Region Detection Rate: An Applied Measure for Surface Defect Localization

T. Huxohl, F. Kummert
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引用次数: 1

Abstract

The automatic localization and classification of defects on surfaces helps to ensure the quality of industrially manufactured products. For the development of such automatic systems, a measure is needed that allows a profound optimization and comparison. However, there is currently no measure dedicated to surface defect localization in particular and measures from related fields are unsuitable. Thus, we present the Region Detection Rate (RDR) which is specialized on defect localization since it is evaluated in a defect-wise manner. It entails a set of rules that define the circumstances under which a defect is considered detected and a prediction is considered a false positive. The usability of the RDR is qualitatively demonstrated on examples from three different datasets, one of which has been annotated as part of this work. We hope that the new measure supports the development of future automatic surface defect localization systems and to raise a discussion about the suitability of measures with regard to this task.
区域检测率:表面缺陷定位的一种实用方法
表面缺陷的自动定位和分类有助于确保工业制造产品的质量。为了开发这种自动化系统,需要一种能够进行深刻优化和比较的措施。然而,目前还没有专门针对表面缺陷定位的措施,相关领域的措施也不合适。因此,我们提出了区域检测率(RDR),它是专门用于缺陷定位的,因为它是以缺陷的方式进行评估的。它需要一组规则,这些规则定义了在哪些情况下缺陷被认为是检测到的,并且预测被认为是错误的。RDR的可用性通过来自三个不同数据集的示例进行了定性演示,其中一个数据集已作为本工作的一部分进行了注释。我们希望新措施支持未来自动表面缺陷定位系统的发展,并就这项任务提出有关措施适用性的讨论。
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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