This repository contains a toolkit for collecting, labeling and tracking object keypoints

Overview

Object Keypoint Tracking

This repository contains a toolkit for collecting, labeling and tracking object keypoints. Object keypoints are semantic points in an object's coordinate frame.

The project allows collecting images from multiple viewpoints using a robot with a wrist mounted camera. These image sequences can then be labeled using an easy to use user interface, StereoLabel.

StereoLabel keypoint labeling

Once the images are labeled, a model can be learned to detect keypoints in the images and compute 3D keypoints in the camera's coordinate frame.

Installation

External Dependencies:

  • HUD
  • ROS melodic/noetic

Install HUD. Then install dependencies with pip install -r requirements.txt and finally install the package using pip3 install -e ..

Usage

Here we describe the process we used to arrive at our labeled datasets and learned models.

Calibration and setup

First, calibrate your camera and obtain a hand-eye-calibration. Calibrating the camera can be done using Kalibr. Hand-eye-calibration can be done with the ethz-asl/hand_eye_calibration or easy_handeye packages.

The software currently assumes that the Kalibr pinhole-equi camera model was used when calibrating the camera.

Kalibr will spit out a yaml file like the one at config/calibration.yaml. This should be passed in as the --calibration argument for label.py and other scripts.

Once you have obtained the hand-eye calibration, configure your robot description so that the tf tree correctly is able to transform poses from the base frame to the camera optical frame.

Collecting data

The script scripts/collect_bags.py is a helper program to assist in collecting data. It will use rosbag to record the camera topics and and transform messages.

Run it with python3 scripts/collect_bags.py --out .

Press enter to start recording a new sequence. Recording will start after a 5 second grace period, after which the topics will be recorded for 30 seconds. During the 30 seconds, slowly guide the robot arm to different viewpoints observing your target objects.

Encoding data

Since rosbag is not a very convenient or efficient format for our purposes, we encode the data into a format that is easier to work with and uses up less disk space. This is done using the script scripts/encode_bag.py.

Run it with python3 scripts/encode_bags.py --bags --out --calibration .

Labeling data

Valve

First decide how many keypoints you will use for your object class and what their configuration is. Write a keypoint configuration file, like config/valve.json and config/cups.json. For example, in the case of our valve above, we define four different keypoints, which are of two types. The first type is the center keypoint type and the second is the spoke keypoint type. For our valve, there are three spokes, so we write our keypoint configuration as:

{ "keypoint_config": [1, 3] }

What this means, is that there will first be a keypoint of the first type and then three keypoints of the next type. Save this file for later.

StereoLabel can be launched with python3 scripts/label.py . To label keypoints, click on the keypoints in the same order in each image. Make sure to label the points consistent with the keypoint configuration that you defined, so that the keypoints end up on the right heatmaps downstream.

If you have multiple objects in the scene, it is important that you annotate one object at the time, sticking to the keypoint order, as the tool makes the assumption that one object's keypoints follow each other. The amount of keypoints you label should equal the amount of objects times the total number of keypoints per object.

Once you have labeled an equal number of points on the left and right image, points will be backprojected, so that you can make sure that everything is correctly configured and that you didn't accidentally label the points in the wrong order. The points are saved at the same time to a file keypoints.json in each scene's directory.

Here are some keyboard actions the tool supports:

  • Press a to change the left frame with a random frame from the current sequence.
  • Press b to change the right frame with a random frame from the current sequence.
  • Press to go to next sequence, after you labeled a sequence.

Switching frames is especially useful, if for example in one viewpoint a keypoint is occluded and it is hard to annotate accurately.

Once the points have been saved and backprojected, you can freely press a and b to swap out the frames to different ones in the sequence. It will project the 3D points back into 2D onto the new frames. You can check that the keypoints project nicely to each frame. If not, you likely misclicked, the viewpoints are too close to each other, there could be an issue with your intrinsics or hand-eye calibration or the camera poses are not accurate for some other reason.

Checking the data

Once all your sequences have been labeled, you can check that the labels are correct on all frames using python scripts/show_keypoints.py , which will play the images one by one and show the backprojected points.

Learning a model

First, download the weights for the CornerNet backbone model. This can be done from the CornerNet repository. We use the CornerNet-Squeeze model. Place the file at models/corner_net.pkl.

You can train a model with python scripts/train.py --train --val . Where --train points to the directory containing your training scenes. --val points to the directory containing your validation scenes.

Once done, you can package a model with python scripts/package_model.py --model lightning_logs/version_x/checkpoints/ .ckpt --out model.pt

You can then run and check the metrics on a test set using python scripts/eval_model.py --model model.pt --keypoints .

