Manuscript Character Recognition Overview of features for the Feature Vector

The image recognizing process requires the identification of every logical object that compose every image, which first implies to recognize it as an object (segmentation) and then identify which object is, or at least which is the most likely one from the universe of objects that can be recognized...

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Main Authors: Marisa Raquel De Giusti, María Marta Vila, Gonzalo Luján Villareal
Format: Article
Language:English
Published: Postgraduate Office, School of Computer Science, Universidad Nacional de La Plata 2006-10-01
Series:Journal of Computer Science and Technology
Online Access:https://journal.info.unlp.edu.ar/JCST/article/view/821
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spelling doaj-6eb7a456edb34dba90be7df09e6d87322021-05-05T14:03:55ZengPostgraduate Office, School of Computer Science, Universidad Nacional de La PlataJournal of Computer Science and Technology1666-60461666-60382006-10-016029298515Manuscript Character Recognition Overview of features for the Feature VectorMarisa Raquel De Giusti0María Marta Vila1Gonzalo Luján Villareal2Servicio de Difusión de la Creación Intelectual (SeDiCI), Universidad Nacional de La Plata, La Plata, ArgentinaServicio de Difusión de la Creación Intelectual (SeDiCI), Universidad Nacional de La Plata, La Plata, ArgentinaServicio de Difusión de la Creación Intelectual (SeDiCI), Universidad Nacional de La Plata, La Plata, ArgentinaThe image recognizing process requires the identification of every logical object that compose every image, which first implies to recognize it as an object (segmentation) and then identify which object is, or at least which is the most likely one from the universe of objects that can be recognized (recognition). During the segmentation process, the aim is to identify as many objects that compose the images as possible. This process must be adapted to the universe of all objects that are looked for, which can vary from printed or manuscript characters to fruits or animals, or even fingerprints. Once all objects have been obtained, the system must carry on to the next step, which is the identification of the objects based on the called universe. In other words, if the system is looking for fruits, it must identify univocally fruits from apples and oranges; if they are characters, it m ust iden tify th e character “a” from the rest of the alphabet, and so on. In this document, the character recognition step has been studied. More specifically, which methods to obtain characteristics exist (advantages and disadvantages, implementations, costs). There is also an overview about the feature vector, in which all features are stored and analyzed in order to perform the character recognition itself.https://journal.info.unlp.edu.ar/JCST/article/view/821
collection DOAJ
language English
format Article
sources DOAJ
author Marisa Raquel De Giusti
María Marta Vila
Gonzalo Luján Villareal
spellingShingle Marisa Raquel De Giusti
María Marta Vila
Gonzalo Luján Villareal
Manuscript Character Recognition Overview of features for the Feature Vector
Journal of Computer Science and Technology
author_facet Marisa Raquel De Giusti
María Marta Vila
Gonzalo Luján Villareal
author_sort Marisa Raquel De Giusti
title Manuscript Character Recognition Overview of features for the Feature Vector
title_short Manuscript Character Recognition Overview of features for the Feature Vector
title_full Manuscript Character Recognition Overview of features for the Feature Vector
title_fullStr Manuscript Character Recognition Overview of features for the Feature Vector
title_full_unstemmed Manuscript Character Recognition Overview of features for the Feature Vector
title_sort manuscript character recognition overview of features for the feature vector
publisher Postgraduate Office, School of Computer Science, Universidad Nacional de La Plata
series Journal of Computer Science and Technology
issn 1666-6046
1666-6038
publishDate 2006-10-01
description The image recognizing process requires the identification of every logical object that compose every image, which first implies to recognize it as an object (segmentation) and then identify which object is, or at least which is the most likely one from the universe of objects that can be recognized (recognition). During the segmentation process, the aim is to identify as many objects that compose the images as possible. This process must be adapted to the universe of all objects that are looked for, which can vary from printed or manuscript characters to fruits or animals, or even fingerprints. Once all objects have been obtained, the system must carry on to the next step, which is the identification of the objects based on the called universe. In other words, if the system is looking for fruits, it must identify univocally fruits from apples and oranges; if they are characters, it m ust iden tify th e character “a” from the rest of the alphabet, and so on. In this document, the character recognition step has been studied. More specifically, which methods to obtain characteristics exist (advantages and disadvantages, implementations, costs). There is also an overview about the feature vector, in which all features are stored and analyzed in order to perform the character recognition itself.
url https://journal.info.unlp.edu.ar/JCST/article/view/821
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