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Nonparametric Bayesian Time-Series Modeling and Clustering of Time-Domain Ground Penetrating Radar Landmine Responses

机译:时域探地雷达地雷响应的非参数贝叶斯时间序列建模与聚类

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Time domain ground penetrating radar (GPR) has been shown to be a powerful sensing phenomenology for detecting buried objects such as landmines. Landmine detection with GPR data typically utilizes a feature-based pattern classification algorithm to discriminate buried landmines from other sub-surface objects. In high-fidelity GPR, the time-frequency characteristics of a landmine response should be indicative of the physical construction and material composition of the landmine and could therefore be useful for discrimination from other non-threatening sub-surface objects. In this research we propose modeling landmine time-domain responses with a nonparametric Bayesian time-series model and we perform clustering of these time-series models with a hierarchical nonparametric Bayesian model. Each time-series is modeled as a hidden Markov model (HMM) with autoregressive (AR) state densities. The proposed nonparametric Bayesian prior allows for automated learning of the number of states in the HMM as well as the AR order within each state density. This creates a flexible time-series model with complexity determined by the data. Furthermore, a hierarchical non-parametric Bayesian prior is used to group landmine responses with similar HMM model parameters, thus learning the number of distinct landmine response models within a data set. Model inference is accomplished using a fast variational mean field approximation that can be implemented for on-line learning.
机译:时域探地雷达(GPR)已被证明是一种强大的传感现象学,可用于探测诸如地雷之类的掩埋物体。具有GPR数据的地雷检测通常利用基于特征的模式分类算法来区分掩埋的地雷与其他地下物体。在高保真GPR中,地雷响应的时频特性应指示地雷的物理构造和材料成分,因此可用于区分其他非威胁性地下物体。在这项研究中,我们建议使用非参数贝叶斯时间序列模型对地雷时域响应进行建模,并使用分层非参数贝叶斯模型对这些时间序列模型进行聚类。每个时间序列都建模为具有自回归(AR)状态密度的隐马尔可夫模型(HMM)。提出的非参数贝叶斯先验算法允许自动学习HMM中的状态数以及每个状态密度内的AR阶数。这将创建一个灵活的时间序列模型,其复杂度由数据决定。此外,使用分层的非参数贝叶斯先验算法将具有相似HMM模型参数的地雷响应分组,从而了解数据集中不同地雷响应模型的数量。使用快速变分平均场近似值可以完成模型推断,该方法可以用于在线学习。

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