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A regularized spectral algorithm for Hidden Markov Models with applications in computer vision

机译:隐马尔可夫模型的正则化谱算法及其在计算机视觉中的应用

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摘要

Hidden Markov Models (HMMs) are among the most important and widely used techniques to deal with sequential or temporal data. Their application in computer vision ranges from action/gesture recognition to videosurveillance through shape analysis. Although HMMs are often embedded in complex frameworks, this paper focuses on theoretical aspects of HMM learning. We propose a regularized algorithm for learning HMMs in the spectral framework, whose computations have no local minima. Compared with recently proposed spectral algorithms for HMMs, our method is guaranteed to produce probability values which are always physically meaningful and which, on synthetic mathematical models, give very good approximations to true probability values. Furthermore, we place no restriction on the number of symbols and the number of states. On various pattern recognition data sets, our algorithm consistently outperforms classical HMMs, both in accuracy and computational speed. This and the fact that HMMs are used in vision as building blocks for more powerful classification approaches, such as generative embedding approaches or more complex generative models, strongly support spectral HMMs (SHMMs) as a new basic tool for pattern recognition.
机译:隐马尔可夫模型(HMM)是处理顺序或时间数据的最重要且使用最广泛的技术之一。它们在计算机视觉中的应用范围从动作/手势识别到通过形状分析的视频监视。尽管HMM通常嵌入在复杂的框架中,但本文重点关注HMM学习的理论方面。我们提出一种用于在频谱框架中学习HMM的正则化算法,其计算没有局部最小值。与最近提出的用于HMM的频谱算法相比,我们的方法可以保证产生始终在物理上有意义的概率值,并且在合成数学模型上,该概率值可以很好地逼近真实概率值。此外,我们对符号数和状态数没有限制。在各种模式识别数据集上,我们的算法在准确性和计算速度上始终优于传统的HMM。这个事实以及HMM在视觉中用作更强大的分类方法(例如生成嵌入方法或更复杂的生成模型)的基础,这一事实强烈支持光谱HMM(SHMM)作为模式识别的新基本工具。

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