Potential and Challenges of Harmonizing 40 Years of AVHRR Data: The TIMELINE Experience
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Martin Bachmann | Sarah Asam | Stefanie Holzwarth | Simon Plank | Detmar Krause | Thorsten Andresen | Christina Eisfelder | Claudia Kuenzer | Stefan W. Dech | Doris Klein | Meinhard Wolfmüller | Thomas Ruppert | Ursula Gessner | Thomas Popp | Martin Böttcher | Hendrik Zwenzner | Corinne Frey | Igor Klein | Gerhard Gesell | Grit Kirches | Andreas J. Dietz | Sophie Reinermann | Tanja Kraus | Andreas Hirner | Philipp Reiners | Matthias Hofmann | Sebastian Roessler | Alexander Scherbachenko | Ranjitha Vignesh | S. Dech | G. Gesell | U. Gessner | I. Klein | C. Kuenzer | D. Klein | S. Plank | T. Kraus | C. Frey | C. Eisfelder | G. Kirches | A. Hirner | M. Bachmann | Sarah Asam | S. Holzwarth | A. Dietz | Martin Böttcher | T. Popp | H. Zwenzner | M. Hofmann | S. Roessler | M. Wolfmüller | T. Ruppert | R. Vignesh | T. Andresen | D. Krause | Sophie Reinermann | Philipp Reiners | A. Scherbachenko | M. Böttcher
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