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The active grading ensemble framework for learning visual quality inspection from multiple humans

机译:用于从多个人那里学习视觉质量检查的主动分级集成框架

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When applying machine learning technology to real-world applications, such as visual quality inspection, several practical issues need to be taken care of. One problem is posed by the reality that usually there are multiple human operators doing the inspection, who will inevitably contradict each other for some of the products to be inspected. In this paper an architecture for learning visual quality inspection is proposed which can be trained by multiple human operators, based on trained ensembles of classifiers. Most of the applicable ensemble techniques have however difficulties learning in these circumstances. In order to effectively train the system a novel ensemble framework is proposed as an enhancement of the grading ensemble technique—called active grading. The active grading algorithms are evaluated on data obtained from a real-world industrial system for visual quality inspection of the printing of labels on CDs, which was labelled independently by four different human operators and their supervisor, and compared to the standard grading algorithm and a range of other ensemble (classifier fusion) techniques.
机译:在将机器学习技术应用于实际应用(例如视觉质量检查)时,需要注意一些实际问题。现实的问题是,通常有多个人工操作人员进行检查,对于某些要检查的产品,他们不可避免地会互相矛盾。在本文中,提出了一种用于学习视觉质量检查的体系结构,该体系结构可以基于经过训练的分类器集合,由多个人工操作员进行训练。但是,在这些情况下,大多数适用的合奏技术都很难学习。为了有效地训练系统,提出了一种新颖的集成框架,作为对分级集成技术的一种增强,称为主动分级。根据从实际工业系统获得的数据进行评估,以评估CD上标签印刷的视觉质量,该分级算法由四个不同的人工操作人员及其主管独立标记,并与标准分级算法和其他合奏(分类器融合)技术的范围。

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