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GAN-Based One-Class Classification for Personalized Image Retrieval

机译:基于GAN的一类分类用于个性化图像检索

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One-class classification for a personalized image retrieval system is one of most important research issues in machine learning. However, the conventional one-class classification techniques can have an overfitting problem. Thus, in this paper, we propose a novel one-class classification technique using the framework of generative adversarial nets (GAN) for image data. First, the support model and one-class model are trained with only positive-class data by a minimax game. At the end of this learning process, the one-class model learns the features of positive-class data very well while reducing generation error. One of our important findings is that the negative-class data generated by the support model help the one-class model conceptually and experimentally reduce the generative error. Using CIFAR-10, we show that our proposed technique outperforms the conventional technique by ~10% in terms of F1 measure.
机译:个性化图像检索系统的一类分类是机器学习中最重要的研究问题之一。但是,常规的一类分类技术可能存在过度拟合的问题。因此,在本文中,我们使用生成的对抗网络(GAN)框架提出了一种新颖的一类分类技术,用于图像数据。首先,通过minimax游戏仅用正类数据训练支持模型和一类模型。在学习过程的最后,一类模型很好地学习了正类数据的特征,同时减少了生成错误。我们的重要发现之一是,支持模型生成的否定类数据从概念上和实验上帮助了一类模型减少了生成误差。使用CIFAR-10,我们显示出我们提出的技术在F1量度方面比传统技术高出〜10%。

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