Face age and gender recognition based on improved VGGNet algorithm
Authors
Yulin Li
Abstract
School of Mathematics and Statistics, Nanjing University of Information Science & Technology, \u00a0
Nanjing, 210044, China
(Received February 20 2019, accepted June 24 2019)
Recognition \u00a0of \u00a0age \u00a0and \u00a0gender \u00a0based \u00a0on \u00a0face \u00a0image \u00a0is \u00a0one \u00a0of \u00a0the \u00a0hotspots \u00a0of \u00a0current \u00a0artificial
intelligence \u00a0research. \u00a0In \u00a0this \u00a0paper, \u00a0an \u00a0improved \u00a0VGG+SENet \u00a0algorithm \u00a0is \u00a0proposed \u00a0to \u00a0simplify \u00a0the
identification of age \u00a0and gender \u00a0algorithm by simplifying \u00a0VGGNet model, improving the loss \u00a0function \u00a0and
embedding the SENet module. Compared with other models, the improved network structure and loss function
model proposed in this paper can quickly and accurately obtain output recognition results. Experimental results
on \u00a0multiple \u00a0benchmark \u00a0face \u00a0datasets \u00a0show \u00a0that \u00a0the \u00a0proposed \u00a0improved \u00a0VGG+SENet \u00a0algorithm \u00a0has \u00a0higher
recognition accuracy than other related models based on deep learning.