AIST++ API This repo contains starter code for using the AIST++ dataset.

Overview

AIST++ API

This repo contains starter code for using the AIST++ dataset. To download the dataset or explore details of this dataset, please go to our dataset website.

Installation

The code has been tested on python>=3.7. You can install the dependencies and this repo by:

pip install -r requirements.txt
python setup.py install

You also need to make sure ffmpeg is installed on your machine, if you would like to visualize the annotations using this api.

How to use

We provide demo code for loading and visualizing AIST++ annotations. Note AIST++ annotations and videos, as well as the SMPL model (for SMPL visualization only) are required to run the demo code.

The directory structure of the data is expected to be:


├── motions/
├── keypoints2d/
├── keypoints3d/
├── splits/
├── cameras/
└── ignore_list.txt


└── *.mp4


├── SMPL_MALE.pkl
└── SMPL_FEMALE.pkl

Visualize 2D keypoints annotation

The command below will plot 2D keypoints onto the raw video and save it to the directory ./visualization/.

python demos/run_vis.py \
  --anno_dir <ANNOTATIONS_DIR> \
  --video_dir <VIDEO_DIR> \
  --save_dir ./visualization/ \
  --video_name gWA_sFM_c01_d27_mWA2_ch21 \
  --mode 2D

Visualize 3D keypoints annotation

The command below will project 3D keypoints onto the raw video using camera parameters, and save it to the directory ./visualization/.

python demos/run_vis.py \
  --anno_dir <ANNOTATIONS_DIR> \
  --video_dir <VIDEO_DIR> \
  --save_dir ./visualization/ \
  --video_name gWA_sFM_c01_d27_mWA2_ch21 \
  --mode 3D

Visualize the SMPL joints annotation

The command below will first calculate the SMPL joint locations from our motion annotations (joint rotations and root trajectories), then project them onto the raw video and plot. The result will be saved into the directory ./visualization/.

python demos/run_vis.py \
  --anno_dir <ANNOTATIONS_DIR> \
  --video_dir <VIDEO_DIR> \ 
  --smpl_dir <SMPL_DIR> \
  --save_dir ./visualization/ \ 
  --video_name gWA_sFM_c01_d27_mWA2_ch21 \ 
  --mode SMPL

Multi-view 3D keypoints and motion reconstruction

This repo also provides code we used for constructing this dataset from the multi-view AIST Dance Video Database. The construction pipeline starts with frame-by-frame 2D keypoint detection and manual camera estimation. Then triangulation and bundle adjustment are applied to optimize the camera parameters as well as the 3D keypoints. Finally we sequentially fit the SMPL model to 3D keypoints to get a motion sequence represented using joint angles and a root trajectory. The following figure shows our pipeline overview.

AIST++ construction pipeline overview.

The annotations in AIST++ are in COCO-format for 2D & 3D keypoints, and SMPL-format for human motion annotations. It is designed to serve general research purposes. However, in some cases you might need the data in different format (e.g., Openpose / Alphapose keypoints format, or STAR human motion format). With the code we provide, it should be easy to construct your own version of AIST++, with your own keypoint detector or human model definition.

Step 1. Assume you have your own 2D keypoint detection results stored in , you can start by preprocessing the keypoints into the .pkl format that we support. The code we used at this step is as follows but you might need to modify the script run_preprocessing.py in order to be compatible with your own data.

python processing/run_preprocessing.py \
  --keypoints_dir <KEYPOINTS_DIR> \
  --save_dir <ANNOTATIONS_DIR>/keypoints2d/

Step 2. Then you can estimate the camera parameters using your 2D keypoints. This step is optional as you can still use our camera parameter estimates which are quite accurate. At this step, you will need the /cameras/mapping.txt file which stores the mapping from videos to different environment settings.

# If you would like to estimate your own camera parameters:
python processing/run_estimate_camera.py \
  --anno_dir <ANNOTATIONS_DIR> \
  --save_dir <ANNOTATIONS_DIR>/cameras/
# Or you can skip this step by just using our camera parameter estimates.

Step 3. Next step is to perform 3D keypoints reconstruction from multi-view 2D keypoints and camera parameters. You can just run:

python processing/run_estimate_keypoints.py \
  --anno_dir <ANNOTATIONS_DIR> \
  --save_dir <ANNOTATIONS_DIR>/keypoints3d/

Step 4. Finally we can estimate SMPL-format human motion data by fitting the 3D keypoints to the SMPL model. If you would like to use another human model such as STAR, you will need to do some modifications in the script run_estimate_smpl.py. The following command runs SMPL fitting.

python processing/run_estimate_smpl.py \
  --anno_dir <ANNOTATIONS_DIR> \
  --smpl_dir <SMPL_DIR> \
  --save_dir <ANNOTATIONS_DIR>/motions/

Note that this step will take several days to process the entire dataset if your machine has only one GPU. In practise, we run this step on a cluster, but are only able to provide the single-threaded version.

MISC.

