School of Mechatronics and Vehicle Engineering, East China Jiaotong University, Nanchang 330013, China.
Key Laboratory of Conveyance Equipment of the Ministry of Education, Nanchang 330013, China.
Biosensors (Basel). 2023 Jan 29;13(2):203. doi: 10.3390/bios13020203.
Browning is the most common physiological disease of Yali pears during storage. At the initial stage, browning only occurs in the tissues near the fruit core and cannot be detected from the appearance. The disease, if not identified and removed in time, will seriously undermine the quality and sale of the whole batch of fruit. Therefore, there is an urgent need to explore a method for early diagnosis of the browning in Yali pears. In order to realize the dynamic and online real-time detection of the browning in Yali pears, this paper conducted online discriminant analysis on healthy Yali pears and those with different degrees of browning using visible-near infrared (Vis-NIR) spectroscopy. The experimental results show that the prediction accuracy of the original spectrum combined with a 1D-CNN deep learning model reached 100% for the test sets of browned pears and healthy pears. Features extracted by the 1D-CNN method were converted into images by Gramian angular field (GAF) for PCA visual analysis, showing that deep learning had good performance in extracting features. In conclusion, Vis-NIR spectroscopy combined with the 1D-CNN discriminant model can realize online detection of browning in Yali pears.
褐变是鸭梨贮藏过程中最常见的生理性病害。在初期,褐变仅发生在靠近果心的组织中,从外观上无法检测到。如果不及时识别和去除,这种病害将严重破坏整批水果的质量和销售。因此,迫切需要探索一种鸭梨褐变的早期诊断方法。为了实现鸭梨褐变的动态和在线实时检测,本文采用可见-近红外(Vis-NIR)光谱法对健康鸭梨和不同程度褐变的鸭梨进行在线判别分析。实验结果表明,原始光谱结合一维卷积神经网络(1D-CNN)深度学习模型对褐变梨和健康梨的测试集的预测准确率达到 100%。通过 Gramian 角场(GAF)将 1D-CNN 方法提取的特征转换为图像进行 PCA 可视化分析,表明深度学习在特征提取方面具有良好的性能。总之,可见-近红外光谱结合 1D-CNN 判别模型可以实现鸭梨褐变的在线检测。