
Online writer identification system using adaptive sparse representation framework
Author(s) -
Venugopal Vivek,
Sundaram Suresh
Publication year - 2020
Publication title -
iet biometrics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.434
H-Index - 28
eISSN - 2047-4946
pISSN - 2047-4938
DOI - 10.1049/iet-bmt.2019.0147
Subject(s) - computer science , sparse approximation , artificial intelligence , pattern recognition (psychology) , support vector machine , identification (biology) , representation (politics) , similarity (geometry) , set (abstract data type) , pooling , handwriting , component (thermodynamics) , feature (linguistics) , feature vector , scheme (mathematics) , natural language processing , mathematics , mathematical analysis , linguistics , philosophy , botany , physics , politics , political science , law , image (mathematics) , biology , programming language , thermodynamics
This study explores an adaptive sparse representation approach for online writer identification. The main focus is on employing prior information that quantifies the degree of importance of a dictionary atom concerning a given writer. This information is proposed by a fusion of two derived components. The first component is a saliency measure obtained from the sum‐pooled sparse coefficients corresponding to the sub‐strokes of a set of enrolled writers. The second component is a similarity score, computed for each dictionary atom with regards to a given writer, that is related to the reconstruction error of the sub‐stroke based feature vectors. The proposed identification is accomplished with an ensemble of support vector machines (SVMs), wherein the input to the SVM trained for a writer is obtained by incorporating the adapted saliency values of that writer on the document descriptor obtained via average pooling of sparse codes. Experiments performed on the IAM and IBM‐UB1 online handwriting databases demonstrate the efficacy of the proposed scheme.