A Deep Learning Approach to Identify Rock Bolts in Complex 3D Point Clouds of Underground Mines Captured Using Mobile Laser Scanners
Dibyayan Patra, Pasindu Ranasinghe, Bikram Banerjee, Simit Raval

TL;DR
This paper introduces DeepBolt, a two-stage deep learning model that effectively detects small rock bolts in complex 3D underground mine point clouds, outperforming existing methods in accuracy and robustness.
Contribution
The study presents a novel deep learning architecture tailored for small object detection in noisy, complex 3D point clouds, addressing class imbalance and environmental challenges.
Findings
Achieves up to 42.5% higher IoU than state-of-the-art models.
Attains 96.41% precision and 96.96% recall in rock bolt classification.
Demonstrates robustness in complex underground mining environments.
Abstract
Rock bolts are crucial components of the subterranean support systems in underground mines that provide adequate structural reinforcement to the rock mass to prevent unforeseen hazards like rockfalls. This makes frequent assessments of such bolts critical for maintaining rock mass stability and minimising risks in underground mining operations. Where manual surveying of rock bolts is challenging due to the low light conditions in the underground mines and the time-intensive nature of the process, automated detection of rock bolts serves as a plausible solution. To that end, this study focuses on the automatic identification of rock bolts within medium to large-scale 3D point clouds obtained from underground mines using mobile laser scanners. Existing techniques for automated rock bolt identification primarily rely on feature engineering and traditional machine learning approaches.…
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