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Proceedings ArticleDOI

Preprocessing and Binarization of Inscription Images using Phase Based Features

TLDR
This model consists phase congruency and of Gaussian model based background elimination using expectation maximization(EM) algorithm, preprocessing and binarization, which removes the background noise completely where foreground characters are untouched.
Abstract
Epigraphs are important sources for reshaping our culture and history. They have a remarkable importance to mankind. But modern epigraphists find it difficult to interpret the information in scripts. It is mainly because inscriptions are eroded over a period of time due to natural calamities. Scripts of ancient times are largely unknown. Character sets used have changed from one form to another over the centuries. Therefore, for reading ancient scripts the characters have to be extracted. In this paper, a model for enhancement and binarization of historical epigraphs is proposed. This model consists phase congruency and of Gaussian model based background elimination using expectation maximization(EM) algorithm, preprocessing and binarization. In binarization, phase based features are used with specialised filters. Adaptive Gaussian filters are used to smoothen the output images. Weighted mean angle is calculated to differentiate the foreground from the background. EM algorithm removes the background noise completely where foreground characters are untouched. Proposed method is tested on different datasets of inscriptions and epigraphs. Obtained results are compared with the existing classical algorithms.

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Book ChapterDOI

Character Recognition of Tulu Script Using Convolutional Neural Network

TL;DR: This paper proposes a DCNN-based architecture for the classification of Tulu language characters, one of the five Dravidian groups of languages used by around 50 Lakh people in the states of Karnataka and Kerala, which is showing a satisfactory test accuracy.
Proceedings ArticleDOI

Ancient Tamil Character Recognition from Stone Inscriptions – A Theoretical Analysis

TL;DR: This survey attempts to give a detailed analysis of the recent research works on character recognition from the images of stone inscriptions with a special reference to Tamil, and details the methods applied for preprocessing, feature extraction and classification.
Proceedings ArticleDOI

Ancient Tamil Character Recognition from Stone Inscriptions – A Theoretical Analysis

TL;DR: A detailed analysis of the recent research works on character recognition from the images of stone inscriptions with a special reference to Tamil is given in this article , which gives a road map for future researchers who wish to carry out research in this area.
References
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Journal ArticleDOI

Adaptive document image binarization

TL;DR: A new method is presented for adaptive document image binarization, where the page is considered as a collection of subcomponents such as text, background and picture, which adapts and performs well in each case qualitatively and quantitatively.
Journal ArticleDOI

Adaptive degraded document image binarization

TL;DR: The proposed method does not require any parameter tuning by the user and can deal with degradations which occur due to shadows, non-uniform illumination, low contrast, large signal-dependent noise, smear and strain.
Journal ArticleDOI

Background Modeling using Mixture of Gaussians for Foreground Detection - A Survey

TL;DR: The purpose of this paper is to provide a survey and an original classification of improvements of the original MOG, and to discuss relevant issues to reduce the computation time.
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