Keskeiset käsitteet
다양한 데이터셋을 활용하여 모노클러 3D 물체 감지 모델을 훈련시키는 중요성
Tilastot
Monocular 3D object detection plays a crucial role in autonomous driving.
We could train models on a joint set of various open 3D/2D datasets to obtain models with significantly stronger generalization capability.
Extensive experiments on KITTI, nuScenes, ONCE, Cityscapes, and BDD100K datasets to demonstrate the scaling ability of the proposed method.
Lainaukset
"The pursuit of a comprehensive 3D understanding of dynamic environments stands as a cornerstone in the fields of robotics, autonomous driving, and augmented reality."
"Our method has achieved significant improvements in both 3D and 2D detection tasks compared to zero-shot learning."
"The experimental results demonstrated the efficacy of our approach."