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AUTOMATIC SELECTION OF BINARIZATION METHOD FROM IMAGES WITH SERIAL NUMBERS ON INDUSTRIAL PRODUCTS

机译:从工业产品序列号图像自动选择二值化方法

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The article deals with the automatic selection of the binarization method using advanced methods of artificial intelligence. The input images to the algorithms are images of serial numbers from industrial environments, for example on iron and steel billets, slabs, etc. The surface of these products is in most cases severely damaged by industrial processes, such as traces of cut, rust, noise, surface roughness, etc. Text recognition is a very common topic nowadays. All investigated solutions are based on the fact that each image is binarized by a single defined method and the accuracy of recognition is given only by the quality of learning of the neural network. Especially in an industrial environment, it is difficult to create a universal method for unambiguous methods for text recognition. The innovation described in this article is the automatic selection of the binarization method (from the Bradley, Niblack, Sauvola methods etc.), which increases the accuracy already in the phase before the text recognition itself, which with the subsequent correct combination of filters leads to an overall increase in accuracy.
机译:本文涉及使用人工智能先进方法自动选择二值化方法。算法的输入图像是工业环境的序列号的图像,例如在钢铁坯料,板坯等上。这些产品的表面在大多数情况下由工业过程严重受损,例如切割的痕迹,生锈,噪声,表面粗糙等。文本识别是现在一个非常常见的主题。所有研究的解决方案都基于每个图像通过单个定义的方法二值化,并且仅通过神经网络的学习质量给出识别的准确性。特别是在工业环境中,难以为文本识别的明确方法创建一个通用方法。本文中描述的创新是自动选择二值化方法(来自Bradley,Niblack,Sauvola方法等),这增加了文本识别之前已经在阶段的准确性,随后的滤波器的正确组合导致整体提高准确性。

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