多语言在线手写识别系统:一个Android应用程序

T. Indhu, V. Vidya, V. K. Bhadran
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引用次数: 3

摘要

在线手写识别意味着在用户书写字符/笔画时识别用户的笔迹,即识别与书写过程同时进行。本文介绍了一种基于sfm人工神经网络技术的Android多语种在线手写识别系统。该应用程序允许用户选择任何支持的目标语言。手写序列通过笔/触控笔运动的数字化收集为x, y坐标数组,称为笔画。从每个字符/笔画中提取结构和方向信息。提取的特征作为特征向量作为输入传递给sfm人工神经网络(ANN)分类器。sfm分类器然后将输入数据与训练过的数据进行比较,并从数据库中找到与输入模式“共鸣”的最接近的原型。标签/可识别字符被分配相应的Unicode码点,并使用适当的字体显示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilingual Online Handwriting Recognition System: An Android App
On-line handwriting recognition means recognizing the user's handwriting as the user is writing the character/stroke, i.e. the recognition is concurrent to the writing process. This paper describes a Multilingual Online handwriting recognition system in Android using SFAM Artificial Neural Network Technique. The app allows the user to select any of the target languages supported. The handwriting sequences are collected by the digitization of the pen/stylus movements as an array of x, y coordinates which is called a stroke. The structural and directional information are extracted from each character/stroke. The extracted features as a feature vector are passed as input to a SFAM artificial neural network (ANN) classifier. The SFAM classifier then performs a comparison of the input data with the trained data and finds the nearest prototype from the database that 'resonates' with the input pattern. The labels/recognized characters are assigned their corresponding Unicode code points and displayed using appropriate fonts.
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