DocumentCode :
3723183
Title :
Dyadic Multi-resolution Analysis-Based Deep Learning for Arabic Handwritten Character Classification
Author :
Asma ElAdel;Ridha Ejbali;Mourad Zaied;Chokri Ben Amar
Author_Institution :
Res. Group in Intell. Machines, Sfax, Tunisia
fYear :
2015
Firstpage :
807
Lastpage :
812
Abstract :
The problem addressed in this paper is the classification and recognition of Arabic handwritten characters. As a solution, we present a Neural Network (NN) architecture based on Fast Wavelet Transform (FWT) and Adaboost algorithm. FWT is used to extract character´s features, based on Multi-Resolution Analysis (MRA) at different levels of abstraction. These features are used to calculate inputs of hidden layer. After this first step, the features are filtered, using Adaboost algorithm, to select the best corresponding ones to each shape of input characters. The reported results are tested on Arabic handwritten characters dataset with 6000 characters. The classification rate for the different groups of characters are 93.92%. Additionally, the speed of the classification algorithm is tested and reported.
Keywords :
"Shape","Feature extraction","Hidden Markov models","Character recognition","Multiresolution analysis","Machine learning","Biological neural networks"
Publisher :
ieee
Conference_Titel :
Tools with Artificial Intelligence (ICTAI), 2015 IEEE 27th International Conference on
ISSN :
1082-3409
Type :
conf
DOI :
10.1109/ICTAI.2015.119
Filename :
7372215
Link To Document :
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