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lidR: An R package for analysis of Airborne Laser Scanning (ALS) data
Jean Romain Roussel
, David Auty
, Nicholas C. Coops
, Piotr Tompalski
, Tristan R.H. Goodbody
, Andrew Sánchez Meador
, Jean François Bourdon
, Florian de Boissieu
, Alexis Achim
Forestry, School of
Research output
:
Contribution to journal
›
Review article
›
peer-review
780
Scopus citations
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Computer Science
Common Implementation
100%
Dimensional Structure
100%
Fundamental Importance
100%
Open Source
100%
Open Source Software
100%
Processing Time
100%
Raise Awareness
100%
Research Community
100%
Software Platform
100%
Structural Description
100%
Keyphrases
3D Structure
16%
Aboveground Biomass
16%
Airborne Laser Scanning
100%
Airborne Laser Scanning Data
100%
Algorithm Selection
16%
C + +
16%
Complex Dataset
16%
Creative Processing
16%
Creative Space
16%
Cross-platform Software
16%
Design philosophy
16%
Discipline Development
16%
Ecological Understanding
16%
Efficient Processing
16%
Forestry
33%
Implementation Approach
16%
Laser Technology
16%
LidR
100%
LidR Package
16%
Natural Resource Management
16%
Processing Time
16%
Processing Workflow
16%
R Environment
16%
Remote Sensing Technology
16%
Reproducible Workflow
16%
Scanning Tools
16%
Spatial Knowledge
16%
Structural Description
16%
Agricultural and Biological Sciences
Aboveground Biomass
100%
Community Ecology
100%
Community Forestry
100%
Forestry
100%
Natural Resources Management
100%
Remote Sensing
100%
Earth and Planetary Sciences
Aboveground Biomass
12%
Airborne Laser Scanning
100%
Community Ecology
12%
Community Forestry
12%
Natural Resource Management
12%
Private Sector
12%
Remote Sensing Technology
12%
State of the Art
12%
Vegetation
25%