School of Electrical and Information Engineering of Jiangsu University, Zhenjiang 212013, China.
School of Electrical and Information Engineering of Jiangsu University, Zhenjiang 212013, China.
Food Chem. 2020 Aug 15;321:126503. doi: 10.1016/j.foodchem.2020.126503. Epub 2020 Feb 27.
The aim of this research was to develop a deep learning method which involved wavelet transform (WT) and stack convolution auto encoder (SCAE) for extracting compound heavy metals detection deep features of lettuce leaves. WT was used to decompose the visible-near infrared (400.68-1001.61 nm) hyperspectral image of lettuce sample in the multi-scale transform to acquire the optimal wavelet decomposition layers of cadmium (Cd) and lead (Pb) content prediction, and then using SCAE to perform deep feature learning on spectral data under optimal wavelet decomposition layer. Support vector machine regression (SVR) models established by the deep features obtained by WT-SCAE achieved reasonable performance with coefficient of determination for prediction (R) of 0.9319, root mean square error for prediction (RMSEP) of 0.04988 mg/kg and the relative percent different (RPD) of 3.187 for Cd content, and with R of 0.9418, RMSEP of 0.04123 mg/kg and RPD of 3.214 for Pb content. The results of this study confirmed the great potential for detecting compound heavy metals by the combination of hyperspectral technique and deep learning algorithm.
本研究旨在开发一种基于小波变换(WT)和堆叠卷积自动编码器(SCAE)的深度学习方法,用于提取生菜叶片中复合重金属检测的深层特征。WT 用于对生菜样本的可见-近红外(400.68-1001.61nm)高光谱图像进行多尺度变换,以获取镉(Cd)和铅(Pb)含量预测的最优小波分解层,然后使用 SCAE 在最优小波分解层下对光谱数据进行深度特征学习。通过 WT-SCAE 获得的深度特征建立的支持向量机回归(SVR)模型具有合理的性能,Cd 含量的预测决定系数(R)为 0.9319,预测均方根误差(RMSEP)为 0.04988mg/kg,相对差异(RPD)为 3.187;Pb 含量的 R 为 0.9418,RMSEP 为 0.04123mg/kg,RPD 为 3.214。本研究结果证实了将高光谱技术与深度学习算法相结合检测复合重金属的巨大潜力。