Research on water extraction from high resolution remote sensing images based on deep learning

Peng Wu, Junjie Fu, Xiaomei Yi, Guoying Wang, Lufeng Mo, Brian Tapiwanashe Maponde, Hao Liang, Chunling Tao, Wenying Ge, Tengteng Jiang, Zhen Ren
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Abstract

Introduction: Monitoring surface water through the extraction of water bodies from high-resolution remote sensing images is of significant importance. With the advancements in deep learning, deep neural networks have been increasingly applied to high-resolution remote sensing image segmentation. However, conventional convolutional models face challenges in water body extraction, including issues like unclear water boundaries and a high number of training parameters.Methods: In this study, we employed the DeeplabV3+ network for water body extraction in high-resolution remote sensing images. However, the traditional DeeplabV3+ network exhibited limitations in segmentation accuracy for high-resolution remote sensing images and incurred high training costs due to a large number of parameters. To address these issues, we made several improvements to the traditional DeeplabV3+ network: Replaced the backbone network with MobileNetV2. Added a Channel Attention (CA) module to the MobileNetV2 feature extraction network. Introduced an Atrous Spatial Pyramid Pooling (ASPP) module. Implemented Focal loss for balanced loss computation.Results: Our proposed method yielded significant enhancements. It not only improved the segmentation accuracy of water bodies in high-resolution remote sensing images but also effectively reduced the number of network parameters and training time. Experimental results on the Water dataset demonstrated superior performance compared to other networks: Outperformed the U-Net network by 3.06% in terms of mean Intersection over Union (mIoU). Outperformed the MACU-Net network by 1.03%. Outperformed the traditional DeeplabV3+ network by 2.05%. The proposed method surpassed not only the traditional DeeplabV3+ but also U-Net, PSP-Net, and MACU-Net networks.Discussion: These results highlight the effectiveness of our modified DeeplabV3+ network with MobileNetV2 backbone, CA module, ASPP module, and Focal loss for water body extraction in high-resolution remote sensing images. The reduction in training time and parameters makes our approach a promising solution for accurate and efficient water body segmentation in remote sensing applications.
基于深度学习的高分辨率遥感图像水提取研究
通过高分辨率遥感影像提取水体对地表水进行监测具有重要意义。随着深度学习技术的发展,深度神经网络在高分辨率遥感图像分割中的应用越来越广泛。然而,传统的卷积模型在水体提取中面临着挑战,包括水体边界不清晰和训练参数过多等问题。方法:本研究采用DeeplabV3+网络进行高分辨率遥感影像水体提取。然而,传统的DeeplabV3+网络对高分辨率遥感图像的分割精度存在局限性,且由于参数过多,训练成本较高。为了解决这些问题,我们对传统的DeeplabV3+网络进行了几项改进:用MobileNetV2取代骨干网。MobileNetV2特征提取网络增加CA (Channel Attention)模块。介绍了一个空间金字塔池(ASPP)模块。实现焦距损失平衡损失计算。结果:我们提出的方法产生了显著的增强。该方法不仅提高了高分辨率遥感图像中水体的分割精度,而且有效地减少了网络参数的数量和训练时间。在Water数据集上的实验结果显示,与其他网络相比,该网络的性能更优越:在平均交联数(mIoU)方面,其性能优于U-Net网络3.06%。性能优于MACU-Net网络1.03%。性能优于传统DeeplabV3+网络2.05%。该方法不仅超越了传统的DeeplabV3+网络,而且超越了U-Net、PSP-Net和MACU-Net网络。讨论:这些结果突出了我们改进的DeeplabV3+网络与MobileNetV2骨干、CA模块、ASPP模块和Focal loss在高分辨率遥感图像水体提取中的有效性。训练时间和参数的减少使我们的方法成为遥感应用中准确、高效的水体分割的一个有希望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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