Offline signature verification based on pyramid histogram of oriented gradient features

Closed

Latifa Nabila Harfiya, Agus Wahyu Widodo, Randy Cahya Wihandika

2017 Proceedings - 2017 1st International Conference on Informatics and Computational Sciences, ICICoS 2017 Vol. 2018-January Conference paper Cited by 8 Quartile

Abstract

In this paper, we consider the problem of forgery and misuse of signatures that happen oftentimes. We propose a framework for offline signature verification using pyramid histogram of oriented gradient (PHOG) as a feature. The PHOG feature is extracted from a binary image of a signature of the same size that does not have much noise and therefore before it is extracted, a preprocessing image is performed. There are various parameters that may affect the extraction of PHOG characteristics such as number of bin, level, angular range, and amount of training data used. Using the best obtained parameters of PHOG descriptor and modified K-nearest neighbor (MKNN) classifier we get a 1.5% false rejection rate on the dataset of the Indonesian signature image that we obtain and 3% on the Persian signature image dataset, while false acceptance rate obtained on the Indonesian signature image dataset is 14.499% and 39.5% on the Persian signature image dataset. © 2017 IEEE.

Affiliations

Faculty of Computer Science, University of Brawijaya, Malang, Indonesia