| Full name | RAFT-Stereo: Multilevel Recurrent Field Transforms for Stereo Matching | 
| Description | We introduce RAFT-Stereo, a new deep architecture for rectified stereo based on the optical flow network RAFT. We introduce multi-level convolutional GRUs, which more efficiently propagate information across the image. A modified version of RAFT-Stereo can perform accurate real-time inference. | 
| Publication title | RAFT-Stereo: Multilevel Recurrent Field Transforms for Stereo Matching | 
| Publication authors | Lahav Lipson, Zachary Teed, and Jia Deng | 
| Publication venue | 3DV | 
| Publication URL | https://arxiv.org/abs/2109.07547 | 
| Programming language(s) | Pytthon | 
| Hardware | RTX 6000 | 
| Source code or download URL | https://github.com/princeton-vl/RAFT-Stereo | 
| Submission creation date | 5 Nov, 2020 | 
| Last edited | 4 Oct, 2021 |