File size: 10,455 Bytes
f524e77
 
 
 
ddf28d6
 
d051dc9
43f98e7
 
77f46b1
43f98e7
 
 
 
 
77f46b1
 
4dd259c
77f46b1
43f98e7
 
77f46b1
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
5d303b4
77f46b1
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
5d303b4
 
77f46b1
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
5d303b4
 
43f98e7
 
77f46b1
43f98e7
77f46b1
4dd259c
 
 
 
43f98e7
77f46b1
4dd259c
77f46b1
43f98e7
77f46b1
 
 
 
 
 
43f98e7
 
4dd259c
 
 
 
43f98e7
77f46b1
43f98e7
 
77f46b1
 
 
 
 
 
 
43f98e7
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
---
license: other
license_name: open-licence-2.0
license_link: https://www.etalab.gouv.fr/wp-content/uploads/2018/11/open-licence.pdf
pretty_name: French Land Cover from Aerospace Imagery
size_categories:
- 10B<n<100B
---

# Datset Card for FLAIR land-cover semantic segmentation



## Context & Data

The hereby FLAIR (#2) dataset is sampled countrywide and is composed of over 20 billion annotated pixels of very high resolution aerial imagery at 0.2 m spatial resolution, acquired over three years and different months (spatio-temporal domains). 
Aerial imagery patches consist of 5 channels (RVB-Near Infrared-Elevation) and have corresponding annotation (with 19 semantic classes or 13 for the baselines). 
Furthermore, to integrate broader spatial context and temporal information, high resolution Sentinel-2 satellite 1-year time series with 10 spectral band are also provided. 
More than 50,000 Sentinel-2 acquisitions with 10 m spatial resolution are available.
<br>

