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Hyperspectral Image-Based Variety Classification of Waxy Maize Seeds by the t-SNE Model and Procrustes Analysis

机译:基于t-SNE模型的糯玉米种子基于高光谱图像的品种分类及结壳分析

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摘要

Variety classification is an important step in seed quality testing. This study introduces t-distributed stochastic neighbourhood embedding (t-SNE), a manifold learning algorithm, into the field of hyperspectral imaging (HSI) and proposes a method for classifying seed varieties. Images of 800 maize kernels of eight varieties (100 kernels per variety, 50 kernels for each side of the seed) were imaged in the visible- near infrared (386.7–1016.7 nm) wavelength range. The images were pre-processed by Procrustes analysis (PA) to improve the classification accuracy, and then these data were reduced to low-dimensional space using t-SNE. Finally, Fisher’s discriminant analysis (FDA) was used for classification of the low-dimensional data. To compare the effect of t-SNE, principal component analysis (PCA), kernel principal component analysis (KPCA) and locally linear embedding (LLE) were used as comparative methods in this study, and the results demonstrated that the t-SNE model with PA pre-processing has obtained better classification results. The highest classification accuracy of the t-SNE model was up to 97.5%, which was much more satisfactory than the results of the other models (up to 75% for PCA, 85% for KPCA, 76.25% for LLE). The overall results indicated that the t-SNE model with PA pre-processing can be used for variety classification of waxy maize seeds and be considered as a new method for hyperspectral image analysis.
机译:品种分类是种子质量测试的重要步骤。本研究将流形学习的t分布随机邻域嵌入(t-SNE)引入高光谱成像(HSI)领域,并提出了一种对种子品种进行分类的方法。在可见-近红外(386.7–1016.7 nm)波长范围内对八个品种的800个玉米粒(每个品种100个粒,种子的每侧50个粒)的图像进行成像。图像通过Procrustes分析(PA)进行预处理以提高分类精度,然后使用t-SNE将这些数据缩小到低维空间。最后,费舍尔判别分析(FDA)用于对低维数据进行分类。为了比较t-SNE的效果,本研究使用主成分分析(PCA),核主成分分析(KPCA)和局部线性嵌入(LLE)作为比较方法,结果表明t-SNE模型具有PA预处理获得了更好的分类结果。 t-SNE模型的最高分类精度高达97.5%,比其他模型的结果要令人满意的多(PCA高达75%,KPCA高达85%,LLE高达76.25%)。总体结果表明,采用PA预处理的t-SNE模型可用于糯玉米种子的品种分类,可作为高光谱图像分析的一种新方法。

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