Face Recognition in Real-world Internet Videos Based on Deep Learning

Z. Li, Y. Tie, L. Qi
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引用次数: 1

Abstract

Though current face recognition systems perform well in relatively constrained scenes, they are often affected by secondary creation of netizens, serious image blurring and abundant posture changes in real-world Internet videos. Focusing on these problems, we propose a face recognition model names Internet Video-based Face Recognition Network (IVFRNet) based on deep learning for real Internet videos. And we propose a weighted loss function to enhance the ability of learned features. To test the model, we construct a small-scale real-world Internet video-based face dataset. The experiment results show that our method outperforms the origin method.
基于深度学习的真实网络视频人脸识别
虽然目前的人脸识别系统在相对受限的场景中表现良好,但在现实网络视频中,往往会受到网民二次创作、严重的图像模糊和丰富的姿态变化的影响。针对这些问题,我们提出了一种基于深度学习的真实互联网视频人脸识别模型——基于互联网视频的人脸识别网络(IVFRNet)。我们提出了一个加权损失函数来增强学习特征的能力。为了测试该模型,我们构建了一个小规模的基于真实世界互联网视频的人脸数据集。实验结果表明,该方法优于原始方法。
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