CVIVJun 5, 2019

Infant Contact-less Non-Nutritive Sucking Pattern Quantification via Facial Gesture Analysis

arXiv:1906.01821v14 citations
Originality Synthesis-oriented
AI Analysis

This addresses the need for accurate, non-invasive monitoring of infant brain development indicators, though it appears incremental as it adapts existing facial tracking to a new application.

The paper tackles the problem of invasive contact devices distorting non-nutritive sucking (NNS) data in infants by proposing a contact-less method using facial landmark tracking from videos, achieving quantified NNS patterns comparable to visual inspection and contact-based sensors.

Non-nutritive sucking (NNS) is defined as the sucking action that occurs when a finger, pacifier, or other object is placed in the baby's mouth, but there is no nutrient delivered. In addition to providing a sense of safety, NNS even can be regarded as an indicator of infant's central nervous system development. The rich data, such as sucking frequency, the number of cycles, and their amplitude during baby's non-nutritive sucking is important clue for judging the brain development of infants or preterm infants. Nowadays most researchers are collecting NNS data by using some contact devices such as pressure transducers. However, such invasive contact will have a direct impact on the baby's natural sucking behavior, resulting in significant distortion in the collected data. Therefore, we propose a novel contact-less NNS data acquisition and quantification scheme, which leverages the facial landmarks tracking technology to extract the movement signals of baby's jaw from recorded baby's sucking video. Since completion of the sucking action requires a large amount of synchronous coordination and neural integration of the facial muscles and the cranial nerves, the facial muscle movement signals accompanying baby's sucking pacifier can indirectly replace the NNS signal. We have evaluated our method on videos collected from several infants during their NNS behaviors and we have achieved the quantified NNS patterns closely comparable to results from visual inspection as well as contact-based sensor readings.

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