利用生物逼真的动态突触神经网络保护军事边界免受人类和车辆接近

Hyung-Ook Park, A. Dibazar, T. Berger
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引用次数: 16

摘要

本研究的目的是检测和分类接近的人类威胁或车辆,例如接近军事基地等安全区的自杀式炸弹袭击者。更具体地说,本研究的重点是(i)开发一个振动识别系统,可以检测系统振动事件;实体可能是媒介、人类、动物或乘用车,并且(ii)区分这一系列事件与背景和单个振动事件(例如,树枝掉落)之间的区别。我们使用了一个地震传感器来检测脚步声和车辆产生的振动。检波器是一种廉价的传感器,它提供了简单和即时的部署以及远程探测能力。我们还设计了一种低功耗、低噪音、低成本的硬件解决方案,可以在传感器所在的地方处理地震波,并且系统的无线能力使其能够与远程指挥中心通信。采用动态突触神经网络(dynamic synapse neural network, DSNN)对振动信号的时间特征进行建模,该系统对人的脚步声、车辆和背景的误识别率分别为1.7%、6.7%和0.0%。这些模型能够拒绝四足动物的脚步声(在这项研究中是一只受过训练的狗)。该系统以0.02%的错误识别率拒绝了狗的脚步声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Protecting Military Perimeters from Approaching Human and Vehicle Using Biologically Realistic Dynamic Synapse Neural Network
The goal of this study is to detect and classify approaching human threats or vehicles, e.g. suicide bombers nearing a secured zone such as military bases. More specifically, this research is focused on (i) developing a vibration recognition system that can detect systematic vibration events; the entity might be a medium, human, animal, or a passenger vehicle, and (ii) discriminating between such a series of events vs. background and a single vibration event, e.g., falling of a tree limb. We have employed a seismic sensor to detect vibrations generated by footsteps and vehicles. A geophone is an inexpensive sensor which provides easy and instant deployment as well as long range detection capability. We have also designed a low power, low noise, and low cost hardware solution to process seismic waves locally where the sensor is located and wireless capability of the system makes it to communicate with a remote command center. Temporal features of the vibration signals were modeled by the dynamic synapse neural network (DSNN) using data recorded in the deserts of Joshua Tree, CA. The system showed 1.7% false recognition rate for the recognition of human footsteps, 6.7% for vehicle, and 0.0% for background. The models were able to reject quadrupedal animal's footsteps (in this study a trained dog). The system rejected dog's footsteps with 0.02% false recognition rate.
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