Text-independent off-line writer recognition using neural networks

D. A. Valkaniotis, J. Sirigos, N. Fakotakis, G. Kokkinakis
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引用次数: 1

Abstract

In this paper we present a text-independent offline writer recognition system based on multilayer perceptrons (MLPs). The system can be used for both identification and verification purposes. It was tested on a population of 20 writers with non-correlated training and test specimens. The mean error for identification was 3.5% while error rates as low as 0.5% were achieved on specimens with more than 25 characters. For verification the mean error was 1.2% (2.22% false rejection, 0.18% false acceptance) considering a minimum of 15 characters per test specimen. These error rates are comparable to those achieved by classical methods while the response of the system is substantially faster.
基于神经网络的文本独立离线写作者识别
本文提出了一种基于多层感知器(mlp)的与文本无关的离线作家识别系统。该系统可用于识别和核查目的。它在20位作家身上进行了测试,这些作家的训练和测试样本不相关。鉴定的平均误差为3.5%,而对大于25个字符的标本的误差率低至0.5%。为了验证,考虑到每个测试样本至少15个字符,平均误差为1.2%(2.22%错误拒绝,0.18%错误接受)。这些错误率与传统方法的错误率相当,而系统的响应速度要快得多。
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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