Propagate Yourself: Exploring Pixel-Level Consistency for Unsupervised Visual Representation Learning, CVPR 2021

Overview

Propagate Yourself: Exploring Pixel-Level Consistency for Unsupervised Visual Representation Learning

By Zhenda Xie*, Yutong Lin*, Zheng Zhang, Yue Cao, Stephen Lin and Han Hu.

This repo is an official implementation of "Propagate Yourself: Exploring Pixel-Level Consistency for Unsupervised Visual Representation Learning" on PyTorch.

Introduction

PixPro (pixel-to-propagation) is an unsupervised visual feature learning approach by leveraging pixel-level pretext tasks. The learnt feature can be well transferred to downstream dense prediction tasks such as object detection and semantic segmentation. PixPro achieves the best transferring performance on Pascal VOC object detection (60.2 AP using C4) and COCO object detection (41.4 / 40.5 mAP using FPN / C4) with a ResNet-50 backbone.

An illustration of the proposed PixPro method.

Architecture of the PixContrast and PixPro methods.

Citation

@article{xie2020propagate,
  title={Propagate Yourself: Exploring Pixel-Level Consistency for Unsupervised Visual Representation Learning},
  author={Xie, Zhenda and Lin, Yutong and Zhang, Zheng and Cao, Yue and Lin, Stephen and Hu, Han},
  conference={IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
  year={2021}
}

Main Results

PixPro pre-trained models

Epochs Arch Instance Branch Download
100 ResNet-50 script | model
400 ResNet-50 script | model
100 ResNet-50 ✔️ -
400 ResNet-50 ✔️ -

Pascal VOC object detection

Faster-RCNN with C4

Method Epochs Arch AP AP50 AP75 Download
Scratch - ResNet-50 33.8 60.2 33.1 -
Supervised 100 ResNet-50 53.5 81.3 58.8 -
MoCo 200 ResNet-50 55.9 81.5 62.6 -
SimCLR 1000 ResNet-50 56.3 81.9 62.5 -
MoCo v2 800 ResNet-50 57.6 82.7 64.4 -
InfoMin 200 ResNet-50 57.6 82.7 64.6 -
InfoMin 800 ResNet-50 57.5 82.5 64.0 -
PixPro (ours) 100 ResNet-50 58.8 83.0 66.5 config | model
PixPro (ours) 400 ResNet-50 60.2 83.8 67.7 config | model

COCO object detection

Mask-RCNN with FPN

Method Epochs Arch Schedule bbox AP mask AP Download
Scratch - ResNet-50 1x 32.8 29.9 -
Supervised 100 ResNet-50 1x 39.7 35.9 -
MoCo 200 ResNet-50 1x 39.4 35.6 -
SimCLR 1000 ResNet-50 1x 39.8 35.9 -
MoCo v2 800 ResNet-50 1x 40.4 36.4 -
InfoMin 200 ResNet-50 1x 40.6 36.7 -
InfoMin 800 ResNet-50 1x 40.4 36.6 -
PixPro (ours) 100 ResNet-50 1x 40.8 36.8 config | model
PixPro (ours) 100* ResNet-50 1x 41.3 37.1 -
PixPro (ours) 400* ResNet-50 1x 41.4 37.4 -

* Indicates methods with instance branch.

Mask-RCNN with C4

Method Epochs Arch Schedule bbox AP mask AP Download
Scratch - ResNet-50 1x 26.4 29.3 -
Supervised 100 ResNet-50 1x 38.2 33.3 -
MoCo 200 ResNet-50 1x 38.5 33.6 -
SimCLR 1000 ResNet-50 1x 38.4 33.6 -
MoCo v2 800 ResNet-50 1x 39.5 34.5 -
InfoMin 200 ResNet-50 1x 39.0 34.1 -
InfoMin 800 ResNet-50 1x 38.8 33.8 -
PixPro (ours) 100 ResNet-50 1x 40.0 34.8 config | model
PixPro (ours) 400 ResNet-50 1x 40.5 35.3 config | model

Getting started

Requirements

At present, we have not checked the compatibility of the code with other versions of the packages, so we only recommend the following configuration.