  • COCO-format keypoint definition:
[
"nose", 
"left_eye", "right_eye", "left_ear", "right_ear", "left_shoulder","right_shoulder", 
"left_elbow", "right_elbow", "left_wrist", "right_wrist", "left_hip", "right_hip", 
"left_knee", "right_knee", "left_ankle", "right_ankle"
]
  • SMPL-format body joint definition:
[
"root", 
"left_hip", "left_knee", "left_foot", "left_toe", 
"right_hip", "right_knee", "right_foot", "right_toe",
"waist", "spine", "chest", "neck", "head", 
"left_in_shoulder", "left_shoulder", "left_elbow", "left_wrist",
"right_in_shoulder", "right_shoulder", "right_elbow", "right_wrist"
]
Owner
Google
Google ❤️ Open Source
Google
A tool to nowcast quarterly data with monthly indicators: US consumption example

MIDAS_Nowcaster A tool to nowcast quarterly data with monthly indicators: US consumption example Pulls data directly from FRED from a list of codes -

Gene Kindberg-Hanlon 3 Oct 06, 2022
The official repository of iGEM Paris Bettencourt team's software tools.

iGEM_ParisBettencourt21 The official repository of iGEM Paris Bettencourt team's software tools. Cell counting There are two programs dedicated to the

Abhay Koushik 1 Oct 21, 2021
Collie is for uncovering RDMA NIC performance anomalies

Collie is for uncovering RDMA NIC performance anomalies. Overview Prerequ

Bytedance Inc. 34 Dec 11, 2022
Rufus port to linux, writed on Python3

Rufus-for-Linux Rufus port to linux, writed on Python3 Программа будет иметь тот же интерфейс что и оригинал, и тот же функционал. Программа создается

10 May 12, 2022
Python library to decode the EU Covid-19 vaccine certificate

DCC Utils Python library to decode the EU Covid-19 vaccine certificate, as specified by the EU. Setup pip install dcc-utils Make sure zbar is installe

Developers Italia 13 Mar 11, 2022
Solutions for the Advent of Code 2021 event.

About 📋 This repository holds all of the solution code for the Advent of Code 2021 event. All solutions are done in Python 3.9.9 and done in non-real

robert yin 0 Mar 21, 2022
ThnoolBox - A thneed is a multi-use versatile object

ThnoolBox Have you ever wanted a collection of bodged desktop apps that are Lorax themed ? No ? Sucks to suck I guess Apps & their downsides CalculaTh

pocoyo 1 Jan 21, 2022
This is a Docker-based pipeline for preparing sextractor-ready multiwavelength images

Pipeline for creating NB422-detected (ODI) catalog The repository contains a Docker-based pipeline for preprocessing observational data. The pipeline

1 Sep 01, 2022
TinyBar - Tiny MacOS menu bar utility to track price dynamics for assets on TinyMan.org

📃 About A simple MacOS menu bar app to display current coins from most popular

Al 8 Dec 23, 2022
🍞 Create dynamic spreadsheets with arbitrary layouts using Python

🍞 tartine What this is Installation Usage example Fetching some data Getting started Adding a header Linking more cells Cell formatting API reference

Max Halford 11 Apr 16, 2022
Powerful virtual assistant in python

Virtual assistant in python Powerful virtual assistant in python Set up Step 1: download repo and unzip Step 2: pip install requirements.txt (if py au

Arkal 3 Jan 23, 2022
A Linux webcam plugin for BGMv2 as used in our demos.

The goal of this repository is to supplement the main Real-Time High Resolution Background Matting repo with a working demo of a videoconferencing plu

Andrey Ryabtsev 144 Dec 27, 2022
Goal: Enable awesome tooling for Bazel users of the C language family.

Hedron's Compile Commands Extractor for Bazel — User Interface What is this project trying to do for me? First, provide Bazel users cross-platform aut

Hedron Vision 290 Dec 26, 2022
Free APN For Python

Free APN For Python

XENZI GANZZ 4 Apr 22, 2022
Python Programmma DarkMap.py

DarkMap Python Programmma DarkMap.py O'rganish va rasmlarni ko'riosh https://drive.google.com/drive/folders/1l1zybs_0Zy9z_trZYz5R72WrwsE6mFOh?usp=shar

Og'abek 0 May 06, 2022
A python trivium implemention

A python trivium implemention

tnt2402 1 Nov 12, 2021
An extension module to make reaction based menus with disnake

disnake-ext-menus An experimental extension menu that makes working with reaction menus a bit easier. Installing python -m pip install -U disnake-ext-

1 Nov 25, 2021
A basic animation modding workflow for FFXIV

AnimAssist Provides a quick and easy way to mod animations in FFXIV. You will need: Before anything, the VC++2012 32-bit Redist from here. Havok will

liam 37 Dec 16, 2022
Shows VRML team stats of all players in your pubs

VRML Team Stat Searcher Displays Team Name, Team Rank (Worldwide), and tier of all the players in your pubs. GUI WIP: Only username search works (for

Hamish Burke 2 Dec 22, 2022
A calculator to test numbers against the collatz conjecture

The Collatz Calculator This is an algorithm custom built by Kyle Dickey, used to test numbers against the simple rules of the Collatz Conjecture.

Kyle Dickey 2 Jun 14, 2022