Synthesis of Micro-Doppler Signatures for Abnormal Gait using Multi-branch Discriminator with Embedded Kinematics

B. Erol, S. Gurbuz, M. Amin
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引用次数: 11

Abstract

A key limiting factor in the depth, hence accuracy of deep neural networks (DNNs) designed for radar applications, is the meager amount of data typically available for training. Generative adversarial networks (GANs) have been proposed in many fields for the generation of synthetic data. It was shown, however, that when applied to micro-Doppler signature simulation, GANs suffer from performance degradation due to the generation of kinematically impossible samples. In this work, kinematic analysis of the micro-Doppler signature envelope is integrated as an additional branch in the discriminator network of a GAN to improve the kinematic fidelity of synthetic data when simulating abnormal gait signatures. Results show that the proposed multi-branch GAN network results in greater overlap in the feature space of synthetic abnormal gait samples with that of measured signatures for abnormal gait.
基于嵌入运动学的多分支鉴别器合成异常步态微多普勒特征
为雷达应用而设计的深度神经网络(dnn)的深度和准确性的一个关键限制因素是通常可用于训练的数据量太少。生成对抗网络(GANs)已经在许多领域被提出用于生成合成数据。然而,当应用于微多普勒特征仿真时,由于产生运动上不可能的样本,gan的性能会下降。在这项工作中,微多普勒信号包络的运动学分析被集成为GAN鉴别器网络中的一个额外分支,以提高模拟异常步态特征时合成数据的运动学保真度。结果表明,所提出的多分支GAN网络使合成的异常步态样本特征空间与测量的异常步态特征空间有较大的重叠。
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