论文标题
多视图深度学习,用于可靠的污点后伤害分类
Multi-view deep learning for reliable post-disaster damage classification
论文作者
论文摘要
这项研究旨在使用人工智能(AI)和多视图图像启用更可靠的自动化后建筑物损害分类。当前的实践和研究工作在采用AI进行灾后损害评估的情况下(a)定性,基于标准损害量表缺乏建筑损失水平的精制分类,并且(b)基于空中或卫星图像训练有培训的,这些意见有限,虽然有限,但并不完全描述损害量表。为了使损害水平的更准确和可靠的自动量化量化,本研究提出,以多种地面和建筑物的空中视图形式使用更全面的视觉数据。为了具有这样的空间感知的损害预测模型,使用了多视图卷积神经网络(MV-CNN)体系结构,该体系结构结合了来自受损建筑物的不同视图的信息。这种空间3D上下文损害信息将导致更准确地识别损害损害水平的可靠量化。拟议的模型经过训练和验证,并在侦察视觉数据集上进行了验证,其中包含飓风哈维后检查的建筑物的专家标记的,地理标记的图像。开发的模型在预测损害水平方面表现出了相当良好的准确性,可以用来支持更明智和可靠的AI-AI-AS辅助灾害管理实践。
This study aims to enable more reliable automated post-disaster building damage classification using artificial intelligence (AI) and multi-view imagery. The current practices and research efforts in adopting AI for post-disaster damage assessment are generally (a) qualitative, lacking refined classification of building damage levels based on standard damage scales, and (b) trained based on aerial or satellite imagery with limited views, which, although indicative, are not completely descriptive of the damage scale. To enable more accurate and reliable automated quantification of damage levels, the present study proposes the use of more comprehensive visual data in the form of multiple ground and aerial views of the buildings. To have such a spatially-aware damage prediction model, a Multi-view Convolution Neural Network (MV-CNN) architecture is used that combines the information from different views of a damaged building. This spatial 3D context damage information will result in more accurate identification of damages and reliable quantification of damage levels. The proposed model is trained and validated on reconnaissance visual dataset containing expert-labeled, geotagged images of the inspected buildings following hurricane Harvey. The developed model demonstrates reasonably good accuracy in predicting the damage levels and can be used to support more informed and reliable AI-assisted disaster management practices.