Neural network-based on-chip spectroscopy using a scalable plasmonic encoder
Calvin Brown, Artem Goncharov, Zachary Ballard, Mason Fordham, Ashley, Clemens, Yunzhe Qiu, Yair Rivenson, Aydogan Ozcan

TL;DR
This paper presents a compact, low-cost on-chip spectrometer that uses a plasmonic encoder and deep learning for rapid, high-resolution spectral reconstruction, overcoming traditional size and cost limitations.
Contribution
The work introduces a scalable plasmonic spectral encoder combined with neural network-based reconstruction, enabling fast, accurate, and portable spectroscopy without complex optical components.
Findings
Achieved ~28 microseconds inference time per spectrum.
Correctly identified 96.86% of spectral peaks in unseen data.
System is tolerant to fabrication defects.
Abstract
Conventional spectrometers are limited by trade-offs set by size, cost, signal-to-noise ratio (SNR), and spectral resolution. Here, we demonstrate a deep learning-based spectral reconstruction framework, using a compact and low-cost on-chip sensing scheme that is not constrained by the design trade-offs inherent to grating-based spectroscopy. The system employs a plasmonic spectral encoder chip containing 252 different tiles of nanohole arrays fabricated using a scalable and low-cost imprint lithography method, where each tile has a unique geometry and, thus, a unique optical transmission spectrum. The illumination spectrum of interest directly impinges upon the plasmonic encoder, and a CMOS image sensor captures the transmitted light, without any lenses, gratings, or other optical components in between, making the entire hardware highly compact, light-weight and field-portable. A…
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