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首页> 外文期刊>Computational Intelligence >DETONATION CLASSIFICATION FROM ACOUSTIC SIGNATURE WITH THE RESTRICTED BOLTZMANN MACHINE
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DETONATION CLASSIFICATION FROM ACOUSTIC SIGNATURE WITH THE RESTRICTED BOLTZMANN MACHINE

机译:用受限的Boltzmann机器根据声学特征进行爆震分类

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We compare the recently proposed Discriminative Restricted Boltzmann Machine (DRBM) to the classical Support Vector Machine (SVM) on a challenging classification task consisting in identifying weapon classes from audio signals. The three weapon classes considered in this work (mortar, rocket, and rocket-propelled grenade), are difficult to reliably classify with standard techniques because they tend to have similar acoustic signatures. In addition, specificities of the data available in this study make it challenging to rigorously compare classifiers, and we address methodological issues arising from this situation. Experiments show good classification accuracy that could make these techniques suitable for fielding on autonomous devices. DRBMs appear to yield better accuracy than SVMs, and are less sensitive to the choice of signal preprocessing and model hyperparameters. This last property is especially appealing in such a task where the lack of data makes model validation difficult.
机译:在具有挑战性的分类任务(包括从音频信号中识别武器类别)中,我们将最近提出的判别限制性玻尔兹曼机(DRBM)与经典支持向量机(SVM)进行了比较。这项工作中考虑的三种武器类别(迫击炮,火箭和火箭推进手榴弹)很难用标准技术可靠地分类,因为它们往往具有相似的声学特征。此外,本研究中可用数据的特殊性使得严格比较分类器具有挑战性,我们将解决这种情况下产生的方法学问题。实验表明,良好的分类精度可使这些技术适用于在自主设备上进行部署。 DRBM似乎比SVM具有更高的准确性,并且对信号预处理和模型超参数的选择不那么敏感。在缺乏数据使模型验证变得困难的任务中,最后一个特性尤其吸引人。

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