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Combination of gross shape features, fourier descriptors and multiscale distance matrix for leaf recognition

机译:总体形状特征,傅立叶描述子和多尺度距离矩阵的组合,用于叶片识别

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In this study, we have experimented with different image and shape descriptors on the automatic leaf recognition problem. We have studied the effects of gross shape descriptors, Fourier descriptors, multiscale distance descriptors, and the combination of these on the leaf recognition performance using two different datasets. We have achieved 94.62% recognition performance on Flavia, comparable to PNN 90.31%and SVM-BDT 96%. Our performance on SLID dataset, 96.67%, is comparable to MDM-A 93.60% and hierarchical matching of deformable shapes 96.28%.
机译:在这项研究中,我们针对自动叶子识别问题尝试了不同的图像和形状描述符。我们使用两个不同的数据集研究了总体形状描述符,傅立叶描述符,多尺度距离描述符以及它们的组合对叶片识别性能的影响。我们在Flavia上实现了94.62%的识别性能,与PNN的90.31%和SVM-BDT的96%相当。我们在SLID数据集上的性能为96.67%,可与MDM-A的93.60%相媲美,可变形形状的层次匹配为96.28%。

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