[HTML][HTML] Integrating machine learning and remote sensing in disaster management: A decadal review of post-disaster building damage assessment

S Al Shafian, D Hu - Buildings, 2024 - mdpi.com
Natural disasters pose significant threats to human life and property, exacerbated by their
sudden onset and increasing frequency. This paper conducts a comprehensive bibliometric …

Deep Learning for Earthquake Disaster Assessment: Objects, Data, Models, Stages, Challenges, and Opportunities

J Jia, W Ye - Remote Sensing, 2023 - mdpi.com
Earthquake Disaster Assessment (EDA) plays a critical role in earthquake disaster
prevention, evacuation, and rescue efforts. Deep learning (DL), which boasts advantages in …

D2ANet: Difference-aware attention network for multi-level change detection from satellite imagery

J Mei, YB Zheng, MM Cheng - Computational Visual Media, 2023 - Springer
Recognizing dynamic variations on the ground, especially changes caused by various
natural disasters, is critical for assessing the severity of the damage and directing the …

Large‐scale building damage assessment using a novel hierarchical transformer architecture on satellite images

N Kaur, CC Lee, A Mostafavi… - Computer‐Aided Civil …, 2023 - Wiley Online Library
This paper presents damage assessment using a hierarchical transformer architecture
(DAHiTrA), a novel deep‐learning model with hierarchical transformers to classify building …

[HTML][HTML] BD-SKUNet: Selective-kernel UNets for building damage assessment in high-resolution satellite images

SA Ahmadi, A Mohammadzadeh, N Yokoya… - Remote Sensing, 2023 - mdpi.com
When natural disasters occur, timely and accurate building damage assessment maps are
vital for disaster management responders to organize their resources efficiently. Pairs of pre …

[HTML][HTML] Computer vision tools for early post-disaster assessment: Enhancing generalizability

R Soleimani, MH Soleimani-Babakamali… - … applications of artificial …, 2024 - Elsevier
Remote sensing data, particularly satellite imagery, have made early, post-hazard aerial
damage assessment possible due to its fast availability and extensive coverage. Despite …

On transfer learning for building damage assessment from satellite imagery in emergency contexts

I Bouchard, MÈ Rancourt, D Aloise, F Kalaitzis - Remote Sensing, 2022 - mdpi.com
When a natural disaster occurs, humanitarian organizations need to be prompt, effective,
and efficient to support people whose security is threatened. Satellite imagery offers rich and …

Unboxing the black box of attention mechanisms in remote sensing big data using xai

E Hasanpour Zaryabi, L Moradi, B Kalantar, N Ueda… - Remote Sensing, 2022 - mdpi.com
This paper presents exploratory work looking into the effectiveness of attention mechanisms
(AMs) in improving the task of building segmentation based on convolutional neural network …

COVID-19 diagnosis via chest X-ray image classification based on multiscale class residual attention

S Liu, T Cai, X Tang, Y Zhang, C Wang - Computers in Biology and …, 2022 - Elsevier
Aiming at detecting COVID-19 effectively, a multiscale class residual attention (MCRA)
network is proposed via chest X-ray (CXR) image classification. First, to overcome the data …

Emynet-bdd: efficientvitb meets yolov8 in the encoder-decoder architecture for building damage detection using post-event remote sensing images

M Gomroki, M Hasanlou, J Chanussot… - IEEE Journal of …, 2024 - ieeexplore.ieee.org
Natural disasters commonly occur in all regions around the world and cause huge financial
and human losses. One of the main effects of earthquakes and floods is the destruction of …