构建稳健的深度神经网络应用:进化数据增强的工业案例研究

Haruki Yokoyama, Satoshi Onoue, S. Kikuchi
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引用次数: 6

摘要

数据增强技术通过添加现实转换来增加训练数据的数量,用于机器学习以提高准确性水平。最近的研究表明,数据增强技术提高了开放数据集图像分类模型的鲁棒性;然而,这些技术是否对工业数据集有效还有待研究。在这项研究中,我们探讨了数据增强技术在工业应用中的可行性。我们使用工业内部图形用户界面数据集评估图像分类和目标检测任务中的数据增强技术。结果表明,基于遗传算法的数据增强技术在图像分类模型的鲁棒性方面优于两种基于随机的方法。此外,通过对开发人员的评估和访谈,我们得到了以下两个教训:数据增强技术应该(1)保持训练速度,以避免放慢开发速度;(2)包括各种任务的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Building Robust DNN Applications: An Industrial Case Study of Evolutionary Data Augmentation
Data augmentation techniques that increase the amount of training data by adding realistic transformations are used in machine learning to improve the level of accuracy. Recent studies have demonstrated that data augmentation techniques improve the robustness of image classification models with open datasets; however, it has yet to be investigated whether these techniques are effective for industrial datasets. In this study, we investigate the feasibility of data augmentation techniques for industrial use. We evaluate data augmentation techniques in image classification and object detection tasks using an industrial in-house graphical user interface dataset. As the results indicate, the genetic algorithm-based data augmentation technique outperforms two random-based methods in terms of the robustness of the image classification model. In addition, through this evaluation and interviews with the developers, we learned following two lessons: data augmentation techniques should (1) maintain the training speed to avoid slowing the development and (2) include extensibility for a variety of tasks.
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