Handwriting Recognition with Artificial Neural Networks a Decade Literature Review

Ahmed Remaida, A. Moumen, Y. Idrissi, Zineb Sabri
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引用次数: 8

Abstract

Deep Learning Artificial Neural Networks has pushed forward researches in the field of pattern recognition, furthermore in human handwriting recognition. From online to offline approach, signature verification, writing or writer identification, segmentation or features extraction, a multitude of Artificial Neural Networks (ANNs) models are applied in the process. This paper focuses on the literature review of human handwriting recognition with ANN's over the last decade. We propose an exploratory analysis of 294 research papers collected from five indexed research engines: ACM Digital Library, IEEE digital library, Science Direct, Scopus and Web of Science. Our aim is to provide a research papers distribution across years and journals, a Keywords frequency analysis using cloud visualization, and a Natural Language Processing Topic Modeling using Non-Negative Matrix Factorization (NMF). The results of this study show that the number of research papers reached noticeably a peak in the 2010 with 44 published papers; also Pattern Recognition was the top publishing journal with 12 published papers. As for the topic modeling using NMF we obtained 3 topics listed as follows: 1) Feature Extraction and segmentation techniques for Handwritten Texts Recognition; 2) Signature Verification in Biometric security for Off-line Authentication; 3) Assessment Systems for Student Identification
人工神经网络手写识别的十年文献综述
深度学习人工神经网络推动了模式识别领域的研究,进而推动了人类手写识别领域的研究。从在线到离线方法,签名验证,写作或作者识别,分割或特征提取,在此过程中应用了大量的人工神经网络(ann)模型。本文主要综述了近十年来人工神经网络在人类手写识别方面的研究进展。本文对来自ACM数字图书馆、IEEE数字图书馆、Science Direct、Scopus和Web of Science 5个索引研究引擎的294篇研究论文进行了探索性分析。我们的目标是提供一个跨年份和期刊的研究论文分布,一个使用云可视化的关键词频率分析,以及一个使用非负矩阵分解(NMF)的自然语言处理主题建模。研究结果表明,2010年我国科研论文数量达到了一个显著的高峰,共发表论文44篇;此外,《模式识别》杂志发表了12篇论文,排名第一。在基于NMF的主题建模方面,我们获得了以下3个主题:1)面向手写体文本识别的特征提取与分割技术;2)离线认证生物识别安全中的签名验证3)学生身份识别评估系统
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