared to training, even without transceiver channel knowledge.

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