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End-to-End Optimization of Metasurfaces for Imaging with Compressed Sensing

Gaurav Arya, William F. Li, Charles Roques‐Carmes, Marin Soljačić, Steven G. Johnson, Zin Lin

2024ACS Photonics30 citationsDOIOpen Access PDF

Abstract

We present a framework for the end-to-end optimization of metasurface imaging systems that reconstruct targets using compressed sensing, a technique for solving underdetermined imaging problems when the target object exhibits sparsity (e.g., the object can be described by a small number of nonzero values, but the positions of these values are unknown). We nest an iterative, unapproximated compressed sensing reconstruction algorithm into our end-to-end optimization pipeline, resulting in an interpretable, data-efficient method for maximally leveraging metaoptics to exploit object sparsity. We apply our framework to super-resolution imaging and high-resolution depth imaging with a phase-change material. In both situations, our end-to-end framework effectively optimizes metasurface structures for compressed sensing recovery, automatically balancing a number of complicated design considerations to select an imaging measurement matrix from a complex, physically constrained manifold with millions of dimensions. The optimized metasurface imaging systems are robust to noise, significantly improving over random scattering surfaces and approaching the ideal compressed sensing performance of a Gaussian matrix, showing how a physical metasurface system can demonstrably approach the mathematical limits of compressed sensing.

Topics & Concepts

Compressed sensingUnderdetermined systemComputer sciencePipeline (software)Iterative reconstructionGaussianOptimization problemAlgorithmArtificial intelligenceComputer visionPhysicsProgramming languageQuantum mechanicsMetamaterials and Metasurfaces ApplicationsRandom lasers and scattering mediaUnderwater Acoustics Research
End-to-End Optimization of Metasurfaces for Imaging with Compressed Sensing | Litcius