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Letter-Level Writer Identification

机译:信件级作家身份证明

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摘要

Writer Identification aims to identify a certain writer from a given group of candidates by their handwriting. Although it is very significant in security systems like bank account verification systems, existing works focus on document-level or text-level writer identification. This limits their scalabilities and flexibilities in realistic scenarios as they require complete document or text. To facilitate the realistic applications of writer identification, we propose a novel technology, letter-level writer identification, which requires only a few letters as the identification cue. It is challenging due to large intra-class discrepancy and implicit identifiable writing cues. Considering these challenges, we propose a novel deep model called Multi-Branch Encoding net (Mul-BEnc). To evaluate our model and provide a benchmark for this problem, we have collected a large Letter-stroke sequence Writer identification DataBase (LetWriterDB). The experimental results validate the effectiveness of our model.
机译:作家识别旨在通过笔迹从给定的一组候选人中识别出某个作家。尽管在诸如银行帐户验证系统之类的安全系统中非常重要,但是现有的工作集中在文档级或文本级的作者身份识别上。由于它们需要完整的文档或文本,因此限制了它们在实际情况下的可伸缩性和灵活性。为了促进作家身份的现实应用,我们提出了一种新颖的技术,即字母级作家身份识别,该技术仅需要几个字母作为识别提示。由于类内差异大和隐含的可识别写作提示,这具有挑战性。考虑到这些挑战,我们提出了一种新颖的深度模型,称为多分支编码网(Mul-BEnc)。为了评估我们的模型并为该问题提供基准,我们收集了一个大的笔画序列作家识别数据库(LetWriterDB)。实验结果验证了我们模型的有效性。

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