National Engineering Research Center for Agro-Ecological Big Data Analysis & Application, Anhui University, 111 Jiulong Road Hefei, China.
National Engineering Research Center for Agro-Ecological Big Data Analysis & Application, Anhui University, 111 Jiulong Road Hefei, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2020 Jun 15;234:118237. doi: 10.1016/j.saa.2020.118237. Epub 2020 Mar 6.
The phenomena of rice adulteration and shoddy rice arise continuously in high-quality rice and reduce the interests of producers, consumers and traders. Hyperspectral imaging (HSI) was conducted to determine rice variety using a deep learning network with multiple features, namely, spectroscopy, texture and morphology. HSI images of 10 representative high-quality rice varieties in China were measured. Spectroscopy and morphology were extracted from HSI images and binary images in region of interest, respectively. And texture was obtained from the monochromatic images of characteristic wavelengths which were highly correlated with rice varieties. A deep learning network, namely principal component analysis network (PCANet), was adopted with these features to develop classification models for determining rice variety, and machine learning methods as K-nearest neighbour and random forest were used to compare with PCANet. Meanwhile, multivariate scatter correction, standard normal variate, Savitzky-Golay smoothing and Savitzky-Golay's first-order were applied to eliminate spectral interference, and principal component analysis (PCA) was performed to obtain the main information of high-dimensional features. Multi-feature fusion improved recognition accuracy, and PCANet demonstrated considerable advantage in classification performance. The best result was achieved by PCANet with PCA-processed spectroscopic and texture features with correct classification rates of 98.66% and 98.57% for the training and prediction sets, respectively. In summary, the proposed method provides an accurate identification of rice variety and can be easily extended to the classification, attribution and grading of other agricultural products.
优质大米中不断出现掺假和劣质大米的现象,损害了生产者、消费者和贸易商的利益。本研究采用深度学习网络,结合光谱、纹理和形态等多种特征,利用高光谱图像(HSI)对大米品种进行鉴定。本研究共测量了中国 10 种具有代表性的优质大米品种的 HSI 图像,从 HSI 图像和感兴趣区域的二值图像中分别提取光谱和形态特征,从与大米品种高度相关的特征波长的单色图像中提取纹理特征。采用主成分分析网络(PCANet)与这些特征相结合,建立了用于确定大米品种的分类模型,并采用 K-最近邻和随机森林等机器学习方法与 PCANet 进行比较。同时,采用多元散射校正、标准正态变量、Savitzky-Golay 平滑和 Savitzky-Golay 一阶导数消除光谱干扰,进行主成分分析(PCA)以获取高维特征的主要信息。多特征融合提高了识别精度,PCANet 在分类性能方面具有显著优势。经 PCA 处理后的光谱和纹理特征的 PCANet 获得了最佳结果,其对训练集和预测集的正确分类率分别为 98.66%和 98.57%。综上所述,该方法为大米品种的准确鉴定提供了一种可行的方案,且易于扩展到其他农产品的分类、归因和分级。