利用DeepLabv3+和无人机系统图像对灾后洪涝地区进行分割

Akila Agnes Sundaresan, Appadurai Arun Solomon
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引用次数: 0

摘要

近年来,自然灾害,特别是洪水日益频繁和严重,对人类生命和基础设施构成重大威胁,特别是在发展中国家。有效的洪水探测和损失评估对于有效的灾害响应和恢复至关重要。本研究将DeepLabv3+模型与UAS图像相结合,实现了精确的洪水区域圈定。DeepLabv3+模型采用编码器-解码器架构,集成了亚历斯空间金字塔池(ASPP)和亚历斯卷积来捕获多尺度上下文特征,同时保留空间细节。为了评估其性能,本研究在不同的下采样率(8和16)和下采样率(8、12和16)配置下,对各种骨干架构进行了实验,包括ResNet-18、ResNet-50、MobileNetV2和Xception。ResNet-50被证明是最有效的主干,实现了分割精度和计算效率之间的最佳平衡。ASPP模块增强了全局和局部特征提取,而解码器结合了低级空间和高级语义特征,以实现精确的逐像素分割。实验结果表明,DeepLabv3+模型显著增强了洪水区域的检测和洪水范围的划定,为实时灾害管理提供了可靠的工具,有助于改进洪水管理实践。这项研究为利用深度学习模型在快速和准确的洪水探测至关重要的地区加强灾害响应提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Post-disaster flooded region segmentation using DeepLabv3+ and unmanned aerial system imagery
Natural disasters, particularly floods, have become increasingly frequent and intense in recent times, posing significant threats to human lives and infrastructure, especially in developing countries. Efficient flood detection and damage assessment are critical for effective disaster response and recovery. This study applies the DeepLabv3+ model with UAS imagery to achieve precise flood area delineation. The DeepLabv3+ model employs an encoder-decoder architecture, integrating Atrous Spatial Pyramid Pooling (ASPP) and atrous convolutions to capture multi-scale contextual features while preserving spatial details. To evaluate its performance, the study experiments with various backbone architectures, including ResNet-18, ResNet-50, MobileNetV2, and Xception, under different configurations of downsampling rates (8 and 16) and atrous rates (8, 12, and 16). ResNet-50 proves to be the most effective backbone, achieving the optimal balance between segmentation accuracy and computational efficiency. The ASPP module enhances global and local feature extraction, while the decoder combines low-level spatial and high-level semantic features for precise pixel-wise segmentation. Experimental results reveal that the DeepLabv3+ model significantly enhances the detection of flooded regions and the delineation of flood extents, providing a reliable tool for real-time disaster management and contributing to improved flood management practices. This research offers valuable insights into leveraging deep learning models for enhanced disaster response in regions where rapid and accurate flood detection is crucial.
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