论文标题

深度卷积神经网络,用于识别伪造伪造

Deep Convolutional Neural Network for Identifying Seam-Carving Forgery

论文作者

Nam, Seung-Hun, Ahn, Wonhyuk, Yu, In-Jae, Kwon, Myung-Joon, Son, Minseok, Lee, Heung-Kyu

论文摘要

接缝雕刻是一种代表性的内容感知图像重新定位方法,可在保留其视觉上突出内容的同时调整图像的大小。为了维持视觉上重要的内容,首先根据定义的成本函数计算缝制算法(称为接缝)的连接路径,然后通过删除和重复重复计算的接缝来调整图像的大小。接缝雕刻被积极利用,以克服应用和设备之间图像的分辨率的多样性;因此,检测由接缝雕刻引起的失真已在图像取证中变得很重要。在本文中,我们提出了一种基于卷积的神经网络(CNN)的方法,用于对基于接缝的图像重新定位进行分类以减少和扩展。为了获得学习低级功能的能力,我们设计了一个CNN体系结构,其中包括五种类型的网络块,专门用于捕获微妙的信号。进一步采用合奏模块,以提高性能并全面分析给定图像的局部区域中的特征。为了验证我们工作的有效性,进行了基于各种基于CNN的基准的广泛实验。与基线相比,我们的工作以三类分类(原始,接缝插入和取下接缝)表现出最先进的表现。此外,我们使用集合模块的模型适用于各种看不见的情况。实验结果还表明,我们的方法可以应用于接缝插入区域和接缝区域。

Seam carving is a representative content-aware image retargeting approach to adjust the size of an image while preserving its visually prominent content. To maintain visually important content, seam-carving algorithms first calculate the connected path of pixels, referred to as the seam, according to a defined cost function and then adjust the size of an image by removing and duplicating repeatedly calculated seams. Seam carving is actively exploited to overcome diversity in the resolution of images between applications and devices; hence, detecting the distortion caused by seam carving has become important in image forensics. In this paper, we propose a convolutional neural network (CNN)-based approach to classifying seam-carving-based image retargeting for reduction and expansion. To attain the ability to learn low-level features, we designed a CNN architecture comprising five types of network blocks specialized for capturing subtle signals. An ensemble module is further adopted to both enhance performance and comprehensively analyze the features in the local areas of the given image. To validate the effectiveness of our work, extensive experiments based on various CNN-based baselines were conducted. Compared to the baselines, our work exhibits state-of-the-art performance in terms of three-class classification (original, seam inserted, and seam removed). In addition, our model with the ensemble module is robust for various unseen cases. The experimental results also demonstrate that our method can be applied to localize both seam-removed and seam-inserted areas.

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