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A Support Vector Machine Based Online Learning Approach for Automated Visual Inspection

机译:基于支持向量机的自动视觉检查在线学习方法

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In manufacturing industry there is a need for an adaptable automated visual inspection (AVI) system that can be used for different inspection tasks under different operation condition without requiring excessive retuning or retraining. This paper proposes an adaptable AVI scheme using an efficient and effective online learning approach. The AVI scheme uses a novel inspection model that consists of the two sub-models for localization and verification. In the AVI scheme, the region localization module is implemented by using a template-matching technique to locate the subject to be inspected based on the localization sub-mode. The defect detection module is realized by using the representative features obtained from the feature extraction module and executing the verification sub-model built in the model training module. A support vector machine (SVM) based online learning algorithm is proposed for training and updating the verification sub-model. In the case studies, the adaptable AVI scheme demonstrated its promising performances with respect to the training efficiency and inspection accuracy. The expected outcome of this research will be beneficial to the manufacturing industry.
机译:在制造业中,需要一种可适应的自动视觉检查(AVI)系统,可用于不同的操作条件下的不同检查任务,而无需过度重新定制或再培训。本文采用高效且有效的在线学习方法提出了一种适应性的AVI方案。 AVI方案使用新颖的检查模型,该模型由两个用于本地化和验证的子模型组成。在AVI方案中,通过使用模板匹配技术来实现区域定位模块来定位基于定位子模式进行检查的对象。通过使用从特征提取模块获得的代表性特征和执行模型训练模块中内置的验证子模型来实现缺陷检测模块。提出了基于支持向量机(SVM)的在线学习算法,用于训练和更新验证子模型。在案例研究中,适应性AVI方案对训练效率和检验准确性的有前途的表现。本研究的预期结果将有利于制造业。

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