Uncertainty Estimation for Deep Reconstruction in Actuatic Disaster Scenarios with Autonomous Vehicles
arXiv cs.RO / 4/9/2026
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Key Points
- The paper addresses how an autonomous underwater (aquatic) vehicle can reconstruct a scalar environmental field from sparse onboard sensor observations while also quantifying uncertainty for active sensing decisions like Informative Path Planning.
- It compares four uncertainty-aware approaches—Gaussian Processes, Monte Carlo Dropout, Deep Ensembles, and Evidential Deep Learning—across three perceptual (sensor-modality) configurations relevant to real-world sensors.
- The results indicate Evidential Deep Learning provides the best balance of reconstruction accuracy and uncertainty calibration while requiring the lowest inference cost in all tested sensor setups.
- The study finds Gaussian Processes are limited by their stationary kernel assumption and become computationally intractable as observation density increases.
- Overall, the authors recommend Evidential Deep Learning as a practical, uncertainty-aware reconstruction method suitable for real-time autonomous vehicle deployments.
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