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Detection of Handwritten Document Forgery by Analyzing Writers' Handwritings

机译:通过分析作家手写检测手写文件伪造

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Since digitization is yet to be adopted globally, handwritten documents are still in use in many places. Handwritten documents are prone to get forged thanks to acts like the versatility of tampering which are very frequent among skilful fraudsters. Our research work focuses on one of the major problems to detect whether a document is treated as false or not based on an analysis of the handwriting of the content writers. Mostly, legal documents are scripted authentically by a single person. If the content is a combination of more than one person, then it will be treated like a forged document. The proposed work is formulated as a binary classification problem. Various contour related sliding window based features are extracted from word images of the corresponding handwritten document. The same writer with different handwriting styles are also considered here as well. Bagging meta-classifier is trained for classification of the extracted features. The accuracy of this proposed work is 89.64% on IAM dataset is quite sound. We have also tested our method on IDRBT check image dataset. However, since there is a lack of direct implementation on this particular problem we could not make a comparative analysis of the proposed method.
机译:由于数字化尚未通过全局采用,因此手写文件仍在许多地方使用。手写文件易于伪造,感谢像篡改的篡改中的多功能性,这在熟练的欺诈者中非常频繁。我们的研究工作侧重于检测文件是否被视为虚假的主要问题之一,或者基于对内容作家的笔迹的分析。主要是,法律文件由一个人真实地脚本。如果内容是多于一个人的组合,那么它将被视为伪造的文件。拟议的工作被制定为二进制分类问题。从相应的手写文档的字图像中提取了基于轮廓的基于滑动窗口的特征。同样的作者也在这里考虑了不同的手写风格。袋装元分类器培训,用于分类提取的功能。 IAM数据集的这项工作的准确性为89.64%是非常声音的。我们还在IDRBT检查图像数据集上测试了我们的方法。然而,由于对这个特殊问题缺乏直接实施,因此我们无法对所提出的方法进行比较分析。

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