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Deep learning algorithms for discriminant autoencoding

机译:判别式自动编码的深度学习算法

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In this paper, a new family of Autoencoders (AE) for dimensionality reduction as well as class discrimination is proposed, using various class separating methods which cause a translation of the reconstructed data in a way such that the classes are better separated. The result of this combination is a new type of Discriminant Autoencoder, in which the targets are shifted in space in a discriminative fashion. The proposed Discriminant AE is experimentally compared to the standard Denoising AE in the challenging classification tasks of handwritten digit recognition and facial expression recognition as well as in the CIFAR10 dataset. (C) 2017 Elsevier B.V. All rights reserved.
机译:在本文中,提出了一个新的自动编码器家族(AE),用于降维以及分类识别,它使用各种分类分离方法,这些方法会导致重构数据的转换,从而更好地分离各个分类。这种结合的结果是一种新型的判别自动编码器,其中目标以辨别的方式在空间中移动。在手写数字识别和面部表情识别的挑战性分类任务以及CIFAR10数据集中,将拟议的判别AE与标准降噪AE在实验上进行了比较。 (C)2017 Elsevier B.V.保留所有权利。

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