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Robust Feedback Zoom Tracking for Digital Video Surveillance

机译:用于数字视频监控的强大反馈缩放跟踪

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摘要

Zoom tracking is an important function in video surveillance, particularly in traffic management and security monitoring. It involves keeping an object of interest in focus during the zoom operation. Zoom tracking is typically achieved by moving the zoom and focus motors in lenses following the so-called “trace curve”, which shows the in-focus motor positions versus the zoom motor positions for a specific object distance. The main task of a zoom tracking approach is to accurately estimate the trace curve for the specified object. Because a proportional integral derivative (PID) controller has historically been considered to be the best controller in the absence of knowledge of the underlying process and its high-quality performance in motor control, in this paper, we propose a novel feedback zoom tracking (FZT) approach based on the geometric trace curve estimation and PID feedback controller. The performance of this approach is compared with existing zoom tracking methods in digital video surveillance. The real-time implementation results obtained on an actual digital video platform indicate that the developed FZT approach not only solves the traditional one-to-many mapping problem without pre-training but also improves the robustness for tracking moving or switching objects which is the key challenge in video surveillance.
机译:缩放跟踪是视频监控中的重要功能,尤其是在流量管理和安全监控中。它涉及在缩放操作期间将关注的对象保持在焦点上。通常通过按照所谓的“迹线曲线”移动镜头中的变焦和聚焦马达来实现变焦跟踪,该曲线显示了在特定物距下聚焦马达的位置与变焦马达的位置。缩放跟踪方法的主要任务是准确估计指定对象的跟踪曲线。由于比例积分微分(PID)控制器历史上一直被认为是最佳控制器,在不了解基础过程及其电机控制的高质量性能的情况下,在本文中,我们提出了一种新颖的反馈缩放跟踪(FZT )方法基于几何轨迹曲线估计和PID反馈控制器。将该方法的性能与数字视频监控中的现有缩放跟踪方法进行了比较。在实际的数字视频平台上获得的实时实施结果表明,开发的FZT方法不仅解决了传统的一对多映射问题,无需进行预训练,而且提高了跟踪运动或切换对象的鲁棒性,这是关键视频监控的挑战。

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