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Deep or Shallow Facial Descriptors? A Case for Facial Attribute Classification and Face Retrieval

机译:深层或浅层面部描述符?面部属性分类和面部检索的案例

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With the largely growing quantity of face images in the social networks and media, different face analyzing systems are developed to be employed in real-world situations such as face recognition, facial expression detection, or automated face tagging. Two demanding face-related applications are studied in this paper: facial attribute classification and face image retrieval. The main common issue with most of the attribute classifiers and face retrieval systems is that they fail to perform well under various facial expressions, pose variations, geometrical deformation, and photometric alterations. On one hand, the emerging role of deep CNNs (convolutional neural networks) has shown superior results in tasks like object recognition, face recognition, etc. On the other hand, their applications are yet to be more investigated in facial attribute classification and face retrieval. In this study, we compare the performance of shallow and deep facial descriptors in the two mentioned applications by proposing to exploit distinctive facial features from a very deep pre-trained CNN for attribute classification as well as constructing deep attribute-driven feature vectors for face retrieval. According to the results, the higher accuracy of the attribute classifiers and superior performance of the face retrieval system is demonstrated.
机译:随着社交网络和介质中的面部图像的大量越来越大,开发了不同的面部分析系统,以便在真实世界的情况下使用,例如面部识别,面部表情检测或自动面标。本文研究了两个苛刻的面部相关的应用程序:面部属性分类和面部图像检索。大多数属性分类器和面部检索系统的主要常见问题是它们在各种面部表情,姿势变化,几何变形和光度改变下都无法执行良好。一方面,深层细胞神经网络的新兴角色(卷积神经网络)在诸如物体识别,人脸识别等。另一方面任务已经显示出优异的业绩,他们的应用程序还有待更多的研究面部属性分类和检索的脸。在这项研究中,我们通过建议利用来自非常深刻的预训练CNN的浅层和深层面部描述符在两个提到的应用中的性能进行比较,以实现属性分类,以及构建深度属性驱动的特征向量,用于面部检索。根据结果​​,对属性分类器的更高准确性和面部检索系统的优越性的性能。

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