Offline handwritten signature recognition using adaptive variance reduction

Ruangroj Sa-Ardship, K. Woraratpanya
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引用次数: 3

Abstract

Although offline handwritten signature recognition has been continually researched, it still requires an improvement of recognition rate. Most of existing techniques focus on feature extraction to improve their performance. This paper proposes an alternative way to increase the recognition rate by analyzing an important characteristic of input information, namely variability of signatures. The proposed method is based on the hypothesis; reducing the variability of signatures leads to boost up the recognition rate. Therefore, the variance reduction technique is applied to normalize offline handwritten signatures by means of an adaptive dilation operator. Then the variability of signatures is analyzed in terms of coefficient of variation (CV). The optimal CV is obtained and used to be a threshold limit value for the acceptable variance reduction. Based on 5,739 signature samples with 140 classes, the experimental results show that the adaptive variance reduction procedure helps improve the recognition rate when compared to the traditional schemes without adaptive variance reduction, including histogram of gradient (HOG) and pyramid histogram of gradient (PHOG) techniques.
使用自适应方差减少的离线手写签名识别
尽管离线手写签名识别研究不断,但仍需要提高识别率。现有的技术大多侧重于特征提取,以提高性能。本文通过分析输入信息的一个重要特征,即签名的可变性,提出了一种提高识别率的方法。提出的方法是基于假设;减少签名的可变性可以提高识别率。为此,采用方差缩减技术,通过自适应扩张算子对离线手写签名进行归一化处理。然后用变异系数(CV)来分析特征的变异性。得到最优CV,并将其作为可接受方差减小的阈值。基于5,739个140类签名样本的实验结果表明,与传统的梯度直方图(HOG)和梯度金字塔直方图(PHOG)技术相比,自适应方差缩减方法提高了识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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