FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON

In optical character recognition applications, the feature extraction method(s) used to recognize document images play an important role. The features are the properties of the pattern that can be statistical, structural and/or transforms or series expansion. The structural features are difficult to...

Full description

Bibliographic Details
Main Author: Satish Kumar
Format: Article
Language:English
Published: ICT Academy of Tamil Nadu 2016-02-01
Series:ICTACT Journal on Image and Video Processing
Subjects:
SND
LPD
RD
PNN
Online Access:http://ictactjournals.in/paper/IJIVP_V6_I3_pp_1_1159_1166.pdf
id doaj-c879540bc4e6434283ad72c41f46ebdf
record_format Article
spelling doaj-c879540bc4e6434283ad72c41f46ebdf2020-11-24T21:44:31ZengICT Academy of Tamil NaduICTACT Journal on Image and Video Processing0976-90990976-91022016-02-016311591166FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON Satish Kumar0Panjab University Swami Sarvanand Giri Regional Centre, IndiaIn optical character recognition applications, the feature extraction method(s) used to recognize document images play an important role. The features are the properties of the pattern that can be statistical, structural and/or transforms or series expansion. The structural features are difficult to compute particularly from hand-printed images. The structure of the strokes present inside the hand-printed images can be estimated using statistical means. In this paper three features have been purposed, those are based on the distribution of B/W pixels on the neighborhood of a pixel in an image. We name these features as Spiral Neighbor Density, Layer Pixel Density and Ray Density. The recognition performance of these features has been compared with two more features Neighborhood Pixels Weight and Total Distances in Four Directions already studied in our work. We have used more than 20000 Devanagari handwritten character images for conducting experiments. The experiments are conducted with two classifiers i.e. PNN and k-NN.http://ictactjournals.in/paper/IJIVP_V6_I3_pp_1_1159_1166.pdfStatistical FeaturesHand-Printed RecognitionDevanagari ScriptNPW (Neighborhood Pixels Weights)SNDLPDRDk-NNPNNWeighted Map
collection DOAJ
language English
format Article
sources DOAJ
author Satish Kumar
spellingShingle Satish Kumar
FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON
ICTACT Journal on Image and Video Processing
Statistical Features
Hand-Printed Recognition
Devanagari Script
NPW (Neighborhood Pixels Weights)
SND
LPD
RD
k-NN
PNN
Weighted Map
author_facet Satish Kumar
author_sort Satish Kumar
title FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON
title_short FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON
title_full FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON
title_fullStr FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON
title_full_unstemmed FEATURES BASED ON NEIGHBORHOOD PIXELS DENSITY - A STUDY AND COMPARISON
title_sort features based on neighborhood pixels density - a study and comparison
publisher ICT Academy of Tamil Nadu
series ICTACT Journal on Image and Video Processing
issn 0976-9099
0976-9102
publishDate 2016-02-01
description In optical character recognition applications, the feature extraction method(s) used to recognize document images play an important role. The features are the properties of the pattern that can be statistical, structural and/or transforms or series expansion. The structural features are difficult to compute particularly from hand-printed images. The structure of the strokes present inside the hand-printed images can be estimated using statistical means. In this paper three features have been purposed, those are based on the distribution of B/W pixels on the neighborhood of a pixel in an image. We name these features as Spiral Neighbor Density, Layer Pixel Density and Ray Density. The recognition performance of these features has been compared with two more features Neighborhood Pixels Weight and Total Distances in Four Directions already studied in our work. We have used more than 20000 Devanagari handwritten character images for conducting experiments. The experiments are conducted with two classifiers i.e. PNN and k-NN.
topic Statistical Features
Hand-Printed Recognition
Devanagari Script
NPW (Neighborhood Pixels Weights)
SND
LPD
RD
k-NN
PNN
Weighted Map
url http://ictactjournals.in/paper/IJIVP_V6_I3_pp_1_1159_1166.pdf
work_keys_str_mv AT satishkumar featuresbasedonneighborhoodpixelsdensityastudyandcomparison
_version_ 1725909683968933888