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Learning with A Generative Adversarial Network From a Positive Unlabeled Dataset for Image Classification

机译:从正面的未标记数据集通过生成的对抗网络学习以进行图像分类

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In this paper, we propose a new approach which addresses the Positive Unlabeled learning challenge for image classification. Its functioning is based on GAN abilities in order to generate fake images samples whose distribution gets closer to negative samples distribution included in the unlabeled dataset available, while being different to the distribution of the unlabeled positive samples. Then we train a CNN classifier with the positive samples and the fake generated samples, as it would be done with a classic Positive Negative dataset. The tests performed on three different image classification datasets show that the system is stable up to an acceptable fraction of positive samples present in the unlabeled dataset. Although very different, this method outperforms the state of the art PU learning on the RGB dataset CIFAR-10.
机译:在本文中,我们提出了一种新的方法来解决图像分类的正面未标记学习挑战。它的功能基于GAN能力,以生成伪造的图像样本,其分布更接近于可用的未标记数据集中包含的负样本分布,而与未标记的正样本的分布不同。然后,我们将训练带有正样本和伪造样本的CNN分类器,就像使用经典的正负样本数据集一样。在三个不同的图像分类数据集上执行的测试表明,该系统在未标记的数据集中存在的阳性样本的可接受分数范围内都是稳定的。尽管有很大的不同,但是该方法的性能优于RGB数据集CIFAR-10上最新的PU学习。

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