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AcFR: Active Face Recognition Using Convolutional Neural Networks

机译:ACFR:使用卷积神经网络的主动面部识别

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We propose AcFR, an active face recognition system that employs a convolutional neural network and acts consistently with human behaviors in common face recognition scenarios. AcFR comprises two main components-a recognition module and a controller module. The recognition module uses a pre-trained VGG-Face net to extract facial image features along with a nearest neighbor identity recognition algorithm. Based on the results, the controller module can make three different decisions-greet a recognized individual, disregard an unknown individual, or acquire a different viewpoint from which to reassess the subject, all of which are natural reactions when people observe passers-by. Evaluated on the PIE dataset, our recognition module yields higher accuracy on images under closer angles to those saved in memory. The accuracy is viewdependent and it also provides evidence for the proper design of the controller module.
机译:我们提出ACFR,一种主动面部识别系统,该系统采用卷积神经网络,并在共同的面部识别场景中始终如一地与人类行为作用。 ACFR包括两个主要组件 - 识别模块和控制器模块。识别模块使用预先训练的Vgg-Face网来提取面部图像特征以及最近的邻居身份识别算法。基于结果,控制器模块可以制作三种不同的决定 - 迎接认可的个人,忽略未知的个人,或者从中重新评估对象的不同观点,当人们观察路人时,所有这些都是自然反应。在饼图数据集上进行评估,我们的识别模块在更近的图像下对图像的图像产生更高的准确性,与保存在内存中的图像下。准确性是viewDependent,它还提供了控制器模块正确设计的证据。

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