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FireFly A Synthetic Dataset for Ember Detection in Wildfire

6 August 2023
Yue Hu
Xin-Yu Ye
Yifei Liu
Souvik Kundu
Gourav Datta
Srikar Mutnuri
Namo Asavisanu
Nora Ayanian
Konstantinos Psounis
Peter A. Beerel
ArXiv (abs)PDFHTML
Abstract

This paper presents "FireFly", a synthetic dataset for ember detection created using Unreal Engine 4 (UE4), designed to overcome the current lack of ember-specific training resources. To create the dataset, we present a tool that allows the automated generation of the synthetic labeled dataset with adjustable parameters, enabling data diversity from various environmental conditions, making the dataset both diverse and customizable based on user requirements. We generated a total of 19,273 frames that have been used to evaluate FireFly on four popular object detection models. Further to minimize human intervention, we leveraged a trained model to create a semi-automatic labeling process for real-life ember frames. Moreover, we demonstrated an up to 8.57% improvement in mean Average Precision (mAP) in real-world wildfire scenarios compared to models trained exclusively on a small real dataset.

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