AN INFANT FACIAL EXPRESSION RECOGNITION SYSTEM
BASED ON MOMENT FEATURE EXTRACTION
C. Y. Fang, H. W. Lin and S. W. Chen
Department of Computer Science and Information Engineering, National Taiwan Normal University, Taipei, Taiwan
Keywords: Facial Expression Recognition, Decision Tree, Moment, Correlation Coefficient.
Abstract: This paper presents a vision-based infant surveillance system utilizing infant facial expression recognition
software. In this study, the video camera is set above the crib to capture the infant expression sequences,
which are then sent to the surveillance system. The infant face region is segmented based on the skin colour
information. Three types of moments, namely Hu, R, and Zernike are then calculated based on the
information available from the infant face regions. Since each type of moment in turn contains several
different moments, given a single fifteen-frame sequence, the correlation coefficients between two moments
of the same type can form the attribute vector of facial expressions. Fifteen infant facial expression classes
have been defined in this study. Three decision trees corresponding to each type of moment have been
constructed in order to classify these facial expressions. The experimental results show that the proposed
method is robust and efficient. The properties of the different types of moments have also been analyzed
and discussed.
1 INTRODUCTION
Infants are too weak to protect themselves and lack
disposing capacity, and therefore are more likely to
sustain unintentional injuries especially when
compared to children of other age groups. These
incidents are very dangerous and can potentially lead
to disabilities and in some cases even death. In
Taiwan’s Taipei city, the top three causes of infant
death are (1) newborns affected by maternal
complications during pregnancy, (2) congenital
anomalies, and (3) unintentional injuries, which in
total account for 83% of all infant mortalities (Doi,
2006). Unintentional injuries are a major cause of
infant deaths each year, a majority of which can be
easily avoided. Some of the most common causes
include dangerous objects surround the infant and
unhealthy sleeping environments. Therefore, the
promotion of safer homes and better sleeping
environments is critical to reducing infant mortality
caused by unintentional injuries.
Vision-based surveillance systems, which take
advantage of camera technology to improve safety,
have been used for infant care (Doi, 2006). The main
goal behind the development of vision-based infant
care systems is to monitor the infant when they are
alone in the crib and to subsequently send warning
messages to the baby-sitters when required, in order
to prevent the occurrence of unintentional injuries.
The Department of Health in Taipei city has
reported that the two most common causes of
unintentional injuries are suffocation and choking
(Department of Health, Taipei City Government,
2007). Moreover, in Alaska and the United States,
the biggest cause of death among infants due to
unintentional injuries is suffocation, which accounts
for nearly 65% of all mortalities due to unintentional
injuries (The State of Alaska, 2005). The recognition
of infant facial expressions such as those when the
infant is crying or vomiting may play an important
role in the timely detection of infant suffocation.
Thus, this paper seeks to address the above problems
by presenting a vision-based infant facial expression
recognition system for infant safety surveillance.
Many facial expression recognition methods
have been proposed recently. However, most of
them focus on recognizing facial expressions of
adults. Compared to an adult, the exact pose and
position of the infant head is difficult to accurately
locate or estimate and therefore, very few infant
facial expression recognition methods have been
proposed to date. Pal et al. (Pal, 2006) used the
position of the eyebrows, eyes, and mouth to
estimate the individual motions in order to classify
infant facial expressions. The various classes of
313
Y. Fang C., W. Lin H. and W. Chen S. (2010).
AN INFANT FACIAL EXPRESSION RECOGNITION SYSTEM BASED ON MOMENT FEATURE EXTRACTION.
In Proceedings of the International Conference on Computer Vision Theory and Applications, pages 313-318
DOI: 10.5220/0002814403130318
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