ROCVSep 28, 2022

A Diver Attention Estimation Framework for Effective Underwater Human-Robot Interaction

arXiv:2209.14447v21 citationsh-index: 28
Originality Incremental advance
AI Analysis

This work addresses a specific bottleneck in underwater robotics for tasks like inspection and rescue, but it is incremental as it builds on existing vision-based methods.

The paper tackles the problem of distracted divers in underwater human-robot interaction by proposing a framework that uses a deep neural network to estimate diver attention based on head orientation, enabling autonomous vehicles to initiate interactions more effectively, with experimental validation in real-world trials.

Many underwater tasks, such as cable-and-wreckage inspection and search-and-rescue, can benefit from robust Human-Robot Interaction (HRI) capabilities. With the recent advancements in vision-based underwater HRI methods, Autonomous Underwater Vehicles (AUVs) have the capability to interact with their human partners without requiring assistance from a topside operator. However, in these methods, the AUV assumes that the diver is ready for interaction, while in reality, the diver may be distracted. In this paper, we attempt to address this problem by presenting a diver attention estimation framework for AUVs to autonomously determine the attentiveness of a diver, and developing a robot controller to allow the AUV to navigate and reorient itself with respect to the diver before initiating interaction. The core element of the framework is a deep convolutional neural network called DATT-Net. It is based on a pyramid structure that can exploit the geometric relations among 10 facial keypoints of a diver to estimate their head orientation, which we use as an indicator of attentiveness. Our on-the-bench experimental evaluations and real-world experiments during both closed- and open-water robot trials confirm the efficacy of the proposed framework.

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