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A new method for detecting data matrix under similarity transform for machine vision applications

机译:一种基于相似度变换的机器视觉应用中数据矩阵检测的新方法

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摘要

Data matrices are widely used in the automotive, aerospace and computer manufacturing industries. In industry, they are used to identify objects used in process control. In this paper, we focus on detecting data matrices where a camera is configured to see it in a perpendicular direction that is typical in machine vision applications. In this case, the image projection can be modeled as a similarity transform. Data matrices are attached or marked by laser on the surface of objects, and have L-shaped solid lines which act as references for decoding. Under a similarity transform, distances from the center of a data matrix to each side of the L-shape are equal. This symmetric property is used to detect a data matrix, and experimental results show the feasibility of the proposed algorithm.
机译:数据矩阵广泛用于汽车,航空航天和计算机制造行业。在工业中,它们用于标识过程控制中使用的对象。在本文中,我们着重于检测数据矩阵,其中将相机配置为在机器视觉应用中通常沿垂直方向查看它。在这种情况下,可以将图像投影建模为相似度转换。数据矩阵通过激光附着或标记在对象表面上,并具有L形实线,可作为解码参考。在相似性变换下,从数据矩阵的中心到L形的每一侧的距离相等。该对称属性用于检测数据矩阵,实验结果表明了该算法的可行性。

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