Li Yunquan, Gao Meizhen
School of Information Engineering, Jiaozuo Normal College, Jiaozuo 454000, China.
Comput Intell Neurosci. 2022 Mar 18;2022:5810723. doi: 10.1155/2022/5810723. eCollection 2022.
A face recognition model based on a multiscale feature fusion network is constructed, aiming to make full use of the characteristics of face and to improve the accuracy of face recognition. In addition, three different scale networks are designed to extract global features of faces. Multiscale cross-layer bilinear features of multiple networks are integrated via introducing a hierarchical bilinear pooling layer. By capturing some of the feature relationships between different levels, the model's ability to extract and distinguish subtle facial features is enhanced. Simultaneously, this study uses layer-by-layer deconvolution to fuse multilayer feature information, to solve the problem of losing some key features when extracting features from multilayer convolutional layers and pooled layers. The experimental results show that compared with the recognition accuracy of traditional algorithms, the recognition accuracy of the algorithm on Yale, AR, and ORL face databases is significantly improved.
构建了一种基于多尺度特征融合网络的人脸识别模型,旨在充分利用人脸特征,提高人脸识别的准确率。此外,设计了三种不同尺度的网络来提取人脸的全局特征。通过引入分层双线性池化层,整合多个网络的多尺度跨层双线性特征。通过捕捉不同层次之间的一些特征关系,增强了模型提取和区分细微面部特征的能力。同时,本研究采用逐层反卷积来融合多层特征信息,以解决从多层卷积层和池化层提取特征时丢失一些关键特征的问题。实验结果表明,与传统算法的识别准确率相比,该算法在耶鲁、AR和ORL人脸数据库上的识别准确率有显著提高。