Dynamical movement primitives (DMPs), probabilistic movement primitives (ProMPs), spatially coupled bimanual DMPs.

Overview

codecov

Movement Primitives

Movement primitives are a common group of policy representations in robotics. There are many different types and variations. This repository focuses mainly on imitation learning, generalization, and adaptation of movement primitives. It provides implementations in Python and Cython.

Features

  • Dynamical Movement Primitives (DMPs) for
    • positions (with fast Runge-Kutta integration)
    • Cartesian position and orientation (with fast Cython implementation)
    • Dual Cartesian position and orientation (with fast Cython implementation)
  • Coupling terms for synchronization of position and/or orientation of dual Cartesian DMPs
  • Propagation of DMP weight distribution to state space distribution
  • Probabilistic Movement Primitives (ProMPs)

API Documentation

The API documentation is available here.

Install Library

This library requires Python 3.6 or later and pip is recommended for the installation. In the following instructions, we assume that the command python refers to Python 3. If you use the system's Python version, you might have to add the flag --user to any installation command.

I recommend to install the library via pip in editable mode:

python -m pip install -e .[all]

If you don't want to have all dependencies installed, just omit [all]. Alternatively, you can install dependencies with

python -m pip install -r requirements.txt

You could also just build the Cython extension with

python setup.py build_ext --inplace

or install the library with

python setup.py install

Non-public Extensions

Note that scripts from the subfolder examples/external_dependencies/ require access to git repositories (URDF files or optional dependencies) that are not publicly available.

MoCap Library

# untested: pip install git+https://git.hb.dfki.de/dfki-interaction/mocap.git
git clone [email protected]:dfki-interaction/mocap.git
cd mocap
python -m pip install -e .
cd ..

Get URDFs

# RH5
git clone [email protected]:models-robots/rh5_models/pybullet-only-arms-urdf.git --recursive
# RH5v2
git clone [email protected]:models-robots/rh5v2_models/pybullet-urdf.git --recursive
# Kuka
git clone [email protected]:models-robots/kuka_lbr.git
# Solar panel
git clone [email protected]:models-objects/solar_panels.git
# RH5 Gripper
git clone [email protected]:motto/abstract-urdf-gripper.git --recursive

Data

I assume that your data is located in the folder data/ in most scripts. You should put a symlink there to point to your actual data folder.

Build API Documentation

You can build an API documentation with pdoc3. You can install pdoc3 with

pip install pdoc3

... and build the documentation from the main folder with

pdoc movement_primitives --html

It will be located at html/movement_primitives/index.html.

Test

To run the tests some python libraries are required:

python -m pip install -e .[test]

The tests are located in the folder test/ and can be executed with: python -m nose test

This command searches for all files with test and executes the functions with test_*.

Contributing

To add new features, documentation, or fix bugs you can open a pull request. Directly pushing to the main branch is not allowed.

Examples

Conditional ProMPs

Probabilistic Movement Primitives (ProMPs) define distributions over trajectories that can be conditioned on viapoints. In this example, we plot the resulting posterior distribution after conditioning on varying start positions.

Script

Potential Field of 2D DMP

A Dynamical Movement Primitive defines a potential field that superimposes several components: transformation system (goal-directed movement), forcing term (learned shape), and coupling terms (e.g., obstacle avoidance).

Script

DMP with Final Velocity

Not all DMPs allow a final velocity > 0. In this case we analyze the effect of changing final velocities in an appropriate variation of the DMP formulation that allows to set the final velocity.

Script

ProMPs

The LASA Handwriting dataset learned with ProMPs. The dataset consists of 2D handwriting motions. The first and third column of the plot represent demonstrations and the second and fourth column show the imitated ProMPs with 1-sigma interval.

Script

Contextual ProMPs

We use a dataset of Mronga and Kirchner (2021) with 10 demonstrations per 3 different panel widths that were obtained through kinesthetic teaching. The panel width is considered to be the context over which we generalize with contextual ProMPs. Each color in the above visualizations corresponds to a ProMP for a different context.

