Abstract
Compared to the traditional sparse representation and the dictionary processing method of occlusion, deep learning-based face recognition methods are being used more and more widely in the field of face recognition. However, in practice, face recognition results are greatly influenced by light intensity, shooting Angle, mask and sunglasses occlusion and other factors. Therefore, this paper will discuss the face recognition under the occlusion situation. In order to solve the problem of large pose change of human face and local occlusion respectively, an offset network and a weight network was introduced into the convolutional neural network. In the following paper, the facial recognition accuracy of the introduction of the offset network, the facial recognition accuracy of the weight network and the recognition accuracy of the unification of the two are compared with the traditional facial recognition model VGG16.
Publisher
Darcy & Roy Press Co. Ltd.
Reference8 articles.
1. Jiang, Y., Li, G., Ge, H., Wang, F., Li, L., Chen, X., ... & Zhang, Y. (2022). Machine learning and application in terahertz technology: A review on achievements and future challenges. IEEE Access, 10, 53761-53776.
2. Guangcan, Y., & Huibin, L. (2021). Overview of face recognition methods based on deep learning. Journal of Engineering Mathematics, 38(04), 451-469.
3. Chen, Z., Xu, T., & Han, Z. (2011). Occluded face recognition based on the improved SVM and block weighted LBP. 2011 International Conference on Image Analysis and Signal Processing. pp. 118-122.
4. Andrés, A. M., Padovani, S., Tepper, M., & Jacobo-Berlles, J. (2014). Face recognition on partially occluded images using compressed sensing. Pattern Recognition Letters, 36, 235-242.
5. Wan, W., Zhong, Y., Li, T., & Chen, J. (2018). Rethinking feature distribution for loss functions in image classification. Proceedings of the IEEE conference on computer vision and pattern recognition. 9117-9126.