基于遗传算法的目标监控视频摘要

Shefali Gandhi, T. Ratanpara
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引用次数: 3

摘要

视频摘要提供了长监控视频的再现,同时保留了原始视频的基本活动。通过同时显示多个原本发生在不同时间段的活动,将原始视频中的活动覆盖到更短的时间内。由于活动要在不同于原始视频的时间段中显示,因此该过程从提取运动对象开始。采用时间中值算法对背景进行建模,采用背景减法对前景目标进行检测。在视频中,每个移动的物体都被表示为一个时空活动管。利用遗传算法的概念对活动管的时间位移进行优化。在时间上的排列可以使碰撞最小,并保持事件的时间顺序,被认为是最佳的解决方案。然后生成延时背景视频,作为摘要视频的背景。最后,利用泊松图像编辑技术将活动管拼接到延时背景视频上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object-Based Surveillance Video Synopsis Using Genetic Algorithm
Video synopsis provides representation of the long surveillance video, while preserving the essential activities of the original video. The activity in the original video is covered into a shorter period by simultaneously displaying multiple activities, which originally occurred at different time segments. As activities are to be displayed in different time segments than original video, the process begins with extracting moving objects. Temporal median algorithm is used to model background and foreground objects are detected using background subtraction method. Each moving object is represented as a space-time activity tube in the video. The concept of genetic algorithm is used for optimized temporal shifting of activity tubes. The temporal arrangement of tubes which results in minimum collision and maintains chronological order of events is considered as the best solution. The time-lapse background video is generated next, which is used as background for the synopsis video. Finally, the activity tubes are stitched on the time-lapse background video using Poisson image editing.
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