Quantifying the Quality of Parent-Child Interaction Through Machine-Learning Based Audio and Video Analysis: Towards a Vision of AI-assisted Coaching Support for Social Workers

Author:

Jebeli Atefeh1ORCID,Chen Lujie Karen1ORCID,Guerrerio Katherine2ORCID,Papparotto Sophia1ORCID,Berlin Lisa3ORCID,Harden Brenda Jones4ORCID

Affiliation:

1. University of Maryland Baltimore County, USA

2. Johns Hopkins University, USA

3. University of Maryland School of Social Work, USA

4. Columbia University School of Social Work, USA

Abstract

Attachment is the emotional bonding between a child and a caregiver. Whether or not there is a secure attachment in early childhood has a profound life-long impact on the child. In recent years, attachment-based interventions have been developed and implemented, especially with families from low socioeconomic backgrounds. One important aspect of the program is to assess the quality of parent-child interactions through audio/video recorded at home while parent-child dyads were engaged in semi-structured interaction tasks, such as “three-bag-assessment.” The current practice relies on human coders to rate the videos, which is a time-consuming process. Using a dataset of 220 video recordings of parent-child dyads collected at home as part of an attachment-based intervention program, we prototype a machine learning approach based on human body keypoints extracted from the posture analysis tool OpenPose and voice activity features derived from audio recordings. The results show that there are potential values in using machine learning to improve the coding efficiency of parent-child interactions. When further developed and improved, this kind of model may contribute to a new vision of AI-assisted parenting coaching support to make evidence-based interventions accessible and affordable at a large scale to children and families.

Publisher

Association for Computing Machinery (ACM)

Reference18 articles.

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2. Sharifa Alghowinem, Huili Chen, Cynthia Breazeal, and Hae Won Park. 2021. Body gesture and head movement analyses in dyadic parent-child interaction as indicators of relationship. In Proceedings of the 2021 16th IEEE International Conference on Automatic Face and Gesture Recognition. IEEE, 01–05.

3. Improving early head start’s impacts on parenting through attachment-based intervention: A randomized controlled trial.;Berlin Lisa J.;Developmental Psychology,2018

4. Testing maternal depression and attachment style as moderators of Early Head Start’s effects on parenting;Berlin Lisa J.;Attachment & Human Development,2011

5. Realtime Multi-person 2D Pose Estimation Using Part Affinity Fields

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