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On improving performance of surface inspection systems by online active learning and flexible classifier updates

机译:通过在线主动学习和灵活的分类器更新来提高表面检测系统的性能

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Classification of detected events is a central component in state-of-the-art surface inspection systems that still relies on manual parametrization. While machine-learned classifiers promise supreme accuracy, their reliability depends on complete and correct annotation of an extensive training database, leaving the risk of unpredictable behavior in changing production environments. We propose an active learning-based training framework, which selectively presents questionable events for user annotation and is capable of online operation. Evaluation results on two data streams from microfluidic chips and elevator sheaves production show that annotation effort can be reduced by 90 % with negligible loss of accuracy. Simulation runs introducing new event classes show that the online active learning procedure is both efficient in terms of learning speed and robust in maintaining the accuracy levels of existing classes. The results underline the feasibility and potential of our approach that significantly reduces the required effort for inspection system setup and adapts to changes in the production process.
机译:检测到的事件的分类是最新的表面检查系统的核心组件,该系统仍然依赖于手动参数化。虽然机器学习的分类器具有最高的准确性,但它们的可靠性取决于广泛培训数据库的完整和正确注释,从而在变化的生产环境中存在不可预测行为的风险。我们提出了一个基于学习的积极的培训框架,该框架有选择地呈现可疑事件以供用户注释,并且能够在线运行。对来自微流控芯片和升降轮的两个数据流的评估结果表明,标注工作量可减少90%,而准确性损失可忽略不计。引入新事件类的模拟运行表明,在线主动学习过程在学习速度方面既有效,又在保持现有类的准确性水平方面很强大。结果强调了我们方法的可行性和潜力,该方法可显着减少检查系统设置所需的工作并适应生产过程中的变化。

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