AiTLAS
Artificial Intelligence Toolbox for Earth Observation#


Project Status: Active – The project has reached a stable, usable state and is being actively developed. Python 3.7+ License: Apache License 2.0

The AiTLAS toolbox (Artificial Intelligence Toolbox for Earth Observation) includes state-of-the-art machine learning methods for exploratory and predictive analysis of satellite imagery as well as repository of AI-ready Earth Observation (EO) datasets. It can be easily applied for a variety of Earth Observation tasks, such as land use and cover classification, crop type prediction, localization of specific objects (semantic segmentation), etc. The main goal of AiTLAS is to facilitate better usability and adoption of novel AI methods (and models) by EO experts, while offering easy access and standardized format of EO datasets to AI experts which allows benchmarking of various existing and novel AI methods tailored for EO data.

AiTLAS adheres to the principle less is more - it embeds the most common tasks and functionalities in easy-to-use interfaces that simplify the usage and adaptation of the toolbox with minimal modifications. It is fully aligned with the principles of open-science and open-software.

AiTLAS

Getting started#


AiTLAS examples:

Contact#

For any questions and issues feel free to contact us via email at info@bvlabs.ai or by opening an issue on the official repository.

Acknowlidgments#

The AiTLAS toolbox is developed within the grant from the European Space Agency (ESRIN): AiTLAS–Artificial Intelligence toolbox for Earth Observation (ESA RFP/3-16371/19/I-NB) awarded to Bias Variance Labs, d.o.o.

Citation#

For attribution in academic contexts, please cite our work ‘AiTLAS: Artificial Intelligence Toolbox for Earth Observation’ published in Remote Sensing (2023) link as

@article{aitlas2023,
AUTHOR = {Dimitrovski, Ivica and Kitanovski, Ivan and Panov, Panče and Kostovska, Ana and Simidjievski, Nikola and Kocev, Dragi},
TITLE = {AiTLAS: Artificial Intelligence Toolbox for Earth Observation},
JOURNAL = {Remote Sensing},
VOLUME = {15},
YEAR = {2023},
NUMBER = {9},
ARTICLE-NUMBER = {2343},
ISSN = {2072-4292},
DOI = {10.3390/rs15092343}
}

Licence#

Apache-2.0 license

Indices#