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Augmented reality for enhanced visual inspection through knowledge-based deep learning

机译:通过基于知识的深度学习来增强视觉检查的增强现实

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摘要

A two-stage knowledge-based deep learning algorithm is presented for enabling automated damage detection in real-time using the augmented reality smart glasses. The first stage of the algorithm entails the identification of damage prone zones within the region of interest. This requires domain knowledge about the damage as well as the structure being inspected. In the second stage, automated damage detection is performed independently within each of the identified zones starting with the one that is the most damage prone. For real-time visual inspection enhancement using the augmented reality smart glasses, this two-stage approach not only ensures computational feasibility and efficiency but also significantly improves the probability of detection when dealing with structures with complex geometric features. A pilot study is conducted using hands-free Epson BT-300 smart glasses during which two distinct tasks are performed: First, using a single deep learning model deployed on the augmented reality smart glasses, automatic detection and classification of corrosion/fatigue, which is the most common cause of failure in high-strength materials, is performed. Then, in order to highlight the efficacy of the proposed two-stage approach, the more challenging task of defect detection in a multi-joint bolted region is addressed. The pilot study is conducted without any artificial control of external conditions like acquisition angles, lighting, and so on. While automating the visual inspection process is not a new concept for large-scale structures, in most cases, assessment of the collected data is performed offline. The algorithms/techniques used therein cannot be implemented directly on computationally limited devices such as the hands-free augmented reality glasses which could then be used by inspectors in the field for real-time assistance. The proposed approach serves to overcome this bottleneck.
机译:提供了一种基于两阶段知识的深度学习算法,用于使用增强现实智能眼镜实时实现自动损坏检测。该算法的第一阶段需要识别感兴趣区域内的易损区。这需要有关损坏的域知识以及正在检查的结构。在第二阶段,从最容易损坏的损伤开始的每个识别的区域内独立地执行自动损伤检测。对于使用增强现实智能眼镜进行实时视觉检验增强,这两级方法不仅可以确保计算可行性和效率,而且在处理具有复杂几何特征的结构时,也显着提高了检测的概率。使用免提EPSON BT-300智能眼镜进行试验研究,在此期间执行了两个不同的任务:首先,使用在增强现实智能眼镜上部署的单个深度学习模型,自动检测和腐蚀/疲劳分类,即腐蚀/疲劳进行高强度材料的最常见原因。然后,为了突出所提出的两级方法的功效,解决了多关节螺栓区域中的缺陷检测的更具挑战性的任务。导频研究在没有任何人工控制外部条件的情况下进行,如采集角度,照明等。在自动化视觉检验过程中不是大型结构的新概念,在大多数情况下,脱机的评估是执行的。其中使用的算法/技术不能直接在计算限制的设备上实现,例如免提增强现实眼镜,然后可以由现场中的检查员用于实时辅助。建议的方法用于克服这一瓶颈。

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