School of Food Science and Engineering, South China University of Technology, Guangzhou 510641, China; Academy of Contemporary Food Engineering, South China University of Technology, Guangzhou Higher Education Mega Centre, Guangzhou 510006, China; Engineering and Technological Research Centre of Guangdong Province on Intelligent Sensing and Process Control of Cold Chain Foods, & Guangdong Province Engineering Laboratory for Intelligent Cold Chain Logistics Equipment for Agricultural Products, Guangzhou Higher Education Mega Centre, Guangzhou 510006, China.
School of Food Science and Engineering, South China University of Technology, Guangzhou 510641, China; Academy of Contemporary Food Engineering, South China University of Technology, Guangzhou Higher Education Mega Centre, Guangzhou 510006, China; Engineering and Technological Research Centre of Guangdong Province on Intelligent Sensing and Process Control of Cold Chain Foods, & Guangdong Province Engineering Laboratory for Intelligent Cold Chain Logistics Equipment for Agricultural Products, Guangzhou Higher Education Mega Centre, Guangzhou 510006, China; Food Refrigeration and Computerized Food Technology (FRCFT), Agriculture and Food Science Centre, University College Dublin, National University of Ireland, Belfield, Dublin 4, Ireland.
Food Chem. 2024 May 30;441:138344. doi: 10.1016/j.foodchem.2023.138344. Epub 2024 Jan 6.
This study developed an innovative approach that combines a colourimetric sensor array (CSA) composed of twelve pH-response dyes with advanced algorithms, aiming to detect amine gases and assess the freshness of chilled beef. With the assistance of multivariate statistical analysis, the sensor array can effectively distinguish five amine gases and enable rapid quantification of trimethylamine vapour with a limit of detection (LOD) of 8.02 ppb and visually monitor the fresh levels of chilled beef. Moreover, the utilization of deep learning models (ResNet34, VGG16, and GoogleNet) for chilled beef freshness evaluation achieved an overall accuracy of 98.0 %. Furthermore, t-distributed stochastic neighbour embedding (t-SNE) visualized the feature extraction process and provided explanations to understand the classification process of deep learning. The results demonstrated that applying deep learning techniques in the process of pattern recognition of CSA can help in realizing the rapid, robust, and accurate assessment of chilled beef freshness.
本研究开发了一种创新的方法,将由 12 种 pH 响应染料组成的比色传感器阵列 (CSA) 与先进的算法相结合,旨在检测胺气并评估冷藏牛肉的新鲜度。借助多元统计分析,传感器阵列可以有效区分五种胺气,并能够快速定量三甲基胺蒸气,检测限 (LOD) 为 8.02 ppb,还可以直观监测冷藏牛肉的新鲜度。此外,利用深度学习模型(ResNet34、VGG16 和 GoogleNet)对冷藏牛肉新鲜度进行评估,整体准确率达到 98.0%。此外,t 分布随机邻嵌入 (t-SNE) 可视化了特征提取过程,并提供了解释,以帮助理解深度学习的分类过程。结果表明,在 CSA 的模式识别过程中应用深度学习技术有助于实现冷藏牛肉新鲜度的快速、稳健和准确评估。