Recovering Segmentation Errors in Handwriting Recognition Systems

Author(s):  
Claudio De Stefano ◽  
Francesco Fontanella ◽  
Angelo Marcelli ◽  
Antonio Parziale ◽  
Alessandra Scotto di Freca
Author(s):  
Meriem Gagaoua ◽  
Hamza Ghilas ◽  
Abdelkamel Tari ◽  
Mohamed Cheriet

Features extraction is one of the most important steps in handwriting recognition systems. In this paper, we propose a novel features extraction method, which is adapted to the complex nature of Arabic handwriting. The proposed feature called histogram of marked background (HMB) is not considering only ink pixels in a text image, but also uses the background of the image. Each background pixel in the text image was marked according to the repartition of ink pixels in its neighborhood. Feature vectors are extracted by computing histograms from the marked images. Hidden Markov models (HMMs) with Hidden Markov model toolkit (HTK) were used in the recognition process. The experiments were performed on two datasets: IBN SINA database of historical Arabic documents and Isolated Farsi Handwritten Character Database (IFHCDB). The proposed feature in this study produced efficient and promising results for Arabic handwriting recognition, for both isolated characters and for historical documents.


2021 ◽  
pp. 413-428
Author(s):  
Christian Gold ◽  
Dario van den Boom ◽  
Torsten Zesch

1993 ◽  
Vol 14 (4) ◽  
pp. 303-315 ◽  
Author(s):  
C.Y. Suen ◽  
R. Legault ◽  
C. Nadal ◽  
M. Cheriet ◽  
L. Lam

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