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首页> 外文期刊>Journal of spectroscopy >Depth Semantic Segmentation of Tobacco Planting Areas from Unmanned Aerial Vehicle Remote Sensing Images in Plateau Mountains
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Depth Semantic Segmentation of Tobacco Planting Areas from Unmanned Aerial Vehicle Remote Sensing Images in Plateau Mountains

机译:高原山上无人机遥感图像的烟草种植区的深度语义分割

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The tobacco in plateau mountains has the characteristics of fragmented planting, uneven growth, and mixed/interplanting of crops. It is difficult to extract effective features using an object-oriented image analysis method to accurately extract tobacco planting areas. To this end, the advantage of deep learning features self-learning is relied on in this paper. An accurate extraction method of tobacco planting areas based on a deep semantic segmentation model from the unmanned aerial vehicle (UAV) remote sensing images in plateau mountains is proposed in this paper. Firstly, the tobacco semantic segmentation dataset is established using Labelme. Four deep semantic segmentation models of DeeplabV3+, PSPNet, SegNet, and U-Net are used to train the sample data in the dataset. Among them, in order to reduce the model training time, the MobileNet series of lightweight networks are used to replace the original backbone networks of the four network models. Finally, the predictive images are semantically segmented by trained networks, and the mean Intersection over Union (mIoU) is used to evaluate the accuracy. The experimental results show that, using DeeplabV3+, PSPNet, SegNet, and U-Net to perform semantic segmentation on 71 scene prediction images, the mIoU obtained is 0.9436, 0.9118, 0.9392, and 0.9473, respectively, and the accuracy of semantic segmentation is high. The feasibility of the deep semantic segmentation method for extracting tobacco planting surface from UAV remote sensing images has been verified, and the research method can provide a reference for subsequent automatic extraction of tobacco planting areas.
机译:高原山脉的烟草具有分散的种植,增长不均匀的特点,以及作物的混合/植入。使用面向对象的图像分析方法提取有效特征,以准确提取烟草种植区域。为此,本文依赖了深度学习特征自学的优势。本文提出了一种基于无人机山(UAV)遥感图像的基于深度语义分割模型的烟草种植区域的精确提取方法。首先,使用LabelME建立烟草语义分段数据集。 DEEPLABV3 +,PSPNET,SEGNET和U-NET的四种深度语义分割模型用于培训数据集中的示例数据。其中,为了减少模型训练时间,MobileNet系列的轻量级网络用于替换四个网络模型的原始骨干网络。最后,通过训练网络进行语义分割预测图像,并且使用联盟(Miou)的平均交叉来评估精度。实验结果表明,使用DEEPLABV3 +,PSPNET,SEGNET和U-NET在71场景预测图像上执行语义分割,所获得的MIOU分别为0.9436,0.9118,0.9392和0.9473,语义分割的准确性高。已经验证了从UAV遥感图像中提取烟草种植表面的深度语义分割方法的可行性,研究方法可以为随后的烟草种植区域提供参考。

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