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Convolutional Neural Networks for Realtime Multi-Faces Verification with Occlusion

机译:卷积神经网络,用于闭塞的实时多面验证

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The face is a major component of living creature that becomes a feature to distinguish between one and another living creature and also between living creature with inanimate objects such as statues. In the digital era nowadays, faces are used as objects for identification and verification. But the existence of occlusion in the form of glasses has a potential to influence the verification process carried out by the system. Therefore, a system will be build to perform a real time multi-faces verification processes with occlusion using Convolutional Neural Networks. We propose a "Siamese" architecture with 37 convolutional layer, 10 pooling layer, and 3 fully connected layer. On the training and testing we used Labeled Faces in the Wild (LFW) dataset. The image were taken from 5749 people. We also took 165 images from 11 people for testing with image size 96 × 96 for each images. The verification accuracy achieved for the proposed method is 98%.
机译:脸部是生物的主要组成部分,成为区分一个和另一个生物的特征,也是与雕像等生物的生物之间。在如今的数字时代,面部用作用于识别和验证的对象。但是眼镜形式的闭塞存在具有影响系统进行的验证过程的潜力。因此,系统将建立以使用卷积神经网络执行具有遮挡的实时多面验证过程。我们提出了一个带有37层卷积层,10层和3层的“暹罗”架构。关于培训和测试,我们在野外(LFW)数据集中使用标记的面孔。图像从5749人中拍摄。我们还从11人获取了165张图片,用于每个图像的图像尺寸96×96测试。所提出的方法实现的验证精度为98%。

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