Hierarchical Architecture and Feature Mixing for Ego-Motion Estimation using Automotive Radar

Konferenz: ICMIM 2024 - 7th IEEE MTT Conference
16.04.2024-17.04.2024 in Boppard

Tagungsband: ITG-Fb. 315: ICMIM 2024

Seiten: 4Sprache: EnglischTyp: PDF

Autoren:
Zhu, Simin; Fioranelli, Francesco; Yarovoy, Alexander; Ravindran, Satish; Chen, Lihui

Inhalt:
This paper focuses on the challenge of estimating the 2D instantaneous ego-motion of vehicles equipped with an automotive radar. To further improve our previous study based on the weighted least squares (wLSQ) method and purpose-designed neural networks (NNs), this work proposes a new network architecture that supports local and global feature extraction as well as point-wise dynamic feature channel mixing. Compared with our previous work, the proposed method provides better estimation accuracy, lighter network size, and faster runtime performance.