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Algorithms Exploiting Ultrasonic Sensors for Subject Classification

机译:利用超声传感器进行主题分类的算法

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Proposed here is a series of techniques exploiting micro-Doppler ultrasonic sensors capable of characterizing various detected mammalian targets based on their physiological movements captured a series of robust features. Employed is a combination of unique and conventional digital signal processing techniques arranged in such a manner they become capable of classifying a series of walkers. These processes for feature extraction develops a robust feature space capable of providing discrimination of various movements generated from bipeds and quadrupeds and further subdivided into large or small. These movements can be exploited to provide specific information of a given signature dividing it in a series of subset signatures exploiting wavelets to generate start/stop times. After viewing a series spectrograms of the signature we are able to see distinct differences and utilizing kurtosis, we generate an envelope detector capable of isolating each of the corresponding step cycles generated during a walk. The walk cycle is defined as one complete sequence of walking/running from the foot pushing off the ground and concluding when returning to the ground. This time information segments the events that are readily seen in the spectrogram but obstructed in the temporal domain into individual walk sequences. This walking sequence is then subsequently translated into a three dimensional waterfall plot defining the expected energy value associated with the motion at particular instance of time and frequency. The value is capable of being repeatable for each particular class and employable to discriminate the events. Highly reliable classification is realized exploiting a classifier trained on a candidate sample space derived from the associated gyrations created by motion from actors of interest. The classifier developed herein provides a capability to classify events as an adult humans, children humans, horses, and dogs at potentially high rates based on the tested sample space. The algorithm developed and described will provide utility to an underused sensor modality for human intrusion detection because of the current high-rate of generated false alarms. The active ultrasonic sensor coupled in a multi-modal sensor suite with binary, less descriptive sensors like seismic devices realizing a greater accuracy rate for detection of persons of interest for homeland purposes.
机译:本文提出了一系列利用微多普勒超声传感器的技术,这些传感器能够根据各种检测到的哺乳动物目标的生理运动来表征其特征,从而捕获了一系列强大的特征。所采用的是独特的和常规的数字信号处理技术的组合,其布置方式使其能够对一系列助行器进行分类。这些用于特征提取的过程开发了一个健壮的特征空间,该空间可以提供对由两足动物和四足动物产生并进一步细分为大或小的运动的区分。可以利用这些运动来提供给定签名的特定信息,从而利用小波将其划分为一系列子集签名,以生成开始/停止时间。查看签名的一系列频谱图后,我们可以看到明显的差异并利用峰度,我们生成了一个包络检波器,该包络检波器能够隔离行走过程中产生的每个相应的踏步周期。步行周期被定义为从脚离开地面并在返回地面时结束的完整步行/跑步序列。该时间信息将在频谱图中容易看到但在时域中受阻的事件分割为单独的行走序列。然后,将该步行序列转换为三维瀑布图,该三维瀑布图定义了与特定时间和频率下的运动相关的预期能量值。该值对于每个特定的类都是可重复的,并且可用于区分事件。利用在候选样本空间上训练的分类器,实现了高度可靠的分类,该候选样本空间是由感兴趣的参与者的运动所产生的关联回转产生的。本文开发的分类器提供了基于测试的样本空间以潜在高速率将事件分类为成人,儿童,马和狗的功能。所开发和描述的算法将为当前未充分利用的传感器模式提供实用性,以用于人类入侵检测,因为当前生成的虚警率很高。有源超声传感器与多模态传感器套件结合在一起,与诸如地震设备之类的二进制,描述较少的传感器实现了更高的准确率,可用于检测出于国土目的的相关人员。

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