Research on Face Recognition Classification Based on Improved GoogleNet

Author:

Yu Zhigang1,Dong Yunyun1,Cheng Jihong1,Sun Miaomiao1ORCID,Su Feng1

Affiliation:

1. Yantai Nanshan University, Yantai 265713, China

Abstract

Face recognition is a relatively mature technology, which has some applications in many aspects, and now there are many networks studying it, which has indeed brought a lot of convenience to mankind in all aspects. This paper proposes a new face recognition technology. First, a new GoogLeNet-M network is proposed, which improves network performance on the basis of streamlining the network. Secondly, regularization and migration learning methods are added to improve accuracy. The experimental results show that the GoogLeNet-M network with regularization using migration learning technology has the best performance, with a recall rate of 0.97 and an accuracy of 0.98. Finally, it is concluded that the performance of the GoogLeNet-M network is better than other networks on the dataset, and the migration learning method and regularization help to improve the network performance.

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Information Systems

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