TL;DR
This paper develops advanced deep learning models using high-resolution commercial satellite imagery to accurately classify rivers in the Arctic, surpassing previous spatial resolution and spectral limitations.
Contribution
It introduces fully convolutional neural networks trained on high-resolution multispectral and panchromatic imagery, enabling precise water classification even from panchromatic data alone.
Findings
Models achieved over 90% precision and recall on validation data.
Panchromatic-only models achieved over 85% precision and recall.
Open-source code and trained models are provided for community use.
Abstract
Remote sensing of the Earth's surface water is critical in a wide range of environmental studies, from evaluating the societal impacts of seasonal droughts and floods to the large-scale implications of climate change. Consequently, a large literature exists on the classification of water from satellite imagery. Yet, previous methods have been limited by 1) the spatial resolution of public satellite imagery, 2) classification schemes that operate at the pixel level, and 3) the need for multiple spectral bands. We advance the state-of-the-art by 1) using commercial imagery with panchromatic and multispectral resolutions of 30 cm and 1.2 m, respectively, 2) developing multiple fully convolutional neural networks (FCN) that can learn the morphological features of water bodies in addition to their spectral properties, and 3) FCN that can classify water even from panchromatic imagery. This…
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Taxonomy
MethodsMax Pooling · Convolution · Fully Convolutional Network
