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Using uncertainty techniques to aid defect classification in an automated visual inspection system

机译:使用不确定性技术辅助自动视觉检查系统中的缺陷分类

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This research investigates how Artificial Intelligence techniques can be applied to an Automated Visual Inspection (AVI) system to enable the construction of a defect classification scheme. Whilst there are many defect detection systems on the market, there are few commercial products which also provide satisfactory classification. It is suggested there are two reasons why classification techniques are difficult to apply. First, most problems assume that a description of what is to be classified already exists. In many applications this is not the case. Second, the working environment of many 'real world' applications is continually open to change. The knowledge acquisition task is not a one off process since the data which describes the objects to be classified will vary over time. This research analyses how Uncertainty Management Techniques (UMT) can be applied to improve the classification process.
机译:这项研究调查了如何将人工智能技术应用于自动视觉检查(AVI)系统,以构建缺陷分类方案。尽管市场上有许多缺陷检测系统,但很少有能提供令人满意的分类的商业产品。提出有两种原因难以应用分类技术。首先,大多数问题假定要分类的内容的描述已经存在。在许多应用中并非如此。其次,许多“现实世界”应用程序的工作环境不断变化。知识获取任务不是一次性的过程,因为描述要分类的对象的数据会随时间变化。这项研究分析了不确定性管理技术(UMT)如何可用于改进分类过程。

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