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Data-Driven Feature Characterization Techniques for Laser Printer Attribution

机译:激光打印机归因的数据驱动特征表征技术

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摘要

Laser printer attribution is an increasing problem with several applications, such as pointing out the ownership of crime proofs and authentication of printed documents. However, as commonly proposed methods for this task are based on custom-tailored features, they are limited by modeling assumptions about printing artifacts. In this paper, we explore solutions able to learn discriminant-printing patterns directly from the available data during an investigation, without any further feature engineering, proposing the first approach based on deep learning to laser printer attribution. This allows us to avoid any prior assumption about printing artifacts that characterize each printer, thus highlighting almost invisible and difficult printer footprints generated during the printing process. The proposed approach merges, in a synergistic fashion, convolutional neural networks (CNNs) applied on multiple representations of multiple data. Multiple representations, generated through different pre-processing operations, enable the use of the small and lightweight CNNs whilst the use of multiple data enable the use of aggregation procedures to better determine the provenance of a document. Experimental results show that the proposed method is robust to noisy data and outperforms existing counterparts in the literature for this problem.
机译:激光打印机归因在多种应用中正成为一个日益严重的问题,例如指出犯罪证据的所有权和打印文档的身份验证。但是,由于通常针对此任务提出的方法基于定制的功能,因此它们受到有关打印伪像的建模假设的限制。在本文中,我们探索了能够在调查过程中直接从可用数据中学习判别式打印模式的解决方案,而无需进行任何进一步的功能设计,从而提出了基于深度学习的第一种方法来确定激光打印机的归因。这使我们能够避免事先就每个打印机的打印伪影做出假设,从而突出显示了在打印过程中生成的几乎不可见和困难的打印机足迹。所提出的方法以协同方式合并了应用于多个数据的多种表示的卷积神经网络(CNN)。通过不同的预处理操作生成的多种表示形式可以使用小型轻量级的CNN,而使用多个数据则可以使用聚合过程来更好地确定文档的来源。实验结果表明,该方法对噪声较大的数据具有较强的鲁棒性,并且优于该文献中已有的方法。

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