Sample-efficient, low-light image sensing through Eigentask Learning: Part 2 (Experiment)

ORAL

Abstract

Noise is unavoidable when extracting information from analog sensors, and is especially problematic when the signal to be sensed is weak. Given a weak signal and a noisy analog sensor, it is imperative to extract as much information as possible which, for inference purposes, is typically of a much lower dimension than the actual data sampled. In part I, we showed that a physical system can perform a certain set of transformations, termed eigentasks [1], which are robust to sampling and readout noise. In this part, we experimentally demonstrate the benefit of computing these eigentasks from sensor data in low-signal-to-noise-ratio conditions. We show that the eigentask basis creates a low-dimensional, noise-robust latent space that outperforms standard noise mitigation techniques such as principal component analysis and low-pass filtering across several low-light imaging tasks. To exhibit the universality of the eigentasks, we illustrate this performance enhancement across different optical image sensors. For low-light-machine-vision applications, extracting sensor information on an eigentask basis allows for a considerable reduction in the training requirements of the vision pipeline. In general, eigentasks seem aptly positioned to mitigate the effects of noise by optimally pre-processing sensor data, thus leading to the design of efficient sensing pipelines.

[1] Hu et al. Phys. Rev. X 13, 041020 (2023).

*Part of this research was supported by a Kavli Institute at Cornell instrumentation grant, and a David and Lucile Packard Foundation Fellowship. P.L.M. acknowledges membership of the CIFAR Quantum Information Science Program as an Azrieli Global Scholar. Part of this research was supported by funding from the DARPA contract HR00112190072, and AFOSR awards FA9550-20-1-0177 and FA9550-22-1-0203.

Presenters

  • Mandar Sohoni

    • Cornell University

Authors

  • Mandar Sohoni

    • Cornell University
  • Tianyang Chen

    • Princeton University
  • Saeed A Khan

    • Cornell University
  • Jeremie Laydevant

    • Cornell University
  • Shi-Yuan Ma

    • Cornell University
  • Tianyu Wang

    • Boston University
  • Hakan E Tureci

    • Princeton University
  • Peter L McMahon

    • Cornell University