湖北农业科学 ›› 2024, Vol. 63 ›› Issue (8): 140-146.doi: 10.14088/j.cnki.issn0439-8114.2024.08.024

• 生产生长模型 • 上一篇    下一篇

烤后烟叶不同部位高光谱特征分析及判别模型构建

闫鼎1, 张义志2, 程森1, 蔡宪杰1, 董祥洲3, 杨悦章4, 岳耀稳3, 王大彬2, 林润英5   

  1. 1.上海烟草集团有限责任公司,上海 200082;
    2.中国农业科学院烟草研究所,山东 青岛 2661014;
    3.安徽皖南烟叶有限责任公司,安徽 宣城 242000;
    4.华环国际烟草有限公司,安徽 滁州 233121;
    5.福建省烟草公司龙岩市公司,福建 龙岩 364000
  • 收稿日期:2023-09-14 出版日期:2024-08-25 发布日期:2024-09-05
  • 通讯作者: 王大彬(1986-),男,助理研究员,博士,主要从事烟草化学成分光学分析,(电子信箱)wangdabin@caas.cn;林润英(1971-),农艺师,主要从事烟叶生产及原料研究,(电子信箱)372644839@qq.com。
  • 作者简介:闫 鼎(1983-),男,河南漯河人,工程师,硕士,主要从事烤烟烟叶原料研究工作,(电子信箱)yanding656@163.com。
  • 基金资助:
    中国农业科学院科技创新工程项目(ASTIP-TRIC06); 上海烟草集团有限责任公司科技项目(K2021-1-033P)

Analysis of hyperspectral characteristics from different positions of flue-cured tobacco and construction of discriminating models

YAN Ding1, ZHANG Yi-zhi2, CHENG Sen1, CAI Xian-jie1, DONG Xiang-zhou3, YANG Yue-zhang4, YUE Yao-wen3, WANG Da-bin2, LIN Run-ying5   

  1. 1. Shanghai Tobacco Group Co., Ltd., Shanghai 200082, China;
    2. Tobacco Research Institute of Chinese Academy of Agricultural Sciences, Qingdao 266101, Shandong, China;
    3. Anhui Wannan Tobacco Co., Ltd., Xuancheng 242000, Anhui, China;
    4. Huahuan International Tobacco Co., Ltd., Chuzhou 233121, Anhui, China;
    5. Longyan Branch of Fujian Tobacco Company, Longyan 364000, Fujian, China
  • Received:2023-09-14 Published:2024-08-25 Online:2024-09-05

摘要: 利用高光谱(400~1 700 nm)成像技术扫描得到3个部位(上B、中C、下X)烤后烟叶的高光谱图像,并提取其高光谱数据。采用相关性分析、主成分分析及方差分析研究了3个部位烟叶的高光谱特征,并构建5种识别烟叶部位的判别模型(SVM、KNN、RF、LightGBM和XGBoost)。结果表明,3个部位烟叶的光谱反射率为C>X>B(400~750 nm),B>C>X(750~1 400 nm),C>B≈X(1 400~1 700 nm)。3个部位烟叶的高光谱数据存在较强相关性,总体上可见光以及近红外波段在各自区域内相关性较强,而两者之间相关性较弱。共提取得到7个特征值大于1的主成分,方差累计贡献率接近1.00。3个部位烟叶的光谱反射率在450~550 nm和750~1 400 nm区域相互之间存在明显差异,中部叶在550~850 nm和1 400~1 700 nm分别与上、下部叶具有明显差异,上部叶在400~450 nm分别与中、下部叶差异明显,下部叶在680 nm附近分别与上、中部叶差异显著。SVM判别不同部位烟叶的表现最好,准确率、精确率、召回率和F1分数均达95%以上,LightGBM表现居中,各项指标在90%~95%,RF、KNN和XGBoost相对较差,各项指标在90%以下。

关键词: 高光谱特征, 烤后烟叶, 模型构建, 部位识别

Abstract: Hyperspectral images of three parts (upper B, middle C and lower X) of flue-cured tobacco leaves were obtained by scanning with hyperspectral imaging technique (400~1 700 nm), and their hyperspectral data were extracted. The hyperspectral characteristics of the three parts of tobacco leaves were studied by correlation analysis, principal component analysis and variance analysis, and five discriminant models (SVM, KNN, RF, LightGBM and XGBoost) for identifying tobacco leaf parts were constructed. The results showed that the spectral reflectance of the three parts of tobacco leaves was C>X>B (400~750 nm), B>C>X (750~1 400 nm), and C>B≈X (1 400~1 700 nm). The hyperspectral data of the three parts of tobacco leaves had a strong correlation. In general, the correlation between the visible light and near-infrared bands was strong in their respective regions, while the correlation between the two was weak. A total of 7 principal components with eigenvalues greater than 1 were extracted, and the cumulative contribution rate of variance was close to 1.00. The spectral reflectance of the three parts of tobacco leaves was significantly different in 450~550 nm and 750~1 400 nm regions. The middle leaves had significant differences from the upper and lower leaves at 550~850 nm and 1 400~1 700 nm, respectively. The upper leaves had significant differences from the middle and lower leaves at 400~450 nm, respectively. The lower leaves had significant differences from the upper and middle leaves at around 680 nm. SVM performed best in distinguishing tobacco leaves in different parts, with accuracy, precision, recall and F1 scores all reaching above 95%, LightGBM performed in the middle, with various indicators between 90% and 95%, RF, KNN and XGBoost performed relatively poorly, with various indicators below 90%.

Key words: hyperspectral characteristics, flue-cured tobacco, model construction, position recognition

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