IVCVLGMar 25, 2021

Zero-shot super-resolution with a physically-motivated downsampling kernel for endomicroscopy

arXiv:2103.14015v114 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of improving image quality in endomicroscopy for medical applications, where ground-truth data is scarce, representing an incremental advance by adapting existing zero-shot methods to domain-specific needs.

The paper tackles the problem of super-resolution in endomicroscopy without ground-truth high-resolution images by proposing a zero-shot self-supervised approach, achieving superior image quality compared to baseline methods and competitive performance against supervised techniques, with experts preferring it in user studies.

Super-resolution (SR) methods have seen significant advances thanks to the development of convolutional neural networks (CNNs). CNNs have been successfully employed to improve the quality of endomicroscopy imaging. Yet, the inherent limitation of research on SR in endomicroscopy remains the lack of ground truth high-resolution (HR) images, commonly used for both supervised training and reference-based image quality assessment (IQA). Therefore, alternative methods, such as unsupervised SR are being explored. To address the need for non-reference image quality improvement, we designed a novel zero-shot super-resolution (ZSSR) approach that relies only on the endomicroscopy data to be processed in a self-supervised manner without the need for ground-truth HR images. We tailored the proposed pipeline to the idiosyncrasies of endomicroscopy by introducing both: a physically-motivated Voronoi downscaling kernel accounting for the endomicroscope's irregular fibre-based sampling pattern, and realistic noise patterns. We also took advantage of video sequences to exploit a sequence of images for self-supervised zero-shot image quality improvement. We run ablation studies to assess our contribution in regards to the downscaling kernel and noise simulation. We validate our methodology on both synthetic and original data. Synthetic experiments were assessed with reference-based IQA, while our results for original images were evaluated in a user study conducted with both expert and non-expert observers. The results demonstrated superior performance in image quality of ZSSR reconstructions in comparison to the baseline method. The ZSSR is also competitive when compared to supervised single-image SR, especially being the preferred reconstruction technique by experts.

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