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Video Event Classification and Image Segmentation Based on Noncausal Multidimensional Hidden Markov Models

机译:基于非因果多维隐马尔可夫模型的视频事件分类与图像分割

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摘要

In this paper, we propose a novel solution to an arbitrary noncausal, multidimensional hidden Markov model (HMM) for image and video classification. First, we show that the noncausal model can be solved by splitting it into multiple causal HMMs and simultaneously solving each causal HMM using a fully synchronous distributed computing framework, therefore referred to as distributed HMMs. Next we present an approximate solution to the multiple causal HMMs that is based on an alternating updating scheme and assumes a realistic sequential computing framework. The parameters of the distributed causal HMMs are estimated by extending the classical 1-D training and classification algorithms to multiple dimensions. The proposed extension to arbitrary causal, multidimensional HMMs allows state transitions that are dependent on all causal neighbors. We, thus, extend three fundamental algorithms to multidimensional causal systems, i.e., 1) expectation-maximization (EM), 2) general forward-backward (GFB), and 3) Viterbi algorithms. In the simulations, we choose to limit ourselves to a noncausal 2-D model whose noncausality is along a single dimension, in order to significantly reduce the computational complexity. Simulation results demonstrate the superior performance, higher accuracy rate, and applicability of the proposed noncausal HMM framework to image and video classification.
机译:在本文中,我们为图像和视频分类的任意非因果多维隐马尔可夫模型(HMM)提出了一种新颖的解决方案。首先,我们表明可以通过将非因果模型分解为多个因果HMM并使用完全同步的分布式计算框架(因此称为分布式HMM)来同时求解每个因果HMM来解决非因果模型。接下来,我们提出一种基于交替更新方案的多重因果HMM的近似解决方案,并假设一个现实的顺序计算框架。通过将经典的一维训练和分类算法扩展到多个维度,可以估算分布式因果HMM的参数。提议的对任意因果多维HMM的扩展允许状态转换依赖于所有因果邻居。因此,我们将三种基本算法扩展到多维因果系统,即1)期望最大化(EM),2)总体前向后向(GFB)和3)维特比算法。在仿真中,我们选择将自己限制为一个非因果二维模型,其非因果关系沿单个维度,以便显着降低计算复杂性。仿真结果表明,所提出的非因果HMM框架具有优越的性能,较高的准确率和适用性。

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