5.3 Family Factors
In the early stage of the epidemic, due to the need for
epidemic prevention and isolation, teachers and
students taught and studied at home through online
classes. Students study and live at home with their
families for a long time. They are prone to quarrels
and contradictions due to family chores, tense parent-
child relations and disharmonious family relations,
which can lead to certain harm and impact on
students' mental health (Li et al., 2021). At the same
time, due to the local epidemic situation, some
students' families are isolated, which makes their
parents cannot go out to work, and their family
economic income decreases sharply. The burden of
family life has brought invisible psychological
pressure and psychological anxiety to the students
themselves.
According to the research of this paper, students
need some intervention to reduce anxiety and help
improve academic performance (Chen G et al., 2020).
Learning anxiety intervention aims to help students
deal with anxiety problems in the process of learning
(Deng et al., 2021).
6 CONCLUSION
This study used facial expression recognition
technology to predict students' psychological
problems. The latest information provided of this
research results offers a necessary basis for the
research and intervention of College Students'
psychological problems during COVID-19. It is
worth noting that COVID-19 has indeed brought
different psychological effects to students. This paper
emphasizes that the relationship between the impact
of the epidemic and different degrees of anxiety
should be analyzed longitudinally, and intervention
measures should be taken from a scientific
perspective to eliminate the fear of students in
educational activities.
ACKNOWLEDGEMENTS
This work was supported National Natural Science
Foundation of China (61373148), National Social
Science Fund of China (12BXW040); Science
Foundation of Ministry of Education of
China(14YJC860042), Shandong Provincial Social
Science Planning Project
(18CxWJ01,18BJYJ04,19BJCJ51).
REFERENCES
Alzahrani, L., Seth, K.P. (2021). Factors influencing
students’ satisfaction with continuous use of learning
management systems during the covid-19 pandemic:
An empirical study. Education and Information
Technologies, 1–19.
Aloufi, M.A., Jarden, R.J., Gerdtz, M., Kapp, S. (2021).
Reducing stress, anxiety and depression in
undergraduate nursing students: Systematic review.
Nurse Education Today, 104877.
Bartlett, M.S., Littlewort, G., Fasel, I., Movellan, J.R.
(2003). Real time face detection and facial expression
recognition: development and applications to human
computer interaction. In: 2003 Conference on
Computer Vision and Pattern Recognition Workshop,
vol. 5(pp. 53–53). IEEE.
Căleanu, C.-D. (2013). Face expression recognition: A brief
overview of the last decade. In: 2013 IEEE 8th
International Symposium on Applied Computational
Intelligence and Informatics (SACI) (pp. 157–161).
IEEE.
Chanchal, A.K., Dutta, M., Scholar, M.E., NITTTR,
Electronics, H., Deptt, C. (2016). Recognition of
emotions from facial expressions and its application in
car driving system. International Journal of Advanced
Research in Electronics and Communication
Engineering 5(10), 2398–2406.
Cao, W., Fang, Z., Hou, G., Han, M., Xu, X., Dong, J.,
Zheng, J. (2020). The psychological impact of the
covid-19 epidemic on college students in China.
Psychiatry research 287, 112934.
Chen G, Zhang J, Chan C K K, et al. The link between
student‐perceived teacher talk and student enjoyment,
anxiety and discursive engagement in the classroom[J].
British Educational Research Journal, 2020, 46(3): 631-
652.
Calbi, M., Langiulli, N., Ferroni, F., Montalti, M.,
Kolesnikov, A., Gallese, V., Umiltà, M.A. (2021). The
consequences of covid-19 on social interactions: an
online study on face covering. Scientific reports 11(1),
1–10.
Deng J, Zhou F, Hou W, et al. The prevalence of depressive
symptoms, anxiety symptoms and sleep disturbance in
higher education students during the COVID-19
pandemic: A systematic review and meta-analysis[J].
Psychiatry Research, 2021, 301: 113863.
Fu, W., Yan, S., Zong, Q., Anderson-Luxford, D., Song, X.,
Lv, Z., Lv, C. (2021). Mental health of college students
during the covid-19 epidemic in china. Journal of
Affective Disorders 280, 7–10.
Ilyas, C.M.A., Nunes, R., Nasrollahi, K., Rehm, M.,
Moeslund, T.B. (2021). Deep emotion recognition
through upper body movements and facial expression.
In: VISIGRAPP (5: VISAPP), pp. 669–679.
Jabon, M., Bailenson, J., Pontikakis, E., Takayama, L.,
Nass, C. (2010). Facial expression analysis for
predicting unsafe driving behavior. IEEE Pervasive
Computing 10(4), 84–95.