DeepSTARia: enabling autonomous, targeted observations of ocean life in the deep sea

Author:

Barnard Kevin,Daniels Joost,Roberts Paul L. D.,Orenstein Eric C.,Masmitja Ivan,Takahashi Jonathan,Woodward Benjamin,Katija Kakani

Abstract

The ocean remains one of the least explored places on our planet, containing myriad life that are either unknown to science or poorly understood. Given the technological challenges and limited resources available for exploring this vast space, more targeted approaches are required to scale spatiotemporal observations and monitoring of ocean life. The promise of autonomous underwater vehicles to fulfill these needs has largely been hindered by their inability to adapt their behavior in real-time based on what they are observing. To overcome this challenge, we developed Deep Search and Tracking Autonomously with Robotics (DeepSTARia), a class of tracking-by-detection algorithms that integrate machine learning models with imaging and vehicle controllers to enable autonomous underwater vehicles to make targeted visual observations of ocean life. We show that these algorithms enable new, scalable sampling strategies that build on traditional operational modes, permitting more detailed (e.g., sharper imagery, temporal resolution) autonomous observations of underwater concepts without supervision and robust long-duration object tracking to observe animal behavior. This integration is critical to scale undersea exploration and represents a significant advance toward more intelligent approaches to understanding the ocean and its inhabitants.

Publisher

Frontiers Media SA

Reference64 articles.

1. Emerging perspectives on resource tracking and animal movement ecology;Abrahms;Trends Ecol. Evol.,2021

2. Burrow emergence rhythms of nephrops norvegicus by uwtv and surveying biases;Aguzzi;Sci. Rep.,2021

3. Exo-ocean exploration with deep-sea sensor and platform technologies;Aguzzi;Astrobiology,2020

4. Imageto-image regression with distribution-free uncertainty quantification and applications in imaging;Angelopoulos,2022

5. The magnitude of global marine species diversity;Appeltans;Curr. Biol.,2012

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