(AAAI2020)Grapy-ML: Graph Pyramid Mutual Learning for Cross-dataset Human Parsing

Overview

Grapy-ML: Graph Pyramid Mutual Learning for Cross-dataset Human Parsing

This repository contains pytorch source code for AAAI2020 oral paper: Grapy-ML: Graph Pyramid Mutual Learning for Cross-dataset Human Parsing by Haoyu He, Jing Zhang, Qiming Zhang and Dacheng Tao.


Grapy-ML:

GPM


Getting Started:

Environment:

  • Pytorch = 1.1.0

  • torchvision

  • scipy

  • tensorboardX

  • numpy

  • opencv-python

  • matplotlib

Data Preparation:

You need to download the three datasets. The CIHP dataset and ATR dataset can be found in this repository and our code is heavily borrowed from it as well.

Then, the datasets should be arranged in the following folder, and images should be rearranged with the provided file structure.

/data/dataset/

Testing:

The pretrain models and some trained models are provided here for testing and training.

Model Name Description Derived from
deeplab_v3plus_v3.pth The Deeplab v3+'s pretrain weights
CIHP_pretrain.pth The reproduced Deeplab v3+ model trained on CIHP dataset deeplab_v3plus_v3.pth
CIHP_trained.pth GPM model trained on CIHP dataset CIHP_pretrain.pth
deeplab_multi-dataset.pth The reproduced multi-task learning Deeplab v3+ model trained on CIHP, PASCAL-Person-Part and ATR dataset deeplab_v3plus_v3.pth
GPM-ML_multi-dataset.pth Grapy-ML model trained on CIHP, PASCAL-Person-Part and ATR dataset deeplab_multi-dataset.pth
GPM-ML_finetune_PASCAL.pth Grapy-ML model finetuned on PASCAL-Person-Part dataset GPM-ML_multi-dataset.pth

To test, run the following two scripts:

bash eval_gpm.sh
bash eval_gpm_ml.sh

Training:

GPM:

During training, you first need to get the Deeplab pretrain model(e.g. CIHP_dlab.pth) on each dataset. Such act aims to provide a trustworthy initial raw result for the GSA operation in GPM.

bash train_dlab.sh

The imageNet pretrain model is provided in the following table, and you should swith the dataset name and target classes to the dataset you want in the script. (CIHP: 20 classes, PASCAL: 7 classes and ATR: 18 classes)

In the next step, you should utilize the Deeplab pretrain model to further train the GPM model.

bash train_gpm.sh 

It is recommended to follow the training settings in our paper to reproduce the results.

GPM-ML:

Firstly, you can conduct the deeplab pretrain process by the following script:

bash train_dlab_ml.sh

The multi-dataset Deeplab V3+ is transformed as a simple multi-task task.

Then, you can train the GPM-ML model with the training set from all three datasets by:

bash train_gpm_ml_all.sh

After this phase, the first two levels of the GPM-ML model would be more robust and generalized.

Finally, you can try to finetune on each dataset by the unified pretrain model.

bash train_gpm_ml_pascal.sh

Citation:

@inproceedings{he2020grapy,
title={Grapy-ML: Graph Pyramid Mutual Learning for Cross-dataset Human Parsing},
author={He, Haoyu and Zhang, Jing and Zhang, Qiming and Tao, Dacheng},
booktitle={Proceedings of the AAAI Conference on Artificial Intelligence},
year={2020}
}

Maintainer:

[email protected]

Deep Learning Algorithms for Hedging with Frictions

Deep Learning Algorithms for Hedging with Frictions This repository contains the Forward-Backward Stochastic Differential Equation (FBSDE) solver and

Xiaofei Shi 3 Dec 22, 2022
Adversarial Attacks on Probabilistic Autoregressive Forecasting Models.

Attack-Probabilistic-Models This is the source code for Adversarial Attacks on Probabilistic Autoregressive Forecasting Models. This repository contai

SRI Lab, ETH Zurich 25 Sep 14, 2022
Geometric Algebra package for JAX

JAXGA - JAX Geometric Algebra GitHub | Docs JAXGA is a Geometric Algebra package on top of JAX. It can handle high dimensional algebras by storing onl

Robin Kahlow 36 Dec 22, 2022
Fast, modular reference implementation and easy training of Semantic Segmentation algorithms in PyTorch.

