%global _empty_manifest_terminate_build 0 Name: python-robust-laplacian Version: 0.2.4 Release: 1 Summary: Robust Laplace matrices for meshes and point clouds License: MIT URL: https://github.com/nmwsharp/robust-laplacians-py Source0: https://mirrors.nju.edu.cn/pypi/web/packages/2d/de/fef7e899fb9416bdcba13af58ab8dd139e84abda02e0b037e3633bce1627/robust_laplacian-0.2.4.tar.gz Requires: python3-numpy Requires: python3-scipy %description [![actions status linux](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20Linux/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![actions status macOS](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20macOS/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![actions status windows](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20Windows/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![PyPI](https://img.shields.io/pypi/v/robust-laplacian?style=plastic)](https://pypi.org/project/robust-laplacian/) A Python package for high-quality Laplace matrices on meshes and point clouds. `pip install robust_laplacian` The Laplacian is at the heart of many algorithms across geometry processing, simulation, and machine learning. This library builds a high-quality, robust Laplace matrix which often improves the performance of these algorithms, and wraps it all up in a simple, single-function API! **Sample**: computing eigenvectors of the point cloud Laplacian ![demo image of eigenvectors on point cloud](https://github.com/nmwsharp/robust-laplacians-py/blob/master/teaser_cloud.jpg?raw=true) Given as input a triangle mesh with arbitrary connectivity (could be nonmanifold, have boundary, etc), OR a point cloud, this library builds an `NxN` sparse Laplace matrix, where `N` is the number of vertices/points. This Laplace matrix is similar to the _cotan-Laplacian_ used widely in geometric computing, but internally the algorithm constructs an _intrinsic Delaunay triangulation_ of the surface, which gives the Laplace matrix great numerical properties. The resulting Laplacian is always a symmetric positive-definite matrix, with all positive edge weights. Additionally, this library performs _intrinsic mollification_ to alleviate floating-point issues with degenerate triangles. The resulting Laplace matrix `L` is a "weak" Laplace matrix, so we also generate a diagonal lumped mass matrix `M`, where each diagonal entry holds an area associated with the mesh element. The "strong" Laplacian can then be formed as `M^-1 L`, or a Poisson problem could be solved as `L x = M y`. A [C++ implementation and demo](https://github.com/nmwsharp/nonmanifold-laplacian) is available. This library implements the algorithm described in [A Laplacian for Nonmanifold Triangle Meshes](http://www.cs.cmu.edu/~kmcrane/Projects/NonmanifoldLaplace/NonmanifoldLaplace.pdf) by [Nicholas Sharp](http://nmwsharp.com) and [Keenan Crane](http://keenan.is/here) at SGP 2020 (where it won a best paper award!). See the paper for more details, and please use the citation given at the bottom if it contributes to academic work. ### Example Build a point cloud Laplacian, compute its first 10 eigenvectors, and visualize with [Polyscope](https://polyscope.run/py/) ```shell pip install numpy scipy plyfile polyscope robust_laplacian ``` ```py import robust_laplacian from plyfile import PlyData import numpy as np import polyscope as ps import scipy.sparse.linalg as sla # Read input plydata = PlyData.read("/path/to/cloud.ply") points = np.vstack(( plydata['vertex']['x'], plydata['vertex']['y'], plydata['vertex']['z'] )).T # Build point cloud Laplacian L, M = robust_laplacian.point_cloud_laplacian(points) # (or for a mesh) # L, M = robust_laplacian.mesh_laplacian(verts, faces) # Compute some eigenvectors n_eig = 10 evals, evecs = sla.eigsh(L, n_eig, M, sigma=1e-8) # Visualize ps.init() ps_cloud = ps.register_point_cloud("my cloud", points) for i in range(n_eig): ps_cloud.add_scalar_quantity("eigenvector_"+str(i), evecs[:,i], enabled=True) ps.show() ``` **_NOTE:_** No one can agree on the sign convention for the Laplacian. This library builds the _positive semi-definite_ Laplace matrix, where the diagonal entries are positive and off-diagonal entries are negative. This is the _opposite_ of the sign used by e.g. libIGL in `igl.cotmatrix`, so you may need to flip a sign when converting code. ### API This package exposes just two functions: - `mesh_laplacian(verts, faces, mollify_factor=1e-5)` - `verts` is an `V x 3` numpy array of vertex positions - `faces` is an `F x 3` numpy array of face indices, where each is a 0-based index referring to a vertex - `mollify_factor` amount of intrinsic mollifcation to perform. `0` disables, larger values will increase numerical