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Home / Papers / Computer Vision to Automatically Assess Infant Neuromotor Risk

Computer Vision to Automatically Assess Infant Neuromotor Risk

102 Citations2020
Claire Chambers, Nidhi Seethapathi, Rachit Saluja

This work automatically extracts body poses and movement kinematics from the videos of at-risk infants and calculates how much they deviate from a group of healthy infants using Naïve Gaussian Bayesian Surprise.

Abstract

An infant's risk of developing neuromotor impairment is primarily assessed through visual examination by specialized clinicians. Therefore, many infants at risk for impairment go undetected, particularly in under-resourced environments. There is thus a need to develop automated, clinical assessments based on quantitative measures from widely-available sources, such as videos recorded on a mobile device. Here, we automatically extract body poses and movement kinematics from the videos of at-risk infants (N = 19). For each infant, we calculate how much they deviate from a group of healthy infants (N = 85 online videos) using a Naïve Gaussian Bayesian Surprise metric. After pre-registering our Bayesian Surprise calculations, we find that infants who are at high risk for impairments deviate considerably from the healthy group. Our simple method, provided as an open-source toolkit, thus shows promise as the basis for an automated and low-cost assessment of risk based on video recordings.

Computer Vision to Automatically Assess Infant Neuromotor Ri