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Transferring and Compressing Convolutional Neural Networks for Face Representations

机译:传输和压缩卷积神经网络用于人脸表示

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In this work we have investigated face verification based on deep representations from Convolutional Neural Networks (CNNs) to find an accurate and compact face descriptor trained only on a restricted amount of face image data. Transfer learning by fine-tuning CNNs pre-trained on large-scale object recognition has been shown to be a suitable approach to counter a limited amount of target domain data. Using model compression we reduced the model complexity without significant loss in accuracy and made the feature extraction more feasible for realtime use and deployment on embedded systems and mobile devices. The compression resulted in a 9-fold reduction in number of parameters and a 5-fold speed-up in the average feature extraction time running on a desktop CPU. With continued training of the compressed model using a Siamese Network setup, it outperformed the larger model.
机译:在这项工作中,我们研究了基于卷积神经网络(CNN)的深度表示的人脸验证,以找到仅在有限数量的人脸图像数据上训练的准确而紧凑的人脸描述符。通过微调在大规模目标识别中预先训练的CNN进行的转移学习已被证明是应对数量有限的目标域数据的一种合适方法。使用模型压缩,我们降低了模型的复杂性,而准确性没有显着损失,并使特征提取对于嵌入式系统和移动设备上的实时使用和部署更加可行。压缩导致在台式机CPU上运行的参数数量减少了9倍,平均特征提取时间加快了5倍。通过使用暹罗网络设置继续训练压缩模型,它的性能优于大型模型。

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