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Exploring Features and Attributes in Deep Face Recognition Using Visualization Techniques

机译:使用可视化技术探索深度人脸识别中的特征和属性

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Deep convolutional neural networks (CNNs) currently have achieved state-of-the-art results on face recognition; yet, the understanding behind the success of the deep face model is still lacking. In particular, it is still unclear the inner workings of deep face model. What effective features does a deep face model learn? What do these features represent and what is the sematic meaning of them? This work explores this problem by analyzing the classic network VGGFace using deep visualization techniques. We first explore features computed by neurons, investigating characters of features like diversity, invariance, discrimination. It's worth noting that the middle layer is the least robust to transform, which contradicts the conventional view that robustness to transform increases as the network going deeper. The most significant phenomenon we find is that high level features are correspond with complex face attributes which human could not describe using a few words. We present a quantitative analysis on these face attributes perceived by deep CNNs, understanding them and the complex relationships between them. Additionally, we also focus on the significant point, the pose invariance in face recognition. Our research is the first work to understand the inner works of deep face models, elucidating some particular phenomena in deep face recognition.
机译:目前,深度卷积神经网络(CNN)在人脸识别方面已经取得了最新的成果。但是,仍然缺乏对深脸模型成功背后的理解。特别是,尚不清楚深脸模型的内部工作原理。面部模型可以学习哪些有效功能?这些特征代表什么?它们的语义含义是什么?这项工作通过使用深度可视化技术分析经典网络VGGFace来探索此问题。我们首先探索神经元计算出的特征,研究诸如多样性,不变性,歧视等特征。值得注意的是,中间层对转换的鲁棒性最差,这与传统观点有关,即随着网络越深入,转换的鲁棒性就越高。我们发现的最重要的现象是,高级特征与复杂的面部属性相对应,而人类无法使用几个词来描述它们。我们对深层CNN感知到的这些面部特征进行定量分析,了解它们以及它们之间的复杂关系。此外,我们还将重点放在人脸识别的重要点,即姿势不变性上。我们的研究是了解深脸模型内部工作的第一项工作,阐明了深脸识别中的一些特殊现象。

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