Data-Driven Computational Imaging for Scientific Discovery
Andrew Olsen, Yolanda Hu, Vidya Ganapati

TL;DR
This paper proposes a self-supervised computational imaging method to reduce measurement requirements, demonstrated on LED array microscopy, aiming to enhance scientific discovery while overcoming limitations of traditional data-driven approaches.
Contribution
It introduces a self-supervised approach for computational imaging that does not require ground truth data, advancing the applicability of data-driven imaging techniques.
Findings
Effective reduction in measurement needs demonstrated on LED microscopy
Self-supervised method achieves comparable results to supervised approaches
Code and data released for reproducibility
Abstract
In computational imaging, hardware for signal sampling and software for object reconstruction are designed in tandem for improved capability. Examples of such systems include computed tomography (CT), magnetic resonance imaging (MRI), and superresolution microscopy. In contrast to more traditional cameras, in these devices, indirect measurements are taken and computational algorithms are used for reconstruction. This allows for advanced capabilities such as super-resolution or 3-dimensional imaging, pushing forward the frontier of scientific discovery. However, these techniques generally require a large number of measurements, causing low throughput, motion artifacts, and/or radiation damage, limiting applications. Data-driven approaches to reducing the number of measurements needed have been proposed, but they predominately require a ground truth or reference dataset, which may be…
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Taxonomy
TopicsAdvanced Fluorescence Microscopy Techniques · Photoacoustic and Ultrasonic Imaging · Advanced Optical Sensing Technologies
