Releases: kwea123/CasMVSNet_pl
release full fusion results for blendedmvs
Fusion results for all scans using
python eval.py \
--dataset_name blendedmvs \
--root_dir /home/ubuntu/data/BlendedMVS/dataset_full_res/ \
--split all \
--ckpt_path ckpts/exp_g8_blended/epoch.15.ckpt \
--num_groups 8 --depth_interval 192.0
and other default parameters in eval.py
.
The point cloud sizes vary from 1M points to maximum 250M points for large scenes. Large scenes require ~10G RAM to open, so pay attention to free your memory before open the files otherwise your pc will freeze.
Due to the large size of some scenes, I compressed them. Please decompress before visualization.
Put under results/blendedmvs/points
.
Use python visualize_ply.py --dataset_name blendedmvs --scan {scan name}
to visualize.
Take a look at BlendedMVS_scenes to quickly find out how the scenes look like.
Note: scenes 5bbb6eb2ea1cfa39f1af7e0c
and 5b558a928bbfb62204e77ba2
are still more than 2GB after compression, so I cannot put them here. All other 111 scenes are available.
release blendedmvs trained model
release blendedmvs pretrained model and training logs
trained with --depth_interval 192.0 --num_groups 8
!
Note:
- add
--num_groups 8
for DTU evaluation - add
--depth_interval 192.0 --num_groups 8
for blendedmvs evaluation
release full fusion results for tanks and temples
Fusion results for all scans using default parameters in eval.py
(except that indoor scenes have --min_geo_consistent=3
).
Each point cloud contains 100M~300M points.
Due to the large size of some scenes, I compressed them. Please decompress before visualization.
Put under results/tanks/points
.
Use python visualize_ply.py --dataset_name tanks --scan {scan name}
to visualize.
release full fusion results for dtu
Fusion results for all scans (train, val and test) using default parameters in eval.py
.
Each point cloud contains 20M~30M points.
Put under results/dtu/points
.
Use python visualize_ply.py --dataset_name dtu --scan {scan name}
to visualize.
A viewpoint viewpoint.json
is also provided. add --use_viewpoint
to use the same viewpoint across scans.
release DTU trained model
release DTU pretrained model and training logs