从Web图像估计洪水深度

Zonglin Meng, Bo Peng, Qunying Huang
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引用次数: 9

摘要

自然灾害给我们的城市造成了严重的破坏,洪水是美国乃至全世界最具灾难性的灾害之一。因此,开发有效的自然灾害风险和损害评估方法至关重要,例如洪水深度估算。现有的工作主要是利用传统的计算机视觉和机器学习技术,利用拍摄洪水场景的照片和图像来估计洪水深度。然而,深度学习(DL)方法的进步使得更准确地估计洪水深度成为可能。因此,基于最先进的深度学习技术(即Mask R-CNN)和来自互联网的公开可用图像,本研究旨在研究和改进洪水深度估计。具体来说,从洪水图像中检测和分割人类物体,以推断洪水深度。该研究提供了一个新的框架,从大量可访问的在线数据中提取关键信息,为救援队甚至机器人在城市地区开展救灾和救援任务提供适当的计划,为实时检测洪水深度提供了线索。
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Flood Depth Estimation from Web Images
Natural hazards have been resulting in severe damage to our cities, and flooding is one of the most disastrous in the U.S and worldwide. Therefore, it is critical to develop efficient methods for risk and damage assessments after natural hazards, such as flood depth estimation. Existing works primarily leverage photos and images capturing flood scenes to estimate flood depth using traditional computer vision and machine learning techniques. However, the advancement of deep learning (DL) methods make it possible to estimate flood depth more accurate. Therefore, based on state-of-the-art DL technique (i.e., Mask R-CNN) and publicly available images from the Internet, this study aims to investigate and improve the flood depth estimation. Specifically, human objects are detected and segmented from flooded images to infer the floodwater depth. This study provides a new framework to extract critical information from large accessible online data for rescue teams or even robots to carry out appropriate plans for disaster relief and rescue missions in the urban area, shedding lights on the real-time detection of the flood depth.
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