Uncertainty-aware Accurate Elevation Modeling for Off-road Navigation via Neural Processes
Sanghun Jung, Daehoon Gwak, Byron Boots, James Hays

TL;DR
This paper introduces a neural process-based approach for real-time off-road terrain elevation modeling that accurately captures sharp changes and uncertainties, leveraging sensor data and a novel attention mechanism.
Contribution
It presents a new neural process method with local attention for precise elevation and uncertainty estimation, outperforming existing approaches in off-road terrain modeling.
Findings
Superior elevation accuracy over baselines
Effective uncertainty quantification in complex terrains
Reduced computational complexity by 17%
Abstract
Terrain elevation modeling for off-road navigation aims to accurately estimate changes in terrain geometry in real-time and quantify the corresponding uncertainties. Having precise estimations and uncertainties plays a crucial role in planning and control algorithms to explore safe and reliable maneuver strategies. However, existing approaches, such as Gaussian Processes (GPs) and neural network-based methods, often fail to meet these needs. They are either unable to perform in real-time due to high computational demands, underestimating sharp geometry changes, or harming elevation accuracy when learned with uncertainties. Recently, Neural Processes (NPs) have emerged as a promising approach that integrates the Bayesian uncertainty estimation of GPs with the efficiency and flexibility of neural networks. Inspired by NPs, we propose an effective NP-based method that precisely estimates…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Neural Networks and Applications · Underwater Acoustics Research
