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首页> 外文期刊>Archives of Computational Methods in Engineering >Writer Identification System for Indic and Non-Indic Scripts: State-of-the-Art Survey
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Writer Identification System for Indic and Non-Indic Scripts: State-of-the-Art Survey

机译:用于印度文字和非印度文字的作家识别系统:最新调查

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Writer identification is a challenging move in the field of pattern recognition and reflects advanced perceptions into the handwriting research. It is the process of determining the author or writer of the text by matching it with the training database. It is an exigent task because the writing style of an individual is distinct from other because of unique intrinsic characteristics and is different even if the same writer writes that text with the same pen next time. It is concerned with the writing styles, feelings, perception, behavior and the brain of an individual and it is one of the neoteric applications of biometric identification. Biometric identification is the branch of computer science that deals with identification of an individual from a group using unique identifiers such as fingerprints, retina, handwriting and signatures. It is a term used for the body measurements and calculations. This paper presents a comprehensive and transparent panorama on the work done for the writer identification system on different Indic and non-Indic scripts and a widespread view towards this peculiar research area. The structure of the paper comprises introduction, motivation for the work, background, sources of information, schemes, process, reported works, synthesis analysis, study of features and classifiers for writer identification, and finally the conclusion and future directions. The main focus of this paper is to present in a systematic way, the reported works on writer identification systems on Indic scripts such as Bengali, Gujarati, Gurumukhi, Kannada, Malayalam, Oriya, Tamil and Telugu and Non-Indic scripts such as Arabic, Chinese, French, Persian, Roman and finally exposes the synthesis analysis based on the findings. This study gives the cognizance and beneficial assistance to the novice researchers in this field by providing in a nut shell the studies of various feature extraction methods and classification techniques required for writer identification on both Indic and non-Indic scripts. It is observed that work done on the writer identification systems with good accuracy rates in Indic scripts is limited as compared to non-Indic scripts and truly presents a future direction.
机译:作者识别是模式识别领域的一项具有挑战性的举措,并将先进的观念反映到手写研究中。这是通过将文本与培训数据库进行匹配来确定文本的作者或作者的过程。这是一项紧迫的任务,因为一个人的写作风格由于独特的内在特征而与其他人截然不同,即使同一位作家下一次用同一支笔书写该文本,其风格也有所不同。它与个人的写作风格,感觉,知觉,行为和大脑有关,它是生物特征识别的近代应用之一。生物特征识别是计算机科学的一个分支,它使用唯一的标识符(例如指纹,视网膜,手写和签名)来处理一组人的身份识别。它是用于身体测量和计算的术语。本文为作者识别系统在不同的印度和非印度文字上所做的工作提供了全面而透明的全景图,并对这一独特的研究领域有广泛的看法。论文的结构包括引言,工作动机,背景,信息来源,计划,过程,报告的作品,综合分析,研究以识别作者的特征和分类器,最后是结论和未来的方向。本文的主要重点是以系统的方式介绍已报道的有关印度文字的作家识别系统的作品,这些文字包括孟加拉语,古吉拉特语,古鲁穆克语,卡纳达语,马拉雅拉姆语,奥里亚语,泰米尔语和泰卢固语,以及非印度文字如阿拉伯语,中文,法文,波斯文,罗马文,最后根据发现揭露了综合分析。简而言之,本研究通过对印度和非印度文字的作者识别所需要的各种特征提取方法和分类技术的研究,为该领域的新手研究人员提供了认知和有益的帮助。可以观察到,与非印度文字相比,在印度文字中具有良好准确率的作者识别系统所做的工作是有限的,并且确实提出了未来的方向。

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