Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, 100094, China.
State Key Laboratory Breeding Base of Dao-di Herbs, National Resource Center for Chinese Materia Medica, Chinese Academy of Chinese Medical Sciences, Beijing, 100700, China.
Sci Rep. 2024 Mar 26;14(1):7209. doi: 10.1038/s41598-024-57904-3.
P. ginseng is a precious traditional Chinese functional food, which is used for both medicinal and food purposes, and has various effects such as immunomodulation, anti-tumor and anti-oxidation. The growth year of P. ginseng has an important impact on its medicinal and economic values. Fast and nondestructive identification of the growth year of P. ginseng is crucial for its quality evaluation. In this paper, we propose a FC-CNN network that incorporates spectral and spatial features of hyperspectral images to characterize P. ginseng from different growth years. The importance ranking of the spectra was obtained using the random forest method for optimal band selection. Based on the hyperspectral reflectance data of P. ginseng after radiometric calibration and the images of the best five VNIR bands and five SWIR bands selected, the year-by-year identification of P. ginseng age and its identification experiments for food and medicinal purposes were conducted, and the FC-CNN network and its FCNN and CNN branch networks were tested and compared in terms of their effectiveness in the identification of P. ginseng growth years. It has been experimentally verified that the best year-by-year recognition was achieved by utilizing images from five visible and near-infrared important bands and all spectral curves, and the recognition accuracy of food and medicinal use reached 100%. The FC-CNN network is significantly better than its branching model in the effect of edible and medicinal identification. The results show that for P. ginseng growth year identification, VNIR images have much more useful information than SWIR images. Meanwhile, the FC-CNN network utilizing the spectral and spatial features of hyperspectral images is an effective method for the identification of P. ginseng growth year.
人参是一种珍贵的传统中药,既是药材又是食品,具有免疫调节、抗肿瘤、抗氧化等多种功效。人参的生长年限对其药用和经济价值有重要影响。快速无损地识别人参的生长年限,对于其质量评价至关重要。本文提出了一种结合高光谱图像光谱和空间特征的 FC-CNN 网络,用于从不同生长年限的人参中进行特征描述。采用随机森林方法对光谱进行重要性排序,实现了最优波段选择。在对人参高光谱反射率数据进行辐射定标和选择的最佳 5 个 VNIR 波段和 5 个 SWIR 波段的图像后,对人参的逐年识别及其对食品和药用目的的识别实验进行了研究,并对 FC-CNN 网络及其 FCNN 和 CNN 分支网络在人参生长年限识别中的有效性进行了测试和比较。实验验证了利用 5 个可见近红外重要波段和所有光谱曲线的图像,可实现最佳的逐年识别,食品和药用识别的准确率达到 100%。FC-CNN 网络在食用和药用识别效果方面明显优于其分支模型。结果表明,对于人参生长年限的识别,VNIR 图像比 SWIR 图像具有更多有用的信息。同时,利用高光谱图像光谱和空间特征的 FC-CNN 网络是一种有效的人参生长年限识别方法。