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Methodology for the design of NN-based month-word recognizers written on Brazilian bank checks

机译:用巴西银行支票书写的基于NN的月字识别器的设计方法

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摘要

The study of handwritten words is tied to the development of recognition methods to be used in real-world applications involving handwritten words, such as bank checks, postal envelopes, and handwritten texts, among others. In this work, the focus is handwritten words in the context of Brazilian bank checks, specifically the months of the year, and no restrictions are placed on the types or styles of writing or the number of writers. A global feature set and two architectures of artificial neural networks (ANN) are evaluated for classification of the words. The objectives are to evaluate the performance of conventional and class-modular multiple-layer perceptron (MLP) architectures, to develop a rejection mechanism based on multiple thresholds, and to analyze the behavior of the feature set proposed in the two architectures. The experimental results demonstrate the superiority of the class-modular architecture over the conventional MLP architecture. A rejection mechanism with multiple thresholds demonstrates favorable performance in both architectures. The feature set analysis shows the importance of the structural primitives such as concavities and convexities, and perceptual primitives such as ascenders and descenders. The experimental results reveal a recognition rate of 81.75% without the rejection mechanism, and a reliability rate 91.52% with a rejection rate of 25.33%.
机译:手写单词的研究与识别方法的开发有关,该方法将用于涉及手写单词(例如银行支票,邮政信封和手写文本等)的实际应用中。在这项工作中,重点是巴西银行支票中的手写文字,特别是一年中的月份,并且对书写的类型或样式或作家人数没有任何限制。评估了全局特征集和两种人工神经网络(ANN)体系结构以对单词进行分类。目的是评估常规和类模块化多层感知器(MLP)架构的性能,开发基于多个阈值的拒绝机制,并分析这两种架构中提出的功能集的行为。实验结果证明了类模块化架构优于常规MLP架构的优势。具有多个阈值的拒绝机制在两种架构中均表现出良好的性能。特征集分析显示了诸如凹面和凸面之类的结构图元以及诸如上升和下降之类的感知图元的重要性。实验结果表明,在没有剔除机制的情况下,识别率为81.75%;在剔除率为25.33%的情况下,可信度为91.52%。

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