Large-scale nonlinear optical computing with incoherent light via linear diffractive systems
Alexander Chen, Yuntian Wang, Md Sadman Sakib Rahman, Yuhang Li, Aydogan Ozcan

TL;DR
This paper demonstrates that linear diffractive optical systems can perform large-scale nonlinear function approximation under incoherent illumination, enabling high-throughput, parallel optical computing.
Contribution
It introduces a coherence-aware framework showing linear diffractive processors can approximate nonlinear functions with incoherent light, supported by numerical and experimental validation.
Findings
Snapshot computation of up to one million nonlinear functions in a single pass
Accuracy depends on the number of diffractive layers and features
Experimental demonstration under incoherent LCD illumination
Abstract
Nonlinear computation is essential for various information processing tasks. Optical implementations are attractive because passive light propagation can manipulate high-dimensional signals with extreme throughput and parallelism; yet realizing nonlinear mappings in optical hardware remains challenging due to the weak nonlinearity of optical materials and the large intensities required to induce nonlinear interactions. This challenge is further amplified in many systems that operate with incoherent illumination, motivating a coherence-aware framework for scalable optical nonlinear processing. Here, we show that linear optical systems, in particular, optimized diffractive processors comprising passive surfaces, can perform large-scale nonlinear function approximation under spatially incoherent or partially coherent illumination, when preceded by intensity-only input encoding. We quantify…
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