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A SVM and SLIC Based Detection Method for Paddy Field Boundary Line

机译:基于SVM和SLIC的稻田边界线检测方法

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摘要

Visual based route and boundary detection is a key technology in agricultural automatic navigation systems. The variable illumination and lack of training samples has a bad effect on visual route detection in unstructured farmland environments. In order to improve the robustness of the boundary detection under different illumination conditions, an image segmentation algorithm based on support vector machine was proposed. A superpixel segmentation algorithm was adopted to solve the lack of training samples for a support vector machine. A sufficient number of superpixel samples were selected for extraction of color and texture features, thus a 19-dimensional feature vector was formed. Then, the support vector machine model was trained and used to identify the paddy ridge field in the new picture. The recognition F1 score can reach 90.7%. Finally, Hough transform detection was used to extract the boundary of the ridge field. The total running time of the proposed algorithm is within 0.8 s and can meet the real-time requirements of agricultural machinery.
机译:基于视觉的路线和边界检测是农业自动导航系统中的一项关键技术。光照变化和训练样本不足对非结构化农田环境中的视觉路线检测有不良影响。为了提高不同光照条件下边界检测的鲁棒性,提出了一种基于支持向量机的图像分割算法。采用超像素分割算法来解决支持向量机训练样本不足的问题。选择足够数量的超像素样本以提取颜色和纹理特征,从而形成19维特征向量。然后,训练了支持向量机模型,并将其用于识别新图片中的稻田。识别F1分数可以达到90.7%。最后,使用霍夫变换检测法提取山脊场的边界。所提算法的总运行时间在0.8s以内,可以满足农业机械的实时性要求。

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