Multi-stage semantic segmentation quantifies fragmentation of small habitats at a landscape scale

Date

2023-11-07

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI

Department

Type

Article

ISSN

2072-4292

Format

Free to read from

Citation

van der Plas TL , Geikie ST, Alexander DG, Simms DM.(2023) Multi-stage semantic segmentation quantifies fragmentation of small habitats at a landscape scale. Remote Sensing, Volume 15, Issue 22, November 2023, Article number 5277

Abstract

Land cover (LC) maps are used extensively for nature conservation and landscape planning, but low spatial resolution and coarse LC schemas typically limit their applicability to large, broadly defined habitats. In order to target smaller and more-specific habitats, LC maps must be developed at high resolution and fine class detail using automated methods that can efficiently scale to large areas of interest. In this work, we present a Machine Learning approach that addresses this challenge. First, we developed a multi-stage semantic segmentation approach that uses Convolutional Neural Networks (CNNs) to classify LC across the Peak District National Park (PDNP, 1439 km2) in the UK using a detailed, hierarchical LC schema. High-level classes were predicted with 95% accuracy and were subsequently used as masks to predict low-level classes with 72% to 92% accuracy. Next, we used these predictions to analyse the degree and distribution of fragmentation of one specific habitat—wet grassland and rush pasture—at the landscape scale in the PDNP. We found that fragmentation varied across areas designated as primary habitat, highlighting the importance of high-resolution LC maps provided by CNN-powered analysis for nature conservation.

Description

Software Description

Software Language

Github

Keywords

remote sensing, semantic segmentation, convolutional neural network, land cover prediction, habitat fragmentation

DOI

Rights

Attribution 4.0 International

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