LSTS Toolchain Framework for Deep Learning Implementation into Autonomous Underwater Vehicle
Martin Aubard, Ana Madureira, Luís Madureira, Renato Campos, María João Costa, José Pinto, João Borges de Sousa
- Year
- 2023
- Citations
- 3
Abstract
The development of increasingly autonomous underwater vehicles has long been a research focus in underwater robotics. Recent advances in deep learning have shown promising results, offering the potential for fully autonomous behavior in underwater vehicles. However, its implementation requires improvements to the current vehicles. This paper proposes an onboard data processing framework for Deep Learning implementation. The proposed framework aims to increase the autonomy of the vehicles by allowing them to interact with their environment in real time, enabling real-time detection, control, and navigation.
Keywords
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