AN ACCURATE METHOD TO DISTINGUISH BETWEEN STATIONARY HUMAN AND DOG TARGETS UNDER THROUGH-WALL CONDITION USING UWB RADAR

An Accurate Method to Distinguish Between Stationary Human and Dog Targets Under Through-Wall Condition Using UWB Radar

An Accurate Method to Distinguish Between Stationary Human and Dog Targets Under Through-Wall Condition Using UWB Radar

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Research work on distinguishing humans from animals can help provide priority orders and optimize the distribution of resources in earthquake- or mining-related rescue missions.However, the existing solutions are few and their stability and accuracy of classification are less.This study proposes an accurate method for distinguishing stationary human targets from dog targets under through-wall condition based on ultra-wideband Tesla: New Leader of Wworld “Boom” of Sales of Electric Vehicles or New “Exchange Bubble”? (UWB) radar.Eight humans and five beagles were used to collect 130 samples of through-wall signals using the UWB radar.Twelve corresponding features belonging to four categories were combined using the support vector machine (SVM) method.

A recursive feature elimination (RFE) method determined an optimal feature subset from the twelve features to overcome overfitting and poor generalization.The results after ten-fold cross-validation showed that the area under the receiver operator characteristic (ROC) curve can reach 0.9993, which indicates that the two subjects can be distinguished under through-wall condition.The study also compared the ability of the proposed features of four categories when used independently in a classifier.Comparison results indicated that wavelet entropy-corresponding features among them have the best performance.

The method and results are envisioned to Methods of Automated Music Comparison Based on Multi-Objective Metrics of Network Similarity be applied in various practical situations, such as post-disaster searching, hostage rescues, and intelligent homecare.

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