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.

Abstract

Accurate reconstruction of environmental scalar fields from sparse onboard observations is essential for autonomous vehicles engaged in aquatic monitoring. Beyond point estimates, principled uncertainty quantification is critical for active sensing strategies such as Informative Path Planning, where epistemic uncertainty drives data collection decisions. This paper compares Gaussian Processes, Monte Carlo Dropout, Deep Ensembles, and Evidential Deep Learning for simultaneous scalar field reconstruction and uncertainty decomposition under three perceptual models representative of real sensor modalities. Results show that Evidential Deep Learning achieves the best reconstruction accuracy and uncertainty calibration across all sensor configurations at the lowest inference cost, while Gaussian Processes are fundamentally limited by their stationary kernel assumption and become intractable as observation density grows. These findings support Evidential Deep Learning as the preferred method for uncertainty-aware field reconstruction in real-time autonomous vehicle deployments.