基于深度学习的条带粉碎文本文档重建兼容性评分

T. M. Paixão, Rodrigo Berriel, M. C. Boeres, C. Badue, A. D. Souza, Thiago Oliveira-Santos
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引用次数: 8

摘要

当使用碎纸机(机械碎纸机)销毁文件的目的是隐藏欺诈和其他罪行的证据时,可能是非法动机。因此,重建这些文件对法医调查具有重要的价值,但对于人类来说,这是一项紧张而耗时的任务。为了应对这一挑战,文献中已经提出了几种计算技术,特别是针对具有基于文本内容的文档。在这种情况下,自动重建的一个关键挑战是适当地测量纸碎片(条)之间的拟合(兼容性),这已经被观察到是关于该主题的文献的主要限制。本文的主要贡献是基于深度学习的兼容性评分,用于条带切碎文本文档的重建。由于实际切碎的数据并不丰富,我们提出了一种基于数字模拟切碎文档的训练方案,该训练方案来自一个知名的OCR数据库。将提出的分数与黑盒优化工具耦合,得到的系统在机械撕碎文件的重建中平均准确率达到94.58%。
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A Deep Learning-Based Compatibility Score for Reconstruction of Strip-Shredded Text Documents
The use of paper-shredder machines (mechanical shredding) to destroy documents can be illicitly motivated when the purpose is hiding evidence of fraud and other sorts of crimes. Therefore, reconstructing such documents is of great value for forensic investigation, but it is admittedly a stressful and time-consuming task for humans. To address this challenge, several computational techniques have been proposed in literature, particularly for documents with text-based content. In this context, a critical challenge for automated reconstruction is to measure properly the fitting (compatibility) between paper shreds (strips), which has been observed to be the main limitation of literature on this topic. The main contribution of this paper is a deep learning-based compatibility score to be applied in the reconstruction of strip-shredded text documents. Since there is no abundance of real-shredded data, we propose a training scheme based on digital simulated-shredding of documents from a well-known OCR database. The proposed score was coupled to a black-box optimization tool, and the resulting system achieved an average accuracy of 94.58% in the reconstruction of mechanically-shredded documents.
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