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Bayesian Learning of Infinite Asymmetric Gaussian Mixture Models for Background Subtraction

机译:无限不对称高斯混合模型的背景减数贝叶斯学习

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摘要

Background subtraction plays an important role in many video-based applications such as video surveillance and object detection. As such, it has drawn much attention in the computer vision research community. Utilizing a Gaussian mixture model (GMM) has especially shown merit in solving this problem. However, a GMM is not ideal for modeling asymmetrical data. Another challenge we face when applying mixture models is the correct identification of the right number of mixture components to model the data at hand. Hence, in this paper, we propose a new infinite mathematical model based on asymmetric Gaussian mixture models. We also present a novel background subtraction approach based on the proposed infinite asymmetric Gaussian mixture (IAGM) model with a non-parametric learning algorithm. We test our proposed model on the challenging Change Detection dataset. Our evaluations show comparable to superior results with other methods in the literature.
机译:背景减除在许多基于视频的应用程序(例如视频监视和对象检测)中扮演着重要角色。因此,它在计算机视觉研究界引起了很多关注。利用高斯混合模型(GMM)特别显示了解决此问题的优点。但是,对于不对称数据建模,GMM并不是理想的选择。应用混合模型时,我们面临的另一个挑战是正确识别正确数量的混合组分以对手头的数据进行建模。因此,在本文中,我们提出了一种基于非对称高斯混合模型的新的无限数学模型。我们还基于提出的无限非对称高斯混合(IAGM)模型和非参数学习算法,提出了一种新颖的背景扣除方法。我们在具有挑战性的变更检测数据集上测试了我们提出的模型。我们的评估表明,与文献中的其他方法相比,其结果可媲美出色的结果。

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