Publication Type : Journal Article
Publisher : ICTACT Journal on Image and Video processing
Source : ICTACT Journal on Image and Video processing 4(03), 767-772
Campus : Chennai
School : School of Computing
Year : 2014
Abstract : In this paper we develop a system for writer identification which involves four processing steps like preprocessing, segmentation, feature extraction and writer identification using neural network. In the preprocessing phase the handwritten text is subjected to slant removal process for segmentation and feature extraction. After this step the text image enters into the process of noise removal and gray level conversion. The preprocessed image is further segmented by using morphological watershed algorithm, where the text lines are segmented into single words and then into single letters. The segmented image is feature extracted by Daubechies’5/3 integer wavelet transform to reduce training complexity [1, 6]. This process is lossless and reversible [10], [14]. These extracted features are given as input to our neural network for writer identification process and a target image is selected for each training process in the 2-layer neural network. With the several trained output data obtained from different target help in text identification. It is a multilingual text analysis which provides simple and efficient text segmentation.
Cite this Research Publication : Mathivanan, P., Ganesamoorthy, B., &Maran, P, "Watershed algorithm based segmentation for handwritten text identification", ICTACT Journal on Image and Video processing 4(03), 767-772