Taylor and Francis Group, International Journal of Computers and Applications, 3(27), 2005
DOI: 10.2316/journal.202.2005.3.202-1316
ACTA Press, International Journal of Computers and Applications, 3(27), p. 178-189
DOI: 10.1080/1206212x.2005.11441767
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The authors present a system for the recognition of handwritten Arabic text using neural networks. This work builds upon previous work that dealt with the vertical segmentation of the written text. However, faced with some problems like overlapping characters that share the same vertical space, we tried to fix that problem by performing horizontal segmentation. In this research we will use two basic neural networks to perform the task; the first one identifies blocks that need to be horizontally segmented, and the second one performs the horizontal segmentation. Both networks use a set of features that are extracted using a heuristic program. The system was tested and the rate of recognition obtained was over 90%. This strongly supports the usefulness of proposed measures for handwritten Arabic text.