Simultaneous Feature and Body-Part Learning for Real-Time Robot Awareness of Human Behaviors
Fei Han, Xue Yang, Christopher Reardon, Yu Zhang, Hao Zhang

TL;DR
This paper introduces FABL, a novel method that simultaneously identifies discriminative body parts and features from skeletal data, enabling real-time robot awareness of human actions with high accuracy and speed.
Contribution
FABL is the first approach to jointly learn body-part and feature importance for real-time human action recognition in robotics.
Findings
Achieves high recognition accuracy on benchmark datasets.
Operates at a processing speed of approximately 10^4 Hz.
Successfully applied in practical assistive robotics scenarios.
Abstract
Robot awareness of human actions is an essential research problem in robotics with many important real-world applications, including human-robot collaboration and teaming. Over the past few years, depth sensors have become a standard device widely used by intelligent robots for 3D perception, which can also offer human skeletal data in 3D space. Several methods based on skeletal data were designed to enable robot awareness of human actions with satisfactory accuracy. However, previous methods treated all body parts and features equally important, without the capability to identify discriminative body parts and features. In this paper, we propose a novel simultaneous Feature And Body-part Learning (FABL) approach that simultaneously identifies discriminative body parts and features, and efficiently integrates all available information together to enable real-time robot awareness of human…
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Taxonomy
TopicsHuman Pose and Action Recognition · Hand Gesture Recognition Systems · Gait Recognition and Analysis
