School of Integrated Technology, Gwangju Institute of Science and Technology (GIST), Gwangju 61005, South Korea.
Department of Biomedical Science & Engineering, Gwangju Institute of Science and Technology (GIST), Gwangju 61005, South Korea.
Food Chem. 2021 Aug 1;352:129329. doi: 10.1016/j.foodchem.2021.129329. Epub 2021 Feb 23.
A simple, novel, rapid, and non-destructive spectroscopic method that employs the deep spectral network for beef-freshness classification was developed. The deep-learning-based model classified beef freshness by learning myoglobin information and reflectance spectra over different freshness states. The reflectance spectra (480-920 nm) were measured from 78 beef samples for 17 days, and the datasets were sorted into three freshness classes based on their pH values. Myoglobin information showed statistically significant differences depending on the freshness; consequently, it was utilized as a crucial parameter for classification. The model exhibited improved performance when the reflectance spectra were combined with the myoglobin information. The accuracy of the proposed model improved to 91.9%, whereas that of the single-spectra model was 83.6%. Further, a high value for the area under the receiver operating characteristic curve (0.958) was recorded. This study provides a basis for future studies on the investigation of myoglobin information associated with meat freshness.
本研究提出了一种简单、新颖、快速且无损的光谱方法,该方法采用深度光谱网络进行牛肉新鲜度分类。基于深度学习的模型通过学习肌红蛋白信息和不同新鲜状态下的反射光谱来对牛肉新鲜度进行分类。从 78 个牛肉样本中测量了反射光谱(480-920nm),并根据 pH 值将数据集分为三个新鲜度类别。肌红蛋白信息因新鲜度而异,具有统计学显著性差异,因此,它被用作分类的关键参数。当将反射光谱与肌红蛋白信息结合使用时,模型的性能得到了提高。所提出模型的准确性提高到 91.9%,而单一光谱模型的准确性为 83.6%。此外,还记录了较高的接收器操作特性曲线下面积值(0.958)。本研究为未来研究与肉品新鲜度相关的肌红蛋白信息提供了基础。