Script

Dependencies that are not publicly available:

Dual Cartesian DMP

We offer specific dual Cartesian DMPs to control dual-arm robotic systems like humanoid robots.

Scripts: Open3D, PyBullet

Dependencies that are not publicly available:

Coupled Dual Cartesian DMP

We can introduce a coupling term in a dual Cartesian DMP to constrain the relative position, orientation, or pose of two end-effectors of a dual-arm robot.

Scripts: Open3D, PyBullet

Dependencies that are not publicly available:

Propagation of DMP Distribution to State Space

If we have a distribution over DMP parameters, we can propagate them to state space through an unscented transform.

Script

Dependencies that are not publicly available:

Funding

This library has been developed initially at the Robotics Innovation Center of the German Research Center for Artificial Intelligence (DFKI GmbH) in Bremen. At this phase the work was supported through a grant of the German Federal Ministry of Economic Affairs and Energy (BMWi, FKZ 50 RA 1701).

You might also like...
Spatially-Adaptive Pixelwise Networks for Fast Image Translation, CVPR 2021

Image Translation with ASAPNets Spatially-Adaptive Pixelwise Networks for Fast Image Translation, CVPR 2021 Webpage | Paper | Video Installation insta

Implementation of CVPR 2021 paper
Implementation of CVPR 2021 paper "Spatially-invariant Style-codes Controlled Makeup Transfer"

SCGAN Implementation of CVPR 2021 paper "Spatially-invariant Style-codes Controlled Makeup Transfer" Prepare The pre-trained model is avaiable at http

Toward Spatially Unbiased Generative Models (ICCV 2021)
Toward Spatially Unbiased Generative Models (ICCV 2021)

Toward Spatially Unbiased Generative Models Implementation of Toward Spatially Unbiased Generative Models (ICCV 2021) Overview Recent image generation

Official PyTorch code for Mutual Affine Network for Spatially Variant Kernel Estimation in Blind Image Super-Resolution (MANet, ICCV2021)
Official PyTorch code for Mutual Affine Network for Spatially Variant Kernel Estimation in Blind Image Super-Resolution (MANet, ICCV2021)

Mutual Affine Network for Spatially Variant Kernel Estimation in Blind Image Super-Resolution (MANet, ICCV2021) This repository is the official PyTorc

Simple Tensorflow implementation of Toward Spatially Unbiased Generative Models (ICCV 2021)
Simple Tensorflow implementation of Toward Spatially Unbiased Generative Models (ICCV 2021)

Spatial unbiased GANs — Simple TensorFlow Implementation [Paper] : Toward Spatially Unbiased Generative Models (ICCV 2021) Abstract Recent image gener

Official PyTorch implementation of BlobGAN: Spatially Disentangled Scene Representations

BlobGAN: Spatially Disentangled Scene Representations Official PyTorch Implementation Paper | Project Page | Video | Interactive Demo BlobGAN.mp4 This

Optimized primitives for collective multi-GPU communication

NCCL Optimized primitives for inter-GPU communication. Introduction NCCL (pronounced "Nickel") is a stand-alone library of standard communication rout

HashNeRF-pytorch - Pure PyTorch Implementation of NVIDIA paper on Instant Training of Neural Graphics primitives
HashNeRF-pytorch - Pure PyTorch Implementation of NVIDIA paper on Instant Training of Neural Graphics primitives

HashNeRF-pytorch Instant-NGP recently introduced a Multi-resolution Hash Encodin

Predict stock movement with Machine Learning and Deep Learning algorithms

Project Overview Stock market movement prediction using LSTM Deep Neural Networks and machine learning algorithms Software and Library Requirements Th

Comments
  • Modify the initial method of T in dmp_open_loop_quaternion() to avoid numerical rounding errors

