基于自适应生成对抗网络的DEM超分辨率重建方法

DEM Super-resolution Reconstruction Method Based on Adaptive Generative Adversarial Network

  • 摘要: 数字高程模型(Digital elevation model,DEM)作为城市建模,灾害评估,三维可视化的数据基础,其作为输入能够提高许多地理分析应用的准确性和可靠性。为了减少重建DEM中的伪影和噪声,提高DEM超分辨率重建的精度,本文研究了利用深度残差生成对抗网络进行DEM超分辨率重建的方法,提出了一种结合自适应卷积和融合U-Net的生成对抗神经网络方法(SRDCGAN),实现4倍分辨率提高的DEM超分辨率重建。对DEM的重建精度进行评估,实验的四组数据集中,RMSE均值下降了0.3%-12.6%,MAE均值下降了3.2%-14.5%,Slope均值下降了1.9%-18.3%,Aspect均值下降了2.7%-12.0%。重建效果与双三次和SRGAN方法进行对比,SRDCGAN方法能够有效去除伪影并保留更多地形特征,重建精度RMSE、MAE、Slope和Aspect值都有显著提升。

     

    Abstract: Objectives: The Digital Elevation Model (DEM) serves as the data foundation for urban modeling, disaster assessment, and 3D visualization. As an input, it can improve the accuracy and reliability of many geographic analysis applications. Methods: To reduce artifacts and noise in the reconstruction of Digital Elevation Models (DEMs) and improve the precision of DEM super-resolution reconstruction, this paper proposes a generative adversarial network (GAN) super-resolution reconstruction model that integrates adaptive convolution and U-Net. (1) The generator's feature extraction module employs a deep residual dense module and an adaptive residual convolution module. The deep residual dense module reduces artifacts and noise generated during SRGAN reconstruction while increasing the receptive field and enhancing the model's feature extraction capability. (2) The adaptive convolution module introduces deformable convolution into the residual network module, enabling the network model to adaptively extract feature information and learn more terrain features. (3) The discriminator incorporates a U-Net structure with an attention mechanism, where U-Net demonstrates good performance and efficient utilization of GPU memory. The attention mechanism captures sufficiently large receptive fields to obtain semantic contextual information, thereby improving the reconstruction accuracy and learning efficiency of the DEM. (4) The proposed model effectively addresses issues such as edge smoothing in DEM reconstruction, the presence of artifacts and noise in reconstructions, and the omission of certain terrain features. Results: The reconstruction accuracy of the DEM is evaluated, and the four datasets of the experiment show a decrease of 0.3%-12.6% in the mean value of RMSE, 3.2%-14.5% in the mean value of MAE, 1.9%-18.3% in the mean value of Slope, and 2.7%- 12.0% in the mean value of Aspect. The reconstruction results are compared with the double-three times and SRGAN methods, and the SRDCGAN method can effectively remove the artifacts and retain more terrain features, and the reconstruction accuracy of the RMSE, MAE, Slope and Aspect values are significantly improved. Conclusions: The results indicate that the SRDCGAN method can establish a mapping model for high-resolution and low-resolution DEM data from a specific area. High-resolution DEMs from other regions can be reconstructed using the mapping model with low-resolution DEMs. SRDCGAN is expected to achieve high practical value in geological applications that utilize high-resolution DEMs.

     

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