一种有效的面部表情识别方法:GAN擦除面部特征网络(GE2FN)

Tao Zhang, Tang Kai
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引用次数: 1

摘要

我们提出了一种基于去除输入图像中的噪声特征的功能强大的面部表情识别方法,从而显著提高了识别精度。为了实现这一目标,我们首先利用GAN网络从情绪脸生成中性脸,然后应用两个不同的卷积层分别提取情绪脸特征和中性脸特征。最后,从情绪性人脸特征中剔除中性人脸特征,得到纯粹的“情绪性特征”,用于预测结果。整个预测网络,称为GAN擦除面部特征网络(GE2FN),在CK+数据集上达到98.02%的ACC,输入为48x48。与包括目前主流的VGG方法在内的其他方法相比,准确率有了显著提高
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficacious Method for Facial Expression Recognition: GAN Erased Facial Feature Network (GE2FN)
We put forward a powerful facial expression recognition method based on removing the noise features from the input image to achieve a significant improvement in accuracy. To achieve this goal, we first exploit GAN network to generate a neutral face from the emotional face, and then apply two different convolution layers to extract emotional face features and neutral face features separately. Finally, we eliminate neutral face features from emotional face features to get pure “emotion features”, which are then used to get prediction results. The overall prediction network, termed GAN Erased Facial Feature Network (GE2FN) achieves 98.02% ACC on the CK+ dataset with 48x48 input. The accuracy rate is significantly improved compared to other approaches, including the current mainstream VGG approach
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