Awesome
ScanComplete
ScanComplete is a data-driven approach which takes an incomplete 3D scan of a scene as input and predicts a complete 3D model, along with per-voxel semantic labels. This work is based on our CVPR'18 paper, ScanComplete: Large-Scale Scene Completion and Semantic Segmentation for 3D Scans.
<img src="images/teaser_mesh.jpg">
Code
Installation:
Training is implemented with TensorFlow. This code is tested under TF1.3 and Python 2.7 on Ubuntu 16.04.
Training:
- See
run_train.sh
for calling the training (will need to provide a path to the train data). - Trained models: models.zip
Testing:
- See
run_complete_scans_hierarchical.sh
for testing on partial scans (needs paths to test data and model).
Citation:
If you find our work useful in your research, please consider citing:
@inproceedings{dai2018scancomplete,
title={ScanComplete: Large-Scale Scene Completion and Semantic Segmentation for 3D Scans},
author={Dai, Angela and Ritchie, Daniel and Bokeloh, Martin and Reed, Scott and Sturm, J{\"u}rgen and Nie{\ss}ner, Matthias},
booktitle = {Proc. Computer Vision and Pattern Recognition (CVPR), IEEE},
year = {2018}
}
Contact:
If you have any questions, please email Angela Dai at adai@cs.stanford.edu.