Training neural networks for reading handwritten amounts on checks

Rafael Palacios, Amar Gupta
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引用次数: 13

Abstract

While reading handwritten text accurately is a difficult task for computers, the conversion of handwritten papers into digital format is necessary for automatic processing. Since most bank checks are handwritten, the number of checks is very high, and manual processing involves significant expenses, many banks are interested in systems that can read check automatically. This work presents several approaches to improve the accuracy of neural networks used to read unconstrained numerals in the courtesy amount field of bank checks.
训练神经网络来读取支票上手写的金额
对于计算机来说,准确地阅读手写文本是一项艰巨的任务,而将手写文件转换为数字格式则是自动处理的必要条件。由于大多数银行支票都是手写的,支票的数量非常多,而且手工处理涉及大量费用,因此许多银行对能够自动读取支票的系统很感兴趣。这项工作提出了几种方法来提高用于读取银行支票金额字段中无约束数字的神经网络的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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