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Variational Bayesian Learning of Generalized Dirichlet-Based Hidden Markov Models Applied to Unusual Events Detection

机译:基于广义狄利克雷的隐马尔可夫模型的变分贝叶斯学习在异常事件检测中的应用

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Learning a hidden Markov model (HMM) is typically based on the computation of a likelihood which is intractable due to a summation over all possible combinations of states and mixture components. This estimation is often tackled by a maximization strategy, which is known as the Baum-Welch algorithm. However, some drawbacks of this approach have led to the consideration of Bayesian methods that add a prior over the parameters in order to work with the posterior probability and the marginal likelihood. These approaches can lead to good models but to the cost of extremely long computations (e.g., Markov Chain Monte Carlo). More recently, variational Bayesian frameworks have been proposed as a Bayesian alternative that keeps the computation tractable and the approximation tight. It relies on the introduction of a prior over the parameters to be learned and on an approximation of the true posterior distribution. After proving good standing in the case of finite mixture models and discrete and Gaussian HMMs, we propose here to derive the equations of the variational learning of the Dirichlet mixture-based HMM, and to extend it to the generalized Dirichlet. The latter case presents several properties that make the estimation more accurate. We prove the validity of this approach within the context of unusual event detection in public areas using the University of California San Diego data sets. HMMs are trained over normal video sequences using the typical Baum-Welch approach versus the variational one. The variational learning leads to more accurate models for the detection and localization of anomaly, and the general HMM approach is shown to be versatile enough to handle the detection of various synthetically generated tampering events.
机译:学习隐马尔可夫模型(HMM)通常是基于对可能性的计算,该可能性由于状态和混合成分的所有可能组合的求和而难以处理。该估计通常通过最大化策略(称为Baum-Welch算法)解决。但是,此方法的一些缺点导致需要考虑贝叶斯方法,该方法会在参数上添加先验,以便与后验概率和边际可能性一起使用。这些方法可以产生良好的模型,但会导致计算时间过长(例如Markov Chain Monte Carlo)。最近,已经提出了变分贝叶斯框架作为贝叶斯替代方案,该贝叶斯框架保持了计算的易处理性和近似性。它依赖于要学习的参数的先验引入,以及真实后验分布的近似值。在证明了有限混合模型以及离散和高斯HMM的良好表现之后,我们在这里提出导出基于Dirichlet混合HMM的变分学习方程,并将其扩展到广义Dirichlet。后一种情况具有使估算更加准确的几个属性。我们使用加利福尼亚大学圣地亚哥分校的数据集,在公共区域异常事件检测的背景下证明了这种方法的有效性。使用典型的Baum-Welch方法(相对于变型方法)在常规视频序列上训练HMM。变分学习导致用于异常检测和定位的更准确模型,并且一般的HMM方法显示了足够的通用性,可以处理各种合成生成的篡改事件的检测。

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