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Sensor fusion and feature-based human/animal classification for Unattended Ground Sensors

机译:无人值守地面传感器的传感器融合和基于特征的人/动物分类

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In this paper we examine novel signal processing algorithms that utilize wavelet statistics, spectral statistics and power spectral density in addition to cadence and kurtosis for robust discrimination of humans and animals in an Unattended Ground Sensor (UGS) field. The wavelet statistics are based on the average, variance and energy of the third scale residue. The spectral statistics are based on amplitude and shape features. A learning classifier approach is used for discrimination. Training data consists of scripted events with humans walking/running along known paths; as well as riders on horses and moving vehicles on a two node sensor network. Natural events are recorded when animals, such as cows, coyotes, rabbits and kangaroo rats are in the vicinity of the sensor nodes. Each node has a three axis accelerometer and a three axis geophone and one node has a low frequency geophone in addition. In our work we use the C4.5 classifier which is a tree-based classifier and is capable of modeling complex decision surfaces while simultaneously limiting the complexity of the trees through pruning schemes. The classifier is tested on test data and the performance results are very promising — results indicate that UGS-only systems are indeed feasible for border security. The development of a successful signal processing solution to better discriminate between humans and animals would be very valuable to the Department of Homeland Security and our paper will summarize these new results.
机译:在本文中,我们研究了新颖的信号处理算法,该算法利用小波统计,频谱统计和功率谱密度以及踏频和峰度,可以在无人值守地面传感器(UGS)领域中对人和动物进行鲁棒的区分。小波统计基于第三尺度残差的平均值,方差和能量。频谱统计基于振幅和形状特征。学习分类器方法用于判别。训练数据包括脚本事件,其中人类沿已知路径行走/奔跑;以及两点传感器网络上的骑马者和正在行驶的车辆。当动物(例如牛,土狼,兔子和袋鼠)在传感器节点附近时,会记录自然事件。每个节点都有一个三轴加速度计和一个三轴地震检波器,另外一个节点还有一个低频地震检波器。在我们的工作中,我们使用C4.5分类器,它是一种基于树的分类器,能够对复杂的决策面进行建模,同时通过修剪方案来限制树的复杂性。分类器已经根据测试数据进行了测试,性能结果非常有希望-结果表明,仅限UGS的系统对于边境安全确实是可行的。开发一种成功的信号处理解决方案以更好地区分人与动物对国土安全部来说非常有价值,我们的论文将总结这些新成果。

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