视频生成模型的递归估计

Nemanja Petrović, A. Ivanovic, N. Jojic
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引用次数: 24

摘要

本文提出了一种无监督视频聚类的生成模型和学习过程。该工作解决了两个重要问题:视频中可变性源的逼真建模和快速变换不变帧聚类。我们提出了一种将递归模型估计、快速推理和在线学习相结合的方法来解决该模型中计算密集型学习的问题。因此,我们实现了实时帧聚类性能。该方法的新颖之处包括高斯混合聚类算法,以及两个高斯混合间KL散度的快速计算。证明了聚类和KL近似方法的效率和性能。我们还提出了一种新的基于生成模型中变量可视化的视频浏览工具。
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Recursive estimation of generative models of video
In this paper we present a generative model and learning procedure for unsupervised video clustering into scenes. The work addresses two important problems: realistic modeling of the sources of variability in the video and fast transformation invariant frame clustering. We suggest a solution to the problem of computationally intensive learning in this model by combining the recursive model estimation, fast inference, and on-line learning. Thus, we achieve real time frame clustering performance. Novel aspects of this method include an algorithm for the clustering of Gaussian mixtures, and the fast computation of the KL divergence between two mixtures of Gaussians. The efficiency and the performance of clustering and KL approximation methods are demonstrated. We also present novel video browsing tool based on the visualization of the variables in the generative model.
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