Texture Features from Handwritten Images for Writer Identification

Main Article Content

Rashmi Mundas, Deepa Bendegeri, Dr. Jagadeesh Pujari

Abstract

Identification of the writer is having wide scope in emerging technology due to its usage in various types of applications, especially in forensic science and biometric science. Our aim in this project is to identify author or writer from script which is handwritten and obtained as scanned images. Features of textures will be elicitated from wavelet decomposed images based on co-occurrence histograms. These will get (capture) the information about the relations among sub-bands of less frequency and that in sub-bands of higher frequency at the particular level of the transformed image. If the co-relation between the sub-bands has resolution of same then that indicates a stronger relation. Then relationship strength will indicate as information was essential considered to differentiating the textures. The proposed methodology will be executed with English handwritten images by considering 5, 10 penmanship or writers. Ability of features from texture in identifying writers is indicated though the outcome achieved in experimentation.

Article Details

How to Cite
, R. M. D. B. D. J. P. (2016). Texture Features from Handwritten Images for Writer Identification. International Journal on Recent and Innovation Trends in Computing and Communication, 4(7), 76–79. https://doi.org/10.17762/ijritcc.v4i7.2404
Section
Articles