Fiber endoscopy: Physics-guided network erases honeycomb artifacts
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Fiber endoscopy: Physics-guided network erases honeycomb artifacts

06/05/2026 TranSpread

Fiber endoscopes are like slender “visual tentacles”: thin, flexible, and minimally invasive. They can reach confined spaces that conventional imaging systems cannot easily access, making them valuable for minimally invasive diagnosis, surgical navigation, and industrial inspection. As imaging probes become smaller, a central challenge remains: how can we obtain clear and stable images from an ultrathin endoscope?

Multi-core c offer a promising route toward compact endoscopic probes. The distal optics can be removed, greatly reducing probe size and complexity. However, a multi-core fiber is made of many discrete fiber cores, much like a regular array of tiny sampling windows. This structure often introduces honeycomb-like artifacts, which obscure image details and reduce imaging reliability. Although filtering, interpolation, and deep learning methods can improve image quality, they often suffer from limited restoration capability, difficult data acquisition, weak physical interpretability, and poor generalization. To address these challenges, the research team developed SGARNet, a physics-guided neural network for lensless multi-core fiber imaging.

  1. Revealing the frequency-domain characteristic of honeycomb artifacts

The team first analyzed the imaging process from the geometry of the multi-core fiber itself. Each fiber core can be viewed as a tiny sampling unit that collects local light information and transfers it to the proximal end to form an image. Because the cores are typically arranged in a hexagonal pattern, this regular structure leaves periodic traces in the captured image. In the frequency domain, these traces appear as a set of bright peaks with clear directions and spacing. These peaks provide a direct clue to the origin of honeycomb artifacts.

  1. Introducing SpectralGate: a physics-aware frequency filter inside the network

Based on this insight, the team designed a SpectralGate module, which acts like a “frequency-domain sieve” inside the neural network. Since honeycomb artifacts tend to appear at specific frequency locations, SpectralGate selectively suppresses these artifact-related components while preserving useful image details. This allows the network to restore images with a clearer physical target, rather than relying purely on data-driven learning. SGARNet uses a lightweight image restoration framework, with SpectralGate placed at a stage where global periodic artifacts can be effectively handled without adding heavy computational cost, making the design suitable for real-time fiber endoscopic imaging.

  1. Improving image quality and validating real-sample generalization

SGARNet showed stable performance across images with different texture complexity. For simple images, it restored color, contrast, and structural information effectively. For more complex images with fine details, it suppressed honeycomb artifacts while preserving the main visual content. The team further tested SGARNet using a USAF 1951 resolution target and biological tissue sections. The method clearly recovered fine line structures and resolved a minimum linewidth of about 2.1 μm, consistent with the fiber core size. In biological samples, including wheat caryopsis, nerve tissue, mushroom sections, and woody dicot stem sections, SGARNet achieved clear image restoration, demonstrating its potential to transfer from projection-based training data to real biomedical imaging scenarios.

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References

DOI

10.37188/lam.2026.050

Original Source URL

https://doi.org/10.37188/lam.2026.050

Funding Information

This work was supported by the National Natural Science Foundation of China (Grant Nos. W2511066, 62235009 and 62305183), and partially funded by the Deutsche Forschungsgemeinschaft (DFG, Cz 55/61-1).

About Light: Advanced Manufacturing

The Light: Advanced Manufacturing is a new, highly selective, open-access, and free of charge international sister journal of the Nature Journal Light: Science & Applications. It will primarily publish innovative research in all modern areas of preferred light-based manufacturing, including fundamental and applied research as well as industrial innovations.

Paper title: SGARNet: a deep artifact removal approach for lensless multi-core fiber imaging
Attached files
  • MCF transmission process: Fiber cores sample the ground truth (GT) via locally weighted averaging; the sampled field is then convolved with the PSF of each core, yielding a degraded image with honeycomb artifacts.
  • a Raw images of the USAF 1951 resolution test target acquired by lensless imaging at the distal facet of MCF. b SGARNet–restored images without honeycomb artifacts. c, d Intensity profiles along dashed lines L1 and L2 (marked by red arrows in a), respectively, where the horizontal axes represent the actual physical dimensions at the MCF distal facet. e Example of experimentally observed biological sample sections. f-i SGARNet-restored images of biological tissue sections. From left to right: longitudinal section of wheat caryopsis, neural tissue, agaric section, transverse section of a woody dicot stem.
06/05/2026 TranSpread
Regions: North America, United States, Asia, China
Keywords: Science, Physics

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