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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Detection of JPEG double compression and identification of smartphone image source and post-capture manipulation
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Detection of JPEG double compression and identification of smartphone image source and post-capture manipulation

机译:JPEG双重压缩的检测以及智能手机图像源的标识和捕获后的操作

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Digital multimedia forensics is an emerging field that has important applications in law enforcement and protection of public safety and national security. In digital imaging, JPEG is the most popular lossy compression standard and JPEG images are ubiquitous. Today's digital techniques make it easy to tamper JPEG images without leaving any visible clues. Furthermore, most image tampering involves JPEG double compression, it heightens the need for accurate analysis of JPEG double compression in image forensics. In this paper, to improve the detection of JPEG double compression, we transplant the neighboring joint density features, which were designed for JPEG steganalysis, and merge the joint density features with marginal density features in DCT domain as the detector for learning classifiers. Experimental results indicate that the proposed method improves the detection performance. We also study the relationship among compression factor, image complexity, and detection accuracy, which has not been comprehensively analyzed before. The results show that a complete evaluation of the detection performance of different algorithms should necessarily include image complexity as well as the double compression quality factor. In addition to JPEG double compression, the identification of image capture source is an interesting topic in image forensics. Mobile handsets are widely used for spontaneous photo capture because they are typically carried by their users at all times. In the imaging device market, smartphone adoption is currently exploding and megapixel smartphones pose a threat to the traditional digital cameras. While smartphone images are widely disseminated, the manipulation of images is also easily performed with various photo editing tools. Accordingly, the authentication of smartphone images and the identification of post-capture manipulation are of significant interest in digital forensics. Following the success of our previous work in JPEG double compression detection, we conducted a study to identify smartphone source and post-capture manipulation by utilizing marginal density and neighboring joint density features together. Experimental results show that our method is highly promising for identifying both smartphone source and manipulations. Finally, our study also indicates that applying unsupervised clustering and supervised classification together leads to improvement in identifying smartphone sources and manipulations and thus provides a means to address the complexity issue of the intentional post-capture manipulation on smartphone images.
机译:数字多媒体取证是一个新兴领域,在执法以及保护公共安全和国家安全方面具有重要的应用。在数字成像中,JPEG是最流行的有损压缩标准,并且JPEG图像无处不在。当今的数字技术可以轻松篡改JPEG图像而不会留下任何可见的线索。此外,大多数图像篡改都涉及JPEG双重压缩,这增加了在图像取证中对JPEG双重压缩进行准确分析的需求。在本文中,为了改进JPEG双压缩的检测,我们移植了为JPEG隐写分析而设计的相邻关节密度特征,并将DCT域中的边缘密度特征与边缘密度特征合并为学习分类器。实验结果表明,该方法提高了检测性能。我们还研究了压缩因子,图像复杂度和检测精度之间的关系,这在之前尚未进行全面分析。结果表明,对不同算法的检测性能的完整评估必须包括图像复杂度以及双压缩质量因子。除JPEG双重压缩外,图像捕捉源的识别是图像取证中一个有趣的话题。移动手持机被广泛地用于自发的照片捕获,因为它们通常始终由用户携带。在成像设备市场中,智能手机的使用正在爆炸式增长,百万像素智能手机对传统数码相机构成了威胁。尽管智能手机图像已广泛传播,但也可以使用各种照片编辑工具轻松执行图像操作。因此,智能手机图像的认证和捕获后操纵的识别在数字取证中引起了极大的兴趣。继我们先前在JPEG双压缩检测中取得成功的工作之后,我们进行了一项研究,以结合利用边缘密度和邻近的关节密度特征来识别智能手机的来源和捕获后的操作。实验结果表明,我们的方法在识别智能手机来源和操作方面都很有前途。最后,我们的研究还表明,将无监督的聚类和有监督的分类一起使用可以改善识别智能手机的来源和操作,从而为解决智能手机图像上有意捕获后操作的复杂性提供了一种手段。

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