鲁棒角度不变一维条码检测

Alessandro Zamberletti, I. Gallo, S. Albertini
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引用次数: 51

摘要

条形码读取移动应用程序通过使用移动设备拍摄的照片识别产品,被客户广泛用于进行在线价格比较或访问他人撰写的评论。目前大多数可用的条形码读取方法都侧重于解码降级的条形码,并将底层的条形码检测任务视为可以使用适当的对象检测方法来解决的副问题。然而,大多数现代移动设备无法满足复杂的通用目标检测算法的最低工作要求,而大多数高效的专门设计的条形码检测算法需要用户交互才能正常工作。在本文中,我们提出了一种基于监督机器学习算法的相机捕获图像条形码检测新方法,该算法可以识别二维霍夫变换空间中的一维条形码。我们的模型是角度不变的,不需要用户交互,可以在现代移动设备上执行。它在两个标准的一维条形码数据集(WWU Muenster条形码数据库和art - lab 1D Medium条形码数据集)上取得了优异的结果。此外,我们证明,通过将最先进的条形码读取算法与我们的检测方法相结合,可以提高其整体性能。
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Robust Angle Invariant 1D Barcode Detection
Barcode reading mobile applications that identify products from pictures taken using mobile devices are widely used by customers to perform online price comparisons or to access reviews written by others. Most of the currently available barcode reading approaches focus on decoding degraded barcodes and treat the underlying barcode detection task as a side problem that can be addressed using appropriate object detection methods. However, the majority of modern mobile devices do not meet the minimum working requirements of complex general purpose object detection algorithms and most of the efficient specifically designed barcode detection algorithms require user interaction to work properly. In this paper, we present a novel method for barcode detection in camera captured images based on a supervised machine learning algorithm that identifies one-dimensional barcodes in the two-dimensional Hough Transform space. Our model is angle invariant, requires no user interaction and can be executed on a modern mobile device. It achieves excellent results for two standard one-dimensional barcode datasets: WWU Muenster Barcode Database and ArTe-Lab 1D Medium Barcode Dataset. Moreover, we prove that it is possible to enhance the overall performance of a state-of-the-art barcode reading algorithm by combining it with our detection method.
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