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Analyze large datasets of point clouds recorded over time in an efficient way

Project description

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Analyze large datasets of point clouds recorded over time in an efficient way.

Features

  • Handles point clouds over time

  • Building complex pipelines with a clean and maintainable code

newpointcloud = pointcloud.limit("x",-5,5).filter("quantile","reflectivity", ">",0.5)
  • Apply arbitrary functions to datasets of point clouds

def isolate_target(frame: PointCloud) -> PointCloud:
   return frame.limit("x",0,1).limit("y",0,1)

def diff_to_pointcloud(pointcloud: PointCloud, to_compare: PointCloud) -> PointCloud:
   return pointcloud.diff("pointcloud", to_compare)

result = dataset.apply(isolate_target).apply(diff_to_pointcloud, to_compare=dataset[0])
  • Support for large files with lazy evaluation and parallel processing

https://raw.githubusercontent.com/virtual-vehicle/pointcloudset/master/images/dask.gif
  • Support for numerical data per point (intensity, range, noise …)

  • Interactive 3D visualisation

https://raw.githubusercontent.com/virtual-vehicle/pointcloudset/master/images/tree.gif
  • High level processing based on dask, pandas, open3D and pyntcloud

  • Docker image is available

  • Optimised - but not limited to - automotive lidar

  • Directly read ROS bagfiles and many pointcloud file formats

  • A command line tool to convert ROS bagfiles

Use case examples

  • Post processing and analytics of a lidar dataset recorded by ROS

  • A collection of multiple lidar scans from a terrestrial laser scanner

  • Comparison of multiple point clouds to a ground truth

  • Analytics of point clouds over time

  • Developing algorithms on a single frame and then applying them to huge datasets

Installation with pip

Install python package with pip:

pip install pointcloudset

Installation with Docker

The easiest way to get started is to use the pre-build docker tgoelles/pointcloudset or use tgoelles/pointcloudset_base to get a container with all dependencies and install pointcloudset there.

Quickstart

from pointcloudset import Dataset, PointCloud
from pathlib import Path
import urllib.request

urllib.request.urlretrieve("https://github.com/virtual-vehicle/pointcloudset/raw/master/tests/testdata/test.bag", "test.bag")
urllib.request.urlretrieve("https://github.com/virtual-vehicle/pointcloudset/raw/master/tests/testdata/las_files/test_tree.las", "test_tree.las")

dataset = Dataset.from_file(Path("test.bag"), topic="/os1_cloud_node/points", keep_zeros=False)
pointcloud = dataset[1]
tree = PointCloud.from_file(Path("test_tree.las"))

tree.plot("x", hover_data=True)

This produces the plot from the animation above.

CLI to convert ROS bag files: rosbagconvert

The package includes a powerfull CLI to convert ROS bag files into many formats like csv, las and many more.

rosbagconvert --output-format csv --output-dir converted_csv test.bag
https://raw.githubusercontent.com/virtual-vehicle/pointcloudset/master/images/cli_demo.gif

Citation and contact

orcid Thomas Gölles email: thomas.goelles@v2c2.at

Please cite our JOSS paper if you use pointcloudset.

@article{Goelles2021,
  doi = {10.21105/joss.03471},
  url = {https://doi.org/10.21105/joss.03471},
  year = {2021},
  publisher = {The Open Journal},
  volume = {6},
  number = {65},
  pages = {3471},
  author = {Thomas Goelles and Birgit Schlager and Stefan Muckenhuber and Sarah Haas and Tobias Hammer},
  title = {`pointcloudset`: Efficient Analysis of Large Datasets of Point Clouds Recorded Over Time},
  journal = {Journal of Open Source Software}
}

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