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iCatcher+: Robust and Automated Annotation of Infants’ and Young Children’s Gaze Behavior From Videos Collected in Laboratory, Field, and Online Studies

Authors :
Yotam Erel
Katherine Adams Shannon
Junyi Chu
Kim Scott
Melissa Kline Struhl
Peng Cao
Xincheng Tan
Peter Hart
Gal Raz
Sabrina Piccolo
Catherine Mei
Christine Potter
Sagi Jaffe-Dax
Casey Lew-Williams
Joshua Tenenbaum
Katherine Fairchild
Amit Bermano
Shari Liu
Source :
Advances in Methods and Practices in Psychological Science. 6:251524592211472
Publication Year :
2023
Publisher :
SAGE Publications, 2023.

Abstract

Technological advances in psychological research have enabled large-scale studies of human behavior and streamlined pipelines for automatic processing of data. However, studies of infants and children have not fully reaped these benefits because the behaviors of interest, such as gaze duration and direction, still have to be extracted from video through a laborious process of manual annotation, even when these data are collected online. Recent advances in computer vision raise the possibility of automated annotation of these video data. In this article, we built on a system for automatic gaze annotation in young children, iCatcher, by engineering improvements and then training and testing the system (referred to hereafter as iCatcher+) on three data sets with substantial video and participant variability (214 videos collected in U.S. lab and field sites, 143 videos collected in Senegal field sites, and 265 videos collected via webcams in homes; participant age range = 4 months–3.5 years). When trained on each of these data sets, iCatcher+ performed with near human-level accuracy on held-out videos on distinguishing “LEFT” versus “RIGHT” and “ON” versus “OFF” looking behavior across all data sets. This high performance was achieved at the level of individual frames, experimental trials, and study videos; held across participant demographics (e.g., age, race/ethnicity), participant behavior (e.g., movement, head position), and video characteristics (e.g., luminance); and generalized to a fourth, entirely held-out online data set. We close by discussing next steps required to fully automate the life cycle of online infant and child behavioral studies, representing a key step toward enabling robust and high-throughput developmental research.

Subjects

Subjects :
General Psychology

Details

ISSN :
25152467 and 25152459
Volume :
6
Database :
OpenAIRE
Journal :
Advances in Methods and Practices in Psychological Science
Accession number :
edsair.doi...........c07a9f36e2a652bbf5035ae9c8d1b8b0
Full Text :
https://doi.org/10.1177/25152459221147250