高效统计学习框架及其在人类活动和面部表情识别中的应用

Fatma Najar, S. Bourouis, M. Alshar'e, Roobaea Alroobaea, N. Bouguila, A. Al-Badi, Ines Channoufi
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引用次数: 0

摘要

在本文中,我们通过研究贝叶斯推理方法的有效性来解决人类活动和面部表情识别的问题。实际上,本文提出了一种有限多元广义高斯混合模型的贝叶斯学习方法。多元广义高斯分布因其对大范围数据建模的能力和形状的灵活性而受到鼓励。我们在这项工作中的主要贡献是在Metropolis-Hastings算法中为所提出的生成模型开发了马尔可夫链蒙特卡罗。在本研究中,我们还解决了一些与机器学习和模式识别相关的关键问题,如统计模型的参数估计。我们在涉及人类活动识别和面部表情识别的两个具有挑战性的应用中展示了我们开发的学习框架的优点。
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Efficient Statistical Learning Framework with Applications to Human Activity and Facial Expression Recognition
In this paper, we address the problem of human activities and facial expression recognition by investigating the effectiveness of Bayesian inference methods. Indeed, a novel method termed as Bayesian learning for finite multivariate generalized Gaussian mixture model is developed. The multivariate generalized Gaussian distribution is encouraged by its ability to model a large range of data and its shape flexibility. Our main contribution in this work is to develop a Markov Chain Monte Carlo within Metropolis-Hastings algorithm for proposed generative model. In this research, we tackle also some key issues related to machine learning and pattern recognition such as the statistical model’s parameters estimation. We demonstrate the merits of our developed learning framework over two challenging applications that concern human activity recognition and facial expression recognition.
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