Title of article :
Holistic Persian Handwritten Word Recognition Using Convolutional Neural Network
Author/Authors :
Zohrevand, A. Computer Engineering Department - Kosar University of Bojnord - Bojnord - Iran , Imani, Z. Computer Engineering Department - Kosar University of Bojnord - Bojnord - Iran
Pages :
10
From page :
2028
To page :
2037
Abstract :
Due to the cursive-ness and high variability of Persian scripts, the segmentation of handwritten words into sub-words is still a challenging task. These issues could be addressed in a holistic approach by sidestepping segmentation at the character level. In this paper, an end-to-end holistic method based on deep convolutional neural network is proposed to recognize off-line Persian handwritten words. The proposed model uses only five convolutional layers and two fully connected layers for classifying word images effectively, which can lead to a substantial reduction in parameters. The effect of various pooling strategies is also investigated in this paper. The primary goal of this article is to ignore handcrafted feature extraction and attain a generalized and stable word recognition system. The presented model is assessed using two famous handwritten Persian word databases called Sadri and IRANSHAHR. The recognition accuracies were obtained at 98.6% and 94.6%, on Sadri and IRANSHAHR datasets respectively, and outperformed the state-of-the-art methods.
Keywords :
Persian handwritten word recognition , Convolutional Neural Network , End-to-end learning method , Transfer learning , Persian handwritten dataset
Journal title :
International Journal of Engineering
Serial Year :
2021
Record number :
2642077
Link To Document :
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