Automated Recognition of Human-Built Infrastructure in the Arctic
Permafrost Landscapes using Commercial Satellite Imagery
Abstract
Very high spatial resolution (VHSR) commercial satellite imagery affords
permafrost scientists the ability to monitor the pan-Arctic system at a
fine-scale, enabling detailed monitoring of both the natural and human
environments. Geo-AI mapping applications based on the deep learning
(DL) convolutional neural network (CNN) have been successful in
translating this big imagery resource into Arctic science-ready
products. However, many models are computationally intensive due to the
constraints of the large geographical extent and complexity of VHSR
imagery. In addition, feature recognition is challenged by scarcity of
manually-annotated training data and image complexity at fine scales. In
this exploratory study, we investigated the ability of a lightweight
U-Net DLCNN to efficiently perform semantic segmentation of VHSR
commercial satellite imagery with limited training data in automated
recognition of human-built infrastructure, including residential,
industrial, public, commercial buildings, and roads, in the permafrost
affected regions of the Arctic. We conducted a systematic experiment to
understand how image augmentation improves the performance of DL-based
semantic segmentation of VHSR imagery. Different standard augmentations,
including flipping, rotation, and transposition, were applied to input
imagery in order to test their impacts on infrastructure recognition and
determine the optimal set of augmentations. With a relatively low number
of model parameters, limited labelled training data, short training
time, and high segmentation accuracy, our findings suggest that overall,
the U-Net DLCNN, coupled with image augmentation, could serve as an
accurate and efficient method for mapping infrastructure in the Arctic
permafrost environment without compromising spatial details and
geographical extent.