Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Why am I not generating a mesh using the following command? #216

Open
asalan570 opened this issue Sep 28, 2024 · 0 comments
Open

Why am I not generating a mesh using the following command? #216

asalan570 opened this issue Sep 28, 2024 · 0 comments

Comments

@asalan570
Copy link

command:
python train_full_pipeline.py -s /mnt/d/Project/res-gaussian/data/ggbond/ -r dn_consistency --high_poly True -t True

image

The [coarse_mesh/ggbond] directory has no files.

Finally, I tried the following command without generating any mesh:

python extract_mesh.py -s /mnt/d/Project/res-gaussian/data/ggbond/ -c ./output/vanilla_gs/ggbond/ -m /opt/project/SuGaR/output/coarse/ggbond/xxxx/15000.pt -o /opt/project/SuGaR/output/coarse_mesh/ggbond/

The following is the log information:

/opt/project/SuGaR/sugar_extractors/coarse_mesh.py:169: FutureWarning: You are using torch.load with weights_only=False (the current default value), which uses the default pickle module implicitly. It is possible to construct malicious pickle data which will execute arbitrary code during unpickling (See https://github.com/pytorch/pytorch/blob/main/SECURITY.md#untrusted-models for more details). In a future release, the default value for weights_only will be flipped to True. This limits the functions that could be executed during unpickling. Arbitrary objects will no longer be allowed to be loaded via this mode unless they are explicitly allowlisted by the user via torch.serialization.add_safe_globals. We recommend you start setting weights_only=True for any use case where you don't have full control of the loaded file. Please open an issue on GitHub for any issues related to this experimental feature.
checkpoint = torch.load(sugar_checkpoint_path, map_location=nerfmodel.device)
Use min to initialize scales.
Initialized radiuses for 3D Gauss Rasterizer
Coarse model loaded.
Coarse model parameters:
_points
torch.Size([157485, 3])
True
all_densities
torch.Size([157485, 1])
True
_scales
torch.Size([157485, 3])
True
_quaternions
torch.Size([157485, 4])
True
_sh_coordinates_dc
torch.Size([157485, 1, 3])
True
_sh_coordinates_rest
torch.Size([157485, 15, 3])
True
Number of gaussians: 157485
Opacities min/max/mean: tensor(9.2172e-05, device='cuda:0') tensor(1., device='cuda:0') tensor(0.5398, device='cuda:0')
Quantile 0.0: 9.217214392265305e-05
Quantile 0.1: 0.004669577814638615
Quantile 0.2: 0.013865726068615913
Quantile 0.3: 0.04103592783212662
Quantile 0.4: 0.20630957186222076
Quantile 0.5: 0.6525238752365112
Quantile 0.6: 0.9831106066703796
Quantile 0.7: 0.999570906162262
Quantile 0.8: 0.9998905658721924
Quantile 0.9: 0.9999686479568481

Starting pruning low opacity gaussians...
WARNING! During optimization, you should use a densifier to prune low opacity points.
This function does not preserve the state of an optimizer, and sets requires_grad=False to all parameters.
Number of gaussians left: 83901
Opacities min/max/mean: tensor(0.5001, device='cuda:0') tensor(1., device='cuda:0') tensor(0.9445, device='cuda:0')
Quantile 0.0: 0.5000557899475098
Quantile 0.1: 0.7435584664344788
Quantile 0.2: 0.9352741837501526
Quantile 0.3: 0.9963169097900391
Quantile 0.4: 0.9993656277656555
Quantile 0.5: 0.9997476935386658
Quantile 0.6: 0.9998724460601807
Quantile 0.7: 0.9999315738677979
Quantile 0.8: 0.9999656677246094
Quantile 0.9: 0.9999862909317017
Processing frame 0/81...
Current point cloud for level 0.1 has 0 points.
Current point cloud for level 0.3 has 0 points.
Current point cloud for level 0.5 has 0 points.
Processing frame 30/81...
Current point cloud for level 0.1 has 3703710 points.
Current point cloud for level 0.3 has 3703710 points.
Current point cloud for level 0.5 has 3703710 points.
Processing frame 60/81...
Current point cloud for level 0.1 has 7407420 points.
Current point cloud for level 0.3 has 7407420 points.
Current point cloud for level 0.5 has 7407420 points.

========== Processing surface level 0.1 ==========
Final point cloud for level 0.1 has 10000017 points.
Using default, camera based bounding box.
Centering bounding box.
Foreground points:
torch.Size([5434350, 3])
torch.Size([5434350, 3])
torch.Size([5434350, 3])
Background points:
torch.Size([3322087, 3])
torch.Size([3322087, 3])
torch.Size([3322087, 3])

-----Foreground mesh-----
Computing points, colors and normals...
Cleaning Point Cloud...
Finished computing points, colors and normals.
Now computing mesh...
[WARNING] /root/Open3D/build/poisson/src/ext_poisson/PoissonRecon/Src/FEMTree.Initialize.inl (Line 193)
Initialize
Found bad data: 18092
Removing vertices with low densities...

-----Background mesh-----
Computing points, colors and normals...
Cleaning Point Cloud...
Finished computing points, colors and normals.
Now computing mesh...
[WARNING] /root/Open3D/build/poisson/src/ext_poisson/PoissonRecon/Src/FEMTree.Initialize.inl (Line 193)
Initialize
Found bad data: 467
Removing vertices with low densities...
Finished computing meshes.
Foreground mesh: TriangleMesh with 1068544 points and 2112688 triangles.
Background mesh: TriangleMesh with 2051134 points and 4027950 triangles.

-----Decimating and cleaning meshes-----

Processing decimation target: 200000
Decimating foreground mesh...
Finished decimating foreground mesh.
Decimating background mesh...
Finished decimating background mesh.
Cleaning mesh...
Merging foreground and background meshes.
Projecting mesh on surface points to recover better details...
Segmentation fault

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
None yet
Projects
None yet
Development

No branches or pull requests

1 participant