Performance Evaluation of Optimizers for Deformable-DETR in Natural Disaster Damage Assessment

Minh Dinh, Vu L. Bui, Doanh C. Bui, Duong Phi Long, Nguyen D. Vo, Khang Nguyen
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引用次数: 1

Abstract

Global natural disasters are becoming more frequent and severe as a result of climate change. Recent advances in computer vision, particularly deep learning-based techniques and unmanned aerial vehicle (UAV) remote sensing, can aid disaster response teams in assessing the damage. Prior methods appear to be ineffective or were designed with inductive biases, making them difficult to conduct during the disaster damage assessment. In this paper, we investigate deep-learning-based methods capable of rapidly assessing building damage that follows natural disasters. Furthermore, we examine Deformable DETR, which is an improvement upon DETR, an object detection method based on the Transformer architecture, in terms of efficiency and convergence time, while inheriting DETR’s simple implementation and adaptable architecture, making it suitable for the task of damage detection. We also experimented and analyzed the performance of several optimizers to improve the performance of Deformable DETR.
自然灾害损害评估中变形- detr优化器的性能评价
受气候变化影响,全球自然灾害日益频繁和严重。计算机视觉的最新进展,特别是基于深度学习的技术和无人机(UAV)遥感,可以帮助灾害反应小组评估损失。先前的方法似乎是无效的或设计有归纳偏差,使他们难以进行灾害损失评估。在本文中,我们研究了能够快速评估自然灾害后建筑物损坏的基于深度学习的方法。此外,我们研究了变形DETR,它是在基于Transformer结构的DETR的基础上,在效率和收敛时间上的改进,同时继承了DETR实现简单和结构适应性强的特点,适合于损伤检测的任务。我们还对几种优化器的性能进行了实验和分析,以提高可变形DETR的性能。
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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