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Following the acceptance of SegFly at the ECCV 2026 computer vision conference, we officially release our dataset on Hugging Face. Note that we also release our Firefly model, specialized for RGB and thermal semantic segmentation from aerial perspectives.
SegFly is a large-scale aerial semantic segmentation dataset featuring 20,606 high-resolution RGB images and 15,007 pixel-aligned RGB-Thermal (RGB-T) pairs. Images are captured across urban, industrial, and rural environments, spanning all seasons and three altitudes (30m, 40m, 50m).
Quickstart
Full dataset documentation available on SegFly GitHub.
from datasets import load_dataset
# Load entire dataset
dataset = load_dataset("markus-42/SegFly")
Features
| Feature | Type | Description |
|---|---|---|
image |
Image |
Raw sensor frame (RGB or LWIR Thermal) |
label |
Image |
8-bit single-channel semantic mask mapped to 15 benchmark classes |
RGB_aligned |
Image |
Registered RGB image (Thermal modality only; returns None for RGB modality) |
scene |
string |
Scene identifier ("scene_01" to "scene_09") |
altitude |
string |
Flight altitude ("30m", "40m", "50m") |
modality |
string |
Sensor modality ("RGB" or "thermal") |
Splits and Statistics
- Total Samples: 35,613 (20,606 RGB + 15,007 thermal)
| Modality | Split | Scenes | Sample Count |
|---|---|---|---|
| RGB | Train | scene_01, scene_02, scene_03, scene_04, scene_05 |
14,738 |
| Val | scene_06, scene_07 |
1,965 | |
| Test | scene_08, scene_09 |
3,842 | |
| Thermal | Train | scene_03, scene_04, scene_05 |
12,063 |
| Val/Test | scene_09 |
2,944 |
SegFly Dataset Class Mapping Reference
| Class ID | Class Name | RGB Color | Color Preview |
|---|---|---|---|
| 0 | Unlabeled / Ignored | [0, 0, 0] |
#000000 |
| 1 | Road | [128, 0, 128] |
#800080 |
| 2 | Walkway | [204, 163, 72] |
#cca348 |
| 3 | Dirt | [128, 0, 0] |
#800000 |
| 4 | Gravel | [192, 192, 192] |
#c0c0c0 |
| 6 | Grass | [0, 255, 0] |
#00ff00 |
| 7 | Vegetation | [112, 148, 32] |
#709420 |
| 8 | Tree | [64, 64, 0] |
#404000 |
| 9 | Ground Obstacle | [255, 255, 0] |
#ffff00 |
| 13 | Vehicle | [0, 128, 128] |
#008080 |
| 14 | Water | [0, 0, 255] |
#0000ff |
| 16 | Building | [255, 0, 0] |
#ff0000 |
| 17 | Roof | [64, 160, 120] |
#40a078 |
| 33 | Parking Lot | [128, 64, 128] |
#804080 |
| 34 | Construction | [240, 120, 120] |
#f07878 |
| 36 | Truck | [128, 128, 64] |
#808040 |
Reference
@inproceedings{gross2026segfly,
title={{SegFly: A Dataset and 2D-3D-2D Paradigm for Aerial RGB-Thermal Semantic Segmentation at Scale}},
author={Markus Gross and Sai Bharadhwaj Matha and Rui Song and Viswanathan Muthuveerappan and Conrad Christoph and Julius Huber and Daniel Cremers},
booktitle = {Proceedings of the European Conference on Computer Vision (ECCV)},
year={2026},
}
License
This work is licensed under the CC BY-NC-SA 4.0 license. See the LICENSE file for the full legal terms.
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