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Invisible Data Matrix Detection with Smart Phone Using Geometric Correction and Hough Transform

机译:智能手机基于几何校正和霍夫变换的隐形数据矩阵检测

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Two-dimensional data matrices are used in many different areas that provide quick and automatic data entry to the computer system. Their most common usage is to automatically read labeled products (books, medicines, food, etc.) and recognize them. In Turkey, alcohol beverages and tobacco products are labeled and tracked with the invisible data matrices for public safety and tax purposes. In this application, since data matrixes are printed on a special paper with a pigmented ink, it cannot be seen under daylight. When red LEDs are utilized for illumination and reflected light is filtered, invisible data matrices become visible and decoded by special barcode readers. Owing to their physical dimensions, price and requirement of special training to use; cheap, small sized and easily carried domestic mobile invisible data matrix reader systems are required to be delivered to every inspector in the law enforcement units. In this paper, we first developed an apparatus attached to the smartphone including a red LED light and a high pass filter. Then, we promoted an algorithm to process captured images by smartphones and to decode all information stored in the invisible data matrix images. The proposed algorithm mainly involves four stages. In the first step, data matrix code is processed by Hough transform processing to find "L" shaped pattern. In the second step, borders of the data matrix are found by using the convex hull and corner detection methods. Afterwards, distortion of invisible data matrix corrected by geometric correction technique and the size of every module is fixed in rectangular shape. Finally, the invisible data matrix is scanned line by line in the horizontal axis to decode it. Based on the results obtained from the real test images of invisible data matrix captured with a smartphone, the proposed algorithm indicates high accuracy and low error rate.
机译:二维数据矩阵用于许多不同的领域,可向计算机系统提供快速和自动的数据输入。它们最常见的用法是自动阅读带有标签的产品(书籍,药品,食品等)并识别它们。在土耳其,出于公共安全和税收目的,使用不可见的数据矩阵对酒精饮料和烟草产品进行标记和跟踪。在此应用程序中,由于数据矩阵是用颜料墨水打印在特殊纸张上的,因此在日光下看不到它。当红色LED用于照明并过滤反射光时,看不见的数据矩阵将变为可见,并通过特殊的条形码读取器进行解码。由于其物理尺寸,价格和使用特殊培训的要求;廉价,小型且易于携带的家用移动隐形数据矩阵阅读器系统需要交付给执法部门的每个检查人员。在本文中,我们首先开发了一种连接到智能手机的设备,其中包括一个红色LED灯和一个高通滤波器。然后,我们提出了一种算法,可以处理智能手机捕获的图像并解码不可见数据矩阵图像中存储的所有信息。所提出的算法主要包括四个阶段。在第一步中,通过霍夫变换处理对数据矩阵代码进行处理,以找到“ L”形图案。在第二步中,使用凸包和角检测方法找到数据矩阵的边界。之后,将通过几何校正技术校正的不可见数据矩阵的失真和每个模块的大小固定为矩形。最后,在水平轴上逐行扫描不可见数据矩阵以对其进行解码。基于从智能手机捕获的不可见数据矩阵的真实测试图像中获得的结果,提出的算法具有较高的准确性和较低的错误率。

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