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FACE RECOGNITION: A NOVEL DEEP LEARNING APPROACH

机译:面部识别:一种新颖的深度学习方法

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摘要

We propose a novel and robust-deep learning method for face recognition, which uses an effective image representations learned automatically to handle with big data. There are two stages about the deep learning architecture in real-time application. First, on the offline training procedure, we train a stacked denoising autoencoder to learn generic image features from 80 million Tiny images dataset used as auxiliary offline training data. Second, on the supervised object recognition procedure, we construct a five layers as a feature extractor to produce an image representation and an additional classification layer, which we can use to further tune generic image features to adapt to specific objects recognition by online training of corresponding objects. Comparison with the state-of-the-art face recognition methods shows that our deep learning algorithm in face recognition is more accurate and it is a perfect processing tool in big data problem.
机译:我们提出了一种新颖且鲁棒的深度学习方法,用于人脸识别,该方法使用自动学习的有效图像表示来处理大数据。实时应用中的深度学习架构有两个阶段。首先,在离线训练过程中,我们训练了一个堆叠式去噪自动编码器,以从8000万个用作辅助离线训练数据的Tiny图像数据集中学习通用图像特征。其次,在有监督的对象识别过程中,我们将五层构造为特征提取器以生成图像表示,并构造一个附加的分类层,我们可以使用该分类层进一步调整通用图像特征,以通过相应的在线训练来适应特定的对象识别。对象。与最新的人脸识别方法进行比较表明,我们的人脸识别深度学习算法更加准确,是处理大数据问题的理想工具。

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