Klasifikasi Area Terdampak Banjir Rob Menggunakan Model Vision Transformer (ViT) Berbasis Deep Learning
Image Classification for Tidal Flood-Affected Areas Using Vision Transformer (ViT) Model Based on Deep Learning

Date
2025Author
Amanda, Ellena
Advisor(s)
Hayatunnufus
Efendi, Syahril
Metadata
Show full item recordAbstract
This research focuses on the development of a classification system for tidal flood-
affected areas using the Vision Transformer (ViT) model based on deep learning. Tidal
floods are natural disasters that frequently occur in coastal regions such as Belawan,
North Sumatra, significantly affecting the local population. The ViT model is employed
to classify satellite imagery of the area into two categories: flood and no-flood. The
dataset used comprises annotated satellite images that are then converted into mask
PNG, processed into labelled patches. These patches are then augmented to enhance
model generalization. The training results show a validation accuracy of 99%, while
no-flood on unseen data yields an accuracy of 90.78% with an F1-score of 0.9065.
These results indicate that ViT has strong potential in detecting tidal flood-affected
areas automatically and efficiently. The system is implemented as a web application,
where users are able to upload images and receive classification results.
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- Undergraduate Theses [1235]