Advances in Remote Sensing Monitoring of Post-Disturbance Forest Recovery
A special issue of Remote Sensing (ISSN 2072-4292). This special issue belongs to the section "Ecological Remote Sensing".
Deadline for manuscript submissions: 31 January 2025 | Viewed by 171
Special Issue Editors
Interests: forest disturbance detection; remote sensing monitoring vegetation structure and function changes; modeling of terrestrial ecosystem carbon, nitrogen, and water cycles
Special Issues, Collections and Topics in MDPI journals
Interests: artificial intelligence; image classification; land cover characterization; geospatial big data processing; cloud applications; cash crop mapping for food security; vegetation phenological cycles estimation
Special Issues, Collections and Topics in MDPI journals
Interests: remote sensing and GIS applications in ecosystems science; climate change impacts and adaptation; AI/ML applications in climate and environment; permafrost landscapes
Special Issues, Collections and Topics in MDPI journals
Special Issue Information
Dear Colleagues,
Forests are facing unprecedented levels of both natural and anthropogenic disturbances; however, our understanding of their recovery from these disturbances remains limited. Monitoring post-disturbance forest recovery is crucial for reflecting forest resilience, determining landscape dynamics, and identifying sustainable forest management practices. Forest recovery can be measured in different dimensions such as structure (e.g., canopy cover, shape & width; tree age, diameter and height), composition (e.g., tree species and biodiversity), and function (e.g., productivity, biomass, carbon flux, and other services). Many factors such as climate, disturbance severity, disturbance regimes (e.g., fire, windthrow, extreme climate, land conversion, logging, insect & diseases), forest species, soil condition, and management can affect the post-disturbance forest recovery patterns. Remote sensing has been suggested as a complementary tool for studying post-disturbance recovery, overcoming some limitations of field-based approaches. Forest disturbance occurrence, severity, location, and extent have been widely explored using various spaceborne and airborne remote sensors and change detection algorithms on various platforms such as ENVI, GEE and other GIS & RS software. Beyond these, fewer studies have devoted in post-disturbance forest recovery research. It is necessary to summarize the current progress in remote sensing indicators (metrics), methodology and platforms, and put forward new ideas to improve forest recovery monitoring.
This Special Issue aims at studies relevant to new remote sensing technologies, new sensors, data collections, and processing methodologies that can be successfully applied in disturbance regime mapping, forest recovery monitoring, and post-disturbance management.
We welcome submissions that cover but are not limited to:
- Mapping forest disturbance recovery patterns at local and regional scales using the remote sensing approach;
- Improved or new methods or techniques for detecting time-series post-disturbance forest recovery;
- New metrics or methods for reflecting post-disturbance forest recovery in structure, composition and function (services);
- Forest disturbance regimes evaluation and monitoring with big data and artificial intelligence classification;
- Remote sensing-based assessments for the impacts of climate, forest type, disturbance severity, disturbance regimes and management on the post-disturbance forest recovery patterns;
- Remote sensing assessment for the impacts of forest management practices on forest recovery;
- Application of 3D mapping by photogrammetry, LiDAR, and SAR in post-disturbance studies.
Prof. Dr. Guangsheng Chen
Prof. Dr. Zoltan Szantoi
Dr. Santonu Goswami
Guest Editors
Manuscript Submission Information
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Keywords
- forest disturbance
- forest recovery
- forest resilience
- forest regrowth
- canopy structure
- forest composition
- forest service
- productivity and biomass
- recovery trajectory
- disturbance regime
- disturbance severity
- big data and artificial intelligence
- remote sensing application
- forest management
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