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Carlos Cerrejon Lozano  - GEE, Bryophytes, cartographie numérique

© IRF-UQAT
carlos.cerrejonlozano@uqat.ca

I am student of environmental sciences, so I am here to improve my knowledge about that as much as possible. I have been working with bryophytes the last years. I love the field and the landscapes.

Projet de recherche :

Understanding the biodiversity patterns of cryptogams (Bryophytes and lichens) through remote sensing

Carlos Cerrejon Lozano, Marion Noualhaguet, Nicole J. Fenton, Marc-Frédéric Indorf, Mariano Feldman. (2025). Inconspicuous taxa in citizen science-based botanical research: actual contribution, limitations, and new opportunities for non-vascular cryptogams Frontiers in Environmental Science. . 10.3389/fenvs.2024.1448512 lien

Carlos Cerrejon Lozano, Osvaldo Valeria, Nicole J. Fenton. (2023). Estimating lichen α- and β-diversity using satellite data at different spatial resolutions. Ecological Indicator. 149:110173. 10.1016/j.ecolind.2023.110173 lien

Carlos Cerrejon Lozano, Jesús Muñoz, Osvaldo Valeria, Nicole J. Fenton. (2022). Small but visible: Predicting rare bryophyte distribution and richness patterns using remote sensing-based ensembles of small models. PlosOne. 17(1):e0260543. 10.1371/journal.pone.0260543 lien

Maxence Martin, Carlos Cerrejon Lozano, Osvaldo Valeria. (2021). Complementary airborne LiDAR and satellite indices are reliable predictors of disturbance-induced structural diversity in mixed old-growth forest landscapes. Remote Sensing of Environment. 267:112746. 10.1016/j.rse.2021.112746 lien

Carlos Cerrejon Lozano, Osvaldo Valeria, Richard Caners, Philippe Marchand, Nicole J. Fenton. (2021). No place to hide: Rare plant detection through remote sensing. Diversity and Distributions.. 27(6):948-961. 10.1111/ddi.13244 lien

Carlos Cerrejon Lozano, Osvaldo Valeria, Marion Barbé, Nicolas Mansuy, Nicole J. Fenton. (2020). Predictive mapping of bryophyte richness patterns in boreal forests using species distribution models and remote sensing data. Ecological Indicator. 119:106826. 10.1016/j.ecolind.2020.106826 lien

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