AlleyFloodNet: A Ground-Level Image Dataset for Rapid Flood Detection in Economically and Flood-Vulnerable Areas
Listed in
This article is not in any list yet, why not save it to one of your lists.Abstract
Urban flooding in economically and environmentally vulnerable areas—such as alleyways, lowlands, and semi-basement residences—poses serious threats to lives and property. Existing flood detection research has largely relied on aerial or satellite-based distant-view imagery. While some studies have explored ground-level images, datasets specifically focused on flood-vulnerable areas remain scarce. To address this gap, we introduce AlleyFloodNet, a ground-level image dataset designed to support rapid and accurate flood classification in high-risk urban environments. The dataset reflects a variety of real-world conditions, enabling deep learning models to better recognize floods in complex urban settings. We fine-tuned classification models using AlleyFloodNet and compared their performance to models fine-tuned on FloodNet, a widely used UAV-based dataset. Results show that models trained on AlleyFloodNet significantly outperform those trained on FloodNet when applied to ground-level flood images. This demonstrates the importance of viewpoint-specific data in improving detection accuracy for localized flooding. By constructing a dataset tailored to economically and flood-vulnerable areas, this study contributes to the development of practical flood detection systems that aim to reduce disaster impacts and enhance protection for at-risk communities.