PyTorch implementation of hand mesh reconstruction described in CMR and MobRecon.

Overview

Hand Mesh Reconstruction

Introduction

This repo is the PyTorch implementation of hand mesh reconstruction described in CMR and MobRecon.

Update

  • 2021-12.7, Add MobRecon demo.
  • 2021-6-10, Add Human3.6M dataset.
  • 2021-5-20, Add CMR-G model.

Features

  • SpiralNet++
  • Sub-pose aggregation
  • Adaptive 2D-1D registration for mesh-image alignment
  • DenseStack for 2D encoding
  • Feature lifting with MapReg and PVL
  • DSConv as an efficient mesh operator
  • MobRecon training with consistency learning and complement data

Install

  • Environment

    conda create -n handmesh python=3.6
    conda activate handmesh
    
  • Please follow official suggestions to install pytorch and torchvision. We use pytorch=1.7.1, torchvision=0.8.2

  • Requirements

    pip install -r requirements.txt
    

    If you have difficulty in installing torch_sparse etc., please use whl file from here.

  • MPI-IS Mesh: We suggest to install this library from the source

  • Download the files you need from Google drive.

Run a demo

  • Prepare pre-trained models as

    out/Human36M/cmr_g/checkpoints/cmr_g_res18_human36m.pt
    out/FreiHAND/cmr_g/checkpoints/cmr_g_res18_moredata.pt
    out/FreiHAND/cmr_sg/checkpoints/cmr_sg_res18_freihand.pt
    out/FreiHAND/cmr_pg/checkpoints/cmr_pg_res18_freihand.pt  
    out/FreiHAND/mobrecon/checkpoints/mobrecon_densestack_dsconv.pt  
    
  • Run

    ./scripts/demo_cmr.sh
    ./scripts/demo_mobrecon.sh
    

    The prediction results will be saved in output directory, e.g., out/FreiHAND/mobrecon/demo.

  • Explaination of the output

    • In an JPEG file (e.g., 000_plot.jpg), we show silhouette, 2D pose, projection of mesh, camera-space mesh and pose
    • As for camera-space information, we use a red rectangle to indicate the camera position, or the image plane. The unit is meter.
    • If you run the demo, you can also obtain a PLY file (e.g., 000_mesh.ply).
      • This file is a 3D model of the hand.
      • You can open it with corresponding software (e.g., Preview in Mac).
      • Here, you can get more 3D details through rotation and zoom in.

Dataset

FreiHAND

  • Please download FreiHAND dataset from this link, and create a soft link in data, i.e., data/FreiHAND.
  • Download mesh GT file freihand_train_mesh.zip, and unzip it under data/FreiHAND/training

Human3.6M

  • The official data is now not avaliable. Please follow I2L repo to download it.
  • Download silhouette GT file h36m_mask.zip, and unzip it under data/Human36M.

Data dir

${ROOT}  
|-- data  
|   |-- FreiHAND
|   |   |-- training
|   |   |   |-- rgb
|   |   |   |-- mask
|   |   |   |-- mesh
|   |   |-- evaluation
|   |   |   |-- rgb
|   |   |-- evaluation_K.json
|   |   |-- evaluation_scals.json
|   |   |-- training_K.json
|   |   |-- training_mano.json
|   |   |-- training_xyz.json
|   |-- Human3.6M
|   |   |-- images
|   |   |-- mask
|   |   |-- annotations

Evaluation

FreiHAND

./scripts/eval_cmr_freihand.sh
./scripts/eval_mobrecon_freihand.sh
  • JSON file will be saved as out/FreiHAND/cmr_sg/cmr_sg.josn. You can submmit this file to the official server for evaluation.

Human3.6M

./scripts/eval_cmr_human36m.sh

Performance on PA-MPJPE (mm)

We re-produce the following results after code re-organization.

Model / Dataset FreiHAND Human3.6M (w/o COCO)
CMR-G-ResNet18 7.6 -
CMR-SG-ResNet18 7.5 -
CMR-PG-ResNet18 7.5 50.0
MobRecon-DenseStack 6.9 -

Training

./scripts/train_cmr_freihand.sh
./scripts/train_cmr_human36m.sh

Reference

@inproceedings{bib:CMR,
  title={Camera-Space Hand Mesh Recovery via Semantic Aggregationand Adaptive 2D-1D Registration},
  author={Chen, Xingyu and Liu, Yufeng and Ma, Chongyang and Chang, Jianlong and Wang, Huayan and Chen, Tian and Guo, Xiaoyan and Wan, Pengfei and Zheng, Wen},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
  year={2021}
}
@article{bib:MobRecon,
  title={MobRecon: Mobile-Friendly Hand Mesh Reconstruction from Monocular Image},
  author={Chen, Xingyu and Liu, Yufeng and Dong Yajiao and Zhang, Xiong and Ma, Chongyang and Xiong, Yanmin and Zhang, Yuan and Guo, Xiaoyan},
  journal={arXiv:2112.02753},
  year={2021}
}
}

Acknowledgement

Our implementation of SpiralConv is based on spiralnet_plus.

