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Optimal feature selection for SVM based weed classification via visual analysis

机译:基于视觉分析的基于SVM的杂草分类的最佳特征选择

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Weed classification is a serious issue in the agricultural research. Weed classification is a necessity in identifying weed species for control. Many classification techniques have been used to identify weed based on images, however, most of the techniques only measure the percentages of accuracy but the detailed of classifier parameter are not analyzed and discussed. Therefore, in this work, feature vectors of weed images extracted using Gabor Wavelet and Fast Fourier Transform (FFT) were employed in analyzing weed pattern based on images using Support Vector Machines (SVM). The decision boundaries of the categorized extracted feature vectors are illustrated and optimal feature vectors are identified. Results are discussed and displayed with illustrations to prove the SVM classifier performance.
机译:杂草分类是农业研究中的一个严重问题。杂草分类是识别杂草种类以进行控制的必要条件。已经使用了许多分类技术来基于图像识别杂草,但是,大多数技术仅测量准确度的百分比,但是没有分析和讨论分类器参数的详细信息。因此,在这项工作中,采用了Gabor小波和快速傅立叶变换(FFT)提取的杂草图像的特征向量,使用支持向量机(SVM)分析基于图像的杂草模式。示出了分类的提取的特征向量的决策边界,并且识别了最佳特征向量。讨论结果并用插图显示,以证明SVM分类器的性能。

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