>
Fa   |   Ar   |   En
   Handwritten Character Recognition Using Modified Gradient Descent Technique of Neural Networks and Representation of Conjugate Descent For Training Patterns  
   
نویسنده Pratap Singh Manu ,Dhaka V.S
منبع International Journal Of Engineering - 2009 - دوره : 22 - شماره : 2 - صفحه:145 -158
چکیده    The purpose of this study is to analyze the performance of back propagation algorithm with changing training patterns and the second momentum term in feed forward neural networks. this analysis is conducted on 250 different words of three small letters from the english alphabet. these words are presented to two vertical segmentation programs which are designed in matlab and based on portions (1/2 and 2/3) of average height of words, for segmentation into characters. these characters are clubbed together after binarization to form training patterns for neural network. network was trained by adjusting the connection strengths on each iteration by introducing the second momentum term. this term alters the process of connection strength fast and efficiently. the conjugate gradient descent of each presented training pattern was found to identify the error minima for each training pattern. the network was trained to learn its behavior by presenting each one of the 5 samples (final input samples having 26 × 5 = 130 letters) 100 times to it, thus achieved 500 trials indicate the significant difference between the two momentum variables in the data sets presented to the neural network. the results indicate that the segmentation based on 2/3 portion of height yields better segmentation and the performance of the neural network was more convergent and accurate for the learning with newly introduced momentum term.
کلیدواژه Character Recognition ,Feed Forward Neural Network ,Segmentation ,Back Propagation ,Conjugate Gradient Descent
آدرس Ambedkar University, Department Of Computer Science, India, Surajmal Institute Of Technology, Department Of Computer Engineering, India
پست الکترونیکی vijay_dhaka89@yahoo.com
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved