Language Prompt for Autonomous Driving
This work addresses a data bottleneck for using language prompts in self-driving scenarios, though it is incremental as it builds on existing datasets and tasks.
The authors tackled the scarcity of paired language prompt and object data in autonomous driving by creating NuPrompt, a dataset with 40,147 descriptions linked to object tracklets, and introduced a prompt-based trajectory prediction task, with their baseline model PromptTrack showing impressive performance.
A new trend in the computer vision community is to capture objects of interest following flexible human command represented by a natural language prompt. However, the progress of using language prompts in driving scenarios is stuck in a bottleneck due to the scarcity of paired prompt-instance data. To address this challenge, we propose the first object-centric language prompt set for driving scenes within 3D, multi-view, and multi-frame space, named NuPrompt. It expands nuScenes dataset by constructing a total of 40,147 language descriptions, each referring to an average of 7.4 object tracklets. Based on the object-text pairs from the new benchmark, we formulate a novel prompt-based driving task, \ie, employing a language prompt to predict the described object trajectory across views and frames. Furthermore, we provide a simple end-to-end baseline model based on Transformer, named PromptTrack. Experiments show that our PromptTrack achieves impressive performance on NuPrompt. We hope this work can provide some new insights for the self-driving community. The data and code have been released at https://github.com/wudongming97/Prompt4Driving.