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Universal Barcode Detector via Semantic Segmentation

机译:通用条形码检测器通过语义分割

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Barcodes are used in many commercial applications, thus fast and robust reading is important. There are many different types of barcodes, some of them look similar while others are completely different. In this paper we introduce new fast and robust deep learning detector based on semantic segmentation approach. It is capable of detecting barcodes of any type simultaneously both in the document scans and in the wild by means of a single model. The detector achieves state-of-the-art results on the ArTe-Lab 1D Medium Barcode Dataset with detection rate 0.995. Moreover, developed detector can deal with more complicated object shapes like very long but narrow or very small barcodes. The proposed approach can also identify types of detected barcodes and performs at real-time speed on CPU environment being much faster than previous state-of-the-art approaches.
机译:条形码用于许多商业应用中,因此快速且鲁棒的阅读很重要。有许多不同类型的条形码,其中一些看起来与其他人完全不同。在本文中,我们基于语义分割方法引入了新的快速和强大的深度学习探测器。它能够通过单个模型在文档扫描和野外同时检测任何类型的条形码。探测器在ARTE-LAB 1D介质条形码数据集上实现最先进的结果,其中检测率为0.995。此外,发达的探测器可以处理更加长但窄或非常小的条形码的更复杂的物体形状。所提出的方法还可以识别检测到的条形码的类型,并在CPU环境的实时速度下执行比以前的最先进方法更快。

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