How to Find Accurate Terrain and Canopy Height GEDI Footprints in Temperate Forests and Grasslands?

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Vítězslav Moudrý - , Czech University of Life Sciences Prague, Charles University Prague, Czech Academy of Sciences (Author)
  • Jiří Prošek - , Czech University of Life Sciences Prague, Czech Academy of Sciences (Author)
  • Suzanne Marselis - , Leiden University (Author)
  • Jana Marešová - , Czech University of Life Sciences Prague (Author)
  • Eliška Šárovcová - , Czech University of Life Sciences Prague (Author)
  • Kateřina Gdulová - , Czech University of Life Sciences Prague (Author)
  • Giorgi Kozhoridze - , Czech University of Life Sciences Prague (Author)
  • Michele Torresani - , Free University of Bozen-Bolzano (Author)
  • Duccio Rocchini - , Czech University of Life Sciences Prague, University of Bologna (Author)
  • Anette Eltner - , Junior Professorship in Geo Sensor Systems (Author)
  • Xiao Liu - , Junior Professorship in Environmental Remote Sensing (Author)
  • Markéta Potůčková - , Charles University Prague (Author)
  • Adéla Šedová - , Charles University Prague (Author)
  • Pablo Crespo-Peremarch - , Polytechnic University of Valencia (Author)
  • Jesús Torralba - , Polytechnic University of Valencia (Author)
  • Luis A. Ruiz - , Polytechnic University of Valencia (Author)
  • Michela Perrone - , Czech University of Life Sciences Prague (Author)
  • Olga Špatenková - , Czech University of Life Sciences Prague (Author)
  • Jan Wild - , Czech University of Life Sciences Prague, Czech Academy of Sciences (Author)

Abstract

Filtering approaches on Global Ecosystem Dynamics Investigation (GEDI) data differ considerably across existing studies and it is yet unclear which method is the most effective. We conducted an in-depth analysis of GEDI's vertical accuracy in mapping terrain and canopy heights across three study sites in temperate forests and grasslands in Spain, California, and New Zealand. We started with unfiltered data (2,081,108 footprints) and describe a workflow for data filtering using Level 2A parameters and for geolocation error mitigation. We found that retaining observations with at least one detected mode eliminates noise more effectively than sensitivity. The accuracy of terrain and canopy height observations depended considerably on the number of modes, beam sensitivity, landcover, and terrain slope. In dense forests, a minimum sensitivity of 0.9 was required, while in areas with sparse vegetation, sensitivity of 0.5 sufficed. Sensitivity greater than 0.9 resulted in an overestimation of canopy height in grasslands, especially on steep slopes, where high sensitivity led to the detection of multiple modes. We suggest excluding observations with more than five modes in grasslands. We found that the most effective strategy for filtering low-quality observations was to combine the quality flag and difference from TanDEM-X, striking an optimal balance between eliminating poor-quality data and preserving a maximum number of high-quality observations. Positional shifts improved the accuracy of GEDI terrain estimates but not of vegetation height estimates. Our findings guide users to an easy way of processing of GEDI footprints, enabling the use of the most accurate data and leading to more reliable applications.

Details

Original languageEnglish
Article numbere2024EA003709
Number of pages26
JournalEarth and Space Science
Volume11(2024)
Issue number10
Publication statusPublished - Oct 2024
Peer-reviewedYes

External IDs

ORCID /0000-0003-1351-4214/work/180882726

Keywords

Keywords

  • error, filtering, geolocation, height, terrain, vegetation