H. Yalcin, M. Hebert, R. Collins, Michael J. Black
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引用次数: 72
Abstract
In this work, we address the detection of vehicles in a video stream obtained from a moving airborne platform. We propose a Bayesian framework for estimating dense optical flow over time that explicitly estimates a persistent model of background appearance. The approach assumes that the scene can be described by background and occlusion layers, estimated within an expectation-maximization framework. The mathematical formulation of the paper is an extension of the work in (H. Yalcin et al., 2005) where motion and appearance models for foreground and background layers are estimated simultaneously in a Bayesian framework.
在这项工作中,我们解决了从移动的机载平台获得的视频流中的车辆检测问题。我们提出了一个贝叶斯框架估计密集光流随着时间的推移,明确估计一个持久的模型的背景外观。该方法假设场景可以通过背景层和遮挡层来描述,并在期望最大化框架内进行估计。本文的数学公式是(H. Yalcin et al., 2005)工作的延伸,其中在贝叶斯框架中同时估计前景层和背景层的运动和外观模型。