Zhang Deng-Ting, Yang Jian, Cheng Ming-En, Wang Hui, Peng Dai-Yin, Zhang Xiao-Bo
School of Pharmacy,Anhui University of Chinese Medicine Hefei 230012,China State Key Laboratory for Quality Ensurance and Sustainable Use of Dao-di Herbs,National Resource Center for Chinese Materia Medica,China Academy of Chinese Medical Sciences Beijing 100700,China.
State Key Laboratory for Quality Ensurance and Sustainable Use of Dao-di Herbs,National Resource Center for Chinese Materia Medica,China Academy of Chinese Medical Sciences Beijing 100700,China.
Zhongguo Zhong Yao Za Zhi. 2023 Aug;48(16):4347-4361. doi: 10.19540/j.cnki.cjcmm.20230512.103.
In this study, visual-near infrared(VNIR), short-wave infrared(SWIR), and VNIR + SWIR fusion hyperspectral data of Polygonatum cyrtonema from different geographical origins were collected and preprocessed by first derivative(FD), second derivative(SD), Savitzky-Golay smoothing(S-G), standard normalized variate(SNV), multiplicative scatter correction(MSC), FD+S-G, and SD+S-G. Three algorithms, namely random forest(RF), linear support vector classification(LinearSVC), and partial least squares discriminant analysis(PLS-DA), were used to establish the identification models of P. cyrtonema origin from three spatial scales, i.e., province, county, and township, respectively. Successive projection algorithm(SPA) and competitive adaptive reweighted sampling(CARS) were used to screen the characteristic bands, and the P. cyrtonema origin identification models were established according to the selected characteristic bands. The results showed that(1)after FD preprocessing of VNIR+SWIR fusion hyperspectral data, the accuracy of recognition models established using LinearSVC was the highest, reaching 99.97% and 99.82% in the province origin identification model, 100.00% and 99.46% in the county origin identification model, and 99.62% and 98.39% in the township origin identification model. The accuracy of province, county, and township origin identification models reached more than 98.00%.(2)Among the 26 characteristic bands selected by CARS, after FD pretreatment, the accuracy of origin identification models of different spatial scales was the highest using LinearSVC, reaching 98.59% and 97.05% in the province origin identification model, 97.79% and 94.75% in the county origin identification model, and 90.13% and 87.95% in the township origin identification model. The accuracy of identification models of different spatial scales established by 26 characteristic bands reached more than 87.00%. The results show that hyperspectral imaging technology can realize accurate identification of P. cyrtonema origin from different spatial scales.
本研究采集了不同地理来源的多花黄精的可见 - 近红外(VNIR)、短波红外(SWIR)以及VNIR + SWIR融合高光谱数据,并通过一阶导数(FD)、二阶导数(SD)、Savitzky - Golay平滑(S - G)、标准归一化变量(SNV)、多元散射校正(MSC)、FD + S - G和SD + S - G进行预处理。使用随机森林(RF)、线性支持向量分类(LinearSVC)和偏最小二乘判别分析(PLS - DA)三种算法,分别从省、县、乡三个空间尺度建立多花黄精产地的识别模型。采用连续投影算法(SPA)和竞争性自适应重加权采样(CARS)筛选特征波段,并根据所选特征波段建立多花黄精产地识别模型。结果表明:(1)VNIR + SWIR融合高光谱数据经FD预处理后,使用LinearSVC建立的识别模型准确率最高,在省产地识别模型中分别达到99.97%和99.82%,在县产地识别模型中分别达到100.00%和99.46%,在乡产地识别模型中分别达到99.62%和98.39%。省、县、乡产地识别模型的准确率均达到98.00%以上。(2)在CARS选择的26个特征波段中,经FD预处理后,不同空间尺度产地识别模型的准确率以LinearSVC最高,在省产地识别模型中分别达到98.59%和97.05%,在县产地识别模型中分别达到97.79%和94.75%,在乡产地识别模型中分别达到90.13%和87.95%。由26个特征波段建立的不同空间尺度识别模型的准确率均达到87.00%以上。结果表明,高光谱成像技术能够实现对不同空间尺度多花黄精产地的准确识别。