Owner
Xingyu Chen
Xingyu Chen
This is the official repository for our paper: ''Pruning Self-attentions into Convolutional Layers in Single Path''.

Pruning Self-attentions into Convolutional Layers in Single Path This is the official repository for our paper: Pruning Self-attentions into Convoluti

Zhuang AI Group 77 Dec 26, 2022
Official implementation of the NRNS paper: No RL, No Simulation: Learning to Navigate without Navigating

No RL No Simulation (NRNS) Official implementation of the NRNS paper: No RL, No Simulation: Learning to Navigate without Navigating NRNS is a heriarch

Meera Hahn 20 Nov 29, 2022
Python interface for SmartRF Sniffer 2 Firmware

#TI SmartRF Packet Sniffer 2 Python Interface TI Makes available a nice packet sniffer firmware, which interfaces to Wireshark. You can see this proje

Colin O'Flynn 3 May 18, 2021
Official PyTorch implementation of PS-KD

Self-Knowledge Distillation with Progressive Refinement of Targets (PS-KD) Accepted at ICCV 2021, oral presentation Official PyTorch implementation of

61 Dec 28, 2022
Ladder Variational Autoencoders (LVAE) in PyTorch

Ladder Variational Autoencoders (LVAE) PyTorch implementation of Ladder Variational Autoencoders (LVAE) [1]: where the variational distributions q at

Andrea Dittadi 63 Dec 22, 2022
MODALS: Modality-agnostic Automated Data Augmentation in the Latent Space

Update (20 Jan 2020): MODALS on text data is avialable MODALS MODALS: Modality-agnostic Automated Data Augmentation in the Latent Space Table of Conte

38 Dec 15, 2022
Christmas face app for Decathlon xmas coding party!

Christmas Face Application Use this library to create the perfect picture for your christmas cards! Done by Hasib Zunair, Guillaume Brassard and Samue

Hasib Zunair 4 Dec 20, 2021
Code repository for Self-supervised Structure-sensitive Learning, CVPR'17

Self-supervised Structure-sensitive Learning (SSL) Ke Gong, Xiaodan Liang, Xiaohui Shen, Liang Lin, "Look into Person: Self-supervised Structure-sensi

Clay Gong 219 Dec 29, 2022
Texture mapping with variational auto-encoders

vae-textures This is an experiment with using variational autoencoders (VAEs) to perform mesh parameterization. This was also my first project using J

Alex Nichol 41 May 24, 2022
Keep CALM and Improve Visual Feature Attribution

Keep CALM and Improve Visual Feature Attribution Jae Myung Kim1*, Junsuk Choe1*, Zeynep Akata2, Seong Joon Oh1† * Equal contribution † Corresponding a

NAVER AI 90 Dec 07, 2022
A collection of SOTA Image Classification Models in PyTorch

A collection of SOTA Image Classification Models in PyTorch

sithu3 85 Dec 30, 2022
A script written in Python that returns a consensus string and profile matrix of a given DNA string(s) in FASTA format.

A script written in Python that returns a consensus string and profile matrix of a given DNA string(s) in FASTA format.

Zain 1 Feb 01, 2022
Project Aquarium is a SUSE-sponsored open source project aiming at becoming an easy to use, rock solid storage appliance based on Ceph.

Project Aquarium Project Aquarium is a SUSE-sponsored open source project aiming at becoming an easy to use, rock solid storage appliance based on Cep

Aquarist Labs 73 Jul 21, 2022
Multi-query Video Retreival

Multi-query Video Retreival

Princeton Visual AI Lab 17 Nov 22, 2022
A trusty face recognition research platform developed by Tencent Youtu Lab

Introduction TFace: A trusty face recognition research platform developed by Tencent Youtu Lab. It provides a high-performance distributed training fr

Tencent 956 Jan 01, 2023
Extracting and filtering paraphrases by bridging natural language inference and paraphrasing

nli2paraphrases Source code repository accompanying the preprint Extracting and filtering paraphrases by bridging natural language inference and parap

Matej Klemen 1 Mar 09, 2022
A platform for intelligent agent learning based on a 3D open-world FPS game developed by Inspir.AI.

Wilderness Scavenger: 3D Open-World FPS Game AI Challenge This is a platform for intelligent agent learning based on a 3D open-world FPS game develope

46 Nov 24, 2022
Volsdf - Volume Rendering of Neural Implicit Surfaces

Volume Rendering of Neural Implicit Surfaces Project Page | Paper | Data This re

Lior Yariv 221 Jan 07, 2023
Multi-Stage Spatial-Temporal Convolutional Neural Network (MS-GCN)

Multi-Stage Spatial-Temporal Convolutional Neural Network (MS-GCN) This code implements the skeleton-based action segmentation MS-GCN model from Autom

Benjamin Filtjens 8 Nov 29, 2022
Face Recognize System on camera AI OAK1

FRS on OAK1 Face Recognize System on camera OAK1 This project contains our work that deploy on camera OAK1 Features Anti-Spoofing Face detection Face

Tran Anh Tuan 6 Aug 08, 2022