stability, while very large values will slightly implicitly smooth out the geometry. The range of reasonable settings is roughly `0` to `1e-3`. The default value should usually be sufficient. - `return L, M` a pair of scipy sparse matrices for the Laplacian `L` and mass matrix `M` - `point_cloud_laplacian(points, mollify_factor=1e-5, n_neighbors=30)` - `points` is an `V x 3` numpy array of point positions - `mollify_factor` amount of intrinsic mollifcation to perform. `0` disables, larger values will increase numerical stability, while very large values will slightly implicitly smooth out the geometry. The range of reasonable settings is roughly `0` to `1e-3`. The default value should usually be sufficient. - `n_neighbors` is the number of nearest neighbors to use when constructing local triangulations. This parameter has little effect on the resulting matrices, and the default value is almost always sufficient. - `return L, M` a pair of scipy sparse matrices for the Laplacian `L` and mass matrix `M` ### Installation The package is availabe via `pip` ``` pip install robust_laplacian ``` The underlying algorithm is implemented in C++; the pypi entry includes precompiled binaries for many platforms. Very old versions of `pip` might need to be upgraded like `pip install pip --upgrade` to use the precompiled binaries. Alternately, if no precompiled binary matches your system `pip` will attempt to compile from source on your machine. This requires a working C++ toolchain, including cmake. ### Known limitations - For point clouds, this repo uses a simple method to generate planar Delaunay triangulations, which may not be totally robust to collinear or degenerate point clouds. ### Dependencies This python library is mainly a wrapper around the implementation in the [geometry-central](http://geometry-central.net) library; see there for further dependencies. Additionally, this library uses [pybind11](https://github.com/pybind/pybind11) to generate bindings, and [jc_voronoi](https://github.com/JCash/voronoi) for 2D Delaunay triangulation on point clouds. All are permissively licensed. ### Citation ``` @article{Sharp:2020:LNT, author={Nicholas Sharp and Keenan Crane}, title={{A Laplacian for Nonmanifold Triangle Meshes}}, journal={Computer Graphics Forum (SGP)}, volume={39}, number={5}, year={2020} } ``` ### For developers This repo is configured with CI on github actions to build wheels across platform. ### Deploy a new version - Commit the desired version to the `master` branch, be sure the version string in `setup.py` corresponds to the new version number. Include the string `[ci build]` in the commit message to ensure a build happens. - Watch th github actions builds to ensure the test & build stages succeed and all wheels are compiled. - While you're waiting, update the docs. - Tag the commit with a tag like `v1.2.3`, matching the version in `setup.py`. This will kick off a new github actions build which deploys the wheels to PyPI after compilation. %package -n python3-robust-laplacian Summary: Robust Laplace matrices for meshes and point clouds Provides: python-robust-laplacian BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip BuildRequires: python3-cffi BuildRequires: gcc BuildRequires: gdb %description -n python3-robust-laplacian [![actions status linux](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20Linux/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![actions status macOS](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20macOS/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![actions status windows](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20Windows/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![PyPI](https://img.shields.io/pypi/v/robust-laplacian?style=plastic)](https://pypi.org/project/robust-laplacian/) A Python package for high-quality Laplace matrices on meshes and point clouds. `pip install robust_laplacian` The Laplacian is at the heart of many algorithms across geometry processing, simulation, and machine learning. This library builds a high-quality, robust Laplace matrix which often improves the performance of these algorithms, and wraps it all up in a simple, single-function API! **Sample**: computing eigenvectors of the point cloud Laplacian ![demo image of eigenvectors on point cloud](https://github.com/nmwsharp/robust-laplacians-py/blob/master/teaser_cloud.jpg?raw=true) Given as input a triangle mesh with arbitrary connectivity (could be nonmanifold, have boundary, etc), OR a point cloud, this library builds an `NxN` sparse Laplace matrix, where `N` is the number of vertices/points. This Laplace matrix is similar to the _cotan-Laplacian_ used widely in geometric computing, but internally