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Segmentation of Cotton Leaves Based on Improved Watershed Algorithm

机译:基于改进流域算法的棉花叶片分割

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Crop leaf segmentation was one important research content in agricultural machine vision applications. In order to study and solve the segmentation problem of occlusive leaves, an improved watershed algorithm was proposed in this paper. Firstly, the color threshold component (G?R)/(G+R) was used to extract the green component of the cotton leaf image and remove the shadow and invalid background. Then the lifting wavelet algorithm and Canny operator were applied to extract the edge of the pre-processed image to extract cotton leaf region and enhance the leaf edge. Finally, the image of the leaf was labeled with morphological methods to improve the traditional watershed algorithm. By comparing the cotton leaf area segmented using the proposed algorithm with the manually extracted cotton leaf area, successful rates for all the images were higher than 97 %. The results not only demonstrated the effectiveness of the algorithm, but also laid the foundation for the construction of cotton growth monitoring system.
机译:作物叶分割是农业机械视觉应用中的一个重要研究含量。为了研究和解决闭塞叶片的分割问题,本文提出了一种改进的流域算法。首先,使用颜色阈值分量(g≤r)/(g + r)来提取棉花叶图像的绿色成分并去除阴影和无效背景。然后应用提升小波算法和罐头操作员来提取预处理图像的边缘以提取棉花叶区域并增强叶边缘。最后,用形态学方法标记叶子的图像,以改善传统的流域算法。通过将棉花叶面积与手动提取的棉花面积进行比较,所有图像的成功率高于97%。结果不仅证明了算法的有效性,而且还为棉花生长监测系统建造的基础。

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