Abstract

Facial beauty prediction (FBP) is a burgeoning issue for attractiveness evaluation, which aims to make assessment consistent with human opinion. Since FBP is a regression problem, to handle this issue, there are data-driven methods for finding the relations between facial features and beauty assessment. Recently, deep learning methods have shown its amazing capacity for feature representation and analysis. Convolutional neural networks (CNNs) have shown tremendous performance on facial recognition and comprehension, which are proved as an effective method for facial feature exploration. Lately, there are well-designed networks with efficient structures investigated for better representation performance. However, these designs concentrate on the effective block but do not build an efficient information transmission pathway, which led to a sub-optimal capacity for feature representation. Furthermore, these works cannot find the inherent correlations of feature maps, which also limits the performance. In this paper, an elaborate network design for FBP issue is proposed for better performance. A residual-in-residual (RIR) structure is introduced to the network for passing the gradient flow deeper, and building a better pathway for information transmission. By applying the RIR structure, a deeper network can be established for better feature representation. Besides the RIR network design, an attention mechanism is introduced to exploit the inner correlations among features. We investigate a joint spatial-wise and channel-wise attention (SCA) block to distribute the importance among features, which finds a better representation for facial information. Experimental results show our proposed network can predict facial beauty closer to a human’s assessment than state-of-the-arts.

Highlights

  • As a burgeoning issue [1], facial beauty prediction (FBP) has attracted more and more attention from researchers and users, which is a comprehensive topic of face recognition [2,3] and comprehension [4,5,6]

  • We propose a network for the facial beauty prediction (FBP) problem

  • We proposed a novel network for the facial beauty prediction problem

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Summary

Introduction

As a burgeoning issue [1], facial beauty prediction (FBP) has attracted more and more attention from researchers and users, which is a comprehensive topic of face recognition [2,3] and comprehension [4,5,6]. To find a better representation of facial features, there are various data-driven models for FBP with hand-crafted or adaptive learned descriptors [7,8,9]. With extracted features, these models perform the assessments with elaborate predictors, which are trained in a statistic manner. AlexNet [24] is the first CNN-based method for real-world image recognition, which was proposed for image classification task in ImageNet. After AlexNet, VGGNet [25] explored a deeper and wider design for better feature exploration and network performance. To build the network deeper, multi-level skip connections are introduced to compose a better gradient transmission flow. CNN-based methods and make the assessment more consistent with human opinion

Facial Beauty Prediction
Convolutional Neural Networks
Method
Residual-In-Residual Group
Spatial-Wise and Channel-Wise Attention
Network Design
Experiment
Results
Methods
Ablation Study
Discussion
Conclusions
Full Text
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