CFP : CV for Vegetation Structure - SF, CA - 07SEP2006 We were hoping for involvement from the Computer Vision community for this conference session at the American Geophysical Union Fall Meeting (2006): the application of CV techniques to the analysis of remote sensing imagery of vegetation ecosystems. We would like to call to your attention Session B07: Remote Characterization of Vegetation Structure, to be held during the 2006 AGU Fall Meeting in San Francisco. A general description of the Fall Meeting is available at http://www.agu.org/meetings/fm06 Abstracts can be submitted online at http://www.agu.org/meetings/fm06/?content=program The deadline for submitting the abstracts is 7 September 2006. B07: Remote Characterization of Vegetation Structure Co-conveners: Alistair Smith (University of Idaho), Lee Vierling (University of Idaho) and Jonathan Greenberg (NASA Ames Research Center) This session aims to highlight a broad cross-section of research centered on the remote characterization of vegetation structure at scales ranging from the individual plant to the landscape. Knowledge of vegetation structure, such as the heights, crown width, canopy gaps, and shading, can be used to evaluate biogeochemical pools and fluxes, vegetation functional group classification, ecological successional dynamics, light/ and water interception and their effects on radiative transfer and water budgets, among other topics. The recent widespread application of light detection and ranging (lidar) systems has re-emphasized the potential of remote sensing datasets to characterize such structural information from the individual to the landscape level. However, numerous research studies exist that apply novel analysis techniques to both lidar and passive remote sensing systems, which collectively have the potential to quantify temporal changes in vegetation structure and function over decadal time-scales. The session is for a half day to facilitate interactions between biogeosceinces and hydrological sciences related researchers. We are soliciting both oral and poster presentations on all aspects of method development, monitoring, and modeling applications of using such remotely sensed datasets to quantify vegetation structure, with emphasis on the following topics: - Development of automated methods to locate individual trees and shrubs - Assessment of individual plant structural information from Lidar and passive systems - Remote sensing of stand level canopy structure and canopy gaps - Measurement and prediction of stand to landscape level canopy variables using Lidar and passive systems - Using remote measures of vegetation structure to model light and water interception effects on radiative transfer and water budgets - Remote sensing to evaluate trends in woody encroachment, carbon accumulation, and/or plant succession or establishment over decadal time periods - Modeling tree shade and shade effects on energy/ and water/snow interactions