利用HSV色彩空间识别非黑色油墨

Haritha Dasari, C. Bhagvati
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引用次数: 21

摘要

在被质疑的文件检查中,一个重要的问题是检测插入单词或额外的文本行所做的更改。在本文中,我们提出了一种统计模式识别驱动的方法,将其视为一个两类问题。给定两个样本词,其中一个是可疑的变异词,有必要确定这两个词是属于同一类还是不同类。我们的方法分为两个阶段。我们从一个11维向量开始,它包括在HSV空间中定义的颜色特征和纹理特征。在训练阶段,我们推导了类内和类间LI距离分布,并确定了最小化I型和II型误差的最佳阈值。在第二阶段或测试阶段,我们取一对未知样本,并使用从训练阶段获得的阈值来确定两者是属于同一类还是不同的类。我们涉及超过95000对单词图像的实验结果表明,该方法对凝胶笔和滚轮笔的准确率超过90%,对圆珠笔的准确率为85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Non-Black Inks Using HSV Colour Space
An important problem in questioned document examination is detection of alterations done by inserting words or additional lines of text. In this paper, we present a statistical pattern recognition driven approach that views it as a two- class problem. Given two sample words, one of which is a suspected alteration, it is necessary to determine if the two belong to the same class or different classes. Our approach is defined in two stages. We start with a 11-dimensional vector that comprises colour features defined in HSV space and texture features. During the training phase, we derive within-class and between-class LI distance distributions and identify an optimal threshold that minimizes Type I and Type II errors. During the second or test phase, we take a pair of unkown samples and use the threshold value obtained from the training phase to decide if the two belong to the same class or distinct classes. Our experimental results involving more than 95000 pairs of word images show that the approach gives an accuracy of over 90% for gel and roller pens and an accuracy of 85% for ball pen writings.
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