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    李彤彤, 郭素娟, 李艳华, 江锡兵. 基于坚果形态数字化分析的板栗品种鉴别[J]. 北京林业大学学报, 2023, 45(11): 78-89. DOI: 10.12171/j.1000-1522.20220284
    引用本文: 李彤彤, 郭素娟, 李艳华, 江锡兵. 基于坚果形态数字化分析的板栗品种鉴别[J]. 北京林业大学学报, 2023, 45(11): 78-89. DOI: 10.12171/j.1000-1522.20220284
    Li Tongtong, Guo Sujuan, Li Yanhua, Jiang Xibing. Identification of chestnut varieties based on digital analysis of nut morphology[J]. Journal of Beijing Forestry University, 2023, 45(11): 78-89. DOI: 10.12171/j.1000-1522.20220284
    Citation: Li Tongtong, Guo Sujuan, Li Yanhua, Jiang Xibing. Identification of chestnut varieties based on digital analysis of nut morphology[J]. Journal of Beijing Forestry University, 2023, 45(11): 78-89. DOI: 10.12171/j.1000-1522.20220284

    基于坚果形态数字化分析的板栗品种鉴别

    Identification of chestnut varieties based on digital analysis of nut morphology

    • 摘要:
      目的 为解决板栗生产中品种混淆、利用率低等问题,采用几何形态测量法对不同板栗品种坚果形态进行数字化分析,建立板栗品种鉴别方法。
      方法 以我国不同板栗主产区的80个品种,共3 200个坚果为试验材料,统一参数对其平面、侧立面、底部组分别进行拍照。利用Image J软件,结合板栗坚果形态特征,按照一致顺序选择34个鉴定点,以此获得坚果形态坐标数据。利用Morpho J软件将数据进行普氏叠印分析,消除大小、位置等非形态因子的干扰,并以品种进行分类;对坐标数据进行相对扭曲分析,得到34个鉴定点的贡献率,以此提取重要鉴定点;通过主成分分析,将不同品种间坚果形态差异可视化,进行典型变量分析和判别分析,获得不同组分对不同板栗品种的鉴别效果。
      结果 (1)相对扭曲分析显示,前25个鉴定点累计贡献率为87.7%,有较大的鉴别作用,作为重要鉴定点。(2)主成分分析显示,坚果的形态差异主要体现在果顶果肩、坚果平面轮廓形态、坚果厚度和底座相对大小。(3)典型变量分析显示,以不同组分单独进行鉴别时,大部分品种存在重合现象,区分度较低;以34个鉴定点综合鉴别时,不同品种间均有显著的区分,鉴别效果明显;以25个重要鉴定点进行鉴别时,效果与前者相似。(4)80个板栗品种以不同组分单独进行判别分析时,平面、侧面、底部组分正确率分别为72.5% ~ 100.0%、71.8% ~ 100.0%、70.0% ~ 100.0%;以34个鉴定点进行综合判别,正确率为95.0% ~ 100.0%;以25个重要鉴定点进行判别,正确率为92.5% ~ 100.0%,后两者具有较高的判别率,能够实现80个板栗品种的鉴别。
      结论 基于25个重要鉴定点的几何形态测量分析可实现不同板栗品种的准确鉴别,正确判别率达92.5% ~ 100.0%,本研究建立了基于坚果形态数字化分析的板栗品种鉴别方法,将为生产实践中品种的正确应用提供新依据。

       

      Abstract:
      Objective  In order to solve the problem of variety confusion and low utilization rate in Chinese chestnut, geometric morphometry was used to digitally analyze the nut morphology of different Chinese chestnut varieties, and the variety identification method was established.
      Method A total of 3200 nuts of 80 varieties from different chestnut producing areas in China were used as test materials, and the plane, side and bottom components were photographed with unified parameters. Using Image J software combined with the morphological characteristics of chestnut nuts, 17, 12, and 16 identification marks were selected in different components in a specific order so as to obtain nut morphological coordinate data. Morpho J software was used to perform generalized procruste analysis on the data to eliminate the interference of non-morphological factors such as size and location, and to classify the data by variety. Performing relative warp analysis based on principal components on the data was to obtain the contribution rates of identification marks in different components, so as to extract important identification marks and visualize the morphological differences of nuts. Canonical variate and discriminant analysis were used to illustrate the identification effect of identification marks on different chestnut varieties.
      Result (1) Relative distortion analysis showed that the cumulative contribution rate of the top 25 identification points was 87.7%, which had a greater identification effect and was an important identification marks. (2) Principal component analysis showed that the morphological differences of nuts were mainly reflected in the top and shoulder, the plane contour shape of nuts, the thickness of nuts, and the relative size of the hilum. (3) The analysis of typical variables showed that most varieties had overlap and low differentiation when different components were identified separately. When 34 identification points were used for comprehensive identification, there were significant differences among different varieties, and the identification effect was obvious. When 25 important identification marks were used, the effect was similar to that of the former. (4) The discriminant analysis of 80 varieties for different components showed that the accuracy of plane, side and bottom components were 72.5%−100.0%, 71.8%−100.0%, 70.0%−100.0%, respectively. Comprehensively discriminated with 45 identification marks, the correct rates were 95.0%−100.0%. 33 important identification marks were used for identification, and the correct rate was 92.5%−100.0%. The latter two had a higher identification rate and could realize the identification of 80 chestnut varieties.
      Conclusion The geometric morphometric analysis based on 25 identification marks could achieve accurate identification of different chestnut varieties, with a correct discrimination rate of 92.5%−100.0%. In this study, a method for chestnut variety identification based on digital analysis of nut morphology is established, which will provide a new basis for the correct application of varieties in production practice.

       

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