Handwritten and Machine printed OCR for Geez Numbers Using Artificial Neural Network

11/15/2019
by   Eyob Gebretinsae Beyene, et al.
0

Researches have been done on Ethiopic scripts. However studies excluded the Geez numbers from the studies because of different reasons. This paper presents offline handwritten and machine printed Geez number recognition using feed forward back propagation artificial neural network. On this study, different Geez image characters were collected from google image search and three persons are instructed to write the numbers using pencil. In total we have collected 560 numbers of characters. We have used 460 of the characters for training and 100 are used for testing. Accordingly we have achieved overall all classification  89:88

READ FULL TEXT
research
03/02/2011

Diagonal Based Feature Extraction for Handwritten Alphabets Recognition System using Neural Network

An off-line handwritten alphabetical character recognition system using ...
research
05/17/2012

Machine Recognition of Hand Written Characters using Neural Networks

Even today in Twenty First Century Handwritten communication has its own...
research
08/30/2009

Handwritten Farsi Character Recognition using Artificial Neural Network

Neural Networks are being used for character recognition from last many ...
research
06/30/2010

A Two Stage Classification Approach for Handwritten Devanagari Characters

The paper presents a two stage classification approach for handwritten d...
research
03/14/2020

Image-to-image Neural Network for Addition and Subtraction of a Pair of Not Very Large Numbers

Looking back at the history of calculators, one can see that they become...
research
01/25/2022

Writer Recognition Using Off-line Handwritten Single Block Characters

Block characters are often used when filling paper forms for a variety o...
research
05/02/2017

Offline Handwritten Recognition of Malayalam District Name - A Holistic Approach

Various machine learning methods for writer independent recognition of M...

Please sign up or login with your details

Forgot password? Click here to reset