SGCN:用于证书文档图像处理定位的空间梯度卷积网络

Baoxiang Jiang, Jingbo Xia, Bingjing Wu, Zhigong Wei
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引用次数: 1

摘要

目前的篡改检测方法更多地关注自然内容图像。对证书文件图像篡改算法的研究相对有限,但证书文件图像是最常见的篡改图像,对社会造成了极大的危害。我们的工作提出了一种使用ASGC-Net网络检测类似证书的图像操作的方法。实现一个能够更好地定位文本篡改线索的网络。此外,我们提出了一种空间约束卷积,该卷积可以有效地抑制图像内容,并通过捕获卷积空间的邻域和中心之间的不同特征来学习操作检测特征。为了提高网络在多尺度图像上捕获篡改线索的能力,我们添加了受FPN网络启发的多层跨尺度连接。实验表明,该算法对证书文档图像篡改区域的定位比通用的篡改检测算法更准确。
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SGCN: spatially gradient convolution network for certificate document image manipulation localization
Current tampering detection methods pay more attention to natural content images. The research on tampering algorithms for certificate document images is relatively limited, but certificate document images are the most commonly tampered with images, and they cause great harm to society. Our work presents a method for detecting certificate-like image manipulation using the ASGC-Net network. To achieve a network that can better localize text tampering cues. In addition, we propose a spatially constrained convolution that can effectively suppress image content and learn manipulation detection features by capturing different features between the neighborhood and the center of the convolution space. To increase the network's ability to capture tampering cues at multiple scales of images, we add multilayer cross-scale connections inspired by FPN networks. Experiments show that the algorithm is more accurate than general-purpose manipulation detection algorithms in locating tampered regions of certificate document images.
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20 weeks
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