过去一年中添加的文章,按日期排序

Waterscenes: A multi-task 4d radar-camera fusion dataset and benchmark for autonomous driving on water surfaces

S Yao, R Guan, Z Wu, Y Ni, Z Zhang, Z Huang… - arXiv preprint arXiv …, 2023 - arxiv.org
S Yao, R Guan, Z Wu, Y Ni, Z Zhang, Z Huang, X Zhu, Y Yue, Y Yue, H Seo, KL Man
arXiv preprint arXiv:2307.06505, 2023arxiv.org
350 天前 - Autonomous driving on water surfaces plays an essential role in executing
hazardous and time-consuming missions, such as maritime surveillance, survivors rescue,
environmental monitoring, hydrography mapping and waste cleaning. This work presents
WaterScenes, the first multi-task 4D radar-camera fusion dataset for autonomous driving on
water surfaces. Equipped with a 4D radar and a monocular camera, our Unmanned Surface
Vehicle (USV) proffers all-weather solutions for discerning object-related information …
Autonomous driving on water surfaces plays an essential role in executing hazardous and time-consuming missions, such as maritime surveillance, survivors rescue, environmental monitoring, hydrography mapping and waste cleaning. This work presents WaterScenes, the first multi-task 4D radar-camera fusion dataset for autonomous driving on water surfaces. Equipped with a 4D radar and a monocular camera, our Unmanned Surface Vehicle (USV) proffers all-weather solutions for discerning object-related information, including color, shape, texture, range, velocity, azimuth, and elevation. Focusing on typical static and dynamic objects on water surfaces, we label the camera images and radar point clouds at pixel-level and point-level, respectively. In addition to basic perception tasks, such as object detection, instance segmentation and semantic segmentation, we also provide annotations for free-space segmentation and waterline segmentation. Leveraging the multi-task and multi-modal data, we conduct numerous experiments on the single modality of radar and camera, as well as the fused modalities. Results demonstrate that 4D radar-camera fusion can considerably enhance the robustness of perception on water surfaces, especially in adverse lighting and weather conditions. WaterScenes dataset is public on https://waterscenes.github.io.
arxiv.org