Recognition of Handwritten Characters Based on Wavelet Transform and SVM Classifier

Recognition of Handwritten Characters Based on

Wavelet Transform and SVM Classifier

Malika Ait Aider1, Kamal Hammouche1, and Djamel Gaceb2

1Laboratoire Vision Artificielle et Automatique des Systèmes, Université Mouloud Mammeri, Algérie

2Laboratoire D'informatique en Image et Systèmes D'information, Institut National des Sciences Appliquées de Lyon, France

Abstract: This paper is devoted to the off-line handwritten character recognition based on the two dimensional wavelet transform and a single support vector machine classifier. The wavelet transform provides a representation of the image in independent frequency bands. It performs a local analysis to characterize images of characters in time and scale space. The wavelet transform provides at each level of decomposition four sub-images: a smooth or approximation sub-image and three detail sub-images. In handwritten character recognition, the wavelet transform has received more attention and its performance is related not only to the use of the type of wavelet but also to the type of a sub-image used to provide features. Our objective here is thus to study these two previous points by conducting several tests using several wavelet families and several combinational features derived from sub-images. They show that the symlet wavelet of order 8 is the most efficient and the features derived from the approximation sub-image allow the best discrimination between the handwritten digits.

Keywords: Feature extraction; wavelet transform, handwritten character recognition; support vector machine; OCR.

Received June 10, 2015; accepted May 16, 2016
  
Read 1487 times
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…