Arabic Handwritten Word Recognition Based on Stationary Wavelet Transform Technique using Machine Learning
This paper is aimed at improving the performance of the word recognition system (WRS) of handwritten
Arabic text by extracting features in the frequency domain using the Stationary Wavelet Transform (SWT)
method using machine learning, which is a wavelet transform approach created to compensate for the absence
of translation invariance in the Discrete Wavelets Transform (DWT) method. The proposed SWT-WRS
of Arabic handwritten text consists of three main processes: word normalization, feature extraction based
on SWT, and recognition. The proposed SWT-WRS based on the SWT method is evaluated on the IFN/ENIT
database applying the Gaussian, linear, and polynomial support vector machine, the k-nearest neighbors,
and ANN classifiers. ANN performance was assessed by applying the Bayesian Regularization (BR) and
Levenberg-Marquardt (LM) training methods. Numerous wavelet transform (WT) families are applied,
and the results prove that level 19 of the Daubechies family is the best WT family for the proposed SWTWRS. The results also confirm the effectiveness of the proposed SWT-WRS in improving the performance of
handwritten Arabic word recognition using machine learning. Therefore, the suggested SWT-WRS overcomes
the lack of translation invariance in the DWT method by eliminating the up-and-down samplers from the
proposed machine learning method.