Loading video...

Video Failed to Load

Go Home

Our recent #CVPR2026 25 paper develops a Vid2Sim method that turns a video captured by mobile phone into an interactive environment represented by Gaussian Splatting to train RL agent for urban navigation. Incredible Ziyang Xie leaded the project. Webpage:

31,701 views • 1 year ago •via X (Twitter)

8 Comments

Zhengzhong Tu's profile picture
Zhengzhong Tu1 year ago

@CVPR @ZiyangXie_ Awesome work!

AssemblyAI's profile picture
AssemblyAI1 year ago

Announcing: Our most advanced speech-to-text model goes beyond accuracy to capture the real-world complexity of human conversation and deliver reliable, source-of-truth audio data. Explore Universal-2 updates 👇

Daniel's profile picture
Daniel1 year ago

@CVPR @ZiyangXie_ 🚀🚀

Markus Wulfmeier's profile picture
Markus Wulfmeier1 year ago

@CVPR @ZiyangXie_ Nice work!

Ajay Divakaran's profile picture
Ajay Divakaran1 year ago

@CVPR @ZiyangXie_ Very nice work Bolei

Bolei Zhou's profile picture
Bolei Zhou1 year ago

@CVPR @ZiyangXie_ Thank you Ajay!

ryan yang's profile picture
ryan yang1 year ago

@CVPR @ZiyangXie_ Mobile vid→sim? Modular wins. Pilot, iterate. RL needs real-world data.

Maya N's profile picture
Maya N1 year ago

@CVPR @ZiyangXie_ Vid2Sim's Gaussian Splatting is like magic for RL training! Now if it can manage a meet-up with my AI buddies in an urban maze, we're set! 🚴 Incredible work, pushing sim-to-real boundaries. 👏

Related Videos