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A new descriptor for person identity verification based on handwritten strokes off-line analysis

机译:基于手写笔划离线分析的身份验证新描述符

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A new descriptor for the verification of people's identity through the analysis of handwritten text is presented. The proposed descriptor corresponds to a representation of the pattern of writing pressure computed from the grayscale image of a handwritten stroke. Specifically, the descriptor corresponds to the relative position of the minimum gray value points within the stroke. A repository of images for 50 people was created. Each person wrote 50 samples of 6 different symbols which resulted in a total of 15,000 images to carry out the experiments. For each individual's identity verification, a supervised classifier for non-linearly separable data of the Support Vector Machine type was used, which resulted in the training of a total of 50 classifiers. 50 groups of balanced data were created through the sub-sampling of the majority class for the proper training of the classifiers. Furthermore, K-Fold Cross Validation was used to assess objectively the descriptor performance. The results of the assessment are positive: a hit rate average higher than 95% was achieved for the six analyzed symbols to verify identity. The overall proposal of the paper is interesting because it presents a method based on the processing of very simple characters (the characters are notoriously simpler than a signature). The proposed descriptor has the advantage of being invariant to rotation, which makes the process robust to involuntary changes in the inclination of the sheet containing the strokes. Besides, the descriptor is invariant to scale, as it considers the obtained sign length resizing. This makes the process robust to characters written with different sizes. (C) 2017 Elsevier Ltd. All rights reserved.
机译:提出了一种新的描述符,用于通过手写文本分析来验证人们的身份。提出的描述符对应于从手写笔画的灰度图像计算出的书写压力模式的表示。具体地,描述符对应于笔划内最小灰度值点的相对位置。创建了可容纳50人的图像库。每个人写了50个带有6个不同符号的样本,总共产生了15,000张图像来进行实验。对于每个人的身份验证,使用了针对支持向量机类型的非线性可分离数据的监督分类器,该分类器总共训练了50个分类器。通过多数类的子采样创建了50组平衡数据,以对分类器进行适当的训练。此外,K折叠交叉验证用于客观评估描述符性能。评估结果是肯定的:六个被分析符号验证命中率的平均命中率均高于95%。本文的总体建议很有趣,因为它提出了一种基于处理非常简单的字符的方法(众所周知,这些字符比签名更简单)。提出的描述符具有旋转不变的优点,这使得该过程对于包含笔划的纸张的倾斜度的非自愿变化是鲁棒的。此外,描述符考虑到所获得符号长度的大小调整,因此其规模不变。这使得该过程对于以不同大小书写的字符来说是健壮的。 (C)2017 Elsevier Ltd.保留所有权利。

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