Online Human Action Detection during Escorting
Siddhartha Mondal, Avik Mitra, Chayan Sarkar

TL;DR
This paper introduces a novel neural network architecture for real-time human action detection and person re-identification to improve robot escorting in crowded environments, enabling dynamic adjustment of robot movement.
Contribution
The paper presents a new neural network model that simultaneously performs person re-identification and action prediction, tailored for escorting robots in complex, crowded settings.
Findings
Superior efficiency over baseline models
Effective in dynamic, crowded environments
Enables real-time adjustment of robot movement
Abstract
The deployment of robot assistants in large indoor spaces has seen significant growth, with escorting tasks becoming a key application. However, most current escorting robots primarily rely on navigation-focused strategies, assuming that the person being escorted will follow without issue. In crowded environments, this assumption often falls short, as individuals may struggle to keep pace, become obstructed, get distracted, or need to stop unexpectedly. As a result, conventional robotic systems are often unable to provide effective escorting services due to their limited understanding of human movement dynamics. To address these challenges, an effective escorting robot must continuously detect and interpret human actions during the escorting process and adjust its movement accordingly. However, there is currently no existing dataset designed specifically for human action detection in…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Human Pose and Action Recognition · Context-Aware Activity Recognition Systems
