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Automated Visual Inspection of Glass Bottle Bottom With Saliency Detection and Template Matching

机译:通过显着性检测和模板匹配对玻璃瓶底部进行自动外观检查

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摘要

Glass bottles are widely used as containers in the food and beverage industry, especially for beer and carbonated beverages. As the key part of a glass bottle, the bottle bottom and its quality are closely related to product safety. Therefore, the bottle bottom must be inspected before the bottle is used for packaging. In this paper, an apparatus based on machine vision is designed for real-time bottle bottom inspection, and a framework for the defect detection mainly using saliency detection and template matching is presented. Following a brief description of the apparatus, our emphasis is on the image analysis. First, we locate the bottom by combining Hough circle detection with the size prior, and we divide the region of interest into three measurement regions: central panel region, annular panel region, and annular texture region. Then, a saliency detection method is proposed for finding defective areas inside the central panel region. A multiscale filtering method is adopted to search for defects in the annular panel region. For the annular texture region, we combine template matching with multiscale filtering to detect defects. Finally, the defect detection results of the three measurement regions are fused to distinguish the quality of the tested bottle bottom. The proposed defect detection framework is evaluated on bottle bottom images acquired by our designed apparatus. The experimental results demonstrate that the proposed methods achieve the best performance in comparison with many conventional methods.
机译:玻璃瓶被广泛用作食品和饮料行业的容器,尤其是啤酒和碳酸饮料。作为玻璃瓶的关键部分,瓶底及其质量与产品安全性息息相关。因此,在将瓶子用于包装之前必须检查瓶子的底部。本文设计了一种基于机器视觉的瓶底实时检测设备,提出了一种基于显着性检测和模板匹配的缺陷检测框架。在对设备进行简要描述之后,我们的重点是图像分析。首先,我们通过将霍夫圆检测与先验大小相结合来定位底部,然后将关注区域划分为三个测量区域:中央面板区域,环形面板区域和环形纹理区域。然后,提出了一种显着性检测方法,用于发现中央面板区域内的缺陷区域。采用多尺度滤波方法在环形面板区域中寻找缺陷。对于环形纹理区域,我们将模板匹配与多尺度滤波相结合以检测缺陷。最后,将三个测量区域的缺陷检测结果融合在一起,以区分被测瓶底的质量。在我们设计的设备获取的瓶底图像上评估了建议的缺陷检测框架。实验结果表明,与许多常规方法相比,该方法具有最佳性能。

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