the algorithm constructs an _intrinsic Delaunay triangulation_ of the surface, which gives the Laplace matrix great numerical properties. The resulting Laplacian is always a symmetric positive-definite matrix, with all positive edge weights. Additionally, this library performs _intrinsic mollification_ to alleviate floating-point issues with degenerate triangles. The resulting Laplace matrix `L` is a "weak" Laplace matrix, so we also generate a diagonal lumped mass matrix `M`, where each diagonal entry holds an area associated with the mesh element. The "strong" Laplacian can then be formed as `M^-1 L`, or a Poisson problem could be solved as `L x = M y`. A [C++ implementation and demo](https://github.com/nmwsharp/nonmanifold-laplacian) is available. This library implements the algorithm described in [A Laplacian for Nonmanifold Triangle Meshes](http://www.cs.cmu.edu/~kmcrane/Projects/NonmanifoldLaplace/NonmanifoldLaplace.pdf) by [Nicholas Sharp](http://nmwsharp.com) and [Keenan Crane](http://keenan.is/here) at SGP 2020 (where it won a best paper award!). See the paper for more details, and please use the citation given at the bottom if it contributes to academic work. ### Example Build a point cloud Laplacian, compute its first 10 eigenvectors, and visualize with [Polyscope](https://polyscope.run/py/) ```shell pip install numpy scipy plyfile polyscope robust_laplacian ``` ```py import robust_laplacian from plyfile import PlyData import numpy as np import polyscope as ps import scipy.sparse.linalg as sla # Read input plydata = PlyData.read("/path/to/cloud.ply") points = np.vstack(( plydata['vertex']['x'], plydata['vertex']['y'], plydata['vertex']['z'] )).T # Build point cloud Laplacian L, M = robust_laplacian.point_cloud_laplacian(points) # (or for a mesh) # L, M = robust_laplacian.mesh_laplacian(verts, faces) # Compute some eigenvectors n_eig = 10 evals, evecs = sla.eigsh(L, n_eig, M, sigma=1e-8) # Visualize ps.init() ps_cloud = ps.register_point_cloud("my cloud", points) for i in range(n_eig): ps_cloud.add_scalar_quantity("eigenvector_"+str(i), evecs[:,i], enabled=True) ps.show() ``` **_NOTE:_** No one can agree on the sign convention for the Laplacian. This library builds the _positive semi-definite_ Laplace matrix, where the diagonal entries are positive and off-diagonal entries are negative. This is the _opposite_ of the sign used by e.g. libIGL in `igl.cotmatrix`, so you may need to flip a sign when converting code. ### API This package exposes just two functions: - `mesh_laplacian(verts, faces, mollify_factor=1e-5)` - `verts` is an `V x 3` numpy array of vertex positions - `faces` is an `F x 3` numpy array of face indices, where each is a 0-based index referring to a vertex - `mollify_factor` amount of intrinsic mollifcation to perform. `0` disables, larger values will increase numerical stability, while very large values will slightly implicitly smooth out the geometry. The range of reasonable settings is roughly `0` to `1e-3`. The default value should usually be sufficient. - `return L, M` a pair of scipy sparse matrices for the Laplacian `L` and mass matrix `M` - `point_cloud_laplacian(points, mollify_factor=1e-5, n_neighbors=30)` - `points` is an `V x 3` numpy array of point positions - `mollify_factor` amount of intrinsic mollifcation to perform. `0` disables, larger values will increase numerical stability, while very large values will slightly implicitly smooth out the geometry. The range of reasonable settings is roughly `0` to `1e-3`. The default value should usually be sufficient. - `n_neighbors` is the number of nearest neighbors to use when constructing local triangulations. This parameter has little effect on the resulting matrices, and the default value is almost always sufficient. - `return L, M` a pair of scipy sparse matrices for the Laplacian `L` and mass matrix `M` ### Installation The package is availabe via `pip` ``` pip install robust_laplacian ``` The underlying algorithm is implemented in C++; the pypi entry includes precompiled binaries for many platforms. Very old versions of `pip` might need to be upgraded like `pip install pip --upgrade` to use the precompiled binaries. Alternately, if no precompiled binary matches your system `pip` will attempt to compile from source on your machine. This requires a working C++ toolchain, including cmake. ### Known limitations - For point clouds, this repo uses a simple method to generate planar Delaunay triangulations, which may not be totally robust to collinear or degenerate point clouds. ### Dependencies This python library is mainly a wrapper around the implementation in the [geometry-central](http://geometry-central.net) library; see there for further dependencies. Additionally, this