TY - GEN
T1 - Automatic Classification of Neonatal Sleep-Wake States Based on Facial Video Analysis
AU - Mukai, Yohei
AU - Morita, Kento
AU - Shirai, Nobu C.
AU - Wakabayashi, Tetsushi
AU - Shinkoda, Harumi
AU - Matsumoto, Asami
AU - Yukari, Noguchi
AU - Shiramizu, Masako
N1 - Funding Information:
ACKNOWLEDGMENT This work was supported by JSPS KAKENHI Grant Number JP16H03272. This study was approved by the Ethics committee in Kyushu University (Permission number: 30-288) and Mie University (Permission number: 3113).
Publisher Copyright:
© 2019 IEEE.
PY - 2019/12/10
Y1 - 2019/12/10
N2 - Premature babies are admitted to the NICU (Neonatal Intensive Care Unit) for several weeks and generally placed under high medical supervision. To provide a better environment to them, some researchers investigate the affection of light and noise in the NICU on the formation of the sleep-wake cycle of the newborn called Circadian rhythm. These researches require the optimal evaluation method of the sleep-wake state. The visual assessment by nurses do not guarantee enough inter-tester reliability, and the measurement puts an additional burden on them. The conventional sleep-wake states discrimination method requires attachment devices on the subject's body. This paper proposes the automatic classification method of the sleep-wake states of neonates by using only facial information. In this research, we extract gradient features and spatio-temporal HOGV features from 3,600 face image frames (1 minute). According to Blazelton's method, this study classifies the sleep-wake states into six classes by using machine learning techniques. Support Vector Machine and Random Forest were used in the experiment. The spatio-temporal HOGV feature is an extension of the HOG feature to the time domain. The experiments using two kinds of feature quantities and classifiers showed that the highest accuracy rate (54.4%) was obtained by the gradient feature and Random Forest. This result suggested the possibility of improving accuracy by combining facial information with body movement and other conventional features.
AB - Premature babies are admitted to the NICU (Neonatal Intensive Care Unit) for several weeks and generally placed under high medical supervision. To provide a better environment to them, some researchers investigate the affection of light and noise in the NICU on the formation of the sleep-wake cycle of the newborn called Circadian rhythm. These researches require the optimal evaluation method of the sleep-wake state. The visual assessment by nurses do not guarantee enough inter-tester reliability, and the measurement puts an additional burden on them. The conventional sleep-wake states discrimination method requires attachment devices on the subject's body. This paper proposes the automatic classification method of the sleep-wake states of neonates by using only facial information. In this research, we extract gradient features and spatio-temporal HOGV features from 3,600 face image frames (1 minute). According to Blazelton's method, this study classifies the sleep-wake states into six classes by using machine learning techniques. Support Vector Machine and Random Forest were used in the experiment. The spatio-temporal HOGV feature is an extension of the HOG feature to the time domain. The experiments using two kinds of feature quantities and classifiers showed that the highest accuracy rate (54.4%) was obtained by the gradient feature and Random Forest. This result suggested the possibility of improving accuracy by combining facial information with body movement and other conventional features.
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U2 - 10.1109/ICITR49409.2019.9407788
DO - 10.1109/ICITR49409.2019.9407788
M3 - Conference contribution
AN - SCOPUS:85105522340
T3 - Proceedings of 4th International Conference on Information Technology Research: Bridging Digital Divide Through Multidisciplinary Research, ICITR 2019
BT - Proceedings of 4th International Conference on Information Technology Research
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 4th International Conference on Information Technology Research, ICITR 2019
Y2 - 10 December 2019 through 13 December 2019
ER -