Baselight
Sign In
zenodo

Blaze Fire Classification – Segmentation Dataset

Verified Source
EU Open Research Repository

@zenodo.oai_zenodo_org_11501836

Loading...
Loading...

Zenodo

Dataset Description

The dataset is destined to be used for wildfire image classification and burnt area segmentation tasks for Unmanned Aerial Vehicles. It is comprised of 5,408 frames of aerial views taken from 56 videos and 2 public datasets. From the D-Fire public dataset, 829 photographs were used; and from the Burned Area UAV public dataset 34 images were used. For the classification task, there are 5 classes (‘Burnt’, ‘Half-Burnt’, ’Non-Burnt’, ‘Fire’, ‘Smoke’). As for the segmentation task, 404 segmentation masks on a subset have been created, which assign to each pixel of the image the class ‘burnt’ or the class ‘non-burnt’. Details on acquiring the dataset can be found here.   
Publisher name: Zenodo
Last updated: 2026-02-20T14:22:35Z


Related Datasets

Share link

Anyone who has the link will be able to view this.