空中监视条件下的背景减法

F. Sánchez-Fernández, Philippe Brunet, S. Senouci
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引用次数: 4

摘要

监视系统的第一步是创建环境的表示。背景减法是一种广泛使用的算法,用于定义视频中大部分时间保持静止的图像部分。在监视任务中,该模型有助于识别监视区域中的异常目标。在移动平台(智能汽车、无人机等)上建立背景模型是一项具有挑战性的任务,因为在获取图像时摄像机是运动的。在本文中,我们提出了一种方法来支持由航空图像引起的不稳定性融合的空间和时间信息的图像运动。我们使用帧差作为第一个近似,然后估计像素的年龄。后者给了我们一个像素随时间的不变性水平。使用年龄梯度方向和自适应权值来减少摄像机运动对背景建模的影响。我们模拟了几种影响航空图像采集的条件,如有意和无意的相机运动,对我们提出的方法进行了测试。实验结果表明,与GMM和KDE算法相比,该算法的性能有所提高。
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Background subtraction for aerial surveillance conditions
The first step in a surveillance system is to create a representation of the environment. Background subtraction is widely used algorithm to define a part of an image that most time remains stationary in a video. In surveillance tasks, this model helps to recognize those outlier objects in an area under monitoring. Set up a background model on moving platforms (intelligent cars, UAVs, etc.) is a challenging task due camera motion when images are acquired. In this paper, we propose a method to support instabilities caused by aerial images fusing spatial and temporal information about image motion. We used frame difference as first approximation, then age of pixels is estimated. This latter gives us an invariability level of a pixel over time. Gradient direction of ages and an adaptive weight are used to reduce impact from camera motion on background modelling. We tested our proposed method simulating several conditions that impair aerial image acquisition such as intentional and unintentional camera motion. Experimental results show improved performance compared to algorithms GMM and KDE.
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