Skip to main content

Python bindings for the Point Cloud Library

Project description

pclpy: PCL for python

PyPI PyPI Python version

Python bindings for the Point Cloud Library (PCL). Generated from headers using CppHeaderParser and pybind11.

This library is in active development, the api is likely to change. The included modules do work, but tests are incomplete, and corner cases are still common.

Only Windows and python 3.6 x64 are supported at the moment.

Contributions, issues, comments are welcome!

Github repository: https://www.github.com/davidcaron/pclpy

Pypi: https://pypi-hypernode.com/project/pclpy/

Motivation

Many other python libraries tried to bind PCL. The most popular one being python-pcl, which uses Cython. While Cython is really powerful, binding C++ templates isn't one of its strenghts (and PCL uses templates heavily). The result for python-pcl is a lot of code repetition, which is hard to maintain and to add features to, and incomplete bindings of PCL's classes and point types.

Using pybind11, we use C++ directly. Templates, boost::smart_ptr and the buffer protocol are examples of things that are simpler to implement.

The results so far are very promising. A large percentage of PCL is covered.

Installing

Windows with python 3.6 x64

pip install pclpy

When pip installs the project, pclpy_dependencies is installed as a requirement. This simple package contains only the PCL dlls required on Windows so you don't have to download a PCL release or build it.

Linux

Not working for now. Contributions are welcome!

Features

  • All point types are implemented (those specified by the default msvc compile flags)
  • You can view point cloud data as numpy arrays using cloud.x or cloud.xyz
  • boost::shared_ptr is handled by pybind11 so it's completely abstracted at the python level
  • laspy integration for reading/writing las files

Example

Here is how you would use the library to process Moving Least Squares. See the PCL documentation: http://pointclouds.org/documentation/tutorials/resampling.php

import pclpy
from pclpy import pcl

point_cloud = pclpy.io.read_las(test_data("street.las"))
mls = pcl.surface.MovingLeastSquaresOMP.PointXYZRGBA_PointNormal()
tree = pcl.search.KdTree.PointXYZRGBA()
mls.setSearchRadius(0.05)
mls.setPolynomialFit(False)
mls.setNumberOfThreads(12)
mls.setInputCloud(point_cloud)
mls.setSearchMethod(tree)
mls.setComputeNormals(True)
output = pcl.PointCloud.PointNormal()
mls.process(output)

You can see it's quite similar to the C++ version:

// C++ version

pcl::PointCloud<pcl::PointXYZ>::Ptr point_cloud (new pcl::PointCloud<pcl::PointXYZ> ());
pcl::io::loadPCDFile ("bun0.pcd", *point_cloud);
pcl::MovingLeastSquaresOMP<pcl::PointXYZ, pcl::PointNormal> mls;
pcl::search::KdTree<pcl::PointXYZ>::Ptr tree (new pcl::search::KdTree<pcl::PointXYZ>);
mls.setSearchRadius (0.05);
mls.setPolynomialFit (false);
mls.setNumberOfThreads (12);
mls.setInputCloud (point_cloud);
mls.setSearchMethod (tree);
mls.setComputeNormals (true);
pcl::PointCloud<pcl::PointNormal> output;
mls.process (output);

Modules

  • 2d
  • common
  • geometry
  • features
  • filters
  • io
  • kdtree
  • keypoints
  • octree
  • recognition
  • sample_consensus
  • search
  • segmentation
  • stereo
  • surface
  • tracking
  • visualization

These modules are skipped for now

  • ml
  • people
  • outofcore
  • registration
  • every module not in the PCL Windows release (gpu, cuda, etc.)

Not Implemented

(see github issues and the what to skip section in generators/config.py)

To build

Windows with python 3.6 x64

  • Download PCL release for Windows (PCL-1.8.1-AllInOne-msvc2017-win64.exe) at: https://github.com/PointCloudLibrary/pcl/releases/download/pcl-1.8.1/PCL-1.8.1-AllInOne-msvc2017-win64.exe
  • PCL_ROOT environment variable must be set to the installation directory of PCL
  • About requirements:
  • Generate modules using generate_pybind11_bindings.py
  • There is a missing file from the PCL release that you should get from the github repo: 2d/impl/kernel.hpp
  • Must be built with x64 version of cl.exe because of the large memory usage (see workaround in setup.py)
  • python setup.py install
  • Useful setup.py arguments:
    • --msvc-mp-build should enable a multiprocessed build
    • --msvc-no-code-link makes linking much faster (do not use for releases, see setup.py description)
    • --use-clcache to cache msvc builds using clcache (must be installed)
    • --debug to build in debug mode

Roadmap

  • Wrap as much of PCL as reasonably possible
  • More tests
  • CI on Appveyor
  • Make it work on Linux

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distribution

pclpy-0.5.1-cp36-cp36m-win_amd64.whl (12.1 MB view details)

Uploaded CPython 3.6m Windows x86-64

File details

Details for the file pclpy-0.5.1-cp36-cp36m-win_amd64.whl.

File metadata

File hashes

Hashes for pclpy-0.5.1-cp36-cp36m-win_amd64.whl
Algorithm Hash digest
SHA256 ad961b0c47470cd80b77f15757c318134056450bfdadccb87f8ea360034a6172
MD5 5bac400ed64fb3fff2d591f3bfd6b4dd
BLAKE2b-256 0c56e001f52317a43b50a4759e0aa5629c638b0f380fda77c5b2cead4927cb18

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page