End-to-End Training of Neural Networks for Automotive Radar Interference Mitigation

Publikation: Beitrag in Buch/Bericht/KonferenzbandBeitrag in einem KonferenzbandBegutachtung

Abstract

In this paper we propose a new method for training neural networks (NNs) for frequency modulated continuous wave (FMCW) radar mutual interference mitigation. Instead of training NNs to regress from interfered to clean radar signals as in previous work, we train NNs directly on object detection maps. We do so by performing a continuous relaxation of the cell-averaging constant false alarm rate (CA-CFAR) peak detector, which is a well-established algorithm for object detection using radar. With this new training objective we are able to increase object detection performance by a large margin. Furthermore, we introduce separable convolution kernels to strongly reduce the number of parameters and computational complexity of convolutional NN architectures for radar applications. We validate our contributions with experiments on real-world measurement data and compare them against signal processing interference mitigation methods.
Originalspracheenglisch
Titel2023 IEEE International Radar Conference (RADAR)
Seitenumfang6
DOIs
PublikationsstatusVeröffentlicht - 2023
Veranstaltung2023 IEEE International Radar Conference: RADAR 2023 - Sydney, Australien
Dauer: 6 Nov. 202310 Nov. 2023

Konferenz

Konferenz2023 IEEE International Radar Conference
KurztitelRADAR 2023
Land/GebietAustralien
OrtSydney
Zeitraum6/11/2310/11/23

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