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Unsupervised discriminative feature representation via adversarial auto-encoder

机译:通过对抗自动编码器的无监督歧视特征表示

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Feature representation is generally applied to reducing the dimensions of high-dimensional data to accelerate the process of data handling and enhance the performance of pattern recognition. However, the dimensionality of data nowadays appears to be a rapidly increasing trend. Existing unsupervised feature representation methods are susceptible to the rapidly increasing dimensionality of data, which may result in learning a meaningless feature that in turn affect their performance in other applications. In this paper, an unsupervised adversarial auto-encoder network is studied. This network is a probability model that combines generative adversarial networks and variational auto-encoder to perform variational inference and aims to generate reconstructed data similar to original data as much as possible. Due to its adversarial training, this model is relatively robust in feature learning compared with other methods. First, the architecture and training strategy of adversarial auto-encoder are presented. We attempt to learn a discriminative feature representation for high-dimensional image data via adversarial auto-encoder and take its advantage into image clustering, which has become a difficult computer vision task recently. Then amounts of comparative experiments are carried out. The comparison contains eight feature representation methods and two recently proposed deep clustering methods performed on eight different publicly available image data sets. Finally, to evaluate their performance, we utilize a K-means clustering on the low-dimensional feature learned from each feature representation algorithm, and select three evaluation metrics including clustering accuracy, adjusted rand index and normalized mutual information, to provide a comparison. Comprehensive experiments prove the usefulness of the learned discriminative feature via adversarial auto-encoder in the tested data sets.
机译:通常应用特征表示来减少高维数据的尺寸,以加速数据处理的过程,增强模式识别的性能。然而,现在数据的维度似乎是一种迅速增加的趋势。现有的无监督特征表示方法易于迅速增加数据的维度,这可能导致学习毫无意义的功能,反过来影响其在其他应用中的性能。本文研究了无监督的对抗自动编码器网络。该网络是一种概率模型,其结合了生成的对抗性网络和变形自动编码器以执行变分或者旨在尽可能地生成类似于原始数据的重建数据。由于其对抗性培训,与其他方法相比,该模型在特征学习中是相对稳健的。首先,提出了对抗自动编码器的结构和培训策略。我们试图通过对手自动编码器学习用于高维图像数据的判别特征表示,并将其优于图像聚类,其最近已成为困难的计算机视觉任务。然后进行比较实验的量。比较包含八个特征表示方法,以及在八个不同公开的图像数据集上执行的两个最近提出的深度聚类方法。最后,为了评估它们的性能,我们利用了从每个特征表示算法学习的低维特征上的K-means聚类,并选择三个评估度量,包括聚类精度,调整的rand索引和归一化相互信息,以提供比较。综合实验证明了通过经过对数据集中的对冲自动编码器来证明学习鉴别特征的有用性。

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