MEMS加速度计在先进信息处理目标分类中的应用研究

J. Lan, Zhaohui Zhang, Tian Lan
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引用次数: 5

摘要

本文介绍了MEMS加速度计利用先进的信息处理技术在目标分类中的新应用。基于MEMS加速度计的检测系统体积小,重量轻,功耗低,成本低,可以在许多不同的应用环境下工作。为了提取不同车辆目标激发的地震信号特征,实现目标识别,本文对典型车辆目标的地震特性进行了研究。将人工神经网络与遗传算法(ANNCGA)相结合的方法应用于不同类型车辆目标的地震信号分类。介绍了该技术及其体系结构。该算法已用于室外环境下车辆目标的地震信号分类。通过实验,可以证明所获取目标的地震特性是正确的,ANNCGA方法可以有效地解决目标分类问题,MEMS加速度计可以用于车辆目标分类
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Research on Application of MEMS Accelerometer in Target Classification by Advanced Information Processing
This paper presents a novel application of MEMS accelerometer in target classification by means of advanced information processing. The detection system based on MEMS accelerometer is small in size, light in weight, has low power consumption and low cost, and can work under severe circumstances for many different applications. In order to extract features of seismic signals stimulated by different vehicle targets and to recognize targets, seismic properties of typical vehicle targets are researched in the paper. A technique of artificial neural networks combined with genetic algorithm (ANNCGA) is applied to classification of seismic signals that belong to different kinds of vehicle targets. The technique and its architecture have been presented. The algorithm had been used for classification of seismic signals of vehicle targets in the outdoor environment. Through experiments, it can be proven that seismic properties of target acquired are correct, ANNCGA method is effective to solve the problem of target classification, and MEMS accelerometer can be used in vehicle target classification
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