DEFORM: A Practical, Universal Deep Beamforming System
Hai N. Nguyen, Guevara Noubir

TL;DR
DEFORM is a universal deep learning-based beamforming system that significantly improves RF receiver performance across various signals and settings without relying on explicit channel estimation.
Contribution
It introduces a DL-based universal beamforming approach that estimates channel characteristics directly from complex samples, reducing overhead and increasing robustness.
Findings
Achieves up to 3 dB SNR gain in diverse RF settings.
Reduces LoRa packet loss by 23 times.
Increases ZigBee packet delivery rate by 8 times.
Abstract
We introduce, design, and evaluate a set of universal receiver beamforming techniques. Our approach and system DEFORM, a Deep Learning (DL) based RX beamforming achieves significant gain for multi antenna RF receivers while being agnostic to the transmitted signal features (e.g., modulation or bandwidth). It is well known that combining coherent RF signals from multiple antennas results in a beamforming gain proportional to the number of receiving elements. However in practice, this approach heavily relies on explicit channel estimation techniques, which are link specific and require significant communication overhead to be transmitted to the receiver. DEFORM addresses this challenge by leveraging Convolutional Neural Network to estimate the channel characteristics in particular the relative phase to antenna elements. It is specifically designed to address the unique features of…
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Taxonomy
TopicsWireless Signal Modulation Classification · Millimeter-Wave Propagation and Modeling · Advanced MIMO Systems Optimization
