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Reliable Classification of High Explosive and Chemical/Biological Artillery Using Acoustic Sensors

机译:使用声传感器对高爆和化学/生物大炮进行可靠分类

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Feature extraction methods based on the discrete wavelet transform and multiresolution analysis are used to develop a robust classification algorithm that reliably discriminates between conventional and simulated chemical/biological artillery rounds via acoustic signals produced during detonation utilizing a generic acoustic sensor. Based on the transient properties of the signature blast distinct characteristics arise within the different acoustic signatures because high explosive warheads emphasize concussive and shrapnel effects, while chemical/biological warheads are designed to disperse their contents over large areas, therefore employing a slower burning, less intense explosive to mix and spread their contents. The ensuing blast waves are readily characterized by variations in the corresponding peak pressure and rise time of the blast, differences in the ratio of positive pressure amplitude to the negative amplitude, and variations in the overall duration of the resulting waveform. Unique attributes can also be identified that depend upon the properties of the gun tube, projectile speed at the muzzle, and the explosive burn rates of the warhead. The algorithm enables robust classification of various airburst signatures using acoustics. It is capable of being integrated within an existing chemical/biological sensor, a stand-alone generic sensor, or a part of a disparate sensor suite. When emplaced in high-threat areas, this added capability would further provide field personal with advanced battlefield knowledge without the aide of so-called "sniffer" sensors that rely upon air particle information based on direct contact with possible contaminated air. In this work, the discrete wavelet transform is used to extract the predominant components of these characteristics from air burst signatures at ranges exceeding 2km while maintaining temporal sequence of the data to keep relevance to the transient differences of the airburst signatures. Highly reliable discrimination is achieved with a feedforward neural network classifier trained on a feature space derived from the distribution of wavelet coefficients and higher frequency details found within different levels of the multiresolution decomposition the neural network then is capable of classifying new airburst signatures as Chemical/Biological or High Explosive.
机译:使用基于离散小波变换和多分辨率分析的特征提取方法来开发鲁棒的分类算法,该算法通过使用通用声学传感器通过在爆炸过程中产生的声学信号可靠地区分常规炮弹和模拟炮弹。基于签名爆炸的瞬态特性,在不同的声学签名中会出现不同的特征,因为高爆炸性战斗部强调震荡和弹片效应,而化学/生物战斗部被设计为将其内容物散布在较大的区域,因此燃烧较慢,强度较小炸药混合并散布其内容物。随后的冲击波易于表征为冲击波的相应峰值压力和上升时间变化,正压力幅度与负幅度之比的差异以及所得波形的总持续时间的变化。还可根据枪管的特性,枪口处的弹丸速度以及弹头的爆炸燃烧率来识别独特的属性。该算法可以使用声音对各种空爆信号进行鲁棒性分类。它能够集成到现有的化学/生物传感器,独立的通用传感器或完全不同的传感器套件的一部分中。当放置在高威胁区域时,这种附加功能将进一步为战场人员提供先进的战场知识,而无需所谓的“嗅探器”传感器的帮助,该传感器依赖于直接接触可能的受污染空气的空气颗粒信息。在这项工作中,离散小波变换用于从超过2km范围内的空气突发特征中提取这些特征的主要成分,同时保持数据的时间顺序,以保持与突发特征的瞬时差异的相关性。通过在特征空间上训练的前馈神经网络分类器可实现高度可靠的判别,该特征空间是从小波系数的分布和在多分辨率分解的不同级别中发现的更高频率细节导出的,然后神经网络便能够将新的空气爆发特征分类为化学/生物或高爆药。

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