基于堆叠自编码器的生物特征识别

Leila Boussaad, Aldjia Boucetta
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引用次数: 2

摘要

最近,深度学习在自然语言处理、图像和语音识别等许多任务中都取得了重大成就。此外,这种改进涉及多个生物识别系统。在这项工作中,我们专注于生物特征识别,我们提出了一种基于堆叠自编码器的方法,用于各种生物特征识别,包括虹膜,耳朵,掌纹和面部识别。提出的方法允许训练一个包含两个隐藏层的神经网络来完成生物识别任务。它分两步运行,第一步,每一层都由自动编码器以无监督的方式单独训练,然后将各层堆叠起来,以有监督的方式训练。从公开的生物特征数据库中获得的图像的实验结果清楚地表明,使用堆叠自编码器作为生物特征识别的特征提取和降维工具的好处,因为在四个数据库中获得了显着的高准确率。
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Stacked Auto-Encoders Based Biometrics Recognition
Recently deep learning has shown significant achievement in the performance of many tasks, like natural language processing, image and speech recognition. Also, this improvement concerns multiple biometrics recognition systems. In this work, we focus on biometrics recognition, we present a stacked auto-encoder-based approach for various biometrics recognition, including Iris, Ear, palm-print, and face recognition. The proposed method allows training a neural network that includes two hidden layers for biometrics tasks. It runs in two steps, in the first one, each layer is trained individually in an unsupervised manner by auto-encoders, then the layers are stacked and trained in a supervised way. Experimental results on images, obtained from publicly available biometrics databases clearly demonstrate the benefit of using stacked auto-encoders as feature extraction and dimension reduction tools for biometrics recognition, as significant high accuracy rates are obtained over the four databases.
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