Umar_et_al_2021.pdf (1.76 MB)
Download fileForest Terrain Identification using Semantic Segmentation on UAV Images
conference contribution
posted on 2023-07-26, 15:33 authored by Muhammad Umar, Lakshmi Babu Saheer, Javad ZarrinBeavers' habitat is known to alter the terrain, providing biodiversity in the area, and recently their lifestyle is linked to climatic changes by reducing greenhouse gases levels in the region. To analyse the impact of beavers’ habitat on the region, it is, therefore, necessary to estimate the terrain alterations caused by beaver actions. Furthermore, such terrain analysis can also play an important role in domains like wildlife ecology, deforestation, land-cover estimations, and geological mapping. Deep learning models are known to provide better estimates on automatic feature identification and classification of a terrain. However, such models require significant training data. Pre-existing terrain datasets (both real and synthetic) like CityScapes, PASCAL, UAVID, etc, are mostly concentrated on urban areas and include roads, pathways, buildings, etc. Such datasets, therefore, are unsuitable for forest terrain analysis. This paper contributes, by providing a finely labelled novel dataset of forest imagery around beavers’ habitat, captured from a high-resolution camera on an aerial drone. The dataset consists of 100 such images labelled and classified based on 9 different classes. Furthermore, a baseline is established on this dataset using state-of-the-art semantic segmentation models based on performance metrics including Intersection Over Union (IoU), Overall Accuracy (OA), and F1 score.
History
Publisher
Climate Change AIPlace of publication
OnlineConference proceeding
Proceedings of the 38th International Conference on Machine LearningName of event
International Conference on Machine Learning 2021Location
OnlineEvent start date
2021-07-23Event finish date
2021-07-23File version
- Published version
Language
- eng