CVRONov 25, 2025

Conceptual Evaluation of Deep Visual Stereo Odometry for the MARWIN Radiation Monitoring Robot in Accelerator Tunnels

arXiv:2512.00080v1
Originality Synthesis-oriented
AI Analysis

This work proposes a conceptual solution for autonomous navigation in safety-critical, low-texture environments like accelerator tunnels, but it is incremental as it builds on existing DVSO methods without presenting new experimental results.

The paper explores deep visual stereo odometry (DVSO) as an alternative navigation method for the MARWIN radiation monitoring robot in accelerator tunnels, aiming to address limitations of current lidar-based systems by leveraging vision-based techniques for improved flexibility and reduced scale drift.

The MARWIN robot operates at the European XFEL to perform autonomous radiation monitoring in long, monotonous accelerator tunnels where conventional localization approaches struggle. Its current navigation concept combines lidar-based edge detection, wheel/lidar odometry with periodic QR-code referencing, and fuzzy control of wall distance, rotation, and longitudinal position. While robust in predefined sections, this design lacks flexibility for unknown geometries and obstacles. This paper explores deep visual stereo odometry (DVSO) with 3D-geometric constraints as a focused alternative. DVSO is purely vision-based, leveraging stereo disparity, optical flow, and self-supervised learning to jointly estimate depth and ego-motion without labeled data. For global consistency, DVSO can subsequently be fused with absolute references (e.g., landmarks) or other sensors. We provide a conceptual evaluation for accelerator tunnel environments, using the European XFEL as a case study. Expected benefits include reduced scale drift via stereo, low-cost sensing, and scalable data collection, while challenges remain in low-texture surfaces, lighting variability, computational load, and robustness under radiation. The paper defines a research agenda toward enabling MARWIN to navigate more autonomously in constrained, safety-critical infrastructures.

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