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CleanNet: Transfer Learning for Scalable Image Classifier Training with Label Noise

机译:CleanNet:带标签噪声的可扩展图像分类器培训的转移学习

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In this paper, we study the problem of learning image classification models with label noise. Existing approaches depending on human supervision are generally not scalable as manually identifying correct or incorrect labels is time-consuming, whereas approaches not relying on human supervision are scalable but less effective. To reduce the amount of human supervision for label noise cleaning, we introduce CleanNet, a joint neural embedding network, which only requires a fraction of the classes being manually verified to provide the knowledge of label noise that can be transferred to other classes. We further integrate CleanNet and conventional convolutional neural network classifier into one framework for image classification learning. We demonstrate the effectiveness of the proposed algorithm on both of the label noise detection task and the image classification on noisy data task on several large-scale datasets. Experimental results show that CleanNet can reduce label noise detection error rate on held-out classes where no human supervision available by 41.5% compared to current weakly supervised methods. It also achieves 47% of the performance gain of verifying all images with only 3.2% images verified on an image classification task. Source code and dataset will be available at kuanghuei.github.io/CleanNetProject.
机译:在本文中,我们研究了学习带有标签噪声的图像分类模型的问题。依靠人工监督的现有方法通常无法扩展,因为手动识别正确或不正确的标签非常耗时,而不依赖人工监督的方法则可以扩展但效率较低。为了减少对标签噪声清洁的人工监督,我们引入了CleanNet,这是一种联合神经嵌入网络,它仅需要手动验证一部分类别即可提供可以转移到其他类别的标签噪声知识。我们进一步将CleanNet和传统的卷积神经网络分类器集成到一个用于图像分类学习的框架中。我们在多个大型数据集上证明了该算法在标签噪声检测任务和噪声数据任务图像分类上的有效性。实验结果表明,与目前的弱监督方法相比,CleanNet可以在没有人为监督的情况下将保留类的标签噪声检测错误率降低41.5%。通过仅在图像分类任务上验证的3.2%图像,它还可以实现验证所有图像的47%的性能提升。源代码和数据集将在kuanghuei.github.io/CleanNetProject上提供。

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