BG9.3 | Remote Sensing of Vegetation Biodiversity Quantity and Value
EDI
Remote Sensing of Vegetation Biodiversity Quantity and Value
Convener: Javier Pacheco-Labrador | Co-conveners: Ulisse GomarascaECSECS, Gregory Duveiller, Giulia TagliabueECSECS, Christian RossiECSECS

Quantifying and valuing biodiversity is essential for effective conservation strategies and addressing and mitigating biodiversity loss. Remote sensing is increasingly recognized as a valuable tool for monitoring various aspects of plant diversity, offering a solution to the spatial and temporal limitations of traditional field sampling. In addition, remote sensing can provide colocated information regarding ecosystem functions and services, which is crucial for understanding the role of plant diversity in maintaining ecosystem stability and resilience.
Despite its potential, remote sensing still faces numerous challenges in reliably quantifying plant diversity and bridging the gap with the field of ecology. There is a need for suitable and comparable field datasets that represent terrestrial ecosystems that support the development of remote sensing reliable estimation methods and modeling frameworks, and leverage opportunities from new remote sensing missions and their integration. At the same time, closer collaboration between ecologists and remote sensing scientists will lead to better understanding of both fields’ needs and current limitations, enabling remote sensing outputs that are more valuable for a broader scientific community.
This session calls for recent studies showing advances in this field, with the scope of attracting scientists from both the remote sensing field and ecology or adjacent disciplines. We welcome both specialized and multidisciplinary contributions that advance the science of remote sensing of vegetation diversity or use its products in ecological studies. The session is also open to out-of-the-box approaches and biodiversity studies over other taxa.

Solicited authors:
Fabian D. Schneider
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