FLAIR #2: textural and temporal information for semantic segmentation
from multi-source optical imagery
- URL: http://arxiv.org/abs/2305.14467v1
- Date: Tue, 23 May 2023 18:47:19 GMT
- Title: FLAIR #2: textural and temporal information for semantic segmentation
from multi-source optical imagery
- Authors: Anatol Garioud, Apolline De Wit, Marc Poup\'ee, Marion Valette,
S\'ebastien Giordano, Boris Wattrelos
- Abstract summary: This dataset includes two very distinct types of data, which are exploited for a semantic segmentation task aimed at mapping land cover.
The data fusion workflow proposes the exploitation of the fine spatial and textural information of very high spatial resolution (VHR) mono-temporal aerial imagery and the temporal and spectral richness of high spatial resolution (HR) time series of Copernicus Sentinel-2 satellite images.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: The FLAIR #2 dataset hereby presented includes two very distinct types of
data, which are exploited for a semantic segmentation task aimed at mapping
land cover. The data fusion workflow proposes the exploitation of the fine
spatial and textural information of very high spatial resolution (VHR)
mono-temporal aerial imagery and the temporal and spectral richness of high
spatial resolution (HR) time series of Copernicus Sentinel-2 satellite images.
The French National Institute of Geographical and Forest Information (IGN), in
response to the growing availability of high-quality Earth Observation (EO)
data, is actively exploring innovative strategies to integrate these data with
heterogeneous characteristics. IGN is therefore offering this dataset to
promote innovation and improve our knowledge of our territories.
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