library uses [pybind11](https://github.com/pybind/pybind11) to generate bindings, and [jc_voronoi](https://github.com/JCash/voronoi) for 2D Delaunay triangulation on point clouds. All are permissively licensed. ### Citation ``` @article{Sharp:2020:LNT, author={Nicholas Sharp and Keenan Crane}, title={{A Laplacian for Nonmanifold Triangle Meshes}}, journal={Computer Graphics Forum (SGP)}, volume={39}, number={5}, year={2020} } ``` ### For developers This repo is configured with CI on github actions to build wheels across platform. ### Deploy a new version - Commit the desired version to the `master` branch, be sure the version string in `setup.py` corresponds to the new version number. Include the string `[ci build]` in the commit message to ensure a build happens. - Watch th github actions builds to ensure the test & build stages succeed and all wheels are compiled. - While you're waiting, update the docs. - Tag the commit with a tag like `v1.2.3`, matching the version in `setup.py`. This will kick off a new github actions build which deploys the wheels to PyPI after compilation. %package help Summary: Development documents and examples for robust-laplacian Provides: python3-robust-laplacian-doc %description help [![actions status linux](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20Linux/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![actions status macOS](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20macOS/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![actions status windows](https://github.com/nmwsharp/robust-laplacians-py/workflows/Test%20Windows/badge.svg)](https://github.com/nmwsharp/robust-laplacians-py/actions) [![PyPI](https://img.shields.io/pypi/v/robust-laplacian?style=plastic)](https://pypi.org/project/robust-laplacian/) A Python package for high-quality Laplace matrices on meshes and point clouds. `pip install robust_laplacian` The Laplacian is at the heart of many algorithms across geometry processing, simulation, and machine learning. This library builds a high-quality, robust Laplace matrix which often improves the performance of these algorithms, and wraps it all up in a simple, single-function API! **Sample**: computing eigenvectors of the point cloud Laplacian ![demo image of eigenvectors on point cloud](https://github.com/nmwsharp/robust-laplacians-py/blob/master/teaser_cloud.jpg?raw=true) Given as input a triangle mesh with arbitrary connectivity (could be nonmanifold, have boundary, etc), OR a point cloud, this library builds an `NxN` sparse Laplace matrix, where `N` is the number of vertices/points. This Laplace matrix is similar to the _cotan-Laplacian_ used widely in geometric computing, but internally the algorithm constructs an _intrinsic Delaunay triangulation_ of the surface, which gives the Laplace matrix great numerical properties. The resulting Laplacian is always a symmetric positive-definite matrix, with all positive edge weights. Additionally, this library performs _intrinsic mollification_ to alleviate floating-point issues with degenerate triangles. The resulting Laplace matrix `L` is a "weak" Laplace matrix, so we also generate a diagonal lumped mass matrix `M`, where each diagonal entry holds an area associated with the mesh element. The "strong" Laplacian can then be formed as `M^-1 L`, or a Poisson problem could be solved as `L x = M y`. A [C++ implementation and demo](https://github.com/nmwsharp/nonmanifold-laplacian) is available. This library implements the algorithm described in [A Laplacian for Nonmanifold Triangle Meshes](http://www.cs.cmu.edu/~kmcrane/Projects/NonmanifoldLaplace/NonmanifoldLaplace.pdf) by [Nicholas Sharp](http://nmwsharp.com) and [Keenan Crane](http://keenan.is/here) at SGP 2020 (where it won a best paper award!). See the paper for more details, and please use the citation given at the bottom if it contributes to academic work. ### Example Build a point cloud Laplacian, compute its first 10 eigenvectors, and visualize with [Polyscope](https://polyscope.run/py/) ```shell pip install numpy scipy plyfile polyscope robust_laplacian ``` ```py import robust_laplacian from plyfile import PlyData import numpy as np import polyscope as ps import scipy.sparse.linalg as sla # Read input plydata = PlyData.read("/path/to/cloud.ply") points = np.vstack(( plydata['vertex']['x'], plydata['vertex']['y'], plydata['vertex']['z'] )).T # Build point cloud Laplacian L, M = robust_laplacian.point_cloud_laplacian(points) # (or for a mesh) # L, M = robust_laplacian.mesh_laplacian(verts, faces) # Compute some eigenvectors n_eig = 10 evals, evecs = sla.eigsh(L, n_eig, M, sigma=1e-8) # Visualize ps.init() ps_cloud = ps.register_point_cloud("my cloud", points) for i