Back to Search Start Over

Challenges in Video-Based Infant Action Recognition: A Critical Examination of the State of the Art

Authors :
Hatamimajoumerd, Elaheh
Kakhaki, Pooria Daneshvar
Huang, Xiaofei
Luan, Lingfei
Amraee, Somaieh
Ostadabbas, Sarah
Publication Year :
2023

Abstract

Automated human action recognition, a burgeoning field within computer vision, boasts diverse applications spanning surveillance, security, human-computer interaction, tele-health, and sports analysis. Precise action recognition in infants serves a multitude of pivotal purposes, encompassing safety monitoring, developmental milestone tracking, early intervention for developmental delays, fostering parent-infant bonds, advancing computer-aided diagnostics, and contributing to the scientific comprehension of child development. This paper delves into the intricacies of infant action recognition, a domain that has remained relatively uncharted despite the accomplishments in adult action recognition. In this study, we introduce a groundbreaking dataset called ``InfActPrimitive'', encompassing five significant infant milestone action categories, and we incorporate specialized preprocessing for infant data. We conducted an extensive comparative analysis employing cutting-edge skeleton-based action recognition models using this dataset. Our findings reveal that, although the PoseC3D model achieves the highest accuracy at approximately 71%, the remaining models struggle to accurately capture the dynamics of infant actions. This highlights a substantial knowledge gap between infant and adult action recognition domains and the urgent need for data-efficient pipeline models.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.12300
Document Type :
Working Paper