Dong Jian-E, Zhang Ji, Zuo Zhi-Tian, Wang Yuan-Zhong
College of Big Data and Intelligence Engineering, Southwest Forestry University, Kunming 650224, China.
Medicinal Plants Research Institute, Yunnan Academy of Agricultural Sciences, Kunming 650200, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2021 Mar 15;249:119211. doi: 10.1016/j.saa.2020.119211. Epub 2020 Nov 14.
Bolete is well-known and widely consumed mushroom in the world. However, its medicinal properties and nutritional are completely different from one species to another. Therefore, the consumers need a fast and effective detection method to discriminate their species. A new method using directly digital images of two-dimensional correlation spectroscopy (2DCOS) for the species discrimination with deep learning is proposed in this paper. In our study, a total of 2054 fruiting bodies of 21 wild-grown bolete species were collected in 52 regions from 2011 to 2014. Firstly, we intercepted 1750-400 cm fingerprint regions of each species from their mid-infrared (MIR) spectra, and converted them to 2DCOS spectra with matlab2017b. At the same time, we developed a specific method for the calculation of the 2DCOS spectra. Secondly, we established a deep residual convolutional neural network (Resnet) with 1848 (90%) 2DCOS spectral images. Therein, the discrimination of the bolete species using directly 2DCOS spectral images instead of data matric from the spectra was first to be reported. The results displayed that the respective identification accuracy of these samples was 100% in the training set and 99.76% in the test set. Then, 203 samples were accurately discriminated in 206 (10%) samples of external validation set. Thirdly, we employed t-SNE method to visualize and evaluate the spectral dataset. The result indicated that most samples can be clustered according to different species. Finally, a smartphone applications (APP) was developed based on the established 2DCOS spectral images strategy, which can make the discrimination of bolete mushrooms more easily in practice. In conclusion, deep learning method by using directly 2DCOS spectral image was considered to be an innovative and feasible way for the species discrimination of bolete mushrooms. Moreover, this method may be generalized to other edible mushrooms, food, herb and agricultural products in the further research.
牛肝菌是世界上广为人知且被广泛食用的蘑菇。然而,其药用特性和营养成分因物种而异。因此,消费者需要一种快速有效的检测方法来区分它们的种类。本文提出了一种利用二维相关光谱(2DCOS)直接数字图像结合深度学习进行物种鉴别的新方法。在我们的研究中,2011年至2014年期间在52个地区共采集了21种野生牛肝菌的2054个子实体。首先,我们从它们的中红外(MIR)光谱中截取每个物种1750 - 400厘米的指纹区域,并用matlab2017b将其转换为2DCOS光谱。同时,我们开发了一种计算2DCOS光谱的特定方法。其次,我们用1848张(90%)2DCOS光谱图像建立了一个深度残差卷积神经网络(Resnet)。其中,首次报道了直接使用2DCOS光谱图像而非光谱数据矩阵来鉴别牛肝菌物种。结果显示,这些样本在训练集中的各自识别准确率为100%,在测试集中为99.76%。然后,在外部验证集的206个(10%)样本中准确鉴别出了203个样本。第三,我们采用t - SNE方法对光谱数据集进行可视化和评估。结果表明,大多数样本可以根据不同物种进行聚类。最后,基于所建立的2DCOS光谱图像策略开发了一个智能手机应用程序(APP),这使得在实际中更容易鉴别牛肝菌。总之,直接使用2DCOS光谱图像的深度学习方法被认为是牛肝菌物种鉴别的一种创新且可行的方法。此外,在进一步的研究中,这种方法可能会推广到其他食用菌、食品、草药和农产品。