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Radar Image Reconstruction from Raw ADC Data using Parametric Variational Autoencoder with Domain Adaptation

机译:使用具有域自适应的参数变化AutoEncoder从原始ADC数据重建雷达图像重建

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This paper presents a parametric variational autoencoder-based human target detection and localization framework working directly with the raw analog-to-digital converter data from the frequency modulated continuous wave radar. We propose a parametrically constrained variational autoencoder, with residual and skip connections, capable of generating the clustered and localized target detections on the range-angle image. Furthermore, to circumvent the problem of training the proposed neural network on all possible scenarios using real radar data, we propose domain adaptation strategies whereby we first train the neural network using ray tracing based model data and then adapt the network to work on real sensor data. This strategy ensures better generalization and scalability of the proposed neural network even though it is trained with limited radar data. We demonstrate the superior detection and localization performance of our proposed solution compared to the conventional signal processing pipeline and earlier state-of-art deep U-Net architecture with range-doppler images as inputs.
机译:本文提出了一种基于参数变化的自动化器的人目标检测和直接与来自频率调制连续波雷达的原始模数转换器数据一起工作的人目标检测和本地化框架。我们提出了一个参数化的变形自身拓码,具有残差和跳过连接,能够在范围角图像上产生聚类和局部的目标检测。此外,为了规避使用真实雷达数据的所有可能场景训练所提出的神经网络的问题,我们提出了使用基于光线跟踪的射线跟踪的域适应策略,然后将网络调整为实际传感器数据的工作。该策略确保了所提出的神经网络的更好的泛化和可扩展性,即使它受到限制雷达数据的培训。与传统信号处理流水线和早期的最先进的深u-NET架构相比,我们展示了我们所提出的解决方案的卓越的检测和定位性能,以及具有范围 - 多普勒图像作为输入。

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