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Recognition of handwritten ZIP codes in a real-world non-standard-letter sorting system

机译:现实世界中非标准字母分类系统中的手写邮政编码识别

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In this article, we describe the OCR and image processing algorithms used to read destination addresses from non-standard letters (flats) by Siemens postal automation system currently in use by the Deutsche Post AG(1). We first describe the sorting machine, its OCR hardware and the sequence of image processing and pattern recognition algorithms needed to solve the difficult task of reading mail addresses, especially handwritten ones. The article concentrates mainly on the two classifiers used to recognize handprinted digits. One of them is a complex time delayed neural network (TDNN) used to classify scaled digit-features. The other classifier extracts the structure of each digit and matches it to a number of prototypes. Different digits represented by the same graph are then discriminated by classifiying some of the features of the digit-graph with small neural networks. We also describe some approaches for the segmentation of the digits in the ZIP code, so that the resulting parts can be processed and evaluated by the classifiers. [References: 30]
机译:在本文中,我们描述了由Deutsche Post AG(1)当前使用的Siemens邮政自动化系统从非标准字母(单位)读取目标地址的OCR和图像处理算法。我们首先描述分拣机,其OCR硬件以及解决读取邮件地址(尤其是手写地址)这一艰巨任务所需的图像处理和模式识别算法的顺序。本文主要关注用于识别手写数字的两个分类器。其中之一是复杂的时延神经网络(TDNN),用于对缩放的数字特征进行分类。另一个分类器提取每个数字的结构,并将其与许多原型匹配。然后,通过使用小型神经网络对数字图的某些特征进行分类,从而区分由同一图表示的不同数字。我们还描述了一些邮政编码区域中的数字分割方法,以便分类器可以处理和评估生成的零件。 [参考:30]

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