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Journal ArticleDOI

Handwriting Recognition in Indian Regional Scripts: A Survey of Offline Techniques

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TLDR
Various feature extraction and classification techniques associated with the offline handwriting recognition of the regional scripts are discussed in this survey, which will serve as a compendium not only for researchers in India, but also for policymakers and practitioners in India.
Abstract
Offline handwriting recognition in Indian regional scripts is an interesting area of research as almost 460 million people in India use regional scripts. The nine major Indian regional scripts are Bangla (for Bengali and Assamese languages), Gujarati, Kannada, Malayalam, Oriya, Gurumukhi (for Punjabi language), Tamil, Telugu, and Nastaliq (for Urdu language). A state-of-the-art survey about the techniques available in the area of offline handwriting recognition (OHR) in Indian regional scripts will be of a great aid to the researchers in the subcontinent and hence a sincere attempt is made in this article to discuss the advancements reported in this regard during the last few decades. The survey is organized into different sections. A brief introduction is given initially about automatic recognition of handwriting and official regional scripts in India. The nine regional scripts are then categorized into four subgroups based on their similarity and evolution information. The first group contains Bangla, Oriya, Gujarati and Gurumukhi scripts. The second group contains Kannada and Telugu scripts and the third group contains Tamil and Malayalam scripts. The fourth group contains only Nastaliq script (Perso-Arabic script for Urdu), which is not an Indo-Aryan script. Various feature extraction and classification techniques associated with the offline handwriting recognition of the regional scripts are discussed in this survey. As it is important to identify the script before the recognition step, a section is dedicated to handwritten script identification techniques. A benchmarking database is very important for any pattern recognition related research. The details of the datasets available in different Indian regional scripts are also mentioned in the article. A separate section is dedicated to the observations made, future scope, and existing difficulties related to handwriting recognition in Indian regional scripts. We hope that this survey will serve as a compendium not only for researchers in India, but also for policymakers and practitioners in India. It will also help to accomplish a target of bringing the researchers working on different Indian scripts together. Looking at the recent developments in OHR of Indian regional scripts, this article will provide a better platform for future research activities.

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Citations
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Handwritten Optical Character Recognition (OCR): A Comprehensive Systematic Literature Review (SLR)

TL;DR: This review article serves the purpose of presenting state of the art results and techniques on OCR and also provide research directions by highlighting research gaps.
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The optical character recognition of Urdu-like cursive scripts

TL;DR: The Urdu, Pushto, and Sindhi languages are discussed, with the emphasis being on the Nasta'liq and Naskh scripts, with an emphasis on the preprocessing, segmentation, feature extraction, classification, and recognition in OCR.
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Handwritten isolated Bangla compound character recognition: A new benchmark using a novel deep learning approach

TL;DR: A novel deep learning technique for the recognition of handwritten Bangla isolated compound character is presented and a new benchmark of recognition accuracy on the CMATERdb 3.3.1.3 dataset is reported.
Posted Content

Handwritten Optical Character Recognition (OCR): A Comprehensive Systematic Literature Review (SLR)

TL;DR: In this paper, a systematic literature review (SLR) is presented to summarize research that has been conducted on character recognition of handwritten documents and to provide research directions, which serve the purpose of presenting state of the art results and techniques on OCR.
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On Recognition of handwritten bangla characters

TL;DR: Multilayer perceptrons (MLP) trained by backpropagation (BP) algorithm are used as classifiers in the present study and results of this study on recognition of handwritten Bangla basic characters will be reported.
References
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Proceedings ArticleDOI

A Two Stage Recognition Scheme for Handwritten Tamil Characters

TL;DR: An off-line recognition approach based on a database of handwritten Tamil characters provided acceptable classification accuracies on both the training and test sets of the present database.
Proceedings ArticleDOI

Robust Unconstrained Handwritten Digit Recognition using Radon Transform

TL;DR: A novel system based on radon transform for handwritten digit recognition is proposed which represents an image as a collection of projections along various directions and a nearest neighbor classifier is used for the subsequent recognition purpose.
Journal ArticleDOI

Recognition of telugu characters using neural networks

TL;DR: It is shown here that satisfactory recognition is possible using the proposed scheme named here as the Multiple Neural Network Associative Memory (MNNAM), and the limitation in storage capacity has been overcome by combining multiple neural networks which work in parallel.
Journal Article

Handwritten Script Recognition using DCT and Wavelet Features at Block Level

TL;DR: A novel method towards multi-script identification at block level is proposed based upon features extracted using Discrete Cosine Transform (DCT) and Wavelets of Daubechies family and yielded encouraging results.
Book ChapterDOI

Recognition of isolated handwritten Kannada numerals based on image fusion method

TL;DR: This paper describes a system for isolated Kannada handwritten numerals recognition using image fusion method, where several digital images corresponding to each handwritten numeral are fused to generate patterns, which are stored in 8×8 matrices, irrespective of the size of images.
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