4.7 Article

RamanCMP: A Raman spectral classification acceleration method based on lightweight model and model compression techniques

期刊

ANALYTICA CHIMICA ACTA
卷 1278, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.aca.2023.341758

关键词

Raman spectroscopy; RamanCMP; Lightweight model; Model compression

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This study optimizes the processing of Raman spectral data by using deep learning techniques and model compression algorithms. A model named RamanCompact (RamanCMP) is proposed and optimized based on evaluation metrics such as time, accuracy, sensitivity, specificity, and FLOPs. Experimental data from the RRUFF public dataset are used, and 1D-EfficientNet and 1D-DRSN models are employed to improve classification accuracy. Three model compression methods are designed. The results show that these methods can improve classification accuracy and reduce inference time.
In recent years, Raman spectroscopy combined with deep learning techniques has been widely used in various fields such as medical, chemical, and geological. However, there is still room for optimization of deep learning techniques and model compression algorithms for processing Raman spectral data. To further optimize deep learning models applied to Raman spectroscopy, in this study time, accuracy, sensitivity, specificity and floating point operations numbers(FLOPs) are used as evaluation metrics to optimize the model, which is named RamanCompact(RamanCMP). The experimental data used in this research are selected from the RRUFF public dataset, which consists of 723 Raman spectroscopy data samples from 10 different mineral categories. In this paper, 1D-EfficientNet adapted to the spectral data as well as 1D-DRSN are proposed to improve the model classification accuracy. To achieve better classification accuracy while optimizing the time parameters, three model compression methods are designed: knowledge distillation using 1D-EfficientNet model as a teacher model to train convolutional neural networks(CNN), proposing a channel conversion method to optimize 1D-DRSN model, and using 1D-DRSN model as a feature extractor in combination with linear discriminant analysis (LDA) model for classification. Compared with the traditional LDA and CNN models, the accuracy of 1D-EfficientNet and 1D-DRSN is improved by more than 20%. The time of the distilled model is reduced by 9680.9s compared with the teacher model 1D-EfficientNet under the condition of losing 2.07% accuracy. The accuracy of the distilled model is improved by 20% compared to the CNN student model while keeping inference efficiency constant. The 1D-DRSN optimized with channel conversion method saves 60% inference time of the original 1DDRSN model. Feature extraction reduces the inference time of 1D-DRSN model by 93% with 94.48% accuracy. This study innovatively combines lightweight models and model compression algorithms to improve the classification speed of deep learning models in the field of Raman spectroscopy, forming a complete set of analysis methods and laying the foundation for future research.

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