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2015 13th International Conference on Document Analysis and Recognition (ICDAR)

DOI: 10.1109/icdar.2015.7333760

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Robust Score Normalization for DTW-Based On-Line Signature Verification

Proceedings article published in 2015 by Andreas Fischer, Moises Diaz, Rejean Plamondon, Miguel A. Ferrer ORCID
This paper is available in a repository.
This paper is available in a repository.

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Abstract

In the field of automatic signature verification, a major challenge for statistical analysis and pattern recognition is the small number of reference signatures per user. Score normalization, in particular, is challenged by the lack of information about intra-user variability. In this paper, we analyze several approaches to score normalization for dynamic time warping and propose a new two-stage normalization which detects simple forgeries in a first stage and copes with more skilled forgeries in a second stage. An experimental evaluation is conducted on two data sets with different characteristics, namely the MCYT online signature corpus, which contains over three hundred users, and the SUSIG visual sub-corpus, which contains highly skilled forgeries. The results demonstrate that score normalization is a key component for signature verification and that the proposed two-stage normalization achieves some of the best results on these difficult data sets both for random and for skilled forgeries.