The dataset covers 50 spatial domains, encompassing 916 areas spanning 817 km². This dataset provides a robust foundation for advancing land cover mapping techniques.<br><br>
<style type="text/css">
.tg  {border-collapse:collapse;border-spacing:0;}
.tg td{border-color:black;border-style:solid;border-width:1px;font-family:Arial, sans-serif;font-size:14px;
  overflow:hidden;padding:10px 5px;word-break:normal;}
.tg th{border-color:black;border-style:solid;border-width:1px;font-family:Arial, sans-serif;font-size:14px;
  font-weight:normal;overflow:hidden;padding:10px 5px;word-break:normal;}
.tg .tg-kors{background-color:#3de6eb;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-km2t{border-color:#ffffff;font-weight:bold;text-align:left;vertical-align:top}
.tg .tg-oe15{background-color:#ffffff;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-r3rw{background-color:#a97101;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-0u95{background-color:#55ff00;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-zv4m{border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-9efv{background-color:#938e7b;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-pop6{background-color:#fff30d;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-8jgo{border-color:#ffffff;text-align:center;vertical-align:top}
.tg .tg-j3z6{background-color:#194a26;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-oedl{background-color:#000000;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-40e0{background-color:#c5dc42;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-9xgv{background-color:#1553ae;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-7f0h{background-color:#6b714f;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-3m6m{background-color:#f80c00;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-2e1p{background-color:#db0e9a;border-color:#ffffff;color:#db0e9a;text-align:left;vertical-align:top}
.tg .tg-edjf{background-color:#46e483;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-3chm{background-color:#e4df7c;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-jmwx{background-color:#f3a60d;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-qwc7{background-color:#9999ff;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-69kt{background-color:#660082;border-color:#ffffff;text-align:left;vertical-align:top}
.tg .tg-x5zi{background-color:#8ab3a0;border-color:#ffffff;text-align:left;vertical-align:top}
</style>
<table class="tg">
<thead>
  <tr>
    <th class="tg-zv4m"></th>
    <th class="tg-zv4m">Class</th>
    <th class="tg-8jgo">Freq.-train(%)</th>
    <th class="tg-8jgo">Freq.-test(%)</th>
    <th class="tg-zv4m"></th>
    <th class="tg-zv4m">Class</th>
    <th class="tg-8jgo">Freq.-train(%)</th>
    <th class="tg-8jgo">Freq.-test(%)</th>
    <th class="tg-zv4m"></th>
    <th class="tg-zv4m">Class</th>
    <th class="tg-8jgo">Freq.-train(%)</th>
    <th class="tg-8jgo">Freq.-test(%)</th>
    <th class="tg-zv4m"></th>
    <th class="tg-zv4m">Class</th>
    <th class="tg-8jgo">Freq.-train(%)</th>
    <th class="tg-8jgo">Freq.-test(%)</th>
  </tr>
</thead>
<tbody>
  <tr>
    <td class="tg-2e1p"></td>
    <td class="tg-km2t">(1) Building</td>
    <td class="tg-8jgo">8.14</td>
    <td class="tg-8jgo">3.26</td>
    <td class="tg-j3z6"></td>
    <td class="tg-km2t">(6) Coniferous</td>
    <td class="tg-8jgo">2.74</td>
    <td class="tg-8jgo">10.24</td>
    <td class="tg-pop6"></td>
    <td class="tg-km2t">(11) Agricultural Land</td>
    <td class="tg-8jgo">10.98</td>
    <td class="tg-8jgo">18.19</td>
    <td class="tg-7f0h"></td>
    <td class="tg-km2t">(16) Mixed</td>
    <td class="tg-8jgo">0.05</td>
    <td class="tg-8jgo">0.12</td>
  </tr>
  <tr>
    <td class="tg-9efv"></td>
    <td class="tg-km2t">(2) Pervious surface</td>
    <td class="tg-8jgo">8.25</td>
    <td class="tg-8jgo">3.82</td>
    <td class="tg-edjf"></td>
    <td class="tg-km2t">(7) Deciduous</td>
    <td class="tg-8jgo">15.38</td>
    <td class="tg-8jgo">24.79</td>
    <td class="tg-3chm"></td>
    <td class="tg-km2t">(12) Plowed land</td>
    <td class="tg-8jgo">3.88</td>
    <td class="tg-8jgo">1.81</td>
    <td class="tg-40e0"></td>
    <td class="tg-km2t">(17) Ligneous</td>
    <td class="tg-8jgo">0.01</td>
    <td class="tg-8jgo">-</td>
  </tr>
  <tr>
    <td class="tg-3m6m"></td>
    <td class="tg-km2t">(3) Impervious surface</td>
    <td class="tg-8jgo">13.72</td>
    <td class="tg-8jgo">5.87</td>
    <td class="tg-jmwx"></td>
    <td class="tg-km2t">(8) Brushwood</td>
    <td class="tg-8jgo">6.95</td>
    <td class="tg-8jgo">3.81</td>
    <td class="tg-kors"></td>
    <td class="tg-km2t">(13) Swimming pool</td>
    <td class="tg-8jgo">0.01</td>
    <td class="tg-8jgo">0.02</td>
    <td class="tg-qwc7"></td>
    <td class="tg-km2t">(18) Greenhouse</td>
    <td class="tg-8jgo">0.12</td>
    <td class="tg-8jgo">0.15</td>
  </tr>
  <tr>
    <td class="tg-r3rw"></td>
    <td class="tg-km2t">(4) Bare soil</td>
    <td class="tg-8jgo">3.47</td>
    <td class="tg-8jgo">1.6</td>
    <td class="tg-69kt"></td>
    <td class="tg-km2t">(9) Vineyard</td>
    <td class="tg-8jgo">3.13</td>
    <td class="tg-8jgo">2.55</td>
    <td class="tg-oe15"></td>
    <td class="tg-km2t">(14) Snow</td>
    <td class="tg-8jgo">0.15</td>
    <td class="tg-8jgo">-</td>
    <td class="tg-oedl"></td>
    <td class="tg-km2t">(19) Other</td>
    <td class="tg-8jgo">0.14</td>
    <td class="tg-8jgo">0.04</td>
  </tr>
  <tr>
    <td class="tg-9xgv"></td>
    <td class="tg-km2t">(5) Water</td>
    <td class="tg-8jgo">4.88</td>
    <td class="tg-8jgo">3.17</td>
    <td class="tg-0u95"></td>
    <td class="tg-km2t">(10) Herbaceous vegetation</td>
    <td class="tg-8jgo">17.84</td>
    <td class="tg-8jgo">19.76</td>
    <td class="tg-x5zi"></td>
    <td class="tg-km2t">(15) Clear cut</td>
    <td class="tg-8jgo">0.15</td>
    <td class="tg-8jgo">0.82</td>
    <td class="tg-zv4m"></td>
    <td class="tg-zv4m"></td>
    <td class="tg-8jgo"></td>
    <td class="tg-8jgo"></td>
  </tr>
</tbody>
</table>
<br><br>

