Deep Task-Based Analog-to-Digital Conversion
Nir Shlezinger, Ariel Amar, Ben Luijten, Ruud J. G. van Sloun, and, Yonina C. Eldar

TL;DR
This paper introduces a data-driven, task-oriented analog-to-digital conversion method that learns optimal non-uniform mappings to improve efficiency in high-rate, high-resolution scenarios, demonstrated in communication and imaging applications.
Contribution
It proposes a novel learnable ADC model and a joint optimization framework for hybrid acquisition systems, leveraging deep learning and Bayesian meta-learning techniques.
Findings
Achieves comparable performance to high-rate, high-resolution ADCs with reduced bit rates.
Demonstrates effectiveness in multi-antenna symbol detection and ultrasound beamforming.
Shows potential for more efficient analog-to-digital conversion in practical systems.
Abstract
Analog-to-digital converters (ADCs) allow physical signals to be processed using digital hardware. Their conversion consists of two stages: Sampling, which maps a continuous-time signal into discrete-time, and quantization, i.e., representing the continuous-amplitude quantities using a finite number of bits. ADCs typically implement generic uniform conversion mappings that are ignorant of the task for which the signal is acquired, and can be costly when operating in high rates and fine resolutions. In this work we design task-oriented ADCs which learn from data how to map an analog signal into a digital representation such that the system task can be efficiently carried out. We propose a model for sampling and quantization that facilitates the learning of non-uniform mappings from data. Based on this learnable ADC mapping, we present a mechanism for optimizing a hybrid acquisition…
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Taxonomy
TopicsUltrasonics and Acoustic Wave Propagation · Speech and Audio Processing · Geophysical Methods and Applications
