用于制造业缺陷检测的增量式深度学习调查

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
R. Mohandas, Mark Southern, Eoin O’Connell, Martin J Hayes
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引用次数: 0

摘要

基于深度学习的视觉认知技术大大提高了缺陷检测的准确性,缩短了处理时间,提高了各种制造用例的产品吞吐量。然而,对于在训练阶段使用顺序流的基于模型的检测方法,仍然需要严格的程序来动态更新。本文回顾了在检测过程中出现检测异常时,如何实时严格地纳入新的流程、培训或验证信息。特别是考虑了如何以受控方式将新任务、类别或决策路径添加到现有模型或数据集中。本文对增量学习文献中的研究进行了分析,重点是减轻过程复杂性挑战,如灾难性遗忘。此外,还考虑了已知会影响深度学习模型架构复杂性的实际实施问题,包括传入连续数据的内存分配或增量学习的准确性。本文重点介绍了成功缓解此类实时制造挑战的案例研究结果和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey of Incremental Deep Learning for Defect Detection in Manufacturing
Deep learning based visual cognition has greatly improved the accuracy of defect detection, reducing processing times and increasing product throughput across a variety of manufacturing use cases. There is however a continuing need for rigorous procedures to dynamically update model-based detection methods that use sequential streaming during the training phase. This paper reviews how new process, training or validation information is rigorously incorporated in real time when detection exceptions arise during inspection. In particular, consideration is given to how new tasks, classes or decision pathways are added to existing models or datasets in a controlled fashion. An analysis of studies from the incremental learning literature is presented, where the emphasis is on the mitigation of process complexity challenges such as, catastrophic forgetting. Further, practical implementation issues that are known to affect the complexity of deep learning model architecture, including memory allocation for incoming sequential data or incremental learning accuracy, is considered. The paper highlights case study results and methods that have been used to successfully mitigate such real-time manufacturing challenges.
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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