首页> 外文会议>International Conference on Humanoid, Nanotechnology, Information Technology, Communication and Control, Environment, and Management >Variety Classification of Lactuca Sativa Seeds Using Single-Kernel RGB Images and Spectro-Textural-Morphological Feature-Based Machine Learning
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Variety Classification of Lactuca Sativa Seeds Using Single-Kernel RGB Images and Spectro-Textural-Morphological Feature-Based Machine Learning

机译:使用单核RGB图像和谱 - 纹理形态学特征的机器学习品种分类乳酸苜蓿种子

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Growing lettuce become popular now and the use of specific seeds on a constraint environment relies on the proper phenotypic classification of seed germplasm. Lettuce cultivars are usually differentiated based on leaf characteristics when it is matured because its seeds are characterized by almost the same spectro–textural–morphological signatures. Visual inspection of small lettuce seeds leads to the subjective classification that is unideal for seed phenotyping. To overcome this agro–industrial challenge, computer vision was incorporated with computational intelligence. In this study, two types of Lactuca Sativa L. cultivars were used, namely grand rapid and Chinese loose–leaf lettuce seeds. A consumer–grade Huawei Nova 5T mobile phone camera was used to capture single–kernel RGB images totaling to 100 samples for each variant. RGB color space thresholding was used in seed vegetation. 22 spectro–textural–morphological features were extracted and 4 were selected using feature importance with extra trees classifier (FI–ETC). KNN, decision tree for classification (DTC), Naïve Bayes (NB), and SVM with color, texture, and morphological seed features as inputs were configured to classify the lettuce seed cultivar. DTC and SVM bested other machine learning models in classifying lettuce seeds with accuracy and sensitivity of 100% using cross and holdout validation. DTC exhibited the fastest inference time with SVM lagging 48.157% behind DTC. This developed hybrid FI–ETC–DTC model is useful for correctly sorting of seeds necessary for controlled–environment cultivation and seed breeding.
机译:日益增长的生菜现在变得流行,并且在约束环境上使用特定种子依赖于种子种质的适当表型分类。当莴苣品种时,通常根据叶片特性进行分化,因为其种子特征在于几乎相同的光谱 - 纹理形态签名。小型莴苣种子的目视检查导致主观分类,对种子表型进行直观。为了克服这种农业产业挑战,计算机愿景纳入计算智能。在这项研究中,使用了两种类型的Lactuca Sativa L.品种,即大快速和中国裂片莴苣种子。消费者级华为Nova 5T移动电话摄像机用于捕获总计100个样本的单内核RGB图像为每个变体。 RGB颜色空间阈值阈值用于种子植被。提取22光谱 - 纹理形态学特征,使用具有额外树木分类器(FI-ETC)的特征重要性选择4个。 KNN,分类的决策树(DTC),Naïve贝叶斯(NB)和具有颜色,质地和形态种子特征的SVM,作为输入被配置为分类莴苣种子栽培品种。 DTC和SVM在使用十字架和持续验证的准确性和灵敏度的准确性和灵敏度方面使用其他机器学习模型。 DTC在DTC后面的SVM滞后48.157%的最快推理时间。该开发的杂化FI-ETC-DTC模型可用于正确地分选受控环境培养和种子育种所需的种子。

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