Feature Learning Capacity Assessment of Deep Convolutional Generative Adversarial Network for Action Recognition in a Self-Supervised Framework

Samia Azrab, M. H. Mahmood
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Abstract

Feature learning has always been a critical and most important problem in the field of computer vision. Most of the research community is addressing the problem of feature learning using supervised learning which requires a lot of manually annotated data. In this paper, a self-supervised framework is proposed to evaluate the feature learning capability of the discriminator of a deep convolutional generative adversarial network (DCGAN) via action classification. The DCGAN is trained on action videos of the UCF101 dataset without using any label information and then the trained discriminator is extracted from the DCGAN network. The trained discriminator is used to generate feature vectors. The action classification is performed by finding the similarity between these feature vectors using multiple similarity measures. The experimental results prove that discriminator is a good feature vector generator as the maximum number of action classes are classified correctly without using any annotated data.
自监督框架下深度卷积生成对抗网络动作识别的特征学习能力评估
特征学习一直是计算机视觉领域的一个关键问题。大多数研究界正在使用监督学习来解决特征学习的问题,这需要大量手动注释的数据。本文提出了一个自监督框架,通过动作分类来评估深度卷积生成对抗网络(DCGAN)的鉴别器的特征学习能力。在UCF101数据集的动作视频上训练DCGAN,不使用任何标签信息,然后从DCGAN网络中提取训练好的鉴别器。利用训练好的鉴别器生成特征向量。动作分类是通过使用多个相似度量来寻找这些特征向量之间的相似度来完成的。实验结果表明,该判别器在不使用任何标注数据的情况下,正确分类了最大数量的动作类,是一种很好的特征向量生成器。
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