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Unsupervised learning of finite full covariance multivariate generalized Gaussian mixture models for human activity recognition

机译:有限的充分协方差多变量广义高斯混合模型的无监督学习人类活动识别

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摘要

We propose in this paper to recognize human activities through an unsupervised learning of finite multivariate generalized Gaussian mixture model. We address an important cue in finite mixture model which is the estimation of the mixture model's parameters for a full covariance matrix. We have developed a novel learning algorithm based on Fixed-point covariance matrix estimator combined with the Expectation-Maximization algorithm. Furthermore, we have proposed an appropriate minimum message length (MML) criterion to deal with model selection problem. We evaluated our proposed method on synthetic datasets and a challenging application namely : Human activity recognition from images and videos. The obtained resutls show clearly the merits of our proposed framework which has better capabilities with full covariance matrix when modeling correlated data.
机译:我们提出本文通过无人驾驶的有限多元广义高斯混合模型来识别人类活动。我们在有限混合模型中解决了一个重要的提示,这是对全协方差矩阵的混合模型参数的估计。我们开发了一种基于定点协方差矩阵估计器的新型学习算法,与期望最大化算法相结合。此外,我们提出了适当的最小消息长度(MML)标准来处理模型选择问题。我们在合成数据集中评估了我们提出的方法和充满挑战的应用程序:从图像和视频的人类活动识别。所获得的Resutls显然显示了我们所提出的框架的优点,该框架在建模相关数据时具有完整协方差矩阵具有更好的能力。

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