EXPRESSION RECOGNITION SYSTEM BASED ON CONVOLUTIONAL NEURAL NETWORK
Volume 1, Issue 1, Pp 28-34, 2023
DOI: 10.61784/wjit231105
Author(s)
Huihui Wang, Dan Li*, Ruiqun Xu, Hengjia Zhang, Yi Liu, Bohua Li
Affiliation(s)
Xuzhou University of Technology, Xuzhou, Jiangsu, China.
Corresponding Author
Dan Li
ABSTRACT
With the continuous development of artificial intelligence technology, student expression recognition in the classroom has become an important research direction in the field of education. However, existing expression recognition methods often have problems such as low classification accuracy and high recognition difficulty, making it difficult to meet the needs of practical applications. In order to solve these problems, this paper proposes a method for student classroom expression recognition based on convolutional neural network. By collecting images of students' classroom expressions and using technologies such as preprocessing, feature extraction, and model training, we can accurately identify students' classroom expressions, monitor students' status in real time, and remind teachers to change the classroom atmosphere to help students adjust in time to improve learning. efficiency, while also further promoting the development and application of emotional education.
KEYWORDS
Artificial intelligence; Deep convolutional neural network; Expression recognition; Classroom status recognition
CITE THIS PAPER
Huihui Wang, Dan Li, Ruiqun Xu, Hengjia Zhang, Yi Liu, Bohua Li. Expression recognition system based on convolutional neural network. World Journal of Information Technology. 2023, 1(1): 28-34. DOI: 10.61784/wjit231105.
REFERENCES
[1] Jianhou G, Juxiang Z, Wenkai N, et al. An Optimization Algorithm for the Uncertainties of Classroom Expression Recognition Based on SCN[J]. International Journal of Software Science and Computational Intelligence (IJSSCI), 2022, 14(1).
[2] Zhihui Z,M. JF, Lluis MG. Facial expression recognition in virtual reality environments: challenges and opportunities [J]. Frontiers in Psychology, 2023, 14.
[3] Monica LL, Cenerini C, Vollero L, et al. Development of a Universal Validation Protocol and an Open-Source Database for Multi-Contextual Facial Expression Recognition[J]. Sensors, 2023, 23(20).
[4] Ivana K, Simon S, John MB, et al. Towards smart glasses for facial expression recognition using OMG and machine learning[J]. Scientific Reports, 2023, 13(1).
[5] Qianyi Z, Baolin L. Construction of the brain-inspired computing model verified by spatiotemporal correspondence between the hierarchical computation of the model and the complex multi-stage processing of the human brain during facial expression recognition[J]. Applied Intelligence, 2023, 53(21).
[6] Faten K ,Hela L. Neural style transfer generative adversarial network (NST-GAN) for facial expression recognition[J]. International Journal of Multimedia Information Retrieval, 2023, 12(2).
[7] Sami RA, Hossein M M , Amirhassan M, et al. Dataset classification: An efficient feature extraction approach for grammatical facial expression recognition[J]. Computers and Electrical Engineering, 2023, 110.