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利用高光谱成像信息融合预测甜菜种子发芽

Sugarbeet Seed Germination Prediction Using Hyperspectral Imaging Information Fusion.

机构信息

Key Laboratory of Electronic Engineering, Heilongjiang University, Harbin, China.

Key Laboratory of Sugarbeet Genetics and Breeding, Heilongjiang University, Harbin, China.

出版信息

Appl Spectrosc. 2023 Jul;77(7):710-722. doi: 10.1177/00037028231171908. Epub 2023 May 28.

Abstract

Germination rate is important for seed selection and planting and quality. In this study, hyperspectral image technology integrated with germination tests was applied for feature association analysis and germination performance prediction of sugarbeet seeds. In this study, we proposed a nondestructive prediction method for sugarbeet seed germination. Sugarbeet seed was studied, and hyperspectral imaging (HIS) performed by binarization, morphology, and contour extraction was applied as a nondestructive and accurate technique to achieve single seed image segmentation. Comparative analysis of nine spectral pretreatment methods, SNV + 1D was used to process the average spectrum of sugarbeet seeds. Fourteen characteristic wavelengths were obtained by the Kullback-Leibler (KL) divergence, as the spectral characteristics of sugarbeet seeds. Principal component analysis (PCA) and material properties verified the validity of the extracted characteristic wavelengths. It was extracted of six image features of the hyperspectral image of a single seed obtained based on the gray-level co-occurrence matrix (GLCM). The spectral features, image features, and fusion features were used to establish partial least squares discriminant analysis (PLS-DA), CatBoost, and support vector machine radial-basis function (SVM-RBF) models respectively to predict the germination. The results showed that the prediction effect of fusion features was better than spectral features and image features. By comparing other models, the prediction results of the CatBoost model accuracy were up to 93.52%. The results indicated that, based on HSI and fusion features, the prediction of germinating sugarbeet seeds was more accurate and nondestructive.

摘要

发芽率对于种子选择和种植以及质量非常重要。本研究将高光谱图像技术与发芽试验相结合,用于分析特征关联和预测糖甜菜种子的发芽性能。在本研究中,我们提出了一种用于预测糖甜菜种子发芽的非破坏性方法。研究了糖甜菜种子,并应用二值化、形态学和轮廓提取的高光谱成像(HIS)作为一种非破坏性且准确的技术来实现单粒种子图像分割。比较了九种光谱预处理方法,使用 SNV+1D 对糖甜菜种子的平均光谱进行处理。通过 Kullback-Leibler(KL)散度获得了 14 个特征波长,作为糖甜菜种子的光谱特征。主成分分析(PCA)和材料特性验证了提取特征波长的有效性。基于灰度共生矩阵(GLCM)提取了单个种子高光谱图像的六个图像特征。分别使用光谱特征、图像特征和融合特征建立偏最小二乘判别分析(PLS-DA)、CatBoost 和支持向量机径向基函数(SVM-RBF)模型来预测发芽。结果表明,融合特征的预测效果优于光谱特征和图像特征。通过比较其他模型,CatBoost 模型的预测精度高达 93.52%。结果表明,基于 HSI 和融合特征,发芽糖甜菜种子的预测更加准确和非破坏性。

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