CNNs in the Air via Reconfigurable Intelligent Surfaces
Meng Hua, Haotian Wu, Deniz G\"und\"uz

TL;DR
This paper presents AirCNN, a new approach that uses reconfigurable intelligent surfaces and over-the-air analog computation to implement CNNs in wireless environments, enabling efficient and adaptive neural network processing.
Contribution
It introduces a novel OTA CNN implementation framework using RISs, optimizing transmission architectures and parameters for different CNN types and channel conditions.
Findings
Conv2d MISO outperforms MIMO in various settings.
Multiple RISs improve performance significantly.
AirCNN achieves satisfactory classification accuracy.
Abstract
This paper introduces AirCNN, a novel paradigm for implementing convolutional neural networks (CNNs) via over-the-air (OTA) analog computation. By leveraging multiple reconfigurable intelligent surfaces (RISs) and transceiver designs, we engineer the ambient wireless propagation environment to emulate the operations of a CNN layer. To comprehensively evaluate AirCNN, we consider two types of CNNs, namely classic two-dimensional (2D) convolution (Conv2d) and light-weight convolution, i.e., depthwise separable convolution (ConvSD). For Conv2d realization via OTA computation, we propose and analyze two RIS-aided transmission architectures: multiple-input multiple-output (MIMO) and multiple-input single-output (MISO), balancing transmission overhead and emulation performance. We jointly optimize all parameters, including the transmitter precoder, receiver combiner, and RIS phase shifts,…
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