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Journal ArticleDOI

Handwritten Numeral Databases of Indian Scripts and Multistage Recognition of Mixed Numerals

TLDR
P pioneering development of two databases for handwritten numerals of two most popular Indian scripts, a multistage cascaded recognition scheme using wavelet based multiresolution representations and multilayer perceptron classifiers and application for the recognition of mixed handwritten numeral recognition of three Indian scripts Devanagari, Bangla and English.
Abstract
This article primarily concerns the problem of isolated handwritten numeral recognition of major Indian scripts. The principal contributions presented here are (a) pioneering development of two databases for handwritten numerals of two most popular Indian scripts, (b) a multistage cascaded recognition scheme using wavelet based multiresolution representations and multilayer perceptron classifiers and (c) application of (b) for the recognition of mixed handwritten numerals of three Indian scripts Devanagari, Bangla and English. The present databases include respectively 22,556 and 23,392 handwritten isolated numeral samples of Devanagari and Bangla collected from real-life situations and these can be made available free of cost to researchers of other academic Institutions. In the proposed scheme, a numeral is subjected to three multilayer perceptron classifiers corresponding to three coarse-to-fine resolution levels in a cascaded manner. If rejection occurred even at the highest resolution, another multilayer perceptron is used as the final attempt to recognize the input numeral by combining the outputs of three classifiers of the previous stages. This scheme has been extended to the situation when the script of a document is not known a priori or the numerals written on a document belong to different scripts. Handwritten numerals in mixed scripts are frequently found in Indian postal mails and table-form documents.

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Citations
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Book ChapterDOI

An Implementation of Neural Network Approach for Recognition of Handwritten Odia Text

TL;DR: This research work has used a multilayer feed-forward network with backpropagation for the recognition of handwritten character recognition and has applied some basic algorithms for de-noising, segmentation, normalizing of characters, etc.
Book ChapterDOI

Character Segmentation and Recognition of Indian Devanagari Script

TL;DR: The paper presents Devanagari Character Segmentation and Recognition using neural networks and the hybrid features extraction technique which is the combination of geometric and statistical features is implemented.
Book ChapterDOI

MatriVasha: A Multipurpose Comprehensive Database for Bangla Handwritten Compound Characters

TL;DR: MatrriVasha has proposed a dataset that intends to recognize Bangla 120(one hundred twenty) compound characters that consist of 2552(two thousand five hundred fifty-two) isolated handwritten characters written unique writers which were collected from within Bangladesh.
Journal ArticleDOI

Chain code feature based recognition of handwritten Gujarati numerals

TL;DR: One of the significant contributions of this paper is towards the generation of large and representative database for handwritten Gujarati numerals and feed forward neural network classifier by the proposed methods.
Journal ArticleDOI

A Robust Zonal Fractal Dimension Method for the Recognition of Handwritten Telugu Digits

TL;DR: This paper evaluated the efficiency of the proposed method based on 5000 Telugu handwritten digit samples, each consists of ten digits from different groups of people and totally 50,000 samples using statistical parameters like recall, precision, Fmeasure and accuracy.
References
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Gradient-based learning applied to document recognition

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