TL;DR
DeepGlobe 2018 is a challenge with three competitions on satellite image segmentation, detection, and classification, aiming to advance remote sensing analysis through computer vision techniques.
Contribution
It introduces three new satellite image datasets, evaluation methodologies, and baseline results to foster research in satellite image understanding.
Findings
Established benchmark datasets and evaluation criteria.
Provided baseline results for each task.
Encouraged interdisciplinary research between computer vision and remote sensing.
Abstract
We present the DeepGlobe 2018 Satellite Image Understanding Challenge, which includes three public competitions for segmentation, detection, and classification tasks on satellite images. Similar to other challenges in computer vision domain such as DAVIS and COCO, DeepGlobe proposes three datasets and corresponding evaluation methodologies, coherently bundled in three competitions with a dedicated workshop co-located with CVPR 2018. We observed that satellite imagery is a rich and structured source of information, yet it is less investigated than everyday images by computer vision researchers. However, bridging modern computer vision with remote sensing data analysis could have critical impact to the way we understand our environment and lead to major breakthroughs in global urban planning or climate change research. Keeping such bridging objective in mind, DeepGlobe aims to bring…
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