TY - CHAP
T1 - Remote Sensing Technologies for Assessing Climate-Smart Criteria in Mountain Forests
AU - Torresan, Chiara
AU - Luyssaert, Sebastiaan
AU - Filippa, Gianluca
AU - Imangholiloo, Mohammad
AU - Gaulton, Rachel
PY - 2022
Y1 - 2022
N2 - Monitoring forest responses to climate-smart forestry (CSF) is necessary to determine whether forest management is on track to contribute to the reduction and/or removal of greenhouse gas emissions and the development of resilient mountain forests. A set of indicators to assess “the smartness” of forests has been previously identified by combining indicators for sustainable forest management with the ecosystem services. Here, we discuss the remote sensing technologies suitable to assess those indicators grouped in forest resources, health and vitality, productivity, biological diversity, and protective functions criteria. Forest cover, growing stock, abiotic, biotic, and human-induced forest damage, and tree composition indicators can be readily assessed by using established remote sensing techniques. The emerging areas of phenotyping will help track genetic resource indicators. No single existing sensor or platform is sufficient on its own to assess all the individual CSF indicators, due to the need to balance fine-scale monitoring and satisfactory coverage at broad scales. The challenge of being successful in assessing the largest number and type of indicators (e.g., soil conditions) is likely to be best tackled through multimode and multifunctional sensors, increasingly coupled with new computational and analytical approaches, such as cloud computing, machine learning, and deep learning.
AB - Monitoring forest responses to climate-smart forestry (CSF) is necessary to determine whether forest management is on track to contribute to the reduction and/or removal of greenhouse gas emissions and the development of resilient mountain forests. A set of indicators to assess “the smartness” of forests has been previously identified by combining indicators for sustainable forest management with the ecosystem services. Here, we discuss the remote sensing technologies suitable to assess those indicators grouped in forest resources, health and vitality, productivity, biological diversity, and protective functions criteria. Forest cover, growing stock, abiotic, biotic, and human-induced forest damage, and tree composition indicators can be readily assessed by using established remote sensing techniques. The emerging areas of phenotyping will help track genetic resource indicators. No single existing sensor or platform is sufficient on its own to assess all the individual CSF indicators, due to the need to balance fine-scale monitoring and satisfactory coverage at broad scales. The challenge of being successful in assessing the largest number and type of indicators (e.g., soil conditions) is likely to be best tackled through multimode and multifunctional sensors, increasingly coupled with new computational and analytical approaches, such as cloud computing, machine learning, and deep learning.
UR - https://www.mendeley.com/catalogue/8c20671d-8d18-3036-b2f4-a6357cc5e187/
U2 - 10.1007/978-3-030-80767-2_11
DO - 10.1007/978-3-030-80767-2_11
M3 - Chapter
SN - 9783030807665
SN - 9783030807696
T3 - Managing Forest Ecosystems (MAFE)
SP - 399
EP - 433
BT - Climate-Smart Forestry in Mountain Regions
A2 - Tognetti, Roberto
A2 - Smith, Melanie
A2 - Panzacchi, Pietro
PB - Springer
CY - Cham
ER -