Weld seam detection based on visual saliency for autonomous welding robots

Na Li, Zhenhua Wang, Hui Xu, Lining Sun, Guodong Chen
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引用次数: 3

Abstract

Nowadays autonomous welding robots are gaining importance. Weld seam detection is a key technology in robotic welding which is usually performed using a visual system. In most existing vision-based approaches, traditional image processings are used to obtain weld seams. Generally, these approaches are sensitive to their surrounding environment, especially illumination. Therefore, we address the problem by introducing the visual attention mechanism of the primate. Firstly, image preprocessing is executed to block visual interferences. Secondly, a visual saliency model based on local contrast is proposed to emphasize weld seam candidates. Finally, some basic image processings are performed to extract the desired weld seam. In order to validate the proposed approach, experiments are carried out in different cases: two types of joints (butt and fillet joint) and three types of shapes (straight line, zigzag and curve). The results demonstrate that this method is effective and robust, and is useful for autonomous welding robots.
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基于视觉显著性的自主焊接机器人焊缝检测
如今,自主焊接机器人越来越受到重视。焊缝检测是机器人焊接中的一项关键技术,通常采用视觉系统进行检测。在现有的基于视觉的方法中,大多采用传统的图像处理来获取焊缝。一般来说,这些方法对周围环境非常敏感,尤其是光照。因此,我们通过引入灵长类动物的视觉注意机制来解决这个问题。首先,对图像进行预处理,阻断视觉干扰。其次,提出了一种基于局部对比的视觉显著性模型来突出候选焊缝;最后,进行一些基本的图像处理以提取所需的焊缝。为了验证所提出的方法,在不同的情况下进行了实验:两种类型的连接(对接和倒角连接)和三种类型的形状(直线,之字形和曲线)。结果表明,该方法具有较好的鲁棒性和有效性,可用于自主焊接机器人。
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