TorchSeg This project aims at providing a fast, modular reference implementation for semantic segmentation models using PyTorch. Highlights Modular De

ycszen 1.4k Jan 02, 2023
A PyTorch implementation of PointRend: Image Segmentation as Rendering

PointRend A PyTorch implementation of PointRend: Image Segmentation as Rendering [arxiv] [Official Implementation: Detectron2] This repo for Only Sema

AhnDW 336 Dec 26, 2022
Neural HMMs are all you need (for high-quality attention-free TTS)

Neural HMMs are all you need (for high-quality attention-free TTS) Shivam Mehta, Éva Székely, Jonas Beskow, and Gustav Eje Henter This is the official

Shivam Mehta 0 Oct 28, 2022
A simple python library for fast image generation of people who do not exist.

Random Face A simple python library for fast image generation of people who do not exist. For more details, please refer to the [paper](https://arxiv.

Sergei Belousov 170 Dec 15, 2022
Aircraft design optimization made fast through modern automatic differentiation

Aircraft design optimization made fast through modern automatic differentiation. Plug-and-play analysis tools for aerodynamics, propulsion, structures, trajectory design, and much more.

Peter Sharpe 394 Dec 23, 2022
This repository provides code for "On Interaction Between Augmentations and Corruptions in Natural Corruption Robustness".

On Interaction Between Augmentations and Corruptions in Natural Corruption Robustness This repository provides the code for the paper On Interaction B

Meta Research 33 Dec 08, 2022
Official implementation of our CVPR2021 paper "OTA: Optimal Transport Assignment for Object Detection" in Pytorch.

OTA: Optimal Transport Assignment for Object Detection This project provides an implementation for our CVPR2021 paper "OTA: Optimal Transport Assignme

217 Jan 03, 2023
Canonical Capsules: Unsupervised Capsules in Canonical Pose (NeurIPS 2021)

Canonical Capsules: Unsupervised Capsules in Canonical Pose (NeurIPS 2021) Introduction This is the official repository for the PyTorch implementation

165 Dec 07, 2022
Pytorch port of Google Research's LEAF Audio paper

leaf-audio-pytorch Pytorch port of Google Research's LEAF Audio paper published at ICLR 2021. This port is not completely finished, but the Leaf() fro

Dennis Fedorishin 80 Oct 31, 2022
ROCKET: Exceptionally fast and accurate time series classification using random convolutional kernels

ROCKET + MINIROCKET ROCKET: Exceptionally fast and accurate time series classification using random convolutional kernels. Data Mining and Knowledge D

298 Dec 26, 2022
My implementation of transformers related papers for computer vision in pytorch

vision_transformers This is my personnal repo to implement new transofrmers based and other computer vision DL models I am currenlty working without a

samsja 1 Nov 10, 2021
UFPR-ADMR-v2 Dataset

UFPR-ADMR-v2 Dataset The UFPR-ADMRv2 dataset contains 5,000 dial meter images obtained on-site by employees of the Energy Company of Paraná (Copel), w

Gabriel Salomon 8 Sep 29, 2022
利用python脚本实现微信、支付宝账单的合并,并保存到excel文件实现自动记账,可查看可视化图表。

KeepAccounts_v2.0 KeepAccounts.exe和其配套表格能够实现微信、支付宝官方导出账单的读取合并,为每笔帐标记类型,并按月份和类型生成可视化图表。再也不用消费一笔记一笔,每月仅需10分钟,记好所有的帐。 作者: MickLife Bilibili: https://spac

159 Jan 01, 2023
Some toy examples of score matching algorithms written in PyTorch

toy_gradlogp This repo implements some toy examples of the following score matching algorithms in PyTorch: ssm-vr: sliced score matching with variance

Ending Hsiao 21 Dec 26, 2022
A PyTorch-based library for fast prototyping and sharing of deep neural network models.

A PyTorch-based library for fast prototyping and sharing of deep neural network models.

78 Jan 03, 2023
An 16kHz implementation of HiFi-GAN for soft-vc.

HiFi-GAN An 16kHz implementation of HiFi-GAN for soft-vc. Relevant links: Official HiFi-GAN repo HiFi-GAN paper Soft-VC repo Soft-VC paper Example Usa

Benjamin van Niekerk 42 Dec 27, 2022