## Dataset Structure

### Spatio-Temporal Distribution
The FLAIR dataset consists of 77 762 patches. Each patch includes a high-resolution aerial image (512x512) at 0.2 m, a yearly satellite image time series (40x40 by default) with a spatial resolution of 10 m, 
and pixel-precise elevation and land cover annotations at 0.2 m resolution (512x512).

<p align="center"><img src="flair-pacthes.png" alt="" style="width:50%;max-width:600px;"/></p><br>

### Annotations
Each pixel has been manually annotated by photo-interpretation of the 20 cm resolution aerial imagery, carried out by a team supervised by geography experts from the IGN. 
Movable objects like cars or boats are annotated according to their underlying cover.

### Training Splits
The dataset is made up of 50 distinct spatial domains, aligned with the administrative boundaries of the French départements. 
For our experiments, we designate 32 domains for training, 8 for validation, and reserve 10 as the official test set. 
This arrangement ensures a balanced distribution of semantic classes, radiometric attributes, bioclimatic conditions, and acquisition times across each set. 
Consequently, every split accurately reflects the landscape diversity inherent to metropolitan France. 
It is important to mention that the patches come with meta-data permitting alternative splitting schemes, for example focused on domain shifts.


<p align="center"><img src="flair-splits.png" alt="" style="width:25%;max-width:600px;"/></p><br>



## Reference
Please include a citation to the following article if you use the FLAIR dataset:

```
@misc{garioud2023flair,
      title={FLAIR: a Country-Scale Land Cover Semantic Segmentation Dataset From Multi-Source Optical Imagery}, 
      author={Anatol Garioud and Nicolas Gonthier and Loic Landrieu and Apolline De Wit and Marion Valette and Marc Poupée and Sébastien Giordano and Boris Wattrelos},
      year={2023},
      eprint={2310.13336},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}
```

## Acknowledgment
This work was performed using HPC/AI resources from GENCI-IDRIS (Grant 2022-A0131013803). This work was supported by the project "Copernicus / FPCUP” of the European Union, by the French Space Agency (CNES) and by Connect by CNES.<br>





## Dataset license

The "OPEN LICENCE 2.0/LICENCE OUVERTE" is a license created by the French government specifically for the purpose of facilitating the dissemination of open data by public administration. 
If you are looking for an English version of this license, you can find it on the official GitHub page at the [official github page](https://github.com/etalab/licence-ouverte).

As stated by the license :

### Applicable legislation

This licence is governed by French law.

### Compatibility of this licence

This licence has been designed to be compatible with any free licence that at least requires an acknowledgement of authorship, and specifically with the previous version of this licence as well as with the following licences: United Kingdom’s “Open Government Licence” (OGL), Creative Commons’ “Creative Commons Attribution” (CC-BY) and Open Knowledge Foundation’s “Open Data Commons Attribution” (ODC-BY).