DOLPHINS: Dataset for Collaborative Perception enabled Harmonious and
Interconnected Self-driving
- URL: http://arxiv.org/abs/2207.07609v1
- Date: Fri, 15 Jul 2022 17:07:07 GMT
- Title: DOLPHINS: Dataset for Collaborative Perception enabled Harmonious and
Interconnected Self-driving
- Authors: Ruiqing Mao, Jingyu Guo, Yukuan Jia, Yuxuan Sun, Sheng Zhou, Zhisheng
Niu
- Abstract summary: Vehicle-to-Everything (V2X) network has enabled collaborative perception in autonomous driving.
The lack of datasets has severely blocked the development of collaborative perception algorithms.
We release DOLPHINS: dataset for cOllaborative Perception enabled Harmonious and INterconnected Self-driving.
- Score: 19.66714697653504
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Vehicle-to-Everything (V2X) network has enabled collaborative perception in
autonomous driving, which is a promising solution to the fundamental defect of
stand-alone intelligence including blind zones and long-range perception.
However, the lack of datasets has severely blocked the development of
collaborative perception algorithms. In this work, we release DOLPHINS: Dataset
for cOllaborative Perception enabled Harmonious and INterconnected
Self-driving, as a new simulated large-scale various-scenario multi-view
multi-modality autonomous driving dataset, which provides a ground-breaking
benchmark platform for interconnected autonomous driving. DOLPHINS outperforms
current datasets in six dimensions: temporally-aligned images and point clouds
from both vehicles and Road Side Units (RSUs) enabling both Vehicle-to-Vehicle
(V2V) and Vehicle-to-Infrastructure (V2I) based collaborative perception; 6
typical scenarios with dynamic weather conditions make the most various
interconnected autonomous driving dataset; meticulously selected viewpoints
providing full coverage of the key areas and every object; 42376 frames and
292549 objects, as well as the corresponding 3D annotations, geo-positions, and
calibrations, compose the largest dataset for collaborative perception; Full-HD
images and 64-line LiDARs construct high-resolution data with sufficient
details; well-organized APIs and open-source codes ensure the extensibility of
DOLPHINS. We also construct a benchmark of 2D detection, 3D detection, and
multi-view collaborative perception tasks on DOLPHINS. The experiment results
show that the raw-level fusion scheme through V2X communication can help to
improve the precision as well as to reduce the necessity of expensive LiDAR
equipment on vehicles when RSUs exist, which may accelerate the popularity of
interconnected self-driving vehicles. DOLPHINS is now available on
https://dolphins-dataset.net/.
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