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Multi-pose Face Recognition Based on Contour Symmetric Constraint-Generative Adversarial Network

机译:基于轮廓对称约束 - 生成的对抗网络的多姿态面识

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In order to address the impact of large-angle posture changes on face recognition performance, we propose a contour symmetric constraint-generative adversarial network (CSC-GAN) for the multi-pose face recognition. The method employs the convolutional network as the generator for face pose recovery, which introduces the global information of the constrained pose recovery of positive face contour histogram. Meanwhile, the original positive face is used as the discriminator, and the symmetric loss function is added to optimize the learning ability of the network. The positive face with gesture recovery is obtained by striking the balance between training of the generator and discriminator. Then we employed the nearest neighbor classifier to identify. The experimental results show that CSC-GAN obtained good posture reconstruction texture information on the multi-pose face reconstruction. Compared with the traditional deep learning method and 3D method, it also achieves higher recognition rate.
机译:为了解决大角度姿势变化对面部识别性能的影响,我们提出了一种用于多姿态面识别的轮廓对称限制生成的对抗网络(CSC-GAN)。该方法采用卷积网络作为面部姿势恢复的发电机,这介绍了正面轮廓直方图的受限姿势恢复的全局信息。同时,原始的正面用作鉴别器,并添加了对称损失功能以优化网络的学习能力。具有姿态恢复的正面是通过敲击发电机和鉴别器的训练之间的平衡来获得的。然后我们使用最近的邻邻分类器来识别。实验结果表明,CSC-GaN获得了关于多姿态重建的良好姿势重建纹理信息。与传统的深度学习方法和3D方法相比,它还实现了更高的识别率。

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