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Between-Class Learning for Image Classification

机译:阶级之间的图像分类学习

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In this paper, we propose a novel learning method for image classification called Between-Class learning (BC learning)1. We generate between-class images by mixing two images belonging to different classes with a random ratio. We then input the mixed image to the model and train the model to output the mixing ratio. BC learning has the ability to impose constraints on the shape of the feature distributions, and thus the generalization ability is improved. BC learning is originally a method developed for sounds, which can be digitally mixed. Mixing two image data does not appear to make sense; however, we argue that because convolutional neural networks have an aspect of treating input data as waveforms, what works on sounds must also work on images. First, we propose a simple mixing method using internal divisions, which surprisingly proves to significantly improve performance. Second, we propose a mixing method that treats the images as waveforms, which leads to a further improvement in performance. As a result, we achieved 19.4% and 2.26% top-1 errors on ImageNet-1K and CIFAR10, respectively.
机译:在本文中,我们提出了一种新的图像分类学习方法,称为类学习(BC学习)1。我们通过将属于不同类的两个图像与随机比混合来生成类之间。然后,我们将混合图像输入到模型并培训模型以输出混合比率。 BC学习能够施加对特征分布形状的限制,因此提高了泛化能力。 BC学习最初是一种用于声音的方法,可以数字混合。混合两个图像数据似乎没有意义;但是,我们认为,因为卷积神经网络具有将输入数据视为波形的一个方面,所以在声音上的工作也必须在图像上工作。首先,我们提出了一种使用内部部门的简单混合方法,令人惊讶地证明了显着提高了性能。其次,我们提出一种混合方法,该混合方法将图像视为波形,这导致性能的进一步提高。因此,我们分别在Imagenet-1K和CiFAR10上实现了19.4%和2.26%的前1个错误。

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