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Unified deep neural networks for end-to-end recognition of multi-oriented billet identification number

机译:统一的深度神经网络,实现多面向方坯识别号的端到端识别

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In this study, a novel framework for the recognition of a billet identification number (BIN) using deep learning is proposed. Because a billet, which is a semi-finished product, could be rolled, the BIN may be rotated at various angles. Most product numbers, including BIN, are a combination of individual characters. Such product numbers are determined based on the class of each character and its order (or the positioning). In addition, the two pieces of information are constant even if the product number is rotated. Inspired by this concept, the proposed framework of deep neural networks has two outputs. One is for the class of an individual character, and the other is the order of an individual character within BIN. Compared with a previous study, the proposed network requires an additional annotation but does not require additional labor for labeling. The multi-task learning for two annotations has a positive role in the representation learning of a network, which is shown in the experiment results. Furthermore, to achieve a good performance of the BIN identification, we analyzed various networks using the proposed framework. The proposed algorithm was then compared with a conventional algorithm to evaluate the performance of the BIN identification.
机译:在本研究中,提出了一种使用深度学习识别钢坯识别号码(BIN)的新颖框架。因为可以滚动为半成品的坯料,所以箱可以以各个角度旋转。大多数产品编号,包括垃圾箱,是各个字符的组合。此类产品编号基于每个字符的类及其顺序(或定位)确定。另外,即使产品编号旋转,两条信息也是恒定的。受到这种概念的启发,建议的深神经网络的框架有两个输出。一个是针对个人角色的类,另一个是垃圾箱内单个字符的顺序。与以前的研究相比,所提出的网络需要额外的注释,但不需要额外的标签劳动力。两个注释的多任务学习在网络的表示学习中具有积极作用,这在实验结果中显示。此外,为了达到垃圾箱识别的良好性能,我们使用所提出的框架分析了各种网络。然后将所提出的算法与传统算法进行比较,以评估箱识别的性能。

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