构建监视系统的任务可见性区间

Ser-Nam Lim, Anurag Mittal, L. Davis
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引用次数: 12

摘要

多摄像头监控系统的目标之一是收集场景中物体的有用视频片段。所收集的视频中的对象应无遮挡,在给定摄像机的视野内,并满足特定任务的分辨率要求。为此,我们描述了一种构建“任务可见间隔”的算法,该算法是关于感知什么(任务-对象对),何时感知(开始任务的可行未来时间间隔)以及如何感知(要使用的相机以及相应的视角和焦距)的信息元组。该算法首先寻找物体的角度范围相互重叠的时间间隔,导致距离给定相机最远的物体被遮挡。在这些间隔之外,然后构建子间隔,以便为捕获对象存在可行的相机设置。实验结果说明了系统在构造这种任务可见性区间时的能力,然后使用贪婪算法对它们进行调度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constructing task visibility intervals for a surveillance system
One of the goals of a multi-camera surveillance system is to collect useful video clips of objects in the scene. Objects in the collected videos should be unobstructed, in the field of view of the given camera, and meet task-specific resolution requirement. For this purpose, we describe an algorithm that constructs "task visibility intervals", which are tuples of information about what to sense (task-object pairs), when to sense (feasible future temporal intervals to start a task) and how to sense (the camera to use and the corresponding viewing angles and focal length). The algorithm first looks for temporal intervals within which the angular extents of objects overlap each other, causing the object farthest from the given camera to be occluded. Outside these intervals, sub-intervals are then constructed such that feasible camera settings exist for capturing the object. Experimental results are provided to illustrate the system capabilities in constructing such task visibility intervals, followed by scheduling them using a greedy algorithm.
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