首页> 外文会议>Conference on Unmanned/Unattended Sensors and Sensor Networks >Discriminating mortar launch/impact events utilizing acoustic sensors
【24h】

Discriminating mortar launch/impact events utilizing acoustic sensors

机译:利用声学传感器鉴别砂浆发射/冲击事件

获取原文

摘要

Feature extraction methods based on the discrete wavelet transform and multiresolution analysis facilitate the development of a robust classification algorithm that reliably discriminates between launch and impact mortar events via acoustic signals produced during these events. Distinct characteristics arise within the different explosive events because impact events emphasize concussive and shrapnel effects, while launch events result from explosion that expel and propel a mortar round from a gun. The ensuing blast waves are readily characterized by variations in the corresponding peak pressure and rise time of the waveform, differences in the ratio of positive pressure amplitude to the negative amplitude, variations in the prominent frequencies associated with the varying blast events 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/concussive properties associated with the events. In this work, the discrete wavelet transform is used to extract the predominant components of these characteristics from the acoustic signatures of the event at ranges of 1km. 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. We show that the algorithms provide a reliable discrimination (>84%) between launch and impact events using data collecting during several separate field test experiments.
机译:基于离散小波变换的特征提取方法和多分辨率分析有助于通过这些事件期间产生的声学信号可靠地区分发射和冲击迫击砂浆事件之间的可靠性分类算法。不同的爆炸事件中出现明显的特点,因为影响事件强调震荡和弹片效应,而发射事件是由驱逐的爆炸和从枪推进砂浆的爆炸事件。随着波形的相应峰值压力和上升时间的变化,随后的爆炸波容易表征,正压幅度与负幅度的差异,与变化的爆炸事件相关的突出频率的变化和整体变化所得到的波形的持续时间。还可以识别独特的属性,这取决于枪管,枪口射弹速度的属性,以及与事件相关的爆炸/巨大属性。在这项工作中,离散小波变换用于从1km的范围内从事件的声学签名中提取这些特征的主要组成部分。通过培训的前馈神经网络分类器实现高度可靠的识别,该分类器培训,该特征空间训练来自来自多光分解的不同级别的小波系数和更高频率细节的特征空间。我们表明,算法在几个单独的场测试实验期间使用数据收集,在发射和冲击事件之间提供可靠的歧视(> 84%)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号