Feature Space Exploration For Planning Initial Benthic AUV Surveys
- URL: http://arxiv.org/abs/2105.11598v2
- Date: Fri, 29 Dec 2023 00:53:35 GMT
- Title: Feature Space Exploration For Planning Initial Benthic AUV Surveys
- Authors: Jackson Shields, Oscar Pizarro, Stefan B. Williams
- Abstract summary: Special-purpose Autonomous Underwater Vehicles (AUVs) are utilised for benthic (seafloor) surveys.
Due to the small-sensor footprint of the cameras and the vast areas to be surveyed, these AUVs can not feasibly collect full coverage imagery of areas larger than a few tens of thousands of square meters.
This research proposes methods for planning initial AUV surveys that efficiently explore a feature space representation of the bathymetry.
- Score: 11.497731809524536
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Special-purpose Autonomous Underwater Vehicles (AUVs) are utilised for
benthic (seafloor) surveys, where the vehicle collects optical imagery of the
seafloor. Due to the small-sensor footprint of the cameras and the vast areas
to be surveyed, these AUVs can not feasibly collect full coverage imagery of
areas larger than a few tens of thousands of square meters. Therefore it is
necessary for AUV paths to sample the surveys areas sparsely, yet effectively.
Broad-scale acoustic bathymetric data is readily available over large areas,
and is often a useful prior of seafloor cover. As such, prior bathymetry can be
used to guide AUV data collection. This research proposes methods for planning
initial AUV surveys that efficiently explore a feature space representation of
the bathymetry, in order to sample from a diverse set of bathymetric terrain.
This will enable the AUV to visit areas that likely contain unique habitats and
are representative of the entire survey site. We propose several information
gathering planners that utilise a feature space exploration reward, to plan
freeform paths or to optimise the placement of a survey template. The
suitability of these methods to plan AUV surveys is evaluated based on the
coverage of the feature space and also the ability to visit all classes of
benthic habitat on the initial dive. Informative planners based on
Rapidly-expanding Random Trees (RRT) and Monte-Carlo Tree Search (MCTS) were
found to be the most effective. This is a valuable tool for AUV surveys as it
increases the utility of initial dives. It also delivers a comprehensive
training set to learn a relationship between acoustic bathymetry and
visually-derived seafloor classifications.
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