Recently, both the frequency and intensity of wildfires have increased
worldwide, primarily due to climate change. In this paper, we propose a novel
protocol for wildfire detection, leveraging semi-supervised Domain Adaptation
for object detection, accompanied by a corresponding dataset designed for use
by both academics and industries. Our dataset encompasses 30 times more diverse
labeled scenes for the current largest benchmark wildfire dataset, HPWREN, and
introduces a new labeling policy for wildfire detection. Inspired by CoordConv,
we propose a robust baseline, Location-Aware Object Detection for
Semi-Supervised Domain Adaptation (LADA), utilizing a teacher-student based
framework capable of extracting translational variance features characteristic
of wildfires. With only using 1% target domain labeled data, our framework
significantly outperforms our source-only baseline by a notable margin of 3.8%
in mean Average Precision on the HPWREN wildfire dataset. Our dataset is
available at https://github.com/BloomBerry/LADA.Comment: 16 pages, 5 figures, 22 table