论文标题
使用深神经网络的接缝雕刻检测的端到端方法
An End-to-End Approach for Seam Carving Detection using Deep Neural Networks
论文作者
论文摘要
接缝雕刻是一种计算方法,能够根据其内容而不是图像几何形状来调整图像大小以减少和扩展。尽管该技术主要用于处理冗余信息,即由具有相似强度的像素组成的区域,但也可以通过插入或删除相关对象来篡改图像。因此,检测这种过程在图像安全域上至关重要。但是,即使对于人眼,识别缝制图像也不代表一项简单的任务,并且能够识别此类改动的强大计算工具非常可取。在本文中,我们提出了一种应对自动接缝雕刻检测问题的端到端方法,该检测可以获得最新的结果。通过公共和私人数据集进行的实验具有多种篡改配置,证明了拟议模型的适用性。
Seam carving is a computational method capable of resizing images for both reduction and expansion based on its content, instead of the image geometry. Although the technique is mostly employed to deal with redundant information, i.e., regions composed of pixels with similar intensity, it can also be used for tampering images by inserting or removing relevant objects. Therefore, detecting such a process is of extreme importance regarding the image security domain. However, recognizing seam-carved images does not represent a straightforward task even for human eyes, and robust computation tools capable of identifying such alterations are very desirable. In this paper, we propose an end-to-end approach to cope with the problem of automatic seam carving detection that can obtain state-of-the-art results. Experiments conducted over public and private datasets with several tampering configurations evidence the suitability of the proposed model.