Hyperspectral imaging for classification of bulk grain samples with deep convolutional neural networks

IF 1.6 4区 化学 Q3 CHEMISTRY, APPLIED
E. Dreier, K. Sørensen, Toke Lund-Hansen, B. Jespersen, K. S. Pedersen
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引用次数: 3

Abstract

Near Infrared hyperspectral imaging (HSI) offers a fast and non-destructive method for seed quality assessment through combining spectroscopy and imaging. Recently, convolutional neural networks (CNN) have shown to be promising tools for red-green-blue (RGB) image or spectral cereal classification. This paper describes the design and implementation of deep CNN models capable of utilizing both the spatial and spectral dimension of HSI data simultaneously for analysis of bulk grain samples with densely packed kernels. Classification of eight grain samples, including six different wheat varieties, were used as a test case. The study shows that the CNN architecture ResNet, originally designed for RGB images, can be adapted to use the full spatio-spectral dimension of the HSI data through adding a linear down sample layer prior to the conventional ResNet architecture. Using traditional spectral pre-processing methods before passing the data to the CNN does not improve the classification accuracy of the networks, while a channel-wise image standardization improves the accuracy significantly. The modified ResNet applied to the full spatio-spectral dimension has a classification accuracy of up to 99.75 ± 0.02%, outperforming both purely spectral (86.5 ± 0.1%) and purely spatial (98.70 ± 0.01%) based methods in terms of accuracy, indicating that utilizing spatio-spectral correlation can improve sample classification, but also that grain classification is primarily solved using spatial information. The findings reported in this paper demonstrate how CNN networks can be designed to leverage spatio-spectral information in hyperspectral data. The combination of HSI and spatio-spectral CNN networks shows a possible method for fast prediction of bulk grain quality parameters where both spectral and spatial properties of the grains are important.
利用深度卷积神经网络对大块谷物样本进行高光谱成像分类
近红外高光谱成像(HSI)通过光谱和成像相结合,为种子质量评估提供了一种快速、无损的方法。最近,卷积神经网络(CNN)已被证明是用于红-绿-蓝(RGB)图像或光谱谷物分类的有前途的工具。本文描述了深度CNN模型的设计和实现,该模型能够同时利用HSI数据的空间和光谱维度来分析具有密集堆积内核的散装谷物样本。八个谷物样本的分类,包括六个不同的小麦品种,被用作一个测试案例。研究表明,最初为RGB图像设计的CNN架构ResNet可以通过在传统ResNet架构之前添加线性下采样层来适应使用HSI数据的全空间-光谱维度。在将数据传递给CNN之前使用传统的光谱预处理方法并不能提高网络的分类精度,而通道图像标准化显著提高了精度。应用于全空间-光谱维度的改进ResNet的分类精度高达99.75±0.02%,在精度方面优于纯光谱(86.5±0.1%)和纯空间(98.70±0.01%)方法,表明利用空间-光谱相关性可以改进样本分类,而且粮食分类主要是利用空间信息来解决的。本文报道的研究结果表明,如何设计CNN网络来利用高光谱数据中的空间光谱信息。HSI和空间-光谱CNN网络的结合显示了一种快速预测散装谷物质量参数的可能方法,其中谷物的光谱和空间特性都很重要。
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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
35
审稿时长
6 months
期刊介绍: JNIRS — Journal of Near Infrared Spectroscopy is a peer reviewed journal, publishing original research papers, short communications, review articles and letters concerned with near infrared spectroscopy and technology, its application, new instrumentation and the use of chemometric and data handling techniques within NIR.
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