Temporal Neural System Applied to Arabic Online Characters Recognition

Temporal Neural System Applied to Arabic Online Characters Recognition

Khadidja Belbachir1 and Redouane Tlemsani2

1Department of computer sciences, University of Science and Technologies of Oran Mohamed Boudiaf, Algeria

2LaRATIC Laboratory, National Institute of Telecommunication an ICTs of Oran, Algeria

Abstract: This work presents survey, implementation and test for a neural network: Time Delay Neural Network (TDNN), applied to on-line handwritten recognition characters. In this work, we present a recognizer conception for on-line Arabic handwriting. On-line handwriting recognition of Arabic script is a complex problem, since it is naturally both cursive and unconstrained. This system permits to interpret a script represented by the pen trajectory. This technique is used notably in the electronic tablets. We will construct a data base with several scripters. Afterwards, and before attacking the recognition phase, there is a constructional samples phase of Arabic characters acquired from an electronic tablet to digitize Noun Database. Obtained scores shows an effectiveness of the proposed approach based on convolutional neural networks.

Keywords: Isolated handwritten characters recognition, on-line recognition, convolution neural network, TDNN.

Received September 27, 2018; accepted January 21, 2019
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