Automatic handwriting analysis for writer identification and verification

A. Bennour
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引用次数: 1

Abstract

The work presented in this paper in the field of automatic analysis of handwritten documents for the recognition of individuals through their handwriting. We proposed a hybrid method (local and global) for writer recognition. The proposed method is based on the detection and localization of the points in the image of the Harris editor and the global method that Local Binary Models (LBP) on the thumbnails built around operating points extracted from the image, in order to construct the feature vectors. It is important to note in this regard that the classification is carried out using the famous classifier of large margin separators (SVM). The performances are clearly preliminary based on "CVL", and the experimental results were obtained.
自动笔迹分析的作家身份和验证
本文介绍的工作是在手写文档的自动分析领域,通过他们的笔迹来识别个人。我们提出了一种局部和全局混合的作者识别方法。该方法基于Harris编辑器对图像中点的检测和定位,以及在图像中提取的操作点周围建立缩略图上的局部二值模型(Local Binary Models, LBP)来构造特征向量的全局方法。在这方面需要注意的是,分类是使用著名的大间距分隔器(SVM)分类器进行的。基于“CVL”的性能得到了初步的明确,并得到了实验结果。
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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