학술논문

Writer Identification Based on Local Contour Distribution Feature
Document Type
Article
Text
Source
International Journal of Signal Processing, Image Processing and Pattern Recognition, 02/28/2014, Vol. 7, Issue 1, p. 169-180
Subject
writer identification
stroke feature
local contour distribution feature
weighted Manhattan distance
Language
English
ISSN
2005-4254
Abstract
A method based on local contour distribution features is proposed for writer identification in this paper. In preprocessing, contours are abstracted form images by an improved Bernson algorithm. Then the Local Contour Distribution Feature (LCDF) is extracted from the fragments which are parts of the contour in sliding windows. In order to reduce the impact of stroke weight, the fragments which do not directly connect the center point are ignored in the feature abstraction procedure. The edge point distributions of the fragments are counted and normalized into LCDFs. At last, the weighted Manhattan distance is used as similarity measurement. The experiments on our database and ICDAR 2011 writer identification database show that the performance of the proposed method reach or exceed those of existing state-of-art methods.