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Event identification from seismic/magnetic feature vectors: a comparative study

机译:从地震/磁性特征向量进行事件识别:比较研究

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Abstract: The event identification problem plays a large role in the application of unattended ground sensors to the monitoring of borders and checkpoints. The choice of features and methods for classifying features affects how accurately these classifications are made. Finding features which reliably distinguish events of interest may require measurements based on separate physical phenomena. Classification methods include neural net versus fuzzy logic approaches, and within the neural category, different architectures and transfer functions for reaching decisions. This study examines ways of optimizing feature sets and surveys common techniques for classifying feature vectors corresponding to physical events. We apply each technique to samples of existing data, and compare discrimination attributes. Specifically, we calculate the confusion matrices for each technique applied to each sample dataset, and reduce them statistically to scalar scores. In addition, we gauge how the accuracy of each method is degraded by reducing the feature vector length by one element. Finally, we gather rough estimates of the relative cpu performance of the forward prediction algorithms.!5
机译:摘要:事件识别问题在无人值守的地面传感器在边界和检查站的监视中的应用中起着重要作用。特征的选择和特征分类的方法会影响进行这些分类的准确性。寻找可靠区分感兴趣事件的特征可能需要基于单独的物理现象进行测量。分类方法包括神经网络与模糊逻辑方法,并且在神经类别内包括不同的体系结构和用于决策的传递函数。这项研究研究了优化特征集的方法,并调查了对与物理事件相对应的特征向量进行分类的常用技术。我们将每种技术应用于现有数据的样本,并比较歧视属性。具体来说,我们计算适用于每个样本数据集的每种技术的混淆矩阵,并将它们统计地减少为标量得分。此外,我们通过减少特征向量长度一个元素来衡量每种方法的精度如何降低。最后,我们对前向预测算法的相对cpu性能进行了粗略估计。!5

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