论文标题
基于CNN的快速源设备标识
CNN-based fast source device identification
论文作者
论文摘要
源标识是图像取证中的重要主题,因为它允许追溯图像的来源。这代表了声称知识产权的宝贵信息,同时也揭示了非法材料的作者。在本文中,我们根据传感器噪声解决了设备识别的问题,并使用卷积神经网络(CNN)提出了快速准确的解决方案。具体来说,我们提出了一个基于2通道的CNN,该CNN学习了一种比较贴剂级别的相机指纹和图像噪声的方法。提出的解决方案比常规方法要快得多,以确保精确度提高。这使得该方法在分析大量图像数据库(如社交网络)的情况下特别适合。在这种情况下,由于在社交媒体上上传的图像通常至少经历了两个压缩阶段,因此我们包括对双重JPEG压缩图像的调查,始终报告的准确性比标准方法更高。
Source identification is an important topic in image forensics, since it allows to trace back the origin of an image. This represents a precious information to claim intellectual property but also to reveal the authors of illicit materials. In this paper we address the problem of device identification based on sensor noise and propose a fast and accurate solution using convolutional neural networks (CNNs). Specifically, we propose a 2-channel-based CNN that learns a way of comparing camera fingerprint and image noise at patch level. The proposed solution turns out to be much faster than the conventional approach and to ensure an increased accuracy. This makes the approach particularly suitable in scenarios where large databases of images are analyzed, like over social networks. In this vein, since images uploaded on social media usually undergo at least two compression stages, we include investigations on double JPEG compressed images, always reporting higher accuracy than standard approaches.