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Offline Signature Verification using Locally Optimized Distance-based Classification

机译:使用局部优化的基于距离的分类进行脱机签名验证

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Although handwritten signature verification has been extensively researched, it has not achieved an optimal classification accuracy rate. Therefore, efficient and accurate signature verification techniques are required since signatures are still widely used as a means of personal verification. This research work presents efficient distance-based classification techniques as an alternative to supervised learning classification techniques (SLTs). The Local Directional Pattern (LDP) feature extraction technique was used to analyze the effect of using several different distance-based classification techniques. The classification techniques tested, are the Euclidean, Manhattan, Fractional, weighted Euclidean, weighted Manhattan, weighted fractional distances and individually optimized resampling of feature vector sizes. The best accuracy, of 90.8%, was achieved through applying a combination of the weighted fractional distances and locally optimized resampling classification techniques to the Local Directional Pattern feature extraction. These results are compared with results from literature, where the same feature extraction technique was classified with SLTs. The distance-based classification was found to produce greater accuracy than the SLTs.
机译:尽管手写签名验证已得到了广泛的研究,但尚未达到最佳的分类准确率。因此,由于签名仍被广泛用作个人验证的手段,因此需要有效且准确的签名验证技术。这项研究工作提出了有效的基于距离的分类技术,以替代监督学习分类技术(SLT)。局部方向性模式(LDP)特征提取技术用于分析使用几种不同的基于距离的分类技术的效果。测试的分类技术是欧几里得,曼哈顿,分数,加权欧几里得,加权曼哈顿,加权分数距离和特征向量大小的单独优化重采样。通过将加权分数距离和局部优化的重采样分类技术结合应用到局部方向图特征提取中,可以达到90.8%的最佳精度。将这些结果与文献中的结果进行比较,文献中使用SLT对相同的特征提取技术进行了分类。发现基于距离的分类比SLT具有更高的准确性。

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