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Plant leaf roughness analysis by texture classification with generalized Fourier descriptors in a dimensionality reduction context

机译:在降维背景下使用广义傅立叶描述符通过纹理分类对植物叶片粗糙度进行分析

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摘要

In the context of plant leaf roughness analysis for precision spraying, this study explores the capability and the performance of some combinations of pattern recognition and computer vision techniques to extract the roughness feature. The techniques merge feature extraction, linear and nonlinear dimensionality reduction techniques, and several kinds of methods of classification. The performance of the methods is evaluated and compared in terms of the error of classification. The results for the characterization of leaf roughness by generalized Fourier descriptors for feature extraction, kernel-based methods such as support vector machines for classification and kernel discriminant analysis for dimensionality reduction were encouraging. These results pave the way to a better understanding of the adhesion mechanisms of droplets on leaves that will help to reduce and improve the application of phytosanitary products and lead to possible modifications of sprayer configurations.
机译:在用于精密喷雾的植物叶片粗糙度分析的背景下,本研究探索了模式识别和计算机视觉技术的某些组合提取粗糙度特征的能力和性能。这些技术融合了特征提取,线性和非线性降维技术以及几种分类方法。根据分类误差对方法的性能进行评估和比较。令人鼓舞的是,通过用于特征提取的通用傅立叶描述符,基于核的方法(例如用于分类的支持向量机)和用于减少维数的核判别分析来表征叶片粗糙度的结果令人鼓舞。这些结果为更好地理解液滴在叶片上的粘附机制铺平了道路,这将有助于减少和改善植物检疫产品的应用,并可能改变喷雾器的配置。

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