    Modify the initial method of T in dmp_open_loop_quaternion() to avoid numerical rounding errors

    the origin initial method about T in dmp_open_loop_quaternion() is:T = [start_t]; while t <run_t: last_t=t, t+=dt,T.append(t), which will cause the numerical rounding errors when run_t = 2.99. In detail: when t = 2.07, t+= dt t should be 2.08, but is the real scene, it will become 2.0799999999. And it will cause the length of Yr becomes 301. In the End, I am greenhand about Github, I am sorry if I do something wrong operation about repo.

    opened by CodingCatMountain 5
  • A Problem about CartesianDMP due to the parameter 'dt'...

    A Problem about CartesianDMP due to the parameter 'dt'...

    Hi, this package is very very very good, it do really help me to learn about the Learn from Demonstrations. But last night, I find a problem about open_loop, which is function included in the CartesianDMP class. The problem is the length about the python list, which named Yr in this function. And I have checked the source code, I found : My Y, which is passed to cartesian_dmp.imitate(T,Y), it's length is 600; And Yp in CartesianDMP.open_loop(), which returned by dmp_open_loop, it's length is 600, which are correct, but the length Yr in CartesianDMP.open_loop() is 601. I believe the relationship about T and dt in dmp_open_loop() and dmp_open_loop_quaternion() has some problem. Please Check! The T in dmp_open_loop() is initialized via this way : T=np.arange(start_t, run_t + dt, dt) , and the T in dmp_open_loop_quaternion() is initialized via this way: T=[start_t], which start_t is 0.0, and in a loop , last_t = t, t+=dt, T.append(t).

    opened by CodingCatMountain 4
  • CartesianDMP object has no attribute forcing_term

    CartesianDMP object has no attribute forcing_term

    I would like to save the weights of a trained CartesianDMP. There is no overloaded function get_weights() so I guess the one from the DMP base class should work. However, when calling it it raises the error in the title:

    AttributeError: 'CartesianDMP' object has no attribute 'forcing_term'
    

    Do you know what could be the issue here? Thanks in advance.

    opened by buschbapti 3
  • Can this repo for the periodic motion and orientation?

    Can this repo for the periodic motion and orientation?

    Thanks for sharing. Though DMPs are widely used to encode point-to-point movements, implementing the periodic DMP for translation and orientation is still challenging. Can this repository achieve these? If possible, would you provide any examples?

    opened by HongminWu 1
Releases(0.5.0)
Owner
DFKI Robotics Innovation Center
Research group at the German Research Center for Artificial Intelligence. For a list of our other open source contributuions click the link below:
DFKI Robotics Innovation Center
FAIR's research platform for object detection research, implementing popular algorithms like Mask R-CNN and RetinaNet.

Detectron is deprecated. Please see detectron2, a ground-up rewrite of Detectron in PyTorch. Detectron Detectron is Facebook AI Research's software sy

Facebook Research 25.5k Jan 07, 2023
ICCV2021, Tokens-to-Token ViT: Training Vision Transformers from Scratch on ImageNet

Tokens-to-Token ViT: Training Vision Transformers from Scratch on ImageNet, ICCV 2021 Update: 2021/03/11: update our new results. Now our T2T-ViT-14 w

YITUTech 1k Dec 31, 2022
SwinTrack: A Simple and Strong Baseline for Transformer Tracking

SwinTrack This is the official repo for SwinTrack. A Simple and Strong Baseline Prerequisites Environment conda (recommended) conda create -y -n SwinT

LitingLin 196 Jan 04, 2023
Precomputed Real-Time Texture Synthesis with Markovian Generative Adversarial Networks

MGANs Training & Testing code (torch), pre-trained models and supplementary materials for "Precomputed Real-Time Texture Synthesis with Markovian Gene

290 Nov 15, 2022
Differentiable rasterization applied to 3D model simplification tasks

nvdiffmodeling Differentiable rasterization applied to 3D model simplification tasks, as described in the paper: Appearance-Driven Automatic 3D Model

NVIDIA Research Projects 336 Dec 30, 2022
Testing the Facial Emotion Recognition (FER) algorithm on animations

PegHeads-Tutorial-3 Testing the Facial Emotion Recognition (FER) algorithm on animations

PegHeads Inc 2 Jan 03, 2022
Source code for the ACL-IJCNLP 2021 paper entitled "T-DNA: Taming Pre-trained Language Models with N-gram Representations for Low-Resource Domain Adaptation" by Shizhe Diao et al.

