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Facial expression recognition via region-based convolutional fusion network

机译:基于区域的卷积融合网络的面部表情识别

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One of the key challenge issues of deep-learning-based facial expression recognition (FER) is learning effective and robust features from variant samples. In this paper, Region-based Convolutional Fusion Network (RCFN) is proposed to solve this issue via three aspects. Firstly, a muscle movement model is built to segment out crucial regions of frontal face, providing well-unified patches with benefits of removing unrepresentative regions and greatly reducing interference caused by facial organs with varied sizes and positions among individuals. Secondly, a fast and practical network is constructed to extract robust triple-level features from low level to semantic level in each crucial region and fuse them for FER. Thirdly, constrained punitive loss is introduced to leverage the network training for boosting up FER performance. The experiment results show that RCFN is effective in commonly used datasets like KDEF, CK+, and Oulu-CASIA, and can achieve comparable performance with other state-of-the-art FER methods. (C) 2019 Elsevier Inc. All rights reserved.
机译:基于深度学习的面部表情识别(FER)的关键挑战问题之一是从变体样品学习有效和强大的特征。在本文中,提出了基于区域的卷积融合网络(RCFN)通过三个方面解决了这个问题。首先,建立肌肉运动模型以分割正面面的关键区域,提供统一的贴片,具有消除不成年区域的益处,大大减少面部器官具有不同尺寸和个人之间的位置引起的干扰。其次,建造快速和实用的网络以从每个关键区域中提取从低电平到语义水平的强大三级特征,并为FERUS融合它们。第三,引入了受限制的惩罚性损失,以利用网络培训来提升FER性能。实验结果表明,RCFN在普通使用的数据集中有效,如Kdef,CK +和Oulu-Casia,并且可以实现与其他最先进的FER方法相当的性能。 (c)2019 Elsevier Inc.保留所有权利。

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