ParkingE2E: Camera-Based End-To-End Parking Network, from Images to Planning
Changze Li, Ziheng Ji, Zhe Chen, Tong Qin, Ming Yang
Abstract
Autonomous parking is a crucial task in the intel- ligent driving field. Traditional parking algorithms are usually implemented using rule-based schemes. However, these methods are less effective in complex parking scenarios due to the intri- cate design of the algorithms. In contrast, neural-network-based methods tend to be more intuitive and versatile than the rule- based methods. By collecting a large number of expert parking trajectory data and emulating human strategy via learning- based methods, the parking task can be effectively addressed. In this paper, we employ imitation learning to perform end-to- end planning from RGB images to path planning by imitating human driving trajectories. The proposed end-to-end approach utilizes a target query encoder to fuse images and target features, and a transformer-based decoder to autoregressively predict future waypoints. We conduct extensive experiments in real-world scenarios, and the results demonstrate that the proposed method achieved an average parking success rate of 87.8% across four different real-world garages. Real-vehicle experiments further validate the feasibility and effectiveness of the method proposed in this paper. The code can be found at: https://github.com/qintonguav/ParkingE2E.