
Facial Beauty Prediction Based on Lighted Deep Convolution Neural Network with Feature Extraction Strengthened
Author(s) -
Gan Junying,
Jiang Kaiyong,
Tan Haiying,
He Guohui
Publication year - 2020
Publication title -
chinese journal of electronics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.267
H-Index - 25
eISSN - 2075-5597
pISSN - 1022-4653
DOI - 10.1049/cje.2020.01.009
Subject(s) - artificial intelligence , convolutional neural network , convolution (computer science) , computer science , face (sociological concept) , pattern recognition (psychology) , feature extraction , feature (linguistics) , scale (ratio) , image (mathematics) , artificial neural network , facial recognition system , geography , social science , linguistics , philosophy , cartography , sociology
Convolutionneural network (CNN) has significantly pushed forward machine vision, which has achieved very significant results in face recognition, image classification and objection detection, and provides a new method for facial beauty prediction (FBP). Although the approach is widely applied in FBP, the research progress in FBP is relatively slow compared with face recognition. The first one is that there is less public database for FBP, and experiments for FBP are tested on small‐scale database. The second one is that evaluation of facial beauty is subjective and lack of criterion, and CNN model is hard to train. In view of the problems of FBP, we expand Largescale database of Asian women's face database (LSAFBD) with data augmentation. A lighted deep convolution neural network (LDCNN) for FBP including 5650K parameters is constructed by both Inception model of GoogleNet and Max‐Feature‐Max activation layer, which can extract multi‐scale features of an image, get compacted presentation and reduce parameters. Experiments on LSAFBD show that our LDCNN model has advantages of simple structure, small‐scale parameters and is suitable for small embedded devices, with the best classification accuracy of 63.5%, which outperforms the other published CNN models for FBP.