MapFusion: A Novel BEV Feature Fusion Network for Multi-modal Map Construction
Xiaoshuai Hao, Yunfeng Diao, Mengchuan Wei, Yifan Yang and, Peng Hao, Rong Yin, Hui Zhang, Weiming Li, Shu Zhao, Yu Liu

TL;DR
MapFusion introduces a novel multi-modal BEV feature fusion network with cross-modal interaction and dynamic fusion modules, significantly improving map construction accuracy for autonomous driving.
Contribution
The paper presents a new BEV feature fusion method with cross-modal interaction and adaptive fusion modules, addressing misalignment and information loss issues in multi-modal map construction.
Findings
Achieves 3.6% improvement in HD map construction accuracy
Achieves 6.2% improvement in BEV map segmentation accuracy
Demonstrates versatility across different map construction tasks
Abstract
Map construction task plays a vital role in providing precise and comprehensive static environmental information essential for autonomous driving systems. Primary sensors include cameras and LiDAR, with configurations varying between camera-only, LiDAR-only, or camera-LiDAR fusion, based on cost-performance considerations. While fusion-based methods typically perform best, existing approaches often neglect modality interaction and rely on simple fusion strategies, which suffer from the problems of misalignment and information loss. To address these issues, we propose MapFusion, a novel multi-modal Bird's-Eye View (BEV) feature fusion method for map construction. Specifically, to solve the semantic misalignment problem between camera and LiDAR BEV features, we introduce the Cross-modal Interaction Transform (CIT) module, enabling interaction between two BEV feature spaces and enhancing…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Geographic Information Systems Studies · Image Retrieval and Classification Techniques
