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Deep learning for ‘artefact' removal in infrared spectroscopy

机译:深入学习“人工制品”在红外光谱中去除

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It has been well recognized that infrared spectra of microscopically heterogeneous media do not merely reflect the absorption of the sample but are influenced also by geometric factors and the wave nature of light causing scattering, reflection, interference, etc. These phenomena often occur simultaneously in complex samples like tissues and manifest themselves as intense baseline profiles, fringes, band distortion and band intensity changes in a measured IR spectrum. The information on the molecular level contained in IR spectra is thus entangled with the geometric structure of a sample and the optical model behind it, which largely hinders the data interpretation and in many cases renders the Beer–Lambert law invalid. It is required to recover the pure absorption (i.e., absorbance) of the sample from the measurement (i.e., apparent absorbance), that is, to remove the ‘artefacts' caused merely by optical influences. To do so, we propose an artefact removal approach based on a deep convolutional neural network (CNN), specifically a 1-dimensional U-shape convolutional neural network (1D U-Net), and based our study on poly(methyl methacrylate) (PMMA) as materials. To start, a simulated dataset composed of apparent absorbance and absorbance pairs was generated according to the Mie-theory for PMMA spheres. After a data augmentation procedure, this dataset was utilized to train the 1D U-Net aiming to transform the input apparent absorbance into the corrected absorbance. The performance of the artefact removal was evaluated by the hit-quality-index (HQI) between the corrected and the true absorbance. Based on the prediction and the HQI of two experimental and one simulated independent testing datasets, we could demonstrate that the network was able to retrieve the absorbance very well, even in cases where the absorbance is completely overwhelmed by extremely large ‘artefacts'. As the testing datasets bear different patterns of absorbance and ‘artefacts' to the trainin
机译:已经很好地认识到,微观异构介质的红外光谱不仅反映样品的吸收,而且受到几何因素的影响,也受到散射,反射,干扰等的光的影响。这些现象通常在复杂的同时发生样品如组织,并将其作为强烈的基线剖面,条纹,带状和带强度在测量的IR光谱中变化。因此,IR光谱中包含的分子水平的信息与样品的几何结构缠结,其背后的光学模型,这在很大程度上阻碍了数据解释,并且在许多情况下呈现出啤酒 - 兰伯特法无效。需要从测量(即表观吸光度)中恢复样品的纯吸收(即,吸收),即,以除去仅通过光学影响而引起的“人工制品”。为此,我们提出了一种基于深度卷积神经网络(CNN)的人工制品去除方法,特别是一维U形卷积神经网络(1D U-Net),并基于我们对聚(甲基丙烯酸甲酯)的研究( PMMA)作为材料。为了开始,根据PMMA球体的MIE-理论产生一种由表观吸光度和吸光度对组成的模拟数据集。在数据增强程序之后,利用该数据集训练1D U-Net,旨在将输入表观吸光度转化为校正的吸光度。通过校正和真正吸光度之间的麦芽质量指数(HQI)评估人工制品去除的性能。基于两个实验和一个模拟独立测试数据集的预测和HQI,我们可以证明网络能够非常好地检索吸光度,即使在吸光度完全被极大的“人工制品”完全不堪这里的情况下。由于测试数据集具有不同的吸光度模式和“训练”的“人工制品”

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