Neuromorphic Sampling of Sparse Signals
Abijith Jagannath Kamath, Chandra Sekhar Seelamantula

TL;DR
This paper introduces a theoretical framework for neuromorphic sampling of signals with finite rate of innovation, enabling perfect reconstruction using spectral estimation and kernel methods, with extensions to multichannel setups.
Contribution
It develops a sampling-theoretic approach connecting neuromorphic sensing with time-based sampling, providing conditions for perfect reconstruction and extending to multichannel configurations.
Findings
Perfect reconstruction achievable via spectral estimation.
Sample complexity equals the signal's rate of innovation.
Multichannel sampling allows joint parameter estimation.
Abstract
Neuromorphic sampling is a bioinspired and opportunistic analog-to-digital conversion technique, where the measurements are recorded only when there is a significant change in the signal amplitude. Neuromorphic sampling has paved the way for a new class of vision sensors called event cameras or dynamic vision sensors (DVS), which consume low power, accommodate a high-dynamic range, and provide sparse measurements with high temporal resolution making it convenient for downstream inference tasks. In this paper, we consider neuromorphic sensing of signals with a finite rate of innovation (FRI), including a stream of Dirac impulses, sum of weighted and time-shifted pulses, and piecewise-polynomial functions. We consider a sampling-theoretic approach and leverage the close connection between neuromorphic sensing and time-based sampling, where the measurements are encoded temporally. Using…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Analog and Mixed-Signal Circuit Design · CCD and CMOS Imaging Sensors
