利用 DEM 和改进的 U-Net 从遥感图像中提取丘陵地区的梯田

Fengcan Peng, Qiuzhi Peng, Di Chen, Jiating Lu, Yufei Song
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引用次数: 0

摘要

为了自动、高精度地大规模提取丘陵地区的梯田,本文提出了一种结合数字高程模型(DEM)、哨兵-2 图像和改进的 U-Net 语义分割模型的梯田提取方法。本文对 U-Net 模型进行了改进,在其解码模块中引入注意门模块以抑制冗余特征的干扰,并增加了 Dropout 层和批量归一化层以提高训练速度、鲁棒性和拟合能力。此外,还将 DEM 波段与遥感图像的红绿蓝波段相结合,以充分利用地形信息。实验结果表明,所提出的梯田提取方法的精度、召回率、F1 分数和平均交叉比 Union 均优于其他主流先进方法,提取的梯田内部信息更加完整,假阳性和假阴性结果更少。
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Extraction of Terraces in Hilly Areas from Remote Sensing Images Using DEM and Improved U-Net
To extract terraced fields in hilly areas on a large scale in an automated and high-precision manner, this paper proposes a terrace extraction method that combines the Digital Elevation Model (DEM), Sentinel-2 imagery, and the improved U-Net semantic segmentation model. The U-Net model is modified by introducing Attention Gate modules into its decoding modules to suppress the interference of redundant features and adding Dropout and Batch Normalization layers to improve training speed, robustness, and fitting ability. In addition, the DEM band is combined with the red, green, and blue bands of the remote sensing images to make full use of terrain information. The experimental results show that the Precision, Recall, F1 score, and Mean Intersection over Union of the proposed method for terrace extraction are improved to other mainstream advanced methods, and the internal information of the terraces extracted is more complete, with fewer false positive and false negative results.
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