使用深度终身学习的缺陷检测

Chien-Hung Chen, Cheng-Hao Tu, Jia-Da Li, Chu-Song Chen
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引用次数: 2

摘要

随着深度学习技术的快速发展,自动缺陷检测已被引入到各种制造管道中。许多缺陷检测的研究都集中在训练一个准确的模型上,该模型可以很好地处理特定的缺陷类型。然而,随着制造工艺的发展,新的缺陷类型可能会在实践中出现。在旧缺陷类型上训练的模型将很难检测到新的缺陷类型。为了解决这个问题,我们建议使用持续的终身学习来进行缺陷检测。深度模型可以越来越多地学习检测新的缺陷,同时保持学习到的缺陷不被遗忘,而无需对以前的数据进行再训练。我们的方法可以构建一个紧凑的模型,该模型越来越多地学习检测新的缺陷类型。实验结果表明,该方法可以在保持原有检测旧缺陷类型的能力的同时,逐步学习检测新的缺陷类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defect Detection Using Deep Lifelong Learning
With the rapid development of deep learning, automatic defect detection has been introduced into various manufacturing pipelines. Many studies on defect inspection focus on training an accurate model that can perform well on a certain defect type. However, as the manufacturing process evolves, new defect types may appear in practice. The model trained on old defect types will struggle to detect the new ones. To address this issue, we propose to use continual lifelong learning for defect detection. The deep model can increasingly learn to detect new defects yet keeping the learned ones non-forgetting without retraining on the previous data. Our approach can build a compact model, which increasingly learns to detect new defect types. Experimental results show that our approach can learn to detect new defect types incrementally while maintaining its original capability to detect the old defect types.
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