Offline Handwritten Recognition of Malayalam District Name - A Holistic Approach

05/02/2017
by   Jino P J, et al.
0

Various machine learning methods for writer independent recognition of Malayalam handwritten district names are discussed in this paper. Data collected from 56 different writers are used for the experiments. The proposed work can be used for the recognition of district in the address written in Malayalam. Different methods for Dimensionality reduction are discussed. Features consider for the recognition are Histogram of Oriented Gradient descriptor, Number of Black Pixels in the upper half and lower half, length of image. Classifiers used in this work are Neural Network, SVM and RandomForest.

READ FULL TEXT
research
02/01/2017

Handwritten Recognition Using SVM, KNN and Neural Network

Handwritten recognition (HWR) is the ability of a computer to receive an...
research
06/29/2018

Recognition of Offline Handwritten Devanagari Numerals using Regional Weighted Run Length Features

Recognition of handwritten Roman characters and numerals has been extens...
research
01/25/2022

A Classical Approach to Handcrafted Feature Extraction Techniques for Bangla Handwritten Digit Recognition

Bangla Handwritten Digit recognition is a significant step forward in th...
research
06/30/2010

Application of Statistical Features in Handwritten Devnagari Character Recognition

In this paper a scheme for offline Handwritten Devnagari Character Recog...
research
11/15/2019

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

Researches have been done on Ethiopic scripts. However studies excluded ...
research
08/06/2020

Handwritten Character Recognition from Wearable Passive RFID

In this paper we study the recognition of handwritten characters from da...
research
01/18/2013

Multiple models of Bayesian networks applied to offline recognition of Arabic handwritten city names

In this paper we address the problem of offline Arabic handwriting word ...

Please sign up or login with your details

Forgot password? Click here to reset