通过无监督的单时变化适应性实现可转移的建筑物损坏评估

IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Remote Sensing of Environment Pub Date : 2024-10-01 DOI:10.1016/j.rse.2024.114416
Zhuo Zheng , Yanfei Zhong , Liangpei Zhang , Marshall Burke , David B. Lobell , Stefano Ermon
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引用次数: 0

摘要

快速、准确地评估突发性灾害中的建筑物损坏情况对于有效的人道主义援助和救灾工作至关重要。然而,灾害的发生具有很强的不确定性,例如突如其来的地理位置和危害,这对传统的建筑损害评估模型的通用性和可转移性提出了挑战。遗憾的是,关于可转移的建筑物损坏评估的公开文献很少。这是因为利用灾前和灾后卫星图像评估建筑物损坏情况是一个复杂、多时态和多任务的问题。它涉及两个主要的子任务:建筑物定位和损坏分类,而这两个子任务是很难用为单图像和单任务问题设计的通用迁移学习方法来处理的。另一方面,目标域中的灾后训练图像可用性仍然是一个障碍,因为这些通用迁移学习方法需要灾前/灾后图像对作为目标训练图像,从而导致灾害响应中昂贵的时间窗口(从获得灾后训练图像到获得评估结果的时间段)。在本文中,我们提出了一个单时域自适应语义变化检测框架,该框架以时域自适应建筑损害评估为框架,仅额外需要目标灾前图像进行自适应训练。我们的框架首先通过预测误差期望的等效形式提出了一种解耦任务建模。这使得通用迁移学习方法可用于领域自适应建筑损害评估。为了从根本上克服我们框架中的灾后训练图像可用性问题,我们提出了一种无监督单时变化适应(STCA)算法。其主要思想是 "破坏无处不在",其动机是建筑物破坏是一个由灾害事件驱动的变化过程。我们利用目标灾前图像和源灾后图像来模拟这种语义变化过程,从而提供训练数据,从根本上解决了灾后训练图像的可用性问题,避免了代价高昂的时间窗口。在全球尺度和局部尺度研究区域进行的大量实验表明,我们的框架允许大多数迁移学习方法在领域适应性建筑损害评估中发挥良好作用。与其他迁移学习方法相比,我们的 STCA 性能更优。更重要的是,与其他依赖目标灾前/灾后图像进行适应的方法不同,它不需要目标灾后训练图像。这一特性大大提高了 STCA 在真实世界灾害响应中对建筑物损坏评估模型的可用性。
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Towards transferable building damage assessment via unsupervised single-temporal change adaptation
Rapid and accurate assessment of building damage in sudden-onset disasters is crucial for effective humanitarian assistance and disaster response. However, the occurrence of disasters is highly uncertain, e.g., unexpected geographic location and hazards, which challenge the conventional building damage assessment model on generalization and transferability. Unfortunately, there is little public literature on transferable building damage assessment. This is because assessing building damage using pre- and post-disaster satellite images is a complex, multi-temporal, and multi-task problem. It involves two main subtasks: building localization and damage classification, which are non-trivial to handle with generic transfer learning approaches designed for single-image and single-task problems. On the other hand, post-disaster training image availability in the target domain remains an obstacle since these generic transfer learning methods require pre-/post-disaster image pairs as target training images, resulting in a costly time window (period from obtaining post-event training image to obtaining assessment results) in disaster response. In this paper, we present a single-temporal domain adaptive semantic change detection framework, which frames domain adaptive building damage assessment and only additionally requires target pre-disaster images for adaptation training. Our framework first presents a decoupled task modeling via the equivalent form of prediction error expectations. This enables generic transfer learning methods to be used for domain adaptive building damage assessment. To fundamentally overcome the problem of post-disaster training image availability within our framework, we propose an unsupervised single-temporal change adaptation (STCA) algorithm. The main idea is “damage is everywhere”, which is motivated by the fact that building damage is a change process driven by the disaster event. We leverage target pre-disaster images and source post-disaster images to simulate such semantic change processes to provide training data, fundamentally addressing the post-disaster training image availability issue and avoiding that costly time window. The extensive experiments on global-scale and local-scale study areas suggest that our framework allows most transfer learning approaches to work well on domain adaptive building damage assessment. Our STCA achieves superior performance compared to other transfer learning approaches. More importantly, unlike other approaches that rely on target pre/post-disaster images for adaptation, it requires no target post-disaster training images. This nature significantly improves the availability of STCA in real-world disaster response for the building damage assessment model.
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来源期刊
Remote Sensing of Environment
Remote Sensing of Environment 环境科学-成像科学与照相技术
CiteScore
25.10
自引率
8.90%
发文量
455
审稿时长
53 days
期刊介绍: Remote Sensing of Environment (RSE) serves the Earth observation community by disseminating results on the theory, science, applications, and technology that contribute to advancing the field of remote sensing. With a thoroughly interdisciplinary approach, RSE encompasses terrestrial, oceanic, and atmospheric sensing. The journal emphasizes biophysical and quantitative approaches to remote sensing at local to global scales, covering a diverse range of applications and techniques. RSE serves as a vital platform for the exchange of knowledge and advancements in the dynamic field of remote sensing.
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