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Deep learning for classification of time series spectral images using combined multi-temporal and spectral features

Jun‐Li Xu, Siewert Hugelier, Hongyan Zhu, Aoife Gowen

2020Analytica Chimica Acta31 citationsDOIOpen Access PDF

Abstract

Time series spectral imaging facilitates a comprehensive understanding of the underlying dynamics of multi-component systems and processes. Most existing classification strategies focus exclusively on the spectral features and they tend to fail when spectra between classes closely resemble each other. This work proposes a hybrid approach of principal component analysis (PCA) and deep learning (i.e., long short-term memory (LSTM) model) for incorporating and utilizing the combined multi-temporal and spectral information from time series spectral imaging datasets. An example data, consisting of times series spectral images of casein-based biopolymers, was used to illustrate and evaluate the proposed hybrid approach. Compared to using partial least squares discriminant analysis (PLSDA), the proposed PCA-LSTM method applying the same spectral pretreatment achieved substantial improvement in the pixel-wise classification (i.e., accuracy increased from 59.97% of PLSDA to 85.73% of PCA-LSTM). When projecting the pixel-wise model to object-based classification, the PCA-LSTM approach produced an accuracy of 100%, correctly classifying the whole 21 film samples in the independent test set, while PLSDA only led to an accuracy of 80.95%. The proposed method is powerful and versatile in utilizing distinctive characteristics of time dependencies from multivariate time series dataset, which could be adapted to suit non-congruent images over time sequences as well as spectroscopic data.

Topics & Concepts

Principal component analysisPattern recognition (psychology)Artificial intelligenceLinear discriminant analysisSeries (stratigraphy)PixelPartial least squares regressionTime seriesComputer scienceMachine learningPaleontologyBiologySpectroscopy and Chemometric AnalysesAdvanced Chemical Sensor TechnologiesIdentification and Quantification in Food
Deep learning for classification of time series spectral images using combined multi-temporal and spectral features | Litcius