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Python package for interfacing with robot data

Project description

robotdatapy

Welcome to robotdatapy! At its core, robotdatapy is a package designed to make accessing and manipulating robot/geometric data easy in Python.

annotated_point_cloud

Install

robotdatapy is available via PyPi! To install:

pip install robotdatapy

Or to install the most recent version:

git clone git@github.com:mbpeterson70/robotdatapy.git
cd robotdatapy
pip install .

Introduction Tutorial

The best way to get familiar with robotdatapy is through the introductory tutorial, accessible here.

Command Line Interface

robotdatapy offers a growing number of tools directly from the command line. For example, rdp-plot-trajectory enables easy trajectory plotting.

To get these to work with tab complete, for bash run activate-global-python-argcomplete --user. If using zsh, add the following to your ~/.zshrc:

autoload -Uz compinit && compinit
autoload -Uz bashcompinit && bashcompinit                      
eval "$(register-python-argcomplete rdp-plot-trajectory)"

Data Interfaces

The primary use of this package is for interfacing with robot data. When developing offline robot applications, it can be difficult to deal with all of the different ways that data can be saved in (ROS bags, csv files, individual images, etc.). The goal of this package is to provide classes for loading data from a variety of sources, enabling a downstream task to use these data interfaces without needing to account for where that data is coming from.

Additionally, when dealing with offline data, a user may want to get a camera image at a certain time as well as a robot pose estimate at that same time. However, pose estimates are often discrete and may not be synced with the camera image. This package provides a way of dealing with time synchronization between data via interpolation or finding the nearest datapoint to a requested timestamp.

This README briefly describes three robot data classes: PoseData, ImgData, PointCloudData, and ArrayData. See the examples folder for example Python notebooks of interacting with different robot data.

PoseData

PoseData can load pose information from ROS1/2 bags, csv files, KITTI, or directly from a set of times and poses. Interpolation between poses is enabled by default, making it easy to get positions and orientations of a robot body at any time. Additionally, a transformation can be specified to be pre-multiplied or post-multiplied (via the T_premultiply or T_postmultiply keyword argument) changing the reference frame given by the PoseData object.

To quickly plot the trajectory of a robot for example, you can run the following:

import robotdatapy as rdp

bag_path = # path to bag
topic = # Odometry or Pose msg
pose_data = rdp.data.PoseData.from_bag(bag_path, topic=topic, interp=True)

pose_data.plot2d(dt=1.0, trajectory=True, pose=False)     # plots only position every second
pose_data.plot2d(dt=5.0, trajectory=False, pose=True)     # plots coordinate frames of the poses every 5 seconds

trajectory_plot

ImgData

ImgData can be loaded from ROS1/2 bags, a zipped file of images, a numpy npz files of times and images, or directly from a list of times and cv images. Depth images are supported as well.

Here's an example of loading and viewing an image from a ROS bag:

import robotdatapy as rdp

bag_path = # add ROS 1/2 bag path
topic = # camera image topic

img_data = rdp.data.ImgData.from_bag(
    bag_path,
    topic=topic
    compressed=True # tells the loader that the images are ROS CompressedImage messages
)

img_data.show(img_data.t0) # shows the first image

PointCloudData

PointCloudData can be loaded from ROS1/2 bags. Tools exist in robotdatapy to make transforming points or projecting points onto a camera image easy.

import robotdatapy as rdp

bag_path = # ROS 1/2 bag path
topic = # ROS point cloud topic

ptcld_data = rdp.data.PointCloudData.from_bag(
    bag_path,
    topic=topic,
)

ArrayData

This class can be used for storing generic data. For example, discrete samples of position, velocity, and acceleration. Linear interpolation can be turned on to enable accessing this data at any time.

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