Saved in:
Bibliographic Details
Main Authors: Tian, Pengju, Cheng, Peirui, Wang, Yuchao, Wang, Zhechao, Wang, Zhirui, Yan, Menglong, Yang, Xue, Sun, Xian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.04648
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916279465541632
author Tian, Pengju
Cheng, Peirui
Wang, Yuchao
Wang, Zhechao
Wang, Zhirui
Yan, Menglong
Yang, Xue
Sun, Xian
author_facet Tian, Pengju
Cheng, Peirui
Wang, Yuchao
Wang, Zhechao
Wang, Zhirui
Yan, Menglong
Yang, Xue
Sun, Xian
contents Multi-UAV collaborative 3D object detection can perceive and comprehend complex environments by integrating complementary information, with applications encompassing traffic monitoring, delivery services and agricultural management. However, the extremely broad observations in aerial remote sensing and significant perspective differences across multiple UAVs make it challenging to achieve precise and consistent feature mapping from 2D images to 3D space in multi-UAV collaborative 3D object detection paradigm. To address the problem, we propose an unparalleled camera-based multi-UAV collaborative 3D object detection paradigm called UCDNet. Specifically, the depth information from the UAVs to the ground is explicitly utilized as a strong prior to provide a reference for more accurate and generalizable feature mapping. Additionally, we design a homologous points geometric consistency loss as an auxiliary self-supervision, which directly influences the feature mapping module, thereby strengthening the global consistency of multi-view perception. Experiments on AeroCollab3D and CoPerception-UAVs datasets show our method increases 4.7% and 10% mAP respectively compared to the baseline, which demonstrates the superiority of UCDNet.
format Preprint
id arxiv_https___arxiv_org_abs_2406_04648
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle UCDNet: Multi-UAV Collaborative 3D Object Detection Network by Reliable Feature Mapping
Tian, Pengju
Cheng, Peirui
Wang, Yuchao
Wang, Zhechao
Wang, Zhirui
Yan, Menglong
Yang, Xue
Sun, Xian
Computer Vision and Pattern Recognition
Multi-UAV collaborative 3D object detection can perceive and comprehend complex environments by integrating complementary information, with applications encompassing traffic monitoring, delivery services and agricultural management. However, the extremely broad observations in aerial remote sensing and significant perspective differences across multiple UAVs make it challenging to achieve precise and consistent feature mapping from 2D images to 3D space in multi-UAV collaborative 3D object detection paradigm. To address the problem, we propose an unparalleled camera-based multi-UAV collaborative 3D object detection paradigm called UCDNet. Specifically, the depth information from the UAVs to the ground is explicitly utilized as a strong prior to provide a reference for more accurate and generalizable feature mapping. Additionally, we design a homologous points geometric consistency loss as an auxiliary self-supervision, which directly influences the feature mapping module, thereby strengthening the global consistency of multi-view perception. Experiments on AeroCollab3D and CoPerception-UAVs datasets show our method increases 4.7% and 10% mAP respectively compared to the baseline, which demonstrates the superiority of UCDNet.
title UCDNet: Multi-UAV Collaborative 3D Object Detection Network by Reliable Feature Mapping
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.04648