T-DNA Source code for the ACL-IJCNLP 2021 paper entitled Taming Pre-trained Language Models with N-gram Representations for Low-Resource Domain Adapta

shizhediao 17 Dec 22, 2022
Contrastive Learning of Image Representations with Cross-Video Cycle-Consistency

Contrastive Learning of Image Representations with Cross-Video Cycle-Consistency This is a official implementation of the CycleContrast introduced in

13 Nov 14, 2022
ONNX Command-Line Toolbox

ONNX Command Line Toolbox Aims to improve your experience of investigating ONNX models. Use it like onnx infershape /path/to/model.onnx. (See the usag

黎明灰烬 (王振华 Zhenhua WANG) 23 Nov 13, 2022
DCT-Mask: Discrete Cosine Transform Mask Representation for Instance Segmentation

DCT-Mask: Discrete Cosine Transform Mask Representation for Instance Segmentation This project hosts the code for implementing the DCT-MASK algorithms

Alibaba Cloud 57 Nov 27, 2022
PyTorch implementation of Constrained Policy Optimization

PyTorch implementation of Constrained Policy Optimization (CPO) This repository has a simple to understand and use implementation of CPO in PyTorch. A

Sapana Chaudhary 25 Dec 08, 2022
CyTran: Cycle-Consistent Transformers for Non-Contrast to Contrast CT Translation

CyTran: Cycle-Consistent Transformers for Non-Contrast to Contrast CT Translation We propose a novel approach to translate unpaired contrast computed

Nicolae Catalin Ristea 13 Jan 02, 2023
Implementation of "A Deep Learning Loss Function based on Auditory Power Compression for Speech Enhancement" by pytorch

This repository is used to suspend the results of our paper "A Deep Learning Loss Function based on Auditory Power Compression for Speech Enhancement"

ScorpioMiku 19 Sep 30, 2022
Using machine learning to predict undergrad college admissions.

College-Prediction Project- Overview: Many have tried, many have failed. Few trailblazers are ambitious enought to chase acceptance into the top 15 un

John H Klinges 1 Jan 05, 2022
Automatic library of congress classification, using word embeddings from book titles and synopses.

Automatic Library of Congress Classification The Library of Congress Classification (LCC) is a comprehensive classification system that was first deve

Ahmad Pourihosseini 3 Oct 01, 2022
Dense Contrastive Learning (DenseCL) for self-supervised representation learning, CVPR 2021.

Dense Contrastive Learning for Self-Supervised Visual Pre-Training This project hosts the code for implementing the DenseCL algorithm for se

Xinlong Wang 491 Jan 03, 2023
Repository for reproducing `Model-Based Robust Deep Learning`

Model-Based Robust Deep Learning (MBRDL) In this repository, we include the code necessary for reproducing the code used in Model-Based Robust Deep Le

Alex Robey 16 Sep 19, 2022
Get started with Machine Learning with Python - An introduction with Python programming examples

Machine Learning With Python Get started with Machine Learning with Python An engaging introduction to Machine Learning with Python TL;DR Download all

Learn Python with Rune 130 Jan 02, 2023
Py-faster-rcnn - Faster R-CNN (Python implementation)

py-faster-rcnn has been deprecated. Please see Detectron, which includes an implementation of Mask R-CNN. Disclaimer The official Faster R-CNN code (w

Ross Girshick 7.8k Jan 03, 2023