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Kiwifruit vine extraction based on low altitude UAV remote sensing and deep semantic segmentation

机译:基于低空UAV遥感和深度语义分割的猕猴桃藤提取

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Extraction and segmentation of kiwifruit vine range is an important part of precision agriculture in kiwifruit orchard. In this paper, depth semantic segmentation and traditional machine learning are used to segment and extract kiwifruit vines from orthophoto images, and the accuracy and image quality of vine segmentation based on pspnet, SVM and random forest classification in another test set are compared. Experimental results show that although the mean pixel accuracy of deep semantic segmentation is slightly lower than that of traditional machine learning segmentation, the segmentation image quality of deep semantic segmentation is better and the pixels are more continuous. The deep learning method effectively developed UAV remote sensing image data, improved the usability of remote sensing image, and provided necessary plant information for orchard precision agriculture.
机译:Kiwifruit Vine Range的提取和分割是Kiwifruit果园精密农业的重要组成部分。 在本文中,深度语义分割和传统机器学习用于从正轨图像进行分段和提取Kiwifruit葡萄藤,以及基于PSPNET,SVM和随机林分类的藤分割的准确性和图像质量。 实验结果表明,尽管深度语义分割的平均像素精度略低于传统机器学习分割的略低,但深度语义分割的分割图像质量更好,并且像素更加连续。 深度学习方法有效地开发了UAV遥感图像数据,提高了遥感图像的可用性,并为果园精密农业提供了必要的工厂信息。

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