General tips

Here are some general tips that might be of use:

  • Collect data at something like 4-5 fps. Generally, frames that are super close to each other aren't that useful and you don't really need every single frame. I.e. configure your camera node to only publish image messages at that rate.
  • Increase the publishing rate of your robot_state_publisher node to something like 100 or 200.
  • Move your robot slowly when collecting the data such that the time synchronization between your camera and robot is not that big of a problem.
  • Keep the scenes reasonable.
  • Collect data in all the operating conditions in which you will want to be detecting keypoints at.
Owner
ETHZ ASL
ETHZ ASL
My implementation of Image Inpainting - A deep learning Inpainting model

Image Inpainting What is Image Inpainting Image inpainting is a restorative process that allows for the fixing or removal of unwanted parts within ima

Joshua V Evans 1 Dec 12, 2021
A python module for configuration of block devices

Blivet is a python module for system storage configuration. CI status Licence See COPYING Installation From Fedora repositories Blivet is available in

78 Dec 14, 2022
Code Release for Learning to Adapt to Evolving Domains

EAML Code release for "Learning to Adapt to Evolving Domains" (NeurIPS 2020) Prerequisites PyTorch = 0.4.0 (with suitable CUDA and CuDNN version) tor

23 Dec 07, 2022
Source codes for "Structure-Aware Abstractive Conversation Summarization via Discourse and Action Graphs"

Structure-Aware-BART This repo contains codes for the following paper: Jiaao Chen, Diyi Yang:Structure-Aware Abstractive Conversation Summarization vi

GT-SALT 56 Dec 08, 2022
Learning hidden low dimensional dyanmics using a Generalized Onsager Principle and neural networks

OnsagerNet Learning hidden low dimensional dyanmics using a Generalized Onsager Principle and neural networks This is the original pyTorch implemenati

Haijun.Yu 3 Aug 24, 2022
HandFoldingNet ✌️ : A 3D Hand Pose Estimation Network Using Multiscale-Feature Guided Folding of a 2D Hand Skeleton

HandFoldingNet ✌️ : A 3D Hand Pose Estimation Network Using Multiscale-Feature Guided Folding of a 2D Hand Skeleton Wencan Cheng, Jae Hyun Park, Jong

cwc1260 23 Oct 21, 2022
Face2webtoon - Despite its importance, there are few previous works applying I2I translation to webtoon.

Despite its importance, there are few previous works applying I2I translation to webtoon. I collected dataset from naver webtoon 연애혁명 and tried to transfer human faces to webtoon domain.

이상윤 64 Oct 19, 2022
A curated list of awesome projects and resources related fastai

A curated list of awesome projects and resources related fastai

Tanishq Abraham 138 Dec 22, 2022
Implementation of "Selection via Proxy: Efficient Data Selection for Deep Learning" from ICLR 2020.

Selection via Proxy: Efficient Data Selection for Deep Learning This repository contains a refactored implementation of "Selection via Proxy: Efficien

Stanford Future Data Systems 70 Nov 16, 2022
天勤量化开发包, 期货量化, 实时行情/历史数据/实盘交易

TqSdk 天勤量化交易策略程序开发包 TqSdk 是一个由信易科技发起并贡献主要代码的开源 python 库. 依托快期多年积累成熟的交易及行情服务器体系, TqSdk 支持用户使用极少的代码量构建各种类型的量化交易策略程序, 并提供包含期货、期权、股票的 历史数据-实时数据-开发调试-策略回测-

信易科技 2.8k Dec 30, 2022
2D&3D human pose estimation

Human Pose Estimation Papers [CVPR 2016] - 201511 [IJCAI 2016] - 201602 Other Action Recognition with Joints-Pooled 3D Deep Convolutional Descriptors

133 Jan 02, 2023
Code and data for "TURL: Table Understanding through Representation Learning"

TURL This Repo contains code and data for "TURL: Table Understanding through Representation Learning". Environment and Setup Data Pretraining Finetuni

SunLab-OSU 63 Nov 23, 2022
PyTorch implementation of Barlow Twins.

Barlow Twins: Self-Supervised Learning via Redundancy Reduction PyTorch implementation of Barlow Twins. @article{zbontar2021barlow, title={Barlow Tw

Facebook Research 839 Dec 29, 2022
ProFuzzBench - A Benchmark for Stateful Protocol Fuzzing

ProFuzzBench - A Benchmark for Stateful Protocol Fuzzing ProFuzzBench is a benchmark for stateful fuzzing of network protocols. It includes a suite of

155 Jan 08, 2023
Paddle-Adversarial-Toolbox (PAT) is a Python library for Deep Learning Security based on PaddlePaddle.

Paddle-Adversarial-Toolbox Paddle-Adversarial-Toolbox (PAT) is a Python library for Deep Learning Security based on PaddlePaddle. Model Zoo Common FGS

AgentMaker 17 Nov 08, 2022
This repository contains the code for the paper "PIFu: Pixel-Aligned Implicit Function for High-Resolution Clothed Human Digitization"

PIFu: Pixel-Aligned Implicit Function for High-Resolution Clothed Human Digitization News: [2020/05/04] Added EGL rendering option for training data g

Shunsuke Saito 1.5k Jan 03, 2023
General Multi-label Image Classification with Transformers

General Multi-label Image Classification with Transformers Jack Lanchantin, Tianlu Wang, Vicente Ordóñez Román, Yanjun Qi Conference on Computer Visio

QData 154 Dec 21, 2022
[NeurIPS 2021] A weak-shot object detection approach by transferring semantic similarity and mask prior.

[NeurIPS 2021] A weak-shot object detection approach by transferring semantic similarity and mask prior.

BCMI 49 Jul 27, 2022
This is the official repository of Music Playlist Title Generation: A Machine-Translation Approach.

PlyTitle_Generation This is the official repository of Music Playlist Title Generation: A Machine-Translation Approach. The paper has been accepted by

SeungHeonDoh 6 Jan 03, 2022
Position detection system of mobile robot in the warehouse enviroment

Autonomous-Forklift-System About | GUI | Tests | Starting | License | Author | 🎯 About An application that run the autonomous forklift paletization a

Kamil Goś 1 Nov 24, 2021