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Self-Difference Convolutional Neural Network for Facial Expression Recognition

机译:用于面部表情识别的自差卷积神经网络

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摘要

Facial expression recognition (FER) is a challenging problem due to the intra-class variation caused by subject identities. In this paper, a self-difference convolutional network (SD-CNN) is proposed to address the intra-class variation issue in FER. First, the SD-CNN uses a conditional generative adversarial network to generate the six typical facial expressions for the same subject in the testing image. Second, six compact and light-weighted difference-based CNNs, called DiffNets, are designed for classifying facial expressions. Each DiffNet extracts a pair of deep features from the testing image and one of the six synthesized expression images, and compares the difference between the deep feature pair. In this way, any potential facial expression in the testing image has an opportunity to be compared with the synthesized “Self”—an image of the same subject with the same facial expression as the testing image. As most of the self-difference features of the images with the same facial expression gather tightly in the feature space, the intra-class variation issue is significantly alleviated. The proposed SD-CNN is extensively evaluated on two widely-used facial expression datasets: CK+ and Oulu-CASIA. Experimental results demonstrate that the SD-CNN achieves state-of-the-art performance with accuracies of 99.7% on CK+ and 91.3% on Oulu-CASIA, respectively. Moreover, the model size of the online processing part of the SD-CNN is only 9.54 MB (1.59 MB ×6), which enables the SD-CNN to run on low-cost hardware.
机译:面部表情识别(FER)是由于受试者身份引起的阶级变异导致的挑战性问题。本文提出了一种自差卷积网络(SD-CNN),以解决FER中的阶级内变差问题。首先,SD-CNN使用条件生成的对抗网络来生成测试图像中相同主题的六个典型面部表情。其次,六个紧凑型和基于光加权的基于差异的CNN,称为Diffnets,用于分类面部表情。每个差别从测试图像中提取一对深度特征,也是六个合成的表达图像中的一个,并比较深度特征对之间的差异。以这种方式,测试图像中的任何潜在的面部表情都有机会与具有与测试图像相同的面部表情的相同主体的合成的“自我”图像进行比较。由于具有相同面部表情的图像的大多数自差异特征在特征空间中紧密地收集,内部变化问题显着减轻了。建议的SD-CNN广泛评估了两个广泛使用的面部表情数据集:CK +和Oulu-Casia。实验结果表明,SD-CNN分别在ooulu-casia的CK +和91.3%上以99.7%的精度实现了最先进的性能。此外,SD-CNN的在线处理部分的模型大小仅为9.54 MB(1.59 MB×6),使SD-CNN能够在低成本硬件上运行。

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