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Transfer Learning for Face Identification with Deep Face Model

机译:利用深度面部模型进行面部识别的转移学习

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Deep face model learned on big dataset surpasses human for face recognition task on difficult unconstrained face dataset. But in practice, we are often lack of resources to learn such a complex model, or we only have very limited training samples (sometimes only one for each class) for a specific face recognition task. In this paper, we address these problems through transferring an already learned deep face model to specific tasks on hand. We empirically transfer hierarchical representations of deep face model as a source model and then learn higher layer representations on a specific small training set to obtain a final task-specific target model. Experiments on face identification tasks with public small data set and practical real faces verify the effectiveness and efficiency of our approach for transfer learning. We also empirically explore an important open problem -- attributes and transferability of different layer features of deep model. We argue that lower layer features are both local and general, while higher layer ones are both global and specific which embraces both intra-class invariance and inter-class discrimination. The results of unsupervised feature visualization and supervised face identification strongly support our view.
机译:在大数据集上学习的深度人脸模型在困难的无约束人脸数据集上的人脸识别任务超过了人类。但是在实践中,我们经常缺乏学习这种复杂模型的资源,或者对于特定的人脸识别任务,我们只有非常有限的训练样本(有时每个班级只有一个训练样本)。在本文中,我们通过将已经学习的深脸模型转移到手头的特定任务上来解决这些问题。我们根据经验将深层模型的层次表示形式作为源模型进行转移,然后在特定的小型训练集上学习高层表示形式以获得最终的特定于任务的目标模型。使用公开的小数据集和实用的真实面孔进行人脸识别任务的实验证明了我们的迁移学习方法的有效性和效率。我们还根据经验探索了一个重要的开放问题-深度模型的不同层特征的属性和可传递性。我们认为,较低层的特征既是局部的又是通用的,而较高层的特征既是全局的又是特定的,既包含类内不变性又包含类间歧视。无监督特征可视化和有监督人脸识别的结果有力地支持了我们的观点。

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