TreeEyed: A QGIS plugin for tree monitoring in silvopastoral systems using state of the art AI models

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Date Issued

Date Online

2025-01-29

Language

en

Review Status

Peer Review

Access Rights

Open Access Open Access

Usage Rights

CC-BY-NC-4.0

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Citation

Ruiz-Hurtado, A.F.; Bolaños, J.P.; Arrechea-Castillo, D.A.; Cardoso, J.A. (2025) TreeEyed: A QGIS plugin for tree monitoring in silvopastoral systems using state of the art AI models. SoftwareX 29: 102071. ISSN: 2352-7110

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Abstract/Description

Tree monitoring is a challenging task due to the labour-intensive and time-consuming data collection methods required. We present TreeEyed, a QGIS plugin designed to facilitate the monitoring of trees using remote sensing RGB imagery and artificial intelligence models. The plugin offers several tools including tree inference process for tree segmentation and detection. This tool was implemented to facilitate the manipulation and processing of Geographical Information System (GIS) data from different sources, allowing multi-resolution, variable extent, and generating results in a standard GIS format (georeferenced raster and vector). Additional options like postprocessing, dataset generation, and data validation are also incorporated.

Author ORCID identifiers

Andres Felipe Ruiz-Hurtado  
Darwin Alexis Arrechea-Castillo  
Juan Andrés Cardoso Arango  

Contributes to SDGs

SDG 1 - No poverty
SDG 2 - Zero hunger
SDG 8 - Decent work and economic growth
SDG 10 - Reduce inequalities
SDG 13 - Climate action