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基于高光谱成像和SPA-2DCOS融合算法的玉米种子不同部位冻害识别

Corn Seed Freezing Damage Identification of Different Sides Based on Hyperspectral Imaging and SPA-2DCOS Fusion Algorithm.

作者信息

Zhang Jun, Dai Limin, Zhuang Ruiyuan

机构信息

School of Mechanical and Electrical Engineering, Jiaxing Nanhu University, 572 Yuexiu South Road, Jiaxing 314001, China.

School of Agricultural Engineering, Jiangsu University, 301 Xuefu Road, Zhenjiang 212013, China.

出版信息

Molecules. 2025 May 15;30(10):2178. doi: 10.3390/molecules30102178.

Abstract

In order to improve the utilization efficiency of corn seeds and meet the demand of single-seed seeding technology in agriculture, this study was conducted to explore the effect of freezing damage detection on the endosperm and embryo sides of single corn seeds, based on hyperspectral imaging combined with a feature fusion algorithm and a machine learning method. First, hyperspectral image data of the endosperm and embryo sides of three freezing damage categories of corn seeds were collected, and the average spectra of the endosperm part and embryo part were obtained by threshold segmentation. Then, the spectral data were preprocessed (none, SNV, and 5-3 smoothing), and the feature wavelengths were extracted using the feature wavelength extraction algorithm (SPA and 2DCOS). The modeling accuracy results based on the hyperspectral data of the endosperm and embryo sides at the full waveband and feature wavelength (including feature wavelength fusion) were compared and analyzed. In the endosperm side's freezing damage identification, the SNV+SVM model obtained the highest accuracies of 92.9% and 90.0% with the training set and testing set, based on the full-waveband data. The SNV+SPA-2DCOS+SVM model, based on the feature wavelengths, obtained the highest accuracies of 92.9% and 91.2% with the training set and testing set, respectively. In terms of the embryo side's freezing damage identification, the results on the embryo side were better than those on the endosperm side. The 5-3 smoothing+LDA model, based on the full-waveband data, achieved the highest accuracy results of 97.7% and 95.9% with the training and testing sets. In the meantime, the none+SPA-2DCOS+LDA model, based on the feature wavelengths, achieved the same highest accuracy results with the training and testing sets. When the fusion algorithm consisting of SPA and 2D-COS was used, the model's performance on the endosperm side was better than that of the full-waveband analysis with only 19 feature wavelengths, while the recognition effect on embryo side could be achieved with only 15 feature wavelengths. These results provide a theoretical basis for constructing a multi-spectral detection system for the rapid and nondestructive identification of frozen corn seeds.

摘要

为了提高玉米种子的利用效率,满足农业中单粒播种技术的需求,本研究基于高光谱成像结合特征融合算法和机器学习方法,探讨了单粒玉米种子胚乳面和胚面冻害检测的效果。首先,采集了三类冻害玉米种子胚乳面和胚面的高光谱图像数据,通过阈值分割获得胚乳部分和胚部分的平均光谱。然后,对光谱数据进行预处理(无、标准正态变量变换(SNV)和5-3平滑),并使用特征波长提取算法(连续投影算法(SPA)和二维相关光谱法(2DCOS))提取特征波长。比较分析了基于胚乳面和胚面全波段及特征波长(包括特征波长融合)的高光谱数据的建模精度结果。在胚乳面冻害识别中,基于全波段数据的SNV+支持向量机(SVM)模型在训练集和测试集上分别获得了92.9%和90.0%的最高准确率。基于特征波长的SNV+SPA-2DCOS+SVM模型在训练集和测试集上分别获得了92.9%和91.2%的最高准确率。在胚面冻害识别方面,胚面的结果优于胚乳面。基于全波段数据的5-3平滑+线性判别分析(LDA)模型在训练集和测试集上分别取得了97.7%和95.9%的最高准确率。同时,基于特征波长的无+SPA-2DCOS+LDA模型在训练集和测试集上取得了相同的最高准确率。当使用由SPA和2D-COS组成的融合算法时,该模型在胚乳面的性能优于仅使用19个特征波长的全波段分析,而在胚面仅用15个特征波长就能实现识别效果。这些结果为构建用于快速无损识别冻害玉米种子的多光谱检测系统提供了理论依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/917c/12113671/433b99d4fb1a/molecules-30-02178-g001.jpg

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