(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]

Weakly Supervised Segmentation with Tensorflow. Implements instance segmentation as described in Simple Does It: Weakly Supervised Instance and Semantic Segmentation, by Khoreva et al. (CVPR 2017).

Weakly Supervised Segmentation with TensorFlow This repo contains a TensorFlow implementation of weakly supervised instance segmentation as described

Phil Ferriere 220 Dec 13, 2022
Official Pytorch Implementation of Unsupervised Image Denoising with Frequency Domain Knowledge

Unsupervised Image Denoising with Frequency Domain Knowledge (BMVC 2021 Oral) : Official Project Page This repository provides the official PyTorch im

Donggon Jang 12 Sep 26, 2022
A Pytorch implementation of the multi agent deep deterministic policy gradients (MADDPG) algorithm

Multi-Agent-Deep-Deterministic-Policy-Gradients A Pytorch implementation of the multi agent deep deterministic policy gradients(MADDPG) algorithm This

Phil Tabor 159 Dec 28, 2022
Beyond a Gaussian Denoiser: Residual Learning of Deep CNN for Image Denoising

Beyond a Gaussian Denoiser: Residual Learning of Deep CNN for Image Denoising

Kai Zhang 1.2k Dec 29, 2022
Unofficial Tensorflow Implementation of ConvNeXt from A ConvNet for the 2020s

Tensorflow Implementation of "A ConvNet for the 2020s" This is the unofficial Tensorflow Implementation of ConvNeXt from "A ConvNet for the 2020s" pap

DK 11 Oct 12, 2022
BookMyShowPC - Movie Ticket Reservation App made with Tkinter

Book My Show PC What is this? Movie Ticket Reservation App made with Tkinter. Tk

The Nithin Balaji 3 Dec 09, 2022
Official repository for "Deep Recurrent Neural Network with Multi-scale Bi-directional Propagation for Video Deblurring".

RNN-MBP Deep Recurrent Neural Network with Multi-scale Bi-directional Propagation for Video Deblurring (AAAI-2022) by Chao Zhu, Hang Dong, Jinshan Pan

SIV-LAB 22 Aug 31, 2022
Parameter Efficient Deep Probabilistic Forecasting

PEDPF Parameter Efficient Deep Probabilistic Forecasting (PEDPF) is a repository containing code to run experiments for several deep learning based pr

Olivier Sprangers 10 Jun 13, 2022
This repository is the official implementation of Using Time-Series Privileged Information for Provably Efficient Learning of Prediction Models

Using Time-Series Privileged Information for Provably Efficient Learning of Prediction Models Link to paper Abstract We study prediction of future out

Rickard Karlsson 2 Aug 19, 2022
PyTorch GPU implementation of the ES-RNN model for time series forecasting

Fast ES-RNN: A GPU Implementation of the ES-RNN Algorithm A GPU-enabled version of the hybrid ES-RNN model by Slawek et al that won the M4 time-series

Kaung 305 Jan 03, 2023
pytorch implementation of ABC : Auxiliary Balanced Classifier for Class-imbalanced Semi-supervised Learning

ABC:Auxiliary Balanced Classifier for Class-imbalanced Semi-supervised Learning, NeurIPS 2021 pytorch implementation of ABC : Auxiliary Balanced Class

Hyuck Lee 25 Dec 22, 2022
I created My own Virtual Artificial Intelligence named genesis, He can assist with my Tasks and also perform some analysis,,

Virtual-Artificial-Intelligence-genesis- I created My own Virtual Artificial Intelligence named genesis, He can assist with my Tasks and also perform

AKASH M 1 Nov 05, 2021
A GUI for Face Recognition, based upon Docker, Tkinter, GPU and a camera device.

Face Recognition GUI This repository is a GUI version of Face Recognition by Adam Geitgey, where e.g. Docker and Tkinter are utilized. All the materia

Kasper Henriksen 6 Dec 05, 2022
Code for "OctField: Hierarchical Implicit Functions for 3D Modeling (NeurIPS 2021)"

OctField(Jittor): Hierarchical Implicit Functions for 3D Modeling Introduction This repository is code release for OctField: Hierarchical Implicit Fun

55 Dec 08, 2022
Artificial intelligence technology inferring issues and logically supporting facts from raw text

개요 비정형 텍스트를 학습하여 쟁점별 사실과 논리적 근거 추론이 가능한 인공지능 원천기술 Artificial intelligence techno

6 Dec 29, 2021
TResNet: High Performance GPU-Dedicated Architecture

TResNet: High Performance GPU-Dedicated Architecture paperV2 | pretrained models Official PyTorch Implementation Tal Ridnik, Hussam Lawen, Asaf Noy, I

426 Dec 28, 2022
Code for the Convolutional Vision Transformer (ConViT)

ConViT : Vision Transformers with Convolutional Inductive Biases This repository contains PyTorch code for ConViT. It builds on code from the Data-Eff

Facebook Research 418 Jan 06, 2023
functorch is a prototype of JAX-like composable function transforms for PyTorch.

functorch is a prototype of JAX-like composable function transforms for PyTorch.

Facebook Research 1.2k Jan 09, 2023
Código de um painel de auto atendimento feito em Python.

Painel de Auto-Atendimento O intuito desse projeto era fazer em Python um programa que simulasse um painel de auto atendimento, no maior estilo Mac Do

Calebe Alves Evangelista 2 Nov 09, 2022
Flexible-CLmser: Regularized Feedback Connections for Biomedical Image Segmentation

Flexible-CLmser: Regularized Feedback Connections for Biomedical Image Segmentation The skip connections in U-Net pass features from the levels of enc

Boheng Cao 1 Dec 29, 2021