Arabic Handwritten Script Recognition System Based on HOG and Gabor Features

Arabic Handwritten Script Recognition System

Based on HOG and Gabor Features

 Mohamed Elleuch1, Ansar Hani 2, and Monji Kherallah3

1National School of Computer Science, University of Manouba, Tunisia

2Faculty of Economics and Management of Sfax, University of Sfax, Tunisia

3Faculty of Sciences, University of Sfax, Tunisia

Abstract: Considered as among the most thriving applications in the pattern recognition field, handwriting recognition, despite being quite matured, it still raises so many research questions which are a challenge for the Arabic Handwritten Script. In this paper, we investigate Support Vector Machines (SVM) for Arabic Handwritten Script recognition. The proposed method takes the handcrafted feature as input and proceeds with a supervised learning algorithm. As designed feature, Histogram of Oriented Gradients (HOG) is used to extract feature vectors from textual images. The Multi-class SVM with an RBF kernel was chosen and tested on Arabic Handwritten Database named IFN/ENIT. Performances of the feature extraction method are compared with Gabor filter, showing the effectiveness of the HOG descriptor. We present simulation results so that we will be able to prove that the good functioning on the suggested system based-SVM classifier.

Keywords: SVM, arabic handwritten recognition, handcraft feature, IFN/ENIT, HOG.

Received February 10, 2017; accepted May 10, 2017


Read 2607 times Last modified on Wednesday, 12 July 2017 04:23
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…