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arxiv: 2501.14287 · v1 · pith:DPQY57ABnew · submitted 2025-01-24 · ⚛️ physics.optics · cs.CV· cs.LG· physics.app-ph

Snapshot multi-spectral imaging through defocusing and a Fourier imager network

classification ⚛️ physics.optics cs.CVcs.LGphysics.app-ph
keywords multi-spectralimageimaginginformationsnapshotdeepdefocusingfourier
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Multi-spectral imaging, which simultaneously captures the spatial and spectral information of a scene, is widely used across diverse fields, including remote sensing, biomedical imaging, and agricultural monitoring. Here, we introduce a snapshot multi-spectral imaging approach employing a standard monochrome image sensor with no additional spectral filters or customized components. Our system leverages the inherent chromatic aberration of wavelength-dependent defocusing as a natural source of physical encoding of multi-spectral information; this encoded image information is rapidly decoded via a deep learning-based multi-spectral Fourier Imager Network (mFIN). We experimentally tested our method with six illumination bands and demonstrated an overall accuracy of 92.98% for predicting the illumination channels at the input and achieved a robust multi-spectral image reconstruction on various test objects. This deep learning-powered framework achieves high-quality multi-spectral image reconstruction using snapshot image acquisition with a monochrome image sensor and could be useful for applications in biomedicine, industrial quality control, and agriculture, among others.

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