Class Aware Auto Encoders for Better Feature Extraction

Ashhadul Islam, S. Belhaouari
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引用次数: 1

Abstract

In this work, a modified operation of Auto Encoder has been proposed to generate better features from the input data. General autoencoders work unsupervised and learn features using the input data as a reference for output. In our method of training autoencoders, we include the class labels into the reference data so as to gear the learning of the autoencoder towards the reference data as well as the specific class it belongs to. This ensures that the features learned are representations of individual data points as well as the corresponding class. The efficacy of our method is measured by comparing the accuracy of classifiers trained on features extracted by our models from the MNIST dataset, the CIFAR-10 dataset, and the UTKFace dataset. Features extracted by our brand of autoencoders enable classifiers to obtain higher accuracy in comparison to the same classifiers trained on features extracted by traditional autoen-coders.
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类感知自动编码器更好的特征提取
在这项工作中,提出了一种改进的自动编码器操作,以从输入数据中生成更好的特征。一般的自动编码器在无监督的情况下工作,并使用输入数据作为输出的参考来学习特征。在我们训练自编码器的方法中,我们将类标签包含到参考数据中,从而使自编码器的学习朝着参考数据以及它所属的特定类进行。这确保了学习到的特征是单个数据点以及相应类的表示。我们的方法的有效性是通过比较我们的模型从MNIST数据集、CIFAR-10数据集和UTKFace数据集提取的特征训练的分类器的准确性来衡量的。与传统自动编码器提取的特征相比,我们品牌的自动编码器提取的特征使分类器能够获得更高的准确率。
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