MMPFNet: A Novel Lightweight Road Target Detection Method of FMCW Radar Based on Hypergraph Mechanism and Attention Enhancement
Dongdong Huang, Dawei Xu, Yongjie Zhai

TL;DR
This paper introduces MMPFNet, a lightweight radar-based road target detection model that improves accuracy and efficiency for automotive systems.
Contribution
The novel MMPFNet model combines hypergraph mechanisms and attention enhancement for improved road target detection using FMCW radar data.
Findings
MMPFNet improves mAP50-95 by 16% and precision by 6% over YOLOv13n on radar datasets.
The model achieves state-of-the-art results on non-visible light datasets like CRUW-ONRD.
MMPFNet maintains a lightweight design while enhancing detection accuracy for road targets.
Abstract
Road target detection is a crucial aspect of current research in automotive advanced driver assistance systems and intelligent transportation systems, where accuracy, speed, and lightweight design are key considerations. Compared to various sensors employed in driving assistance systems, millimeter-wave radar offers advantages such as all-weather operation, low hardware cost, strong penetration capability, and the ability to extract rich spatial information about targets. This paper tackles the challenges posed by the characteristics of Range-Angle map data from 77 GHz Frequency-Modulated Continuous Wave radar—namely, non-visible light imagery, abstract representation, rich fine details, and overlapping features. To this end, this paper proposes MMPFNet, a lightweight model based on the hypergraph mechanism with attention enhancement, as an extension of YOLOv13. First, an M-DSC3k2…
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Taxonomy
TopicsAdvanced Neural Network Applications · Advanced SAR Imaging Techniques · Autonomous Vehicle Technology and Safety
