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Diver Interest Via Pointing: Human-Directed Object Inspection for AUVs

Chelsey Edge, Junaed Sattar

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Abstract

In this paper, we present the Diver Interest via Pointing (DIP) algorithm, a highly modular method for con- veying a diver’s area of interest to an autonomous underwater vehicle (AUV) using pointing gestures for underwater human- robot collaborative tasks. DIP uses a single monocular camera and exploits human body pose, even with complete dive gear, to extract underwater human pointing gesture poses and their directions. By extracting 2D scene geometry based on the human body pose and density of salient feature points along the direction of pointing, using a low-level feature detector, the DIP algorithm is able to locate objects of interest as indicated by the diver. DIP makes it possible for scuba divers and swimmers to use directional cues, through pointing, to an AUV for inspec- tion, surveillance, manipulation, and navigation. We examine the elements that make up our method, provide quantitative and qualitative evaluation, and demonstrate AUV actuation based on diver pointing gestures in closed-water human-robot collaborative experiments. Our evaluations demonstrate the high efficacy of the DIP algorithm in correctly identifying the direction of a pointing gesture and locating an object within that region of interest. We also show that the findings of the algorithm qualitatively conform with human assessment of pointing gestures, directions, and targets.

Index terms

Marine Robotics Intention Recognition Human-Robot Collaboration