Affiliation:
1. 1 The Personnel Department of North Sichuan Medical College , Nanchong , Sichuan , , China .
Abstract
Abstract
With the goal of improving the ability of higher education management and student cultivation, this paper applies face recognition technology to higher education management and student cultivation and proposes a new model of digital management and cultivation. By analyzing the recognition process of the face recognition algorithm in face detection and combining the data to describe the deformability of the face, a neural network-based face recognition algorithm is constructed. After inputting the face image data, it passes through several convolutional layers, a linear rectification layer and a pooling layer and finally connects to the fully connected layer so as to achieve the effect of face recognition. The results show that the face recognition technology training state accuracy rate in the 0~3000th generation rises sharply, which can be seen in the neural network in 3500 generations around the rise has gradually leveled off in 5000 generations to reach convergence. Strengthening digital management thinking can improve the management effect to a certain extent and improve the management content so as to achieve the specific management effect.
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
Reference30 articles.
1. Ramadoss, J., Venkatesh, J., Joshi, S., Shukla, P. K., Jamal, S. S., & Altuwairiqi, M., et al. (2021). Computer vision for human-computer interaction using noninvasive technology. Scientific programming(Pt.10), 2021.
2. Selvaraj, R., Kuthadi, V. M., & Baskar, S. (2021). Human muscle rigidity identification by human-robot approximation characteristics framework on internet of things platform. Expert Systems.
3. Du, H., Li, M., Li, G., Lyu, T., & Tian, X. M. (2021). Specific oral and maxillofacial identifiers in panoramic radiographs used for human identification. Journal of Forensic Sciences.
4. Hona, T. W. P. T., Stephan, C. N., & Byrd, J. E. (2022). Infracranial radiographic comparison for human identification: a study of image quality and tissue shielding effects. Journal of Forensic Sciences, 67(3), 854-867.
5. A, A. K., B, M. I., B, N. T., & C, H. B. (2021). Effectiveness and limitations of human identification from cremains: a report of two cases. Legal Medicine.