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Discovering Identity Specific Activation Patterns in Deep Descriptors for Template Based Face Recognition

机译:在基于模板的人脸识别的深度描述符中发现特定于身份的激活模式

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The majority of recent face recognition systems are based on Deep Convolutional Neural Networks (DCNNs). These networks are trained on massive amounts of face images so as to learn a compact representation (deep descriptor) aimed at capturing the identity information. Recognition is then performed by computing some similarity (or distance) measure between descriptors. However, in practice, descriptors encode also other intra-class variabilities such as pose and expressions. This well-known problem is usually addressed by designing specific loss-functions or metric learning modules such that the learned descriptors maximize the inter-class (identity) distances and minimize the intra-class differences in the feature space. We tackle this problem from a different perspective by observing that descriptors associated with images of the same subject, on average, share similar patterns in the highest activation units. We demonstrate this assumption by showing that improved accuracy can be obtained in a template-based recognition scenario by retaining the descriptor bins with the average highest activation, and dropping all the others to zero. These activation patterns are also employed to build identity-representative binary masks that are effectively used in place of the descriptors to match templates. We investigate this strategy by performing experiments on the IJB-A dataset, and show that it can significantly boost the recognition accuracy.
机译:最近的大多数人脸识别系统都基于深度卷积神经网络(DCNN)。在大量的面部图像上对这些网络进行训练,以学习旨在捕获身份信息的紧凑表示(深层描述符)。然后通过计算描述符之间的一些相似性(或距离)度量来执行识别。但是,实际上,描述符还编码其他类内变异,例如姿势和表情。通常通过设计特定的损失函数或度量学习模块来解决此众所周知的问题,以使学习的描述符使类间(标识)距离最大化,并使特征空间内的类内差异最小化。我们通过观察与同一主题的图像相关的描述符平均以最高激活单元共享相似的模式来从不同的角度解决此问题。我们通过显示可以通过保留具有平均最高激活率的描述符bin并将所有其他阈值降为零来提高基于模板的识别方案的准确性,从而证明了这一假设。这些激活模式还用于构建身份代表二进制掩码,该掩码有效地代替描述符来匹配模板。我们通过对IJB-A数据集进行实验来研究此策略,并表明它可以显着提高识别精度。

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