Zheng WuWeiliang TangLi JiangChi‐Wing Fu
We present Self-Ensembling Single-Stage object Detector (SE-SSD) for accurate and efficient 3D object detection in outdoor point clouds. Our key focus is on exploiting both soft and hard targets with our formulated constraints to jointly optimize the model, without introducing extra computation in the inference. Specifically, SE-SSD contains a pair of teacher and student SSDs, in which we design an effective IoU-based matching strategy to filter soft targets from the teacher and formulate a consistency loss to align student predictions with them. Also, to maximize the distilled knowledge for ensembling the teacher, we design a new augmentation scheme to produce shape-aware augmented samples to train the student, aiming to encourage it to infer complete object shapes. Lastly, to better exploit hard targets, we design an ODIoU loss to supervise the student with constraints on the predicted box centers and orientations. Our SE-SSD attains top performance compared with all prior published works. Also, it attains top precisions for car detection in the KITTI benchmark (ranked 1 st and 2 nd on the BEV and 3D leaderboards 1 , respectively) with an ultra-high inference speed. The code is available at https://github.com/Vegeta2020/SE-SSD.
Shuai LiuDi WangQuan WangKai Huang
Zheng WuWeiliang TangSijin ChenLi JiangChi‐Wing Fu
Yulin LiuHuihui WangHao LiuShiyou Chen
Honghui YangWenxiao WangMinghao ChenBinbin LinTong HeHua ChenXiaofei HeWanli Ouyang
Ruiqi MaChi ChenBisheng YangDeren LiHaiping WangYangzi CongZongtian Hu