Urban tree surveying using aerial UAV images and machine learning algorithms

Authors

  • Juan Pablo DAmato CONICET Author
  • Pablo Rinaldi PLADEMA Institute - Universidad Nacional del Centro Prov. Bs. As Author
  • Gustavo Boroni PLADEMA Institute - Universidad Nacional del Centro Prov. Bs. As Author

DOI:

https://doi.org/10.17013/wjis.v1i3.20

Keywords:

machine learning, UAV, urban studies

Abstract

In this work, a novel approach to surveying urban trees based on automatic detecting from images captured using unmanned aerial vehicles (UAVs) is presented. Such a method is a cost-effective alternative to traditional measurement techniques. Through autonomous flights, UAVs capture detailed aerial imagery of urban areas, which is then processed to generate high-resolution raster images and elevation models. Machine learning algorithms are then applied to these images to identify trees, refining the detection process by eliminating false positives and estimating tree heights. Dealing with challenges such as flight time limitations and the irregularity of urban trees, the method achieves great accuracy in tree identification, not only covering the tree detection but also the separation between sidewalk and block interior trees, the estimation of height among other important data. Although the methodology does not cover all aspects of tree surveying, such as trunk health or diameter, it serves as a complementary tool to ground survey systems

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Published

2025-03-23

Issue

Section

Regular Issue