Reliability-Guided Depth Fusion for Glare-Resilient Navigation Costmaps
TLDR
This paper introduces a glare-resilient depth fusion method that uses reliability modeling to prevent phantom obstacles in robot navigation costmaps.
Key contributions
- Proposes a Depth Reliability Map (DRM) to estimate per-pixel trustworthiness under specular glare.
- Introduces Reliability-Guided Fusion (RGF) to modulate occupancy updates, preventing corrupted depth accumulation.
- Substantially reduces false obstacle insertion and improves free-space preservation in navigation costmaps.
- Achieves improved robustness with modest computational overhead on a mobile robot platform.
Why it matters
Specular glare often creates phantom obstacles, hindering robot navigation in critical indoor environments. This paper offers a practical, lightweight solution by modeling depth reliability, improving costmap correctness and navigation robustness.
Original Abstract
Specular glare on reflective floors and glass surfaces frequently corrupts RGB-D depth measurements, producing holes and spikes that accumulate as persistent phantom obstacles in occupancy-grid costmaps. This paper proposes a glare-resilient costmap construction method based on explicit depth-reliability modeling. A lightweight Depth Reliability Map (DRM) estimator predicts per-pixel measurement trustworthiness under specular interference, and a Reliability-Guided Fusion (RGF) mechanism uses this signal to modulate occupancy updates before corrupted measurements are accumulated into the map. Experiments on a real mobile robotic platform equipped with an Intel RealSense D435 and a Jetson Orin Nano show that the proposed method substantially reduces false obstacle insertion and improves free-space preservation under real reflective-floor and glass-surface conditions, while introducing only modest computational overhead. These results indicate that treating glare as a measurement-reliability problem provides a practical and lightweight solution for improving costmap correctness and navigation robustness in safety-critical indoor environments.
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