用于取证面部识别分析的闭路电视质量评估

Mohamad Firham Efendy Md. Senan, S. Abdullah, Wafa’ Mohd Kharudin, Nur Afifah Mohd Saupi
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引用次数: 7

摘要

闭路电视(CCTV)用于监控录像,是为法医分析提供数字证据的最常见的数字设备之一。在视频取证分析中,从闭路电视录像中提取出具有目标主体或客体的片段进行进一步分析。然而,由于摄像机的类型、配置以及摄像机的位置等因素,这些记录的质量往往很差。法医人脸识别的结果在很大程度上取决于监控录像的质量。低质量的闭路电视录像会降低人脸识别结果的置信度,因此不会成为在法庭上提出的有力证据。本研究的目的是概念化一个用于法医面部识别分析的闭路电视证据质量评估框架。本研究方法分为两个阶段。初始阶段为闭路电视证据测试阶段,实验采用不同型号、不同分辨率的闭路电视摄像机,受试者与摄像机之间的距离。在第二阶段,将受试者的面部与入学阶段拍摄的面部进行比较。法医人脸识别系统得到的分数是基于相机分辨率、相机类型、距离以及对面部图像进行双立方等增强处理后排名分数的变化。对结果进行分析,对这些参数进行质量评价。总体而言,评分和排名的评价随距离的增加而降低。当拍摄距离相机超过5米时,系统也无法检测到人脸。ACTI E62型相机在3米距离上以1280 × 720分辨率拍摄,获得了5.95分的最高分。双三次增强方法提高了评分和排序,特别是对于低分辨率模式的相机模型。
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CCTV quality assessment for forensics facial recognition analysis
Closed-circuit television (CCTV) is used to perform surveillance recordings, and it is one of the most common digital devices that provide digital evidence for the purpose of forensic analysis. In video forensic analysis, the footage with the target subject or object is extracted out from the CCTV recordings for further analysis. However, the quality of these recordings are often poor due to several factors, such as the type of the camera, the configuration, and also the position of the camera. The results of forensic face recognition depend highly on the quality of the CCTV recordings. Poor quality of CCTV recordings would reduce the confidence level of the face recognition result, thus would not make a strong evidence to be presented in a court of law. The objective of this research is to conceptualise a framework for quality assessment in CCTV evidence to be used in forensic face recognition analysis. The method of this research was divided into two phases. Initial phase covered CCTV evidence testing phase where the experiment was done based on different types of CCTV camera with different resolutions, and distances between the subject and the camera. In the second phase, the face of the subjects were compared to the face taken during the enrolment phase. The score obtained from the forensic face recognition system would be based on the camera resolutions, types of camera, distances, and also the changes of ranking score after applying the enhancement process such as Bicubic to the facial images. The results were analyzed for quality assessment towards these parameters. In general, the evaluation of scoring and ranking decreased as the distance increased. The face also could not be detected by the system when they were taken more than 5 meters distance from the camera. The highest score of 5.95 was obtained by using resolution 1280 × 720 at distance of 3 meters taken by camera model ACTI E62. The Bicubic enhancement method improved the scoring and ranking especially with the camera model that have low resolution modes.
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