MS-SSE-Net: A Multi-Scale Spatial Squeeze-and-Excitation Network for Structural Damage Detection in Civil and Geotechnical Engineering
Saif ur Rehman Khan, Imad Ahmed Waqar, Arooj Zaib, Saad Ahmed, Sebastian Vollmer, Andreas Dengel, Muhammad Nabeel Asim

TL;DR
This paper introduces MS-SSE-Net, a deep learning framework with multi-scale feature extraction and attention mechanisms, achieving high accuracy in structural damage classification from images.
Contribution
It presents a novel multi-scale spatial squeeze-and-excitation network based on DenseNet201 for improved damage detection accuracy.
Findings
Achieved 99.26% accuracy on the StructDamage dataset.
Outperformed baseline DenseNet201 and other methods.
Demonstrated effectiveness of multi-scale attention mechanisms.
Abstract
Structural damage detection is essential for maintaining the safety and reliability of civil infrastructure. However, accurately identifying different types of structural damage from images remains challenging due to variations in damage patterns and environmental conditions. To address these challenges, this paper proposes MS-SSE-Net, a novel deep learning (DL) framework for structural damage classification. The proposed model is built upon the DenseNet201 backbone and integrates novel multi-scale feature extraction with channel and spatial attention mechanisms (MS-SSE-Net). Specifically, parallel depthwise convolutions capture both local and contextual features, while squeeze-and-excitation style channel attention and spatial attention emphasize informative regions and suppress irrelevant noise. The refined features are then processed through global average pooling and a fully…
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