MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORS

This paper provides an early attempt to train and retrieve handwritten Nandinagari characters using one of the latest techniques in visual feature detection. The data set consists of over 1600 handwritten Nandinagari characters of different fonts, size, rotation, translation and image formats. In th...

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Main Authors: Prathima Guruprasad, Jharna Majumdar
Format: Article
Language:English
Published: ICT Academy of Tamil Nadu 2017-11-01
Series:ICTACT Journal on Image and Video Processing
Subjects:
Online Access:http://ictactjournals.in/ArticleDetails.aspx?id=3235
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spelling doaj-7bdad2e4f41b4f348ba4524f2c4201312020-11-24T20:47:09ZengICT Academy of Tamil NaduICTACT Journal on Image and Video Processing0976-90990976-91022017-11-01821633163810.21917/ijivp.2017.0229MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORSPrathima Guruprasad0Jharna Majumdar1Nitte Meenakshi Institute of Technology, IndiaNitte Meenakshi Institute of Technology, IndiaThis paper provides an early attempt to train and retrieve handwritten Nandinagari characters using one of the latest techniques in visual feature detection. The data set consists of over 1600 handwritten Nandinagari characters of different fonts, size, rotation, translation and image formats. In the Learning phase, we subject them to an approach where their recognition is effective by first extracting their key interest points on the images which are invariant to Scale, rotation, translation, illumination and occlusion. The technique used for this phase is Scale Invariant Feature Transform (SIFT). These features are represented in quantized form as visual words in code book generation step. Then the Vector of Locally Aggregated Descriptors (VLAD) is used for encoding each of the Image descriptors in the database. In the recognition phase, for query image, SIFT features are extracted and represented as query vector .Then these features are compared against the visual vocabulary generated by code book to retrieve similar images from the database. The performance is analysed by computing mean average precision .This is a novel scalable approach for recognition of rare handwritten Nandinagari characters with about 98% search accuracy with a good efficiency and relatively low memory usage requirements.http://ictactjournals.in/ArticleDetails.aspx?id=3235Handwritten Nandinagari CharactersInvariant FeaturesScale Invariant Feature TransformImage VectorizationIndexing and Retrieval
collection DOAJ
language English
format Article
sources DOAJ
author Prathima Guruprasad
Jharna Majumdar
spellingShingle Prathima Guruprasad
Jharna Majumdar
MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORS
ICTACT Journal on Image and Video Processing
Handwritten Nandinagari Characters
Invariant Features
Scale Invariant Feature Transform
Image Vectorization
Indexing and Retrieval
author_facet Prathima Guruprasad
Jharna Majumdar
author_sort Prathima Guruprasad
title MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORS
title_short MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORS
title_full MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORS
title_fullStr MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORS
title_full_unstemmed MACHINE LEARNING OF HANDWRITTEN NANDINAGARI CHARACTERS USING VLAD VECTORS
title_sort machine learning of handwritten nandinagari characters using vlad vectors
publisher ICT Academy of Tamil Nadu
series ICTACT Journal on Image and Video Processing
issn 0976-9099
0976-9102
publishDate 2017-11-01
description This paper provides an early attempt to train and retrieve handwritten Nandinagari characters using one of the latest techniques in visual feature detection. The data set consists of over 1600 handwritten Nandinagari characters of different fonts, size, rotation, translation and image formats. In the Learning phase, we subject them to an approach where their recognition is effective by first extracting their key interest points on the images which are invariant to Scale, rotation, translation, illumination and occlusion. The technique used for this phase is Scale Invariant Feature Transform (SIFT). These features are represented in quantized form as visual words in code book generation step. Then the Vector of Locally Aggregated Descriptors (VLAD) is used for encoding each of the Image descriptors in the database. In the recognition phase, for query image, SIFT features are extracted and represented as query vector .Then these features are compared against the visual vocabulary generated by code book to retrieve similar images from the database. The performance is analysed by computing mean average precision .This is a novel scalable approach for recognition of rare handwritten Nandinagari characters with about 98% search accuracy with a good efficiency and relatively low memory usage requirements.
topic Handwritten Nandinagari Characters
Invariant Features
Scale Invariant Feature Transform
Image Vectorization
Indexing and Retrieval
url http://ictactjournals.in/ArticleDetails.aspx?id=3235
work_keys_str_mv AT prathimaguruprasad machinelearningofhandwrittennandinagaricharactersusingvladvectors
AT jharnamajumdar machinelearningofhandwrittennandinagaricharactersusingvladvectors
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