A Comprehensive Dataset for Underground Miner Detection in Diverse Scenario
Journal:
arXiv
Published Date:
Jun 26, 2025
Abstract
Underground mining operations face significant safety challenges that make
emergency response capabilities crucial. While robots have shown promise in
assisting with search and rescue operations, their effectiveness depends on
reliable miner detection capabilities. Deep learning algorithms offer potential
solutions for automated miner detection, but require comprehensive training
datasets, which are currently lacking for underground mining environments. This
paper presents a novel thermal imaging dataset specifically designed to enable
the development and validation of miner detection systems for potential
emergency applications. We systematically captured thermal imagery of various
mining activities and scenarios to create a robust foundation for detection
algorithms. To establish baseline performance metrics, we evaluated several
state-of-the-art object detection algorithms including YOLOv8, YOLOv10, YOLO11,
and RT-DETR on our dataset. While not exhaustive of all possible emergency
situations, this dataset serves as a crucial first step toward developing
reliable thermal-based miner detection systems that could eventually be
deployed in real emergency scenarios. This work demonstrates the feasibility of
using thermal imaging for miner detection and establishes a foundation for
future research in this critical safety application.