M. Alper SelverE. Yesim ZoralMustafa SecmenSelver, M. AlperZoral, E. YesimSecmen, Mustafa2025-10-062015978-2-8748-7039-297828748703922325-030510.1109/EuMC.2015.73460802-s2.0-84964339444https://gcris.yasar.edu.tr/handle/123456789/6877https://doi.org/10.1109/EuMC.2015.7346080The classification of similar shaped objects from scattered electromagnetic waves is a difficult problem as it heavily depends on the aspect angle. The reduction of the adverse effects of the aspect angle is possible by extracting distinguishable features from the scattered signals. In this paper we propose a target identification method in resonance scattering region using a novel structural feature set based on scattered signal waveform. The feature set carries out a triangularization process to model the hills and valleys of the scattered signal. Once these sub-waveforms are identified their peaks widths increase and decrease rates are calculated for each of them. Together with the inter-distance between the sub-waves feature vector is constructed. Then cross validation strategies are used to design a classifier using multi-layer perceptron network. The simulations performed by two different target libraries, dielectric rods with different permittivity and small scale aircraft models show very high accuracy of the proposed system in real time.Englishinfo:eu-repo/semantics/closedAccessresonance scattering region, target identification, time domain analysis, waveform analysisResonance Scattering RegionWaveform AnalysisTime Domain AnalysisTarget IdentificationReal Time Classification of Targets Using Waveforms in Resonance Scattering RegionConference Object