  • Python 3.7
  • PyTorch == 1.4.0
  • Torchvision == 0.5.0
  • CUDA == 10.1
  • Other dependencies

Installation

We recommand using conda env to setup the experimental environments.

# Create environment
conda create -n PixPro python=3.7 -y
conda activate PixPro

# Install PyTorch & Torchvision
conda install pytorch=1.4.0 cudatoolkit=10.1 torchvision -c pytorch -y

# Install apex
git clone https://github.com/NVIDIA/apex
cd apex
pip install -v --disable-pip-version-check --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" ./
cd ..

# Clone repo
git clone https://github.com/zdaxie/PixPro ./PixPro
cd ./PixPro

# Create soft link for data
mkdir data
ln -s ${ImageNet-Path} ./data/imagenet

# Install other requirements
pip install -r requirements.txt

Pretrain with PixPro

# Train with PixPro base for 100 epochs.
./tools/pixpro_base_r50_100ep.sh

Transfer to Pascal VOC or COCO object detection

# Convert a pre-trained PixPro model to detectron2's format
cd transfer/detection
python convert_pretrain_to_d2.py ${Input-Checkpoint(.pth)} ./output.pkl  

# Install Detectron2
python -m pip install detectron2==0.2.1 -f \
  https://dl.fbaipublicfiles.com/detectron2/wheels/cu101/torch1.4/index.html

# Create soft link for data
mkdir datasets
ln -s ${Pascal-VOC-Path}/VOC2007 ./datasets/VOC2007
ln -s ${Pascal-VOC-Path}/VOC2012 ./datasets/VOC2012
ln -s ${COCO-Path} ./datasets/coco

# Train detector with pre-trained PixPro model
# 1. Train Faster-RCNN with Pascal-VOC
python train_net.py --config-file configs/Pascal_VOC_R_50_C4_24k_PixPro.yaml --num-gpus 8 MODEL.WEIGHTS ./output.pkl
# 2. Train Mask-RCNN-FPN with COCO
python train_net.py --config-file configs/COCO_R_50_FPN_1x_PixPro.yaml --num-gpus 8 MODEL.WEIGHTS ./output.pkl
# 3. Train Mask-RCNN-C4 with COCO
python train_net.py --config-file configs/COCO_R_50_C4_1x_PixPro.yaml --num-gpus 8 MODEL.WEIGHTS ./output.pkl

# Test detector with provided fine-tuned model
python train_net.py --config-file configs/Pascal_VOC_R_50_C4_24k_PixPro.yaml --num-gpus 8 --eval-only \
  MODEL.WEIGHTS ./pixpro_base_r50_100ep_voc_md5_ec2dfa63.pth

More models and logs will be released!

Acknowledgement

Our testbed builds upon several existing publicly available codes. Specifically, we have modified and integrated the following code into this project:

Contributing to the project

Any pull requests or issues are welcomed.

Compact Bidirectional Transformer for Image Captioning

Compact Bidirectional Transformer for Image Captioning Requirements Python 3.8 Pytorch 1.6 lmdb h5py tensorboardX Prepare Data Please use git clone --

YE Zhou 19 Dec 12, 2022
Exploring Versatile Prior for Human Motion via Motion Frequency Guidance (3DV2021)

Exploring Versatile Prior for Human Motion via Motion Frequency Guidance This is the codebase for video-based human motion reconstruction in human-mot

Jiachen Xu 5 Jul 14, 2022
[Open Source]. The improved version of AnimeGAN. Landscape photos/videos to anime

[Open Source]. The improved version of AnimeGAN. Landscape photos/videos to anime

CC 4.4k Dec 27, 2022
PyTorch implementation(s) of various ResNet models from Twitch streams.

pytorch-resnet-twitch PyTorch implementation(s) of various ResNet models from Twitch streams. Status: ResNet50 currently not working. Will update in n

Daniel Bourke 3 Jan 11, 2022
The official PyTorch implementation for NCSNv2 (NeurIPS 2020)

Improved Techniques for Training Score-Based Generative Models This repo contains the official implementation for the paper Improved Techniques for Tr

174 Dec 26, 2022
Python package for visualizing the loss landscape of parameterized quantum algorithms.

orqviz A Python package for easily visualizing the loss landscape of Variational Quantum Algorithms by Zapata Computing Inc. orqviz provides a collect

