Exploiting the Temporal Dimension of Remotely Sensed Imagery with Deep Learning Models

Date
2021-01-05
Authors
García Pereira, Agustín
Porwol, Lukasz
Ojo, Adegboyega
Curry, Edward
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5317
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Abstract
The rapid rise of artificial intelligence and the increasing availability of open Earth Observation (EO) data present new opportunities to address important global problems such as the proliferation of agricultural systems which endanger ecological sustainability. Despite the plethora of satellite images describing a given location on earth every year, very few deep learning-based solutions have harnessed the temporal and sequential dynamics of land use to map agricultural practices. This paper compares different approaches to classify agricultural land use exploiting the temporal and spectral dimensions of EO data. The results show greater efficiency of the presented deep learning-based algorithms compared to state-of-the-art approaches when mapping agricultural classes.
Description
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Location Intelligence Research, deep learning, agriculture, remote sensing, temporal dimension, geoai
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10 pages
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Related To
Proceedings of the 54th Hawaii International Conference on System Sciences
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Attribution-NonCommercial-NoDerivatives 4.0 International
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