Real-Time Joint Semantic Segmentation, Depth and Surface Normals Estimation (in PyTorch)
This repository provides official models from the paper
Real-Time Joint Semantic Segmentation and Depth Estimation Using Asymmetric Annotations, available here
Real-Time Joint Semantic Segmentation and Depth Estimation Using Asymmetric Annotations Vladimir Nekrasov, Thanuja Dharmasiri, Andrew Spek, Tom Drummond, Chunhua Shen, Ian Reid In ICRA 2019
For flawless reproduction of our results, the Ubuntu OS is recommended. The models have been tested using Python 2.7.
To install required Python packages, please run
pip install -r requirements.txt (Python2) - use the flag
-u for local installation.
The given examples can be run with, or without GPU.
For the ease of reproduction, we have embedded all our examples inside Jupyter notebooks.
Jupyter Notebooks [Local]
If all the installation steps have been smoothly executed, you can proceed with running any of the notebooks provided in the
To start the Jupyter Notebook server, on your local machine run
jupyter notebook. This will open a web page inside your browser. If it did not open automatically, find the port number from the command's output and paste it into your browser manually.
After that, navigate to the repository folder and choose any of the examples given.
More to come
Once time permits, more things will be added to this repository:
Training and evaluation examplesplease refer to this repository.
More projects to check out
- This project heavily relies on Light-Weight RefineNet
For academic usage, this project is licensed under the 2-clause BSD License - see the LICENSE file for details. For commercial usage, please contact the authors.
- University of Adelaide and Australian Centre for Robotic Vision (ACRV) for making this project happen
- HPC Phoenix cluster at the University of Adelaide for making the training of the models possible
- PyTorch developers
- Yerba mate tea