School of Computer Science and Technology, Tiangong University, Tianjin 300387, China.
School of Computer Science and Technology, Tiangong University, Tianjin 300387, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2022 Mar 5;268:120633. doi: 10.1016/j.saa.2021.120633. Epub 2021 Nov 17.
Aflatoxin is a highly toxic substance dispersed in peanuts, which seriously harms the health of humans and animals. In this paper, we propose a new method for aflatoxin B1(AFB1) detection inspired by quantitative remote sensing. Firstly, we obtained the relative content of AFB1 at the sub-pixel level by subpixel decomposition (endmember extraction, nonnegative matrix decomposition). Then we modified the transfer learning models (LeNet5, AlexNet, VGG16, and ResNet18) to construct a deep learning regression network for quantitative detection of AFB1. There are 67,178 pixels used for training and 67,164 pixels used for testing. After subpixel decomposition, each aflatoxin pixel was determined to contain content, and each pixel had 400 hyperspectral values (415-799 nm). The experimental results showed that, among the four models, the modified ResNet18 model achieved the best effect, with R of 0.8898, RMSE of 0.0138, and RPD of 2.8851. Here, we implemented a sub-pixel model for quantitative AFB1 detection and proposed a regression method based on deep learning. Meanwhile, the modified convolution classification model has high predictive ability and robustness. This method provides a new scheme in designing the sorting machine and has practical value.
黄曲霉毒素是分散在花生中的一种高毒性物质,严重危害人类和动物的健康。在本文中,我们受到定量遥感的启发,提出了一种用于检测黄曲霉毒素 B1(AFB1)的新方法。首先,我们通过亚像素分解(端元提取、非负矩阵分解)获得了亚像素水平的 AFB1 相对含量。然后,我们对迁移学习模型(LeNet5、AlexNet、VGG16 和 ResNet18)进行了修改,构建了一个用于 AFB1 定量检测的深度学习回归网络。有 67,178 个像素用于训练,67,164 个像素用于测试。在亚像素分解后,每个黄曲霉毒素像素都被确定包含含量,每个像素有 400 个高光谱值(415-799nm)。实验结果表明,在这四个模型中,修改后的 ResNet18 模型效果最好,R 为 0.8898,RMSE 为 0.0138,RPD 为 2.8851。在这里,我们实现了一个用于定量 AFB1 检测的亚像素模型,并提出了一种基于深度学习的回归方法。同时,修改后的卷积分类模型具有很高的预测能力和鲁棒性。该方法为设计分拣机提供了新的方案,具有实用价值。