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Flower classification based on single petal image and machine learning methods

机译:基于单花瓣图像和机器学习方法的花分类

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摘要

This research presented a novel automatic flower classification system based on computer vision and machine learning techniques. First, we obtained in total 157 petal images of three alike categories using a digital camera. After pre-processing, we extracted color features and wavelet entropies from the petal images. Then, principle component analysis was utilized for feature reduction. Finally, four different classifiers, Support Vector Machine, Weighted k Nearest Neighbors, Kernel based Extreme Learning Machine, and Decision Tree, were trained to recognize the categories of the petals. 5-fold cross validation was employed to evaluate the out-of-sample performance of the classifiers. The experimental results showed that Weighted k-Nearest Neighbors performed the best among all four classifiers with an overall accuracy of 99.4%. The proposed approach is efficient in identifying flower categories in comparison with state-of-the-art methods.
机译:该研究介绍了基于计算机视觉和机器学习技术的新型自动花卉分类系统。首先,我们在使用数码相机中的三个相似类别的总共157个Petal图像中获得。预处理后,我们从花瓣图像中提取了颜色特征和小波熵。然后,使用原理分量分析进行特征减少。最后,培训了四种不同的分类器,支持向量机,加权K最近邻居,基于基于极端学习机和决策树的内核,以识别花瓣的类别。使用5倍的交叉验证来评估分类器的样本性能。实验结果表明,加权K最近邻居在所有四个分类器中表现最佳,整体精度为99.4 %。与最先进的方法相比,所提出的方法是识别花卉类别的效率。

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