实时照明不变运动变化检测

Konstantinos Avgerinakis, A. Briassouli, Y. Kompatsiaris
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引用次数: 3

摘要

提出了一种新颖的实时检测运动变化的方法,可以实现对事件的检测和识别。当前的视频变化检测侧重于镜头变化,这取决于外观,而不是运动。运动的变化可以通过峰度检测到活跃的像素。运动数据的统计建模表明,拉普拉斯分布提供了最准确的拟合。将运动的拉普拉斯模型用于序列变化检测试验,实时检测运动的变化。假警报检测确定检测到的变化是否确实是由运动引起的,还是由不同的场景照明引起的。这导致在许多视频的运动变化的精确检测,其中镜头变化检测如果显示失败。实验表明,即使在不同的场景光照条件下,该方法也能实时发现有意义的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real time illumination invariant motion change detection
An original approach for real time detection of changes in motion is presented, which can lead to the detection and recognition of events. Current video change detection focuses on shot changes which depend on appearance, not motion. Changes in motion are detected in pixels that are found to be active via the kurtosis. Statistical modeling of the motion data shows that the Laplace distribution provides the most accurate fit. The Laplace model of the motion is used in a sequential change detection test, which detects the changes in real time. False alarm detection determined whether a detected change is indeed induced by motion or by varying scene illumination. This leads to precise detection of changes in motion for many videos, where shot change detection if shown to fail. Experiments show that the proposed method finds meaningful changes in real time, even under conditions of varying scene illumination.
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