用于近红外光谱成像的深度学习分类器:教程

Q3 Chemistry Journal of Spectral Imaging Pub Date : 2020-12-24 DOI:10.1255/jsi.2020.a19
Jun‐Li Xu, C. Riccioli, A. Herrero-Langreo, A. Gowen
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引用次数: 5

摘要

深度学习(DL)最近在语音识别、机器翻译和视觉识别等广泛的应用中取得了相当大的成功。本教程提供了将DL技术应用于光谱图像像素分类的指南和有用策略。一维卷积神经网络(1-D-CNN)用于从谱域中提取特征,随后用于分类。与主要检查光谱背景的光谱图像的传统分类方法不同,应用三维(3-D)CNN来同时提取空间和光谱特征,以提高分类精度。本教程以逐步的方式解释了如何开发一维CNN和三维CNN模型,以区分食品真实性背景下的光谱成像数据。所提供的示例图像数据包括在NIR范围(943–1643 nm)内成像的三种膨化谷物。本教程在MATLAB环境中介绍,并提供了使用的脚本和数据集。从光谱图像预处理(背景去除和光谱预处理)开始,介绍了CNN模型开发中遇到的典型步骤。所提供的示例数据集表明,与传统方法相比,深度学习方法可以提高分类精度,将在独立图像上测试的模型的精度从使用偏最小二乘判别分析的92.33%提高到使用像素级3-CNN模型的99.4%。文章最后讨论了DL技术在光谱图像分类中应用的挑战和建议。
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Deep learning classifiers for near infrared spectral imaging: a tutorial
Deep learning (DL) has recently achieved considerable successes in a wide range of applications, such as speech recognition, machine translation and visual recognition. This tutorial provides guidelines and useful strategies to apply DL techniques to address pixel-wise classification of spectral images. A one-dimensional convolutional neural network (1-D CNN) is used to extract features from the spectral domain, which are subsequently used for classification. In contrast to conventional classification methods for spectral images that examine primarily the spectral context, a three-dimensional (3-D) CNN is applied to simultaneously extract spatial and spectral features to enhance classificationaccuracy. This tutorial paper explains, in a stepwise manner, how to develop 1-D CNN and 3-D CNN models to discriminate spectral imaging data in a food authenticity context. The example image data provided consists of three varieties of puffed cereals imaged in the NIR range (943–1643 nm). The tutorial is presented in the MATLAB environment and scripts and dataset used are provided. Starting from spectral image pre-processing (background removal and spectral pre-treatment), the typical steps encountered in development of CNN models are presented. The example dataset provided demonstrates that deep learning approaches can increase classification accuracy compared to conventional approaches, increasing the accuracy of the model tested on an independent image from 92.33 % using partial least squares-discriminant analysis to 99.4 % using 3-CNN model at pixel level. The paper concludes with a discussion on the challenges and suggestions in the application of DL techniques for spectral image classification.
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来源期刊
Journal of Spectral Imaging
Journal of Spectral Imaging Chemistry-Analytical Chemistry
CiteScore
3.90
自引率
0.00%
发文量
11
审稿时长
22 weeks
期刊介绍: JSI—Journal of Spectral Imaging is the first journal to bring together current research from the diverse research areas of spectral, hyperspectral and chemical imaging as well as related areas such as remote sensing, chemometrics, data mining and data handling for spectral image data. We believe all those working in Spectral Imaging can benefit from the knowledge of others even in widely different fields. We welcome original research papers, letters, review articles, tutorial papers, short communications and technical notes.
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