Near Real-Time Change Detection System Using Sentinel-2 and Machine Learning: A Test for Mexican and Colombian Forests

Author:

Pacheco-Pascagaza Ana MaríaORCID,Gou YaqingORCID,Louis Valentin,Roberts John F.,Rodríguez-Veiga PedroORCID,da Conceição Bispo PolyannaORCID,Espírito-Santo Fernando D. B.ORCID,Robb Ciaran,Upton Caroline,Galindo Gustavo,Cabrera Edersson,Pachón Cendales Indira Paola,Castillo Santiago Miguel Angel,Carrillo Negrete Oswaldo,Meneses Carmen,Iñiguez Marco,Balzter HeikoORCID

Abstract

The commitment by over 100 governments covering over 90% of the world’s forests at the COP26 in Glasgow to end deforestation by 2030 requires more effective forest monitoring systems. The near real-time (NRT) change detection of forest cover loss enables forest landowners, government agencies and local communities to monitor natural and anthropogenic disturbances in a much timelier fashion than the thematic maps that are released every year. NRT deforestation alerts enable the establishment of more up-to-date forest inventories and rapid responses to unlicensed logging. The Copernicus Sentinel-2 satellites provide operational Earth observation (EO) data from multi-spectral optical/near-infrared wavelengths every five days at a global scale and at 10 m resolution. The amount of acquired data requires cloud computing or high-performance computing for ongoing monitoring systems and an automated system for processing, analyzing and delivering the information promptly. Here, we present a Sentinel-2-based NRT change detection system, assess its performance over two study sites, Manantlán in Mexico and Cartagena del Chairá in Colombia, and evaluate the forest changes that occurred in 2018. An independent validation with very high-resolution PlanetScope (~3 m) and RapidEye (~5 m) data suggests that the proposed NRT change detection system can accurately detect forest cover loss (> 87%), other vegetation loss (> 76%) and other vegetation gain (> 71%). Furthermore, the proposed NRT change detection system is designed to be attuned using in situ data. Therefore, it is scalable to larger regions, entire countries and even continents.

Funder

United Kingdom Space Agency

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference77 articles.

1. Tropical Forest Management and Conservation of Biodiversity: An Overview;Conserv. Biol.,2001

2. The Tropical Forest Carbon Cycle and Climate Change;Nature,2018

3. FAO (2018). The State of the World’s Forests 2018: Forest Pathways to Sustainable Development, FAO.

4. FAO, and UNEP (2020). The State of the World’s Forests 2020: Forests, Biodiversity and People, FAO.

5. Current Remote Sensing Approaches to Monitoring Forest Degradation in Support of Countries Measurement, Reporting and Verification (MRV) Systems for REDD+;Carbon Balance Manag.,2017

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