Novel Hybrid-Learning Algorithms for Improved Millimeter-Wave Imaging Systems
Josiah Smith

TL;DR
This paper presents innovative hybrid-learning algorithms that combine signal processing and deep learning to enhance millimeter-wave imaging and sensing applications, achieving higher resolution, better localization, and improved detection.
Contribution
It introduces new hybrid algorithms that leverage RF waveform characteristics, improving training efficiency and performance in mmWave imaging tasks across various applications.
Findings
Enhanced resolution in mmWave imaging
Improved gesture and hand localization accuracy
Effective multiband radar data fusion
Abstract
Increasing attention is being paid to millimeter-wave (mmWave), 30 GHz to 300 GHz, and terahertz (THz), 300 GHz to 10 THz, sensing applications including security sensing, industrial packaging, medical imaging, and non-destructive testing. Traditional methods for perception and imaging are challenged by novel data-driven algorithms that offer improved resolution, localization, and detection rates. Over the past decade, deep learning technology has garnered substantial popularity, particularly in perception and computer vision applications. Whereas conventional signal processing techniques are more easily generalized to various applications, hybrid approaches where signal processing and learning-based algorithms are interleaved pose a promising compromise between performance and generalizability. Furthermore, such hybrid algorithms improve model training by leveraging the known…
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Taxonomy
TopicsTerahertz technology and applications · Antenna Design and Optimization · Advanced SAR Imaging Techniques
MethodsMulti-Head Attention · Attention Is All You Need · Absolute Position Encodings · Linear Layer · Layer Normalization · Label Smoothing · Dense Connections · Adam · Byte Pair Encoding · Residual Connection
