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Reliable-loc: Robust Sequential LiDAR Global Localization in Large-Scale Street Scenes Based on Verifiable Cues

Reliable-loc introduces a resilient LiDAR-based global localization system for wearable mapping devices in complex, GNSS-denied street environments with sparse features and incomplete prior maps.

Key Highlights:

  • Dual-Stage Observation Model for MCL: Fuses global and local features into Monte Carlo Localization (MCL), using spectral matching and pose error metrics to refine particle weights in feature-poor scenes.
  • Spatial Verification-Based Particle Weighting: Leverages inter-cluster spectral matching scores and pose alignment via SVD to validate local feature correspondences and prevent false convergence.
  • Adaptive Localization Mode Switching: Dynamically alternates between Reg (registration-based) and PF (particle filter-based) modes using real-time pose uncertainty from both correspondences and odometry.
  • Pose Uncertainty Estimation via Hessian Eigenvalue: Monitors localization reliability using the smallest eigenvalue of the Hessian matrix and standard deviations from covariance estimates.
  • Robust in Incomplete or Unmapped Regions: Demonstrates strong recovery and localization performance even in data holes or with unstructured scenes like viaducts and flat walls.
  • Real-Time Performance: Achieves ~98 ms per frame on standard hardware, with 5000 particles at initialization and 400 post-convergence, suitable for real-time deployment.
  • Quantitative Gains Across Scenarios: Achieves position accuracy of ±2.91 m and yaw accuracy of ±3.74°, outperforming baselines like PF-loc and Reg-loc across 7 diverse urban/campus datasets.
  • Failure Detection and Reinitialization: Automatically detects localization failure and reinitializes particles around uncertain poses using Gaussian sampling and MCL exploration.
  • Scalable and Generalizable Framework: Validated on a 30 km heterogeneous dataset with helmet-WLS and vehicle-MLS data, covering challenging, dynamic urban scenes.

Paper Resources

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