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Plant Leaf Recognition Using Zernike Moments and Histogram of Oriented Gradients

机译:基于Zernike矩和直方图直方图的植物叶片识别

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A method using Zernike Moments and Histogram of Oriented Gradients for classification of plant leaf images is proposed in this paper. After preprocessing, we compute the shape features of a leaf using Zernike Moments and texture features using Histogram of Oriented Gradients and then the Support Vector Machine classifier is used for plant leaf image classification and recognition. Experimental results show that using both Zernike Moments and Histogram of Oriented Gradients to classify and recognize plant leaf image yields accuracy that is comparable or better than the state of the art. The method has been validated on the Flavia and the Swedish Leaves datasets as well as on a combined dataset.
机译:提出了一种利用Zernike矩和方向梯度直方图对植物叶片图像进行分类的方法。经过预处理后,我们使用Zernike矩计算叶片的形状特征,并使用定向梯度直方图计算叶片的纹理特征,然后将支持向量机分类器用于植物叶片图像的分类和识别。实验结果表明,同时使用Zernike矩和定向梯度直方图对植物叶片图像进行分类和识别,其准确性可与现有技术相媲美或更好。该方法已在Flavia和Swedish Leaves数据集以及组合数据集上得到了验证。

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