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首页> 外文期刊>EURASIP journal on advances in signal processing >Ensemble hidden Markov models with application to landmine detection
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Ensemble hidden Markov models with application to landmine detection

机译:集成隐马尔可夫模型并应用于地雷探测

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We introduce an ensemble learning method for temporal data that uses a mixture of hidden Markov models (HMM). We hypothesize that the data are generated by K models, each of which reflects a particular trend in the data. The proposed approach, called ensemble HMM (eHMM), is based on clustering within the log-likelihood space and has two main steps. First, one HMM is fit to each of the N individual training sequences. For each fitted model, we evaluate the log-likelihood of each sequence. This results in an N-by-N log-likelihood distance matrix that will be partitioned into K groups using a relational clustering algorithm. In the second step, we learn the parameters of one HMM per cluster. We propose using and optimizing various training approaches for the different K groups depending on their size and homogeneity. In particular, we investigate the maximum likelihood (ML), the minimum classification error (MCE), and the variational Bayesian (VB) training approaches. Finally, to test a new sequence, its likelihood is computed in all the models and a final confidence value is assigned by combining the models’ outputs using an artificial neural network. We propose both discrete and continuous versions of the eHMM. Our approach was evaluated on a real-world application for landmine detection using ground-penetrating radar (GPR). Results show that both the continuous and discrete eHMM can identify meaningful and coherent HMM mixture components that describe different properties of the data. Each HMM mixture component models a group of data that share common attributes. These attributes are reflected in the mixture model’s parameters. The results indicate that the proposed method outperforms the baseline HMM that uses one model for each class in the data.
机译:我们介绍了一种使用混合隐马尔可夫模型(HMM)的时间数据集成学习方法。我们假设数据是由K个模型生成的,每个模型都反映了数据中的特定趋势。所提出的方法称为整体HMM(eHMM),它基于对数似然空间内的聚类,并有两个主要步骤。首先,一个HMM适合N个单独的训练序列。对于每个拟合模型,我们评估每个序列的对数似然性。这将产生一个N×N对数似然距离矩阵,该矩阵将使用关系聚类算法划分为K个组。第二步,我们学习每个群集一个HMM的参数。我们建议根据其大小和同质性,针对不同的K组使用和优化各种训练方法。特别是,我们研究了最大似然(ML),最小分类误差(MCE)和变分贝叶斯(VB)训练方法。最后,为了测试新序列,需要在所有模型中计算其可能性,并使用人工神经网络通过合并模型的输出来分配最终置信度值。我们提出了eHMM的离散版本和连续版本。我们的方法是在实际应用中使用探地雷达(GPR)进行地雷探测的评估。结果表明,连续eHMM和离散eHMM均可识别有意义和连贯的HMM混合成分,这些成分描述了数据的不同属性。每个HMM混合组件都对一组共享公共属性的数据进行建模。这些属性反映在混合模型的参数中。结果表明,所提出的方法优于基线HMM,后者对数据中的每个类别使用一种模型。

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