YOLO-MOD Trained Models for Object Detection in Remote Sensing Imagery (DOTANA and ShipRSImageNet)
Authors/Creators
- 1. Gdańsk University of Technology
- 2. Gdańsk Univesity of Technology
- 3. Gdańsk Univesity Of Technology
Contributors
Project manager:
Project member (2):
- 1. Gdańsk University of Technology
Description
This repository provides trained YOLO-based object detection models used in the YOLO-MOD QGIS plugin. The models enable multi-class object detection in very high-resolution (VHR) optical remote sensing imagery and were developed to support reproducible experiments presented in the associated SoftwareX publication.
The models are trained on two datasets:
- DOTANA (aircraft, helicopters, airports, storage tanks)
- ShipRSImageNet (civilian and military ships)
The repository includes models in both PyTorch (.pt) and ONNX (.onnx) formats, allowing flexible deployment depending on user requirements and hardware configuration.
Each model is accompanied by metadata including architecture type, training dataset, input resolution, and evaluation metrics (mAP50 and mAP50–95).
These models are intended for use within the YOLO-MOD plugin but can also be applied independently in other object detection workflows.
Files
yolo-mod-models.zip
Files
(787.8 MB)
| Name | Size | Download all |
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md5:680e810c50480cce00d6e7096328f09d
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Additional details
Software
- Repository URL
- https://github.com/mateusz29/yolo-mod
- Programming language
- Python
- Development Status
- Active