CVJun 7, 2024

UVCPNet: A UAV-Vehicle Collaborative Perception Network for 3D Object Detection

arXiv:2406.04647v19 citations
Originality Incremental advance
AI Analysis

This work addresses perception gaps in UAV-vehicle collaboration for autonomous systems, though it appears incremental with specific technical improvements.

The paper tackles 3D object detection in aerial-ground collaborative perception by proposing UVCPNet, which addresses challenges like field-of-view disparities and depth estimation. The method improves detection accuracy by 6.1% on their virtual dataset and 2.7% on a public dataset.

With the advancement of collaborative perception, the role of aerial-ground collaborative perception, a crucial component, is becoming increasingly important. The demand for collaborative perception across different perspectives to construct more comprehensive perceptual information is growing. However, challenges arise due to the disparities in the field of view between cross-domain agents and their varying sensitivity to information in images. Additionally, when we transform image features into Bird's Eye View (BEV) features for collaboration, we need accurate depth information. To address these issues, we propose a framework specifically designed for aerial-ground collaboration. First, to mitigate the lack of datasets for aerial-ground collaboration, we develop a virtual dataset named V2U-COO for our research. Second, we design a Cross-Domain Cross-Adaptation (CDCA) module to align the target information obtained from different domains, thereby achieving more accurate perception results. Finally, we introduce a Collaborative Depth Optimization (CDO) module to obtain more precise depth estimation results, leading to more accurate perception outcomes. We conduct extensive experiments on both our virtual dataset and a public dataset to validate the effectiveness of our framework. Our experiments on the V2U-COO dataset and the DAIR-V2X dataset demonstrate that our method improves detection accuracy by 6.1% and 2.7%, respectively.

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