Chen Mengyuan, Lin Chenfeng, Sun Yongqi, Yang Rui, Lu Xiangyu, Lou Weidong, Deng Xunfei, Zhao Yunpeng, Liu Fei
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China.
Systematic & Evolutionary Botany and Biodiversity Group, MOE Key Laboratory of Biosystem Homeostasis and Protection, College of Life Sciences, Zhejiang University, Hangzhou 310058, China.
Plants (Basel). 2024 May 29;13(11):1501. doi: 10.3390/plants13111501.
L. is a rare dioecious species that is valued for its diverse applications and is cultivated globally. This study aimed to develop a rapid and effective method for determining the sex of a . Green and yellow leaves representing annual growth stages were scanned with a hyperspectral imager, and classification models for RGB images, spectral features, and a fusion of spectral and image features were established. Initially, a ResNet101 model classified the RGB dataset using the proportional scaling-background expansion preprocessing method, achieving an accuracy of 90.27%. Further, machine learning algorithms like support vector machine (SVM), linear discriminant analysis (LDA), and subspace discriminant analysis (SDA) were applied. Optimal results were achieved with SVM and SDA in the green leaf stage and LDA in the yellow leaf stage, with prediction accuracies of 87.35% and 98.85%, respectively. To fully utilize the optimal model, a two-stage Period-Predetermined (PP) method was proposed, and a fusion dataset was built using the spectral and image features. The overall accuracy for the prediction set was as high as 96.30%. This is the first study to establish a standard technique framework for Ginkgo sex classification using hyperspectral imaging, offering an efficient tool for industrial and ecological applications and the potential for classifying other dioecious plants.
L.是一种稀有的雌雄异株物种,因其多样的用途而受到重视,并在全球范围内种植。本研究旨在开发一种快速有效的方法来确定L.的性别。用高光谱成像仪对代表一年生生长阶段的绿色和黄色叶片进行扫描,并建立了RGB图像、光谱特征以及光谱与图像特征融合的分类模型。最初,一个ResNet101模型使用比例缩放 - 背景扩展预处理方法对RGB数据集进行分类,准确率达到90.27%。此外,还应用了支持向量机(SVM)、线性判别分析(LDA)和子空间判别分析(SDA)等机器学习算法。在绿叶阶段,SVM和SDA取得了最佳结果,在黄叶阶段,LDA取得了最佳结果,预测准确率分别为87.35%和98.85%。为了充分利用最优模型,提出了一种两阶段周期预定(PP)方法,并使用光谱和图像特征构建了一个融合数据集。预测集的总体准确率高达96.30%。这是第一项使用高光谱成像建立银杏性别分类标准技术框架的研究,为工业和生态应用提供了一种有效的工具,并为其他雌雄异株植物的分类提供了可能性。