Navigation and Localization for Railway Inspection Drone in GPS-denied Environments: An Investigative Study of Modular SLAM Baselines and End-to-End Learning-based Approaches
Ladda ner
Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
Autonomous navigation in GPS-denied environments remains a critical challenge
for unmanned aerial vehicles performing infrastructure inspection. This thesis investigates
the feasibility of learning-based navigation for railway-inspection drones
by first constructing and analyzing a state-of-the-art modular baseline and then
evaluating emerging end-to-end paradigms.
A high-performance navigation system combining FasterLIO SLAM with Fast-Planner
trajectory generation is implemented in high-fidelity simulation and used as an
analytical baseline. While the system successfully navigates dense forest environments,
controlled experiments reveal three structural failure modes—SLAM localization
drift, flight-controller tracking limitations, and planner-induced trajectory
constraints—highlighting deeper challenges such as cumulative error propagation
and real-time sensor–compute bottlenecks.
Building on these insights, the thesis conducts an experimentally grounded feasibility
study of three dominant end-to-end learning directions: predictive worldmodel
architectures, self-supervised representation learning pipelines, and visionreinforcement-
learning approaches. By implementing prototype models and stresstesting
their stability and data requirements, the study identifies several infeasible
or unstable directions—such as feature-forecasting models and self-distillation objectives—
and reveals simulator limitations that currently block scalable vision-RL
for UAVs.
Rather than delivering a complete end-to-end navigation system, this work provides
a systematic evaluation of the landscape, clarifies the fundamental obstacles facing
learning-based navigation in GPS-denied environments, and establishes concrete
design requirements and a research roadmap for future PhD-level research.
Beskrivning
Ämne/nyckelord
autonomous navigation, UAV, GPS-denied, railway inspection, modular systems, LiDAR, SLAM, end-to-end learning, self-supervised learning, reinforcement learning, world models
