利用纹理特征和噪声指纹融合技术识别视频源摄像头

IF 2 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Forensic Science International-Digital Investigation Pub Date : 2024-03-18 DOI:10.1016/j.fsidi.2024.301746
Tigga Anmol, K. Sitara
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引用次数: 0

摘要

在视频取证中,源相机识别 (SCI) 的目的是识别和验证正在调查的视频的来源。这有助于调查人员将视频追踪到其所有者,或缩小搜索空间以识别罪犯。如今,使用智能手机通过互联网或社交媒体录制和分享视频非常方便。先进的视频编辑工具和软件使犯罪者可以修改视频内容。因此,识别用于捕捉视频的正确源相机变得复杂而艰难。基于视频元数据信息的现有方法不再可靠,因为这些信息可能被修改或删除。因此,需要更好的取证程序来证明将作为法庭证据的视频的真实性和完整性。由于相机传感器在制造过程中存在不易察觉的缺陷,因此所有捕获的视频中都存在某些固有的相机传感器属性,如微妙的照片响应不均匀性(PRNU)痕迹。在 SCI 中,这些特性被用于对设备或模型进行分类,因为它们是独一无二的。在这项工作中,我们将重点放在视频的 SCI 或视频源相机识别(VSCI)上,以验证视频的真实性。当从一组平场图像计算时,PRNU 会受到高纹理内容或后处理的影响。为了减轻这些影响,视频 I 帧 PRNU 的高阶小波统计(HOWS)信息与其他两个纹理特征(即局部二进制模式(LBP)和灰度共现矩阵(GLCM))的信息相结合。提取的特征向量通过连接进行融合,并输入支持向量机(SVM)分类器,以执行 VSCI 的训练和测试。在不同公开数据集的视频上对我们提出的方法进行的实验评估表明,我们的方法在准确性、资源效率和复杂性方面都很有效。
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Video source camera identification using fusion of texture features and noise fingerprint

In Video forensics, the objective of Source Camera Identification (SCI) is to identify and verify the origin of a video that is under investigation. This aids the investigator to trace the video to its owner or narrow down the search space for identifying the offender. Nowadays, it is easy to record and share videos via internet or social media with smartphones. The availability of sophisticated video editing tools and software allow offenders to modify video's context. Thus, identifying the right source camera that was used to capture the video becomes complicated and strenuous. Existing methods based on video metadata information are no longer reliable as it could be modified or stripped off. Better forensic procedures are therefore required to prove the authenticity and integrity of the video that will be used as evidence in court of law. Certain inherent camera sensor properties such as, subtle traces of Photo Response Non-Uniformity (PRNU) are present in all captured videos due to unnoticeable defect during the manufacture of camera's sensor. These properties are used in SCI to classify devices or models as they are unique. In this work, we focus on SCI from videos or Video Source Camera Identification (VSCI) to verify the authenticity of videos. PRNU can be affected by highly textured content or post-processing when computed from a set of flat field images. To mitigate these effects, Higher Order Wavelet Statistics (HOWS) information from PRNU of a video I-frame is combined with information from two other texture features i.e., Local Binary Pattern (LBP) and Gray Level Co-occurrence Matrix (GLCM). The extracted feature vector is fused via concatenation and fed to Support Vector Machine (SVM) classifier to perform training and testing for VSCI. Experimental evaluation of our proposed method on videos from different publicly available datasets show the effectiveness of our method in terms of accuracy, resource efficiency, and complexity.

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来源期刊
CiteScore
5.90
自引率
15.00%
发文量
87
审稿时长
76 days
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