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Consistent Detection and Identification of Individuals in a Large Camera Network

机译:大型相机网络中的个体的一致检测和识别

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In the wake of an increasing number of terrorist attacks, counter-terrorism measures are now a main focus of many research programmes. An important issue for the police is the ability to track individuals and groups reliably through underground stations, and in the case of post-event analysis, to be able to ascertain whether specific individuals have been at the station previously. While there exist many motion detection and tracking algorithms, the reliable deployment of them in a large network is still ongoing research. Specifically, to track individuals through multiple views, on multiple levels and between levels, consistent detection and labelling of individuals is crucial. In view of these issues, we have developed a change detection algorithm to work reliably in the presence of periodic movements, e.g. escalators and scrolling advertisements, as well as a content-based retrieval technique for identification. The change detection technique automatically extracts periodically varying elements in the scene using Fourier analysis, and constructs a Markov model for the process. Training is performed online, and no manual intervention is required, making this system suitable for deployment in large networks. Experiments on real data shows significant improvement over existing techniques. The content-based retrieval technique uses MPEG-7 descriptors to identify individuals. Given the environment under which the system operates, i.e. at relatively low resolution, this approach is suitable for short timescales. For longer timescales, other forms of identification such as gait, or if the resolution allows, face recognition, will be required.
机译:在越来越多的恐怖袭击之后,反恐措施现在是许多研究计划的主要重点。警方的一个重要问题是能够通过地下站可靠地跟踪个人和团体,并且在事后分析的情况下,能够确定特定个人以前是否已经在车站。虽然存在许多运动检测和跟踪算法,但在大型网络中的可靠部署仍在进行研究。具体而言,要通过多个视图跟踪个体,在多个级别和级别之间,一致的检测和对个人的标记至关重要。鉴于这些问题,我们开发了一种在周期性运动的情况下可靠地工作的变化检测算法,例如,自动扶梯和滚动广告,以及基于内容的检索技术,用于识别。使用傅立叶分析,改变检测技术自动提取场景中的周期性变化元素,并构建用于该过程的马尔可夫模型。培训在线执行,并且不需要手动干预,使该系统适用于大型网络中的部署。实验实验显示对现有技术的显着改进。基于内容的检索技术使用MPEG-7描述符来识别个人。鉴于系统在该系统运行的环境中,即在相对较低的分辨率下,这种方法适用于短时间。对于更长的时间尺寸,将需要诸如步态的其他形式的识别,或者如果分辨率允许面部识别。

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