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Journal ArticleDOI

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

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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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Handwritten Numeral Identification System Using Pixel Level Distribution Features

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Multiclass Recognition of Offline Handwritten Devanagari Characters using CNN

Mamta Bisht, +1 more
TL;DR: A study on various methods available in literature for Devanagari handwritten character recognition and its implementation using Convolutional neural network is presented, which concludes superiority of CNN model in character recognition task.
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Detection on Straight Line Problem in Triangle Geometry Features for Digit Recognition

TL;DR: An algorithm has been proposed in order to solve the straight line problem and four datasets were used: HODA, IFCHDB, MNIST and BANGLA to demonstrate the effectiveness of the proposed method.
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OnkoGan: Bangla Handwritten Digit Generation with Deep Convolutional Generative Adversarial Networks

TL;DR: The proposed DCGAN (Deep convolutional generative adversarial networks) successfully generate Bangla digits which makes it a robust model to generated Bangla handwritten digits from random noise.
Journal ArticleDOI

BDNet: Bengali Handwritten Numeral Digit Recognition based on Densely connected Convolutional Neural Networks

TL;DR: Sufian et al. as mentioned in this paper proposed a task-oriented model called Bengali handwritten numeral digit recognition based on densely connected convolutional neural networks (BDNet), which is used to classify (recognize) Bengali numeric digits.
References
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