Automated Linear Disturbance Mapping via Semantic Segmentation of Sentinel-2 Imagery
Andrew M. Nagel, Anne Webster, Christopher Henry, Christopher Storie,, Ignacio San-Miguel Sanchez, Olivier Tsui, Jason Duffe, Andy Dean

TL;DR
This paper presents a deep learning approach using VGGNet16 for semantic segmentation of Sentinel-2 imagery to automatically map linear disturbances in Canada's boreal forests, aiding habitat conservation efforts.
Contribution
It introduces a novel application of VGGNet16 for linear disturbance detection in lower resolution satellite imagery, enhancing automated habitat fragmentation mapping.
Findings
Effective segmentation of linear disturbances achieved
Demonstrated feasibility of using Sentinel-2 data for disturbance mapping
Identified challenges in segmenting thin linear features
Abstract
In Canada's northern regions, linear disturbances such as roads, seismic exploration lines, and pipelines pose a significant threat to the boreal woodland caribou population (Rangifer tarandus). To address the critical need for management of these disturbances, there is a strong emphasis on developing mapping approaches that accurately identify forest habitat fragmentation. The traditional approach is manually generating maps, which is time-consuming and lacks the capability for frequent updates. Instead, applying deep learning methods to multispectral satellite imagery offers a cost-effective solution for automated and regularly updated map production. Deep learning models have shown promise in extracting paved roads in urban environments when paired with high-resolution (<0.5m) imagery, but their effectiveness for general linear feature extraction in forested areas from lower…
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Taxonomy
TopicsGeochemistry and Geologic Mapping · Fault Detection and Control Systems
