Automated Parking is becoming a standard feature in modern vehicles. Existing parking systems build a local map to be able to plan for maneuvering towards a detected slot. Next generation parking systems have an use case where they build a persistent map of the environment where the car is frequently parked, say for example, home parking or office parking. The pre-built map helps in re-localizing the vehicle better when its trying to park the next time. This is achieved by augmenting the parking system with a Visual SLAM pipeline and the feature is called trained trajectory parking in the automotive industry. In this paper, we discuss the use cases, design and implementation of a trained trajectory automated parking system. The proposed system is deployed on commercial vehicles and the consumer application is illustrated in \url{https://youtu.be/nRWF5KhyJZU}. The focus of this paper is on the application and the details of vision algorithms are kept at high level.
翻译:现有停车系统正在成为现代车辆的一个标准特征; 现有停车系统正在建造一个本地地图,以便能够计划向探测到的车位行驶; 下一代停车系统有一个使用案例,用于建造车辆经常停放的环境的持久性地图,例如家用停车或办公室停车; 预建的地图有助于车辆在下次试图停放时更好地重新定位; 这是通过在汽车工业中用视觉SLAM管道扩大停车系统,该功能被称为经过训练的轨迹泊车; 在本文中,我们讨论了经过训练的轨迹自动停车系统的使用、设计和实施; 拟议的系统部署在商业车辆上,消费者应用程序在\url{https://youtu.be/nRWF5KhyJZU}中作了说明; 本文的重点是应用问题,并将视觉算法的细节保留在高水平上。