Circular Shift: An Effective Data Augmentation Method For Convolutional Neural Network On Image Classification

Kailai Zhang, Zheng Cao, Ji Wu
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引用次数: 14

Abstract

In this paper, we present a novel and effective data augmentation method for convolutional neural network(CNN) on image classification tasks. CNN-based models such as VGG, Resnet and Densenet have achieved great success on image classification tasks. The common data augmentation methods such as rotation, crop and flip are always used for CNN, especially under the lack of data. However, in some cases such as small images and dispersed feature of objects, these methods have limitations and even can decrease the classification performance. In this case, an operation that has lower risk is important for the performance improvement. Addressing this problem, we design a data augmentation method named circular shift, which provides variations for the CNN-based models but does not lose too much information. Three commonly used image datasets are chosen for the evaluation of our proposed operation, and the experiment results show consistent improvement on different CNN-based models. What is more, our operation can be added to the current set of augmentation operation and achieves further performance improvement.
圆移位:卷积神经网络图像分类的有效数据增强方法
本文提出了一种新颖有效的卷积神经网络(CNN)图像分类数据增强方法。基于cnn的VGG、Resnet、Densenet等模型在图像分类任务上取得了很大的成功。对于CNN来说,常用的数据增强方法如轮作、作物、翻转等,尤其是在数据不足的情况下。然而,在某些情况下,如小图像和物体的分散特征,这些方法有局限性,甚至会降低分类性能。在这种情况下,风险较低的操作对于性能改进非常重要。为了解决这个问题,我们设计了一种名为循环移位的数据增强方法,该方法为基于cnn的模型提供了变化,但不会丢失太多信息。我们选择了三个常用的图像数据集来评估我们提出的操作,实验结果表明,在不同的基于cnn的模型上,我们的改进是一致的。而且,我们的操作可以添加到当前的增强操作集合中,进一步提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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