Significance of Morphological Features in Rice Variety Classification Using Hyperspectral Imaging

V. Filipović, Marko Neven Panić, S. Brdar, Branko Brkljac
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引用次数: 2

Abstract

Varietal classification of rice seeds is a crucial task in the process of rice crop production, management, and quality control. Traditionally, classification is performed manually which gives slow and inconsistent results. Machine vision technology provides an automated, real-time, non-destructive and cost-effective solution to this problem. Methods that combine RGB and hyperspectral imaging have shown very good results in rice seed classification. In this paper, we demonstrate the significance of morphological and border related features used in addition to spectral information and propose a feature set that provides a substantial improvement in classification results. The proposed approach was successfully tested on a publicly available dataset of 8640 seed samples corresponding to 90 different rice seed varieties, contained in 180 hyperspectral and RGB image pairs, and resulted in an average F1 score of 85.65%.
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形态特征在水稻品种分类中的高光谱成像意义
水稻种子品种分类是水稻生产、管理和质量控制过程中的一项重要工作。传统上,分类是手动执行的,结果缓慢且不一致。机器视觉技术为这一问题提供了自动化、实时、非破坏性和经济高效的解决方案。RGB和高光谱相结合的方法在水稻种子分类中取得了很好的效果。在本文中,我们论证了除了光谱信息外,形态学和边界相关特征的重要性,并提出了一个特征集,该特征集可以大幅改善分类结果。该方法在180对高光谱和RGB图像中包含90个不同水稻种子品种的8640个种子样本的公开数据集上成功进行了测试,结果表明该方法的平均F1得分为85.65%。
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