A Near Real-Time Mapping of Tropical Forest Disturbance Using SAR and Semantic Segmentation in Google Earth Engine

Author:

Kilbride John Burns1ORCID,Poortinga Ate23,Bhandari Biplov45ORCID,Thwal Nyein Soe2ORCID,Quyen Nguyen Hanh2,Silverman Jeff5,Tenneson Karis45ORCID,Bell David6ORCID,Gregory Matthew7ORCID,Kennedy Robert1,Saah David28ORCID

Affiliation:

1. Department of Geography, Oregon State University, Corvallis, OR 97331, USA

2. Spatial Informatics Group, LLC, 2529 Yolanda Ct., Pleasanton, CA 94566, USA

3. SERVIR-Mekong, SM Tower, 24th Floor, 979/69 Paholyothin Road, Samsen Nai Phayathai, Bangkok 10400, Thailand

4. Earth System Science Center, The University of Alabama in Huntsville, 320 Sparkman Drive, Huntsville, AL 35805, USA

5. SERVIR Science Coordination Office, NASA Marshall Space Flight Center, 320 Sparkman Drive, Huntsville, AL 35805, USA

6. USDA Forest Service, Pacific Northwest Research Station, Portland, OR 97204, USA

7. Forest Ecosystems and Society, Oregon State University, Corvallis, OR 97331, USA

8. Geospatial Analysis Lab, University of San Francisco, San Francisco, CA 94117, USA

Abstract

Satellite-based forest alert systems are an important tool for ecosystem monitoring, planning conservation, and increasing public awareness of forest cover change. Continuous monitoring in tropical regions, such as those experiencing pronounced monsoon seasons, can be complicated by spatially extensive and persistent cloud cover. One solution is to use Synthetic Aperture Radar (SAR) imagery acquired by the European Space Agency’s Sentinel-1A and B satellites. The Sentinel 1A and B satellites acquire C-band radar data that penetrates cloud cover and can be acquired during the day or night. One challenge associated with operational use of radar imagery is that the speckle associated with the backscatter values can complicate traditional pixel-based analysis approaches. A potential solution is to use deep learning semantic segmentation models that can capture predictive features that are more robust to pixel-level noise. In this analysis, we present a prototype SAR-based forest alert system that utilizes deep learning classifiers, deployed using the Google Earth Engine cloud computing platform, to identify forest cover change with near real-time classification over two Cambodian wildlife sanctuaries. By leveraging a pre-existing forest cover change dataset derived from multispectral Landsat imagery, we present a method for efficiently developing a SAR-based semantic segmentation dataset. In practice, the proposed framework achieved good performance comparable to an existing forest alert system while offering more flexibility and ease of development from an operational standpoint.

Funder

US Agency for International Development

NASA Applied Sciences Capacity Building Program

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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