awesome-semantic-understanding-for-aerial-scene
github.com/tzxiang/awesome-semantic-understanding-for-aerial-scene ↗A curated list of awesome resources for semantic understanding of aerial scene
101
GitHub Stars
253
Curated Resources
5
Categories
21 hours ago
Last Refreshed
TutorialsLibrariesDatasetsPapers for Aerial SceneAppendix: Object Detection for Natural Scene
Use this list with your AI agent
Add the Context Awesome MCP server to Claude, Cursor, or any MCP client, then ask:
"Show me building detection/segmentation resources from awesome-semantic-understanding-for-aerial-scene"
Installation instructions →What's inside
Datasets
- AIRS (Aerial Imagery for Roof Segmentation)Building Detection/Segmentation
- AIR-SARShip-1.0Object Detection for Aerial Scene
- Awesome Satellite Imagery DatasetsDataset Repository
- BigEarthNetSatellite Image Understanding
- CanadaBuilding Detection/Segmentation
- CrowdAI Mapping ChallengeBuilding Detection/Segmentation
Libraries
- A list of open-source software for photogrammetry and remote sensingRemote Sensing
- DeepOSMRemote Sensing
- [Homepage]Remote Sensing
- [Homepage]Remote Sensing
Papers for Aerial Scene
- [arXiv]Review
- arXiv201910-xbwTypical Element Extraction
- arXiv201912Object Detection (RS)
- arXiv201912Object Detection (RS)
- arXiv202006Review
- [code]Object Detection (RS)
Appendix: Object Detection for Natural Scene
- arXiv201911Papers
- arXiv201911Papers
- arXiv201912Papers
- arXiv201912Papers
- arXiv201912Papers
- arXiv201912Papers
Showing a sample of 253 resources. View the full list on GitHub →