in range(n_eig): ps_cloud.add_scalar_quantity("eigenvector_"+str(i), evecs[:,i], enabled=True) ps.show() ``` **_NOTE:_** No one can agree on the sign convention for the Laplacian. This library builds the _positive semi-definite_ Laplace matrix, where the diagonal entries are positive and off-diagonal entries are negative. This is the _opposite_ of the sign used by e.g. libIGL in `igl.cotmatrix`, so you may need to flip a sign when converting code. ### API This package exposes just two functions: - `mesh_laplacian(verts, faces, mollify_factor=1e-5)` - `verts` is an `V x 3` numpy array of vertex positions - `faces` is an `F x 3` numpy array of face indices, where each is a 0-based index referring to a vertex - `mollify_factor` amount of intrinsic mollifcation to perform. `0` disables, larger values will increase numerical stability, while very large values will slightly implicitly smooth out the geometry. The range of reasonable settings is roughly `0` to `1e-3`. The default value should usually be sufficient. - `return L, M` a pair of scipy sparse matrices for the Laplacian `L` and mass matrix `M` - `point_cloud_laplacian(points, mollify_factor=1e-5, n_neighbors=30)` - `points` is an `V x 3` numpy array of point positions - `mollify_factor` amount of intrinsic mollifcation to perform. `0` disables, larger values will increase numerical stability, while very large values will slightly implicitly smooth out the geometry. The range of reasonable settings is roughly `0` to `1e-3`. The default value should usually be sufficient. - `n_neighbors` is the number of nearest neighbors to use when constructing local triangulations. This parameter has little effect on the resulting matrices, and the default value is almost always sufficient. - `return L, M` a pair of scipy sparse matrices for the Laplacian `L` and mass matrix `M` ### Installation The package is availabe via `pip` ``` pip install robust_laplacian ``` The underlying algorithm is implemented in C++; the pypi entry includes precompiled binaries for many platforms. Very old versions of `pip` might need to be upgraded like `pip install pip --upgrade` to use the precompiled binaries. Alternately, if no precompiled binary matches your system `pip` will attempt to compile from source on your machine. This requires a working C++ toolchain, including cmake. ### Known limitations - For point clouds, this repo uses a simple method to generate planar Delaunay triangulations, which may not be totally robust to collinear or degenerate point clouds. ### Dependencies This python library is mainly a wrapper around the implementation in the [geometry-central](http://geometry-central.net) library; see there for further dependencies. Additionally, this library uses [pybind11](https://github.com/pybind/pybind11) to generate bindings, and [jc_voronoi](https://github.com/JCash/voronoi) for 2D Delaunay triangulation on point clouds. All are permissively licensed. ### Citation ``` @article{Sharp:2020:LNT, author={Nicholas Sharp and Keenan Crane}, title={{A Laplacian for Nonmanifold Triangle Meshes}}, journal={Computer Graphics Forum (SGP)}, volume={39}, number={5}, year={2020} } ``` ### For developers This repo is configured with CI on github actions to build wheels across platform. ### Deploy a new version - Commit the desired version to the `master` branch, be sure the version string in `setup.py` corresponds to the new version number. Include the string `[ci build]` in the commit message to ensure a build happens. - Watch th github actions builds to ensure the test & build stages succeed and all wheels are compiled. - While you're waiting, update the docs. - Tag the commit with a tag like `v1.2.3`, matching the version in `setup.py`. This will kick off a new github actions build which deploys the wheels to PyPI after compilation. %prep %autosetup -n robust-laplacian-0.2.4 %build %py3_build %install %py3_install install -d -m755 %{buildroot}/%{_pkgdocdir} if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi pushd %{buildroot} if [ -d usr/lib ]; then find usr/lib -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/lib64 ]; then find usr/lib64 -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/bin ]; then find usr/bin -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/sbin ]; then find usr/sbin -type f -printf "/%h/%f\n" >> filelist.lst fi touch doclist.lst if [ -d usr/share/man ]; then find usr/share/man -type f -printf "/%h/%f.gz\n" >> doclist.lst fi popd mv %{buildroot}/filelist.lst . mv %{buildroot}/doclist.lst . %files -n python3-robust-laplacian -f filelist.lst %dir %{python3_sitearch}/* %files help -f doclist.lst %{_docdir}/* %changelog * Thu May 18 2023 Python_Bot - 0.2.4-1 - Package Spec generated