Zapata Computing, Inc. 75 Dec 30, 2022
Learning Efficient Online 3D Bin Packing on Packing Configuration Trees

Learning Efficient Online 3D Bin Packing on Packing Configuration Trees This repository is being continuously updated, please stay tuned! Any code con

86 Dec 28, 2022
Employs neural networks to classify images into four categories: ship, automobile, dog or frog

Neural Net Image Classifier Employs neural networks to classify images into four categories: ship, automobile, dog or frog Viterbi_1.py uses a classic

Riley Baker 1 Jan 18, 2022
AI grand challenge 2020 Repo (Speech Recognition Track)

KorBERT를 활용한 한국어 텍스트 기반 위협 상황인지(2020 인공지능 그랜드 챌린지) 본 프로젝트는 ETRI에서 제공된 한국어 korBERT 모델을 활용하여 폭력 기반 한국어 텍스트를 분류하는 다양한 분류 모델들을 제공합니다. 본 개발자들이 참여한 2020 인공지

Young-Seok Choi 23 Jan 25, 2022
Pre-Training Graph Neural Networks for Cold-Start Users and Items Representation.

Pretrain-Recsys This is our Tensorflow implementation for our WSDM 2021 paper: Bowen Hao, Jing Zhang, Hongzhi Yin, Cuiping Li, Hong Chen. Pre-Training

30 Nov 14, 2022
A Broad Study on the Transferability of Visual Representations with Contrastive Learning

A Broad Study on the Transferability of Visual Representations with Contrastive Learning This repository contains code for the paper: A Broad Study on

Ashraful Islam 29 Nov 09, 2022
A Tensorfflow implementation of Attend, Infer, Repeat

Attend, Infer, Repeat: Fast Scene Understanding with Generative Models This is an unofficial Tensorflow implementation of Attend, Infear, Repeat (AIR)

Adam Kosiorek 82 May 27, 2022
Fantasy Points Prediction and Dream Team Formation

Fantasy-Points-Prediction-and-Dream-Team-Formation Collected Data from open source resources that have over 100 Parameters for predicting cricket play

Akarsh Singh 2 Sep 13, 2022
We present a framework for training multi-modal deep learning models on unlabelled video data by forcing the network to learn invariances to transformations applied to both the audio and video streams.

Multi-Modal Self-Supervision using GDT and StiCa This is an official pytorch implementation of papers: Multi-modal Self-Supervision from Generalized D

Facebook Research 42 Dec 09, 2022
SLAMP: Stochastic Latent Appearance and Motion Prediction

SLAMP: Stochastic Latent Appearance and Motion Prediction Official implementation of the paper SLAMP: Stochastic Latent Appearance and Motion Predicti

Kaan Akan 34 Dec 08, 2022
Implementation of Bagging and AdaBoost Algorithm

Bagging-and-AdaBoost Implementation of Bagging and AdaBoost Algorithm Dataset Red Wine Quality Data Sets For simplicity, we will have 2 classes of win

Zechen Ma 1 Nov 01, 2021
The Surprising Effectiveness of Visual Odometry Techniques for Embodied PointGoal Navigation

PointNav-VO The Surprising Effectiveness of Visual Odometry Techniques for Embodied PointGoal Navigation Project Page | Paper Table of Contents Setup

Xiaoming Zhao 41 Dec 15, 2022
This code is part of the reproducibility package for the SANER 2022 paper "Generating Clarifying Questions for Query Refinement in Source Code Search".

Clarifying Questions for Query Refinement in Source Code Search This code is part of the reproducibility package for the SANER 2022 paper "Generating

Zachary Eberhart 0 Dec 04, 2021
Deep-Learning-Image-Captioning - Implementing convolutional and recurrent neural networks in Keras to generate sentence descriptions of images

Deep Learning - Image Captioning with Convolutional and Recurrent Neural Nets ========================================================================

23 Apr 06, 2022
automated systems to assist guarding corona Virus precautions for Closed Rooms (e.g. Halls, offices, etc..)

Automatic-precautionary-guard automated systems to assist guarding corona Virus precautions for Closed Rooms (e.g. Halls, offices, etc..) what is this

badra 0 Jan 06, 2022