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Autori principali: Ding, Guangrui, Liu, Chang, Yin, Jiaze, Teng, Xinyan, Tan, Yuying, He, Hongjian, Lin, Haonan, Tian, Lei, Cheng, Ji-Xin
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2409.09910
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author Ding, Guangrui
Liu, Chang
Yin, Jiaze
Teng, Xinyan
Tan, Yuying
He, Hongjian
Lin, Haonan
Tian, Lei
Cheng, Ji-Xin
author_facet Ding, Guangrui
Liu, Chang
Yin, Jiaze
Teng, Xinyan
Tan, Yuying
He, Hongjian
Lin, Haonan
Tian, Lei
Cheng, Ji-Xin
contents Hyperspectral imaging has been widely used for spectral and spatial identification of target molecules, yet often contaminated by sophisticated noise. Current denoising methods generally rely on independent and identically distributed noise statistics, showing corrupted performance for non-independent noise removal. Here, we demonstrate Self-supervised PErmutation Noise2noise Denoising (SPEND), a deep learning denoising architecture tailor-made for removing non-independent noise from a single hyperspectral image stack. We utilize hyperspectral stimulated Raman scattering and mid-infrared photothermal microscopy as the testbeds, where the noise is spatially correlated and spectrally varied. Based on single hyperspectral images, SPEND permutates odd and even spectral frames to generate two stacks with identical noise properties, and uses the pairs for efficient self-supervised noise-to-noise training. SPEND achieved an 8-fold signal-to-noise improvement without having access to the ground truth data. SPEND enabled accurate mapping of low concentration biomolecules in both fingerprint and silent regions, demonstrating its robustness in sophisticated cellular environments.
format Preprint
id arxiv_https___arxiv_org_abs_2409_09910
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Self-Supervised Elimination of Non-Independent Noise in Hyperspectral Imaging
Ding, Guangrui
Liu, Chang
Yin, Jiaze
Teng, Xinyan
Tan, Yuying
He, Hongjian
Lin, Haonan
Tian, Lei
Cheng, Ji-Xin
Image and Video Processing
Hyperspectral imaging has been widely used for spectral and spatial identification of target molecules, yet often contaminated by sophisticated noise. Current denoising methods generally rely on independent and identically distributed noise statistics, showing corrupted performance for non-independent noise removal. Here, we demonstrate Self-supervised PErmutation Noise2noise Denoising (SPEND), a deep learning denoising architecture tailor-made for removing non-independent noise from a single hyperspectral image stack. We utilize hyperspectral stimulated Raman scattering and mid-infrared photothermal microscopy as the testbeds, where the noise is spatially correlated and spectrally varied. Based on single hyperspectral images, SPEND permutates odd and even spectral frames to generate two stacks with identical noise properties, and uses the pairs for efficient self-supervised noise-to-noise training. SPEND achieved an 8-fold signal-to-noise improvement without having access to the ground truth data. SPEND enabled accurate mapping of low concentration biomolecules in both fingerprint and silent regions, demonstrating its robustness in sophisticated cellular environments.
title Self-Supervised Elimination of Non-Independent Noise in Hyperspectral Imaging
topic Image and Video Processing
url https://arxiv.org/abs/2409.09910