ROFeb 11, 2022

Overhead Image Factors for Underwater Sonar-based SLAM

arXiv:2202.05811v135 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of robust and accurate localization for AUVs, which is incremental by integrating existing overhead data into SLAM.

The paper tackles the problem of improving SLAM accuracy for autonomous underwater vehicles using low-cost sensors by incorporating overhead imagery, achieving enhanced state estimation accuracy as validated in simulations and demonstrated in a real deployment.

Simultaneous localization and mapping (SLAM) is a critical capability for any autonomous underwater vehicle (AUV). However, robust, accurate state estimation is still a work in progress when using low-cost sensors. We propose enhancing a typical low-cost sensor package using widely available and often free prior information; overhead imagery. Given an AUV's sonar image and a partially overlapping, globally-referenced overhead image, we propose using a convolutional neural network (CNN) to generate a synthetic overhead image predicting the above-surface appearance of the sonar image contents. We then use this synthetic overhead image to register our observations to the provided global overhead image. Once registered, the transformation is introduced as a factor into a pose SLAM factor graph. We use a state-of-the-art simulation environment to perform validation over a series of benchmark trajectories and quantitatively show the improved accuracy of robot state estimation using the proposed approach. We also show qualitative outcomes from a real AUV field deployment. Video attachment: https://youtu.be/_uWljtp58ks

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