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用于从自然数字图像中进行智能手机摄像头识别的二自由度马氏距离分类器。

Two-degree of freedom Mahalanobis classifier for smartphone-camera identification from natural digital images.

作者信息

Vázquez-Medina Rubén, Rojas-López César Enrique, Jiménez-Ramírez Omar, Niño-de-Rvera-Oyarzabal Luis, Palacios-Luengas Leonardo

机构信息

Instituto Politécnico Nacional, CICATA Querétaro, Santiago de Querétaro, Querétaro, Mexico.

Instituto Politécnico Nacional, ESIME Culhuacan, Ciudad de México, Mexico.

出版信息

PeerJ Comput Sci. 2024 Dec 19;10:e2513. doi: 10.7717/peerj-cs.2513. eCollection 2024.

Abstract

The portability and popularity of smartphones makes it easy to capture digital images in a variety of situations, including witnessing criminal activity. Forensic analysis of digital images captured by smartphone-cameras could be used for legal and investigative purposes, not only to have a recording of an act, but also to establish a relationship between a digital image and its capture device, and between the latter and a person. Fortunately, given the similarities, forensic ballistics techniques and procedures used to identify weapons from fired bullets can be used to identify smartphone-cameras from digital images. However, while there are several solutions for identifying smartphone-cameras from digital images, not all of them focus on two key issues: reducing the number of reference images used to create the fingerprint of the smartphone-camera and reducing the processing time for identification. To address these issues, a method based on a two-degree-of-freedom discriminant analysis using pixel intensity and intrinsic noise in digital images is proposed. It uses a Mahalanobis classifier to compare the traces left by the capture source in a digital image with the fingerprints calculated for the candidate smartphone-cameras. This allows the identification of the most likely smartphone-camera that captured a digital image. A significant advantage of the proposed method is that it relies on a smaller number of reference images to estimate the smartphone-camera fingerprints. They are built using only fifteen reference images, as opposed to thirty or more images required by other techniques. This means faster processing times as image clippings are analyzed rather than whole digital images. The proposed method demonstrates high performance, since for disputed flat images it achieves an identification effectiveness rate of 87.50% with one reference image, and 100.00% when fifteen reference images are considered. For disputed natural images, it achieves an identification effectiveness rate of 97.50% with fifteen reference images.

摘要

智能手机的便携性和普及性使得在包括目睹犯罪活动在内的各种情况下都能轻松拍摄数字图像。对智能手机摄像头拍摄的数字图像进行法医分析可用于法律和调查目的,不仅是为了记录行为,还为了建立数字图像与其拍摄设备之间以及后者与个人之间的关系。幸运的是,鉴于相似性,用于从发射的子弹识别武器的法医弹道技术和程序可用于从数字图像识别智能手机摄像头。然而,虽然有几种从数字图像识别智能手机摄像头的解决方案,但并非所有方案都关注两个关键问题:减少用于创建智能手机摄像头指纹的参考图像数量以及减少识别的处理时间。为了解决这些问题,提出了一种基于使用数字图像中的像素强度和固有噪声的二自由度判别分析的方法。它使用马氏距离分类器将捕获源在数字图像中留下的痕迹与为候选智能手机摄像头计算的指纹进行比较。这使得能够识别最有可能拍摄数字图像的智能手机摄像头。所提出方法的一个显著优点是它依靠较少数量的参考图像来估计智能手机摄像头指纹。它们仅使用十五张参考图像构建,而其他技术需要三十张或更多图像。这意味着在分析图像剪辑而非整个数字图像时处理时间更快。所提出的方法表现出高性能,因为对于有争议的平面图像,使用一张参考图像时识别有效率达到87.50%,考虑十五张参考图像时达到100.00%。对于有争议的自然图像,使用十五张参考图像时识别有效率达到97.50%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4d7a/11784753/6044de86e1ee/peerj-cs-10-2513-g001.jpg

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