Self-Supervised Elimination of Non-Independent Noise in Hyperspectral Imaging

Guangrui Ding, Chang Liu, Jiaze Yin, Xinyan Teng, Yuying Tan, Hongjian He, Haonan Lin, Lei Tian, Ji-Xin Cheng
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Abstract

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.
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自监督消除高光谱成像中的非独立噪声
高光谱成像已被广泛用于目标分子的光谱和空间识别,但经常受到复杂噪声的污染。目前的去噪方法一般依赖于独立且同分布的噪声统计,在去除非独立噪声时会出现性能下降的情况。在这里,我们展示了自监督高光谱噪声去噪(SPEND),这是一种深度学习去噪架构,专为去除单个高光谱图像堆栈中的非独立噪声而量身定制。我们利用高光谱受激拉曼散射和中红外光热显微镜作为测试平台,其中的噪声具有空间相关性和光谱变化性。基于单幅高光谱图像,SPEND对奇数和偶数光谱帧进行排列,生成两组具有相同噪声属性的图像,并利用这两组图像进行高效的自监督噪声-噪声训练。SPEND 在不获取地面实况数据的情况下实现了 8 倍的信噪比改进。SPEND 能够准确绘制指纹区和无声区的低浓度生物分子图谱,证明了它在复杂细胞环境中的稳定性。
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