基于HSI和SVM-RBF的甜菜种子发芽预测

Shuang Zhou, Laijun Sun, Yamin Ji
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引用次数: 4

摘要

甜菜是中国重要的食糖作物。甜菜种子的选择是农业育种过程中的关键环节。高光谱技术具有快速、实时、准确、无损地获取种子形态特征、内部结构特征、化学成分等特征信息的优点,在种子质量检测、分类鉴定等方面具有良好的应用前景。本研究利用近红外高光谱图像采集系统获取了3072个样品的高光谱图像。提取种子面积的平均光谱作为其特征光谱。通过连续投影算法选择特征光谱的10个特征波长,然后通过SVM-RBF算法建立模型。该试验装置的模型精度为87.3%。结果表明,高光谱成像技术可以准确预测甜菜种子的发芽情况,为甜菜种子在线无损检测提供了新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Germination Prediction of Sugar Beet Seeds Based on HSI and SVM-RBF
Beet is an important sugar crop in China. The selection of beet seeds is a key link in the process of agricultural breeding. Hyperspectral technology has the advantages of fast, real-time, accurate and lossless acquisition of seed morphological characteristics, internal structural characteristics, chemical composition and other characteristic information, and has a good application prospect in seed quality testing, classification and identification. In this study, the near infrared hyperspectral image acquisition system was used to obtain the hyperspectral images of 3072 samples. The average spectrum of seed area was extracted as its characteristic spectrum. Ten characteristic wavelengths of characteristic spectrum were selected by continuous projection algorithm, and then the model was established by SVM-RBF algorithm. The model accuracy of this test device is 87.3%. The results show that high spectral imaging can predict the germination of beet seeds accurately, which provides a new idea for online nondestructive testing of beet seeds.
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