Maktab-Dar-Oghaz_et_al_2022.pdf (1.3 MB)
Download fileUrban Tree Detection and Species Classification Using Aerial Imagery
conference contribution
posted on 2023-07-26, 15:54 authored by Mahdi Maktab Dar Oghaz, Lakshmi Babu Saheer, Javad ZarrinTrees are essential for climate change adaptation or even mitigation to some extent. To leverage their potential, effective forest and urban tree management is required. Automated tree detection, localisation, and species classification are crucial to any forest and urban tree management plan. Over the last decade, many studies aimed at tree species classification using aerial imagery yet due to several environmental challenges results were sub-optimal. This study aims to contribute to this domain by first, generating a labelled tree species dataset using Google Maps static API to supply aerial images and Trees In Camden inventory to supply species information, GPS coordinates (Latitude and Longitude), and tree diameter. Furthermore, this study investigates how state-of-the-art deep Convolutional Neural Network models including VGG19, ResNet50, DenseNet121, and InceptionV3 can handle the species classification problem of the urban trees using aerial images. Experimental results show our best model, InceptionV3 achieves an average accuracy of 73.54 over 6 tree species.
History
Page range
469-483ISSN
978-3-031-10464-0External DOI
ISBN
978-3-031-10463-3Conference proceeding
Intelligent ComputingName of event
SAI Computing Conference 2022Location
OnlineEvent start date
2022-07-14Event finish date
2022-07-15File version
- Published version
Language
- eng