融合多尺度纹理和残差描述子的多层次二维条码重播检测

Anselmo Castelo Branco Ferreira, Changsheng Chen, M. Barni
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引用次数: 0

摘要

如今,二维条码已广泛应用于广告、移动支付、产品认证等领域。然而,在产品认证相关的应用中,正版二维条码可以被非法复制并附着在假冒产品上,从而绕过认证方案。在本文中,我们采用专有的二维条形码模式,并使用多媒体取证方法来分析由复制(重新广播)攻击引起的扫描和打印伪影。提出了一种多样化和互补的特征集来量化非法复制过程中引入的条形码纹理扭曲。该特征由全局描述符和局部描述符组成,分别表征多尺度纹理外观和兴趣点分布。在不同的场景下,如跨数据集和跨尺寸,将所提出的描述符与一些现有的纹理描述符和基于深度学习的方法进行比较。实验结果表明了该方法在现实环境中的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusing Multiscale Texture and Residual Descriptors for Multilevel 2D Barcode Rebroadcasting Detection
Nowadays, 2D barcodes have been widely used for advertisement, mobile payment, and product authentication. However, in applications related to product authentication, an authentic 2D barcode can be illegally copied and attached to a counterfeited product in such a way to bypass the authentication scheme. In this paper, we employ a proprietary 2D barcode pattern and use multimedia forensics methods to analyse the scanning and printing artefacts resulting from the copy (re-broadcasting) attack. A diverse and complementary feature set is proposed to quantify the barcode texture distortions introduced during the illegal copying process. The proposed features are composed of global and local descriptors, which characterize the multi-scale texture appearance and the points of interest distribution, respectively. The proposed descriptors are compared against some existing texture descriptors and deep learning-based approaches under various scenarios, such as cross-datasets and cross-size. Experimental results highlight the practicality of the proposed method in real-world settings.
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