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Compressed Deep Convolution Neural Network for Face Recognition

机译:面部识别压缩深卷积神经网络

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Deep convolution neural network (CNN) has achieved a great success on face recognition techniques. But most of CNN models tend to be much deeper, which are at the expenses of high consumption of computation and storage. So, it is hard for these deep CNNs applied to mobile equipments because of poor computational and memory resources. To alleviate this issue, this paper optimizes a lightened baseline CNN model by adopting an additional contrastive loss to learn more discriminative features. To further reduce the number of parameters, a pruning strategy is tried to compress our model, which slightly improves accuracy on the LFW dataset with the compression ratio of 0.7. Finally, experimental result shows that the proposed method achieve state-of-the-art results with much smaller size and fewer training data.
机译:深度卷积神经网络(CNN)对面部识别技术取得了巨大成功。但大多数CNN模型往往更深入,这是在高消耗计算和存储的费用。因此,由于计算和内存资源差,这些深度CNNS很难应用于移动设备。为了缓解这个问题,本文通过采用额外的对比损失来优化一种轻松的基线CNN模型来了解更多辨别特征。为了进一步减少参数的数量,试图压缩我们的模型的修剪策略,这在压缩比为0.7的压缩比上略微提高了LFW数据集的准确性。最后,实验结果表明,所提出的方法实现最先进的结果,尺寸小得多,训练数据较少。

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