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首页> 外文期刊>Journal of near infrared spectroscopy >Leaf-based species classification of hybrid cherry tomato plants by using hyperspectral imaging
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Leaf-based species classification of hybrid cherry tomato plants by using hyperspectral imaging

机译:基于高光谱成像的杂交樱桃番茄植株叶片物种分类

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Approaches based on near infrared hyperspectral imaging (NIR-HSI) technology combined with machine learning have been developed to classify the leaves of hybrid cherry tomatoes and then identify the species of hybrid cherry tomato plants. The near infrared (NIR) hyperspectral images of 400 cherry tomato leaves (100 per species) were collected in the wavelength range of 900-1700 nm. Machine learning algorithms such as linear discriminant analysis (LDA), random forest (RF), and support vector machine (SVM) were employed to construct leaf classification models with the hyperspectral data preprocessed by Savitzky-Golay (SG) smoothing filter, first derivative (first Der) and standard normal variate (SNV). Principle of Component Analysis (PCA) was also used to reduce the data dimension and extract spectral features. It is revealed that the LDA model reaches the highest classification accuracy among the three machine learning algorithms and SNV can lead to higher improvement in model accuracy than other preprocessing methods of SG smoothing and first Der. Analysis based on PCA spectral feature extraction demonstrates that differences occur in internal material content in the leaves of cherry tomato plants with different species, which renders the models being able to distinguish between the species. Another important work was performed to reveal the different effects of the mesophyll and vein regions (VR) on the accuracy of the leaf classification model. It is demonstrated that the classification accuracy is improved by a value of 0.033 or 0.042 when mesophyll substitutes vein or whole leaf as regions of interest (ROI) to extract reflectance spectra for modeling. As a result, the accuracy of the training and test set respectively reached a high value of 0.998 and 0.973 for the LDA classification model combined with the SNV preprocessing method. The results propose that the use of mesophyll region (MR) as ROI can improve the performance of the leaf classification model, which provides a new strategy for efficient and non-destructive classification of different hybrid cherry tomato plants.
机译:基于近红外高光谱成像(NIR-HSI)技术结合机器学习的方法,对杂交樱桃番茄的叶片进行分类,进而鉴定杂交樱桃番茄植株的种类。在900-1700 nm波长范围内采集了400片樱桃番茄叶片(每个物种100片)的近红外(NIR)高光谱图像。采用线性判别分析(LDA)、随机森林(RF)和支持向量机(SVM)等机器学习算法,利用Savitzky-Golay(SG)平滑滤波、一阶导数(first Der)和标准正态变量(SNV)预处理的高光谱数据构建叶片分类模型。还使用成分分析原理(PCA)来降低数据维度并提取光谱特征。结果表明,LDA模型在3种机器学习算法中分类精度最高,SNV能够比其他SG平滑和First Der预处理方法提高模型精度。 基于PCA光谱特征提取的分析表明,不同物种的樱桃番茄植株叶片内部物质含量存在差异, 这使得模型能够区分物种。另一项重要工作是揭示叶肉和叶脉区域(VR)对叶片分类模型准确性的不同影响。结果表明,当叶肉代替叶脉或整片叶作为感兴趣区域(ROI)提取反射光谱进行建模时,分类精度提高了0.033或0.042。结果表明,LDA分类模型结合SNV预处理方法,训练集和测试集的准确率分别达到0.998和0.973的高值。结果表明,利用叶肉区(MR)作为ROI可以提高叶片分类模型的性能,为不同杂交樱桃番茄植株的高效无损分类提供了新的策略。

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