CVPR2022 paper "Dense Learning based Semi-Supervised Object Detection"

Related tags

Deep LearningDSL
Overview

Python >=3.8 PyTorch >=1.8.0 mmcv-full >=1.3.10

[CVPR2022] DSL: Dense Learning based Semi-Supervised Object Detection

DSL is the first work on Anchor-Free detector for Semi-Supervised Object Detection (SSOD).

This code is established on mmdetection and is only used for research.

Instruction

Install dependencies

pytorch>=1.8.0
cuda 10.2
python>=3.8
mmcv-full 1.3.10

Download ImageNet pre-trained models

Download resnet50_rla_2283.pth (Google) resnet50_rla_2283.pth (Baidu, extract code: 5lf1) for later DSL training.

Training

For dynamically labeling the unlabeled images, original COCO dataset and VOC dataset will be converted to (DSL-style) datasets where annotations are saved in different json files and each image has its own annotation file. In addition, this implementation is slightly different from the original paper, where we clean the code, merge some data flow for speeding up training, add PatchShuffle also to the labeled images, and remove MetaNet for speeding up training as well, the final performance is similar as the original paper.

Clone this project & Create data root dir

cd ${project_root_dir}
git clone https://github.com/chenbinghui1/DSL.git
mkdir data
mkdir ori_data

#resulting format
#${project_root_dir}
#      - ori_data
#      - data
#      - DSL
#        - configs
#        - ...

For COCO Partially Labeled Data protocol

1. Download coco dataset and unzip it

mkdir ori_data/coco
cd ori_data/coco

wget http://images.cocodataset.org/annotations/annotations_trainval2017.zip
wget http://images.cocodataset.org/zips/train2017.zip
wget http://images.cocodataset.org/zips/val2017.zip
wget http://images.cocodataset.org/zips/unlabeled2017.zip

unzip annotations_trainval2017.zip -d .
unzip -q train2017.zip -d .
unzip -q val2017.zip -d .
unzip -q unlabeled2017.zip -d .

# resulting format
# ori_data/coco
#   - train2017
#     - xxx.jpg
#   - val2017
#     - xxx.jpg
#   - unlabled2017
#     - xxx.jpg
#   - annotations
#     - xxx.json
#     - ...

2. Convert coco to semicoco dataset

Use (tools/coco_convert2_semicoco_json.py) to generate the DSL-style coco data dir, i.e., semicoco/, which matches the code of unlabel training and pseudo-label update.

cd ${project_root_dir}/DSL
python3 tools/coco_convert2_semicoco_json.py --input ${project_root_dir}/ori_data/coco --output ${project_root_dir}/data/semicoco

You will obtain ${project_root_dir}/data/semicoco/ dir

3. Prepare partially labeled data

Use (data_list/coco_semi/prepare_dta.py) to generate the partially labeled data list_file. Now we take 10% labeled data as example

cd data_list/coco_semi/
python3 prepare_dta.py --percent 10 --root ${project_root_dir}/ori_data/coco --seed 2

You will obtain (data_list/coco_semi/semi_supervised/instances_train2017.${seed}@${percent}.json) (data_list/coco_semi/semi_supervised/instances_train2017.${seed}@${percent}-unlabel.json) (data_list/coco_semi/semi_supervised/instances_train2017.json) (data_list/coco_semi/semi_supervised/instances_val2017.json)

These above files are only used as image_list.

4. Train supervised baseline model

Train base model via (demo/model_train/baseline_coco.sh); configs are in dir (configs/fcos_semi/); Before running this script please change the corresponding file path in both script and config files.

cd ${project_root_dir}/DSL
./demo/model_train/baseline_coco.sh

5. Generate initial pseudo-labels for unlabeled images(1/2)

Generate the initial pseudo-labels for unlabeled images via (tools/inference_unlabeled_coco_data.sh): please change the corresponding list file path of unlabeled data in the config file, and the model path in tools/inference_unlabeled_coco_data.sh.

./tools/inference_unlabeled_coco_data.sh

Then you will obtain (workdir_coco/xx/epoch_xxx.pth-unlabeled.bbox.json) which contains the pseudo-labels.

6. Generate initial pseudo-labels for unlabeled images(2/2)

Use (tools/generate_unlabel_annos_coco.py) to convert the produced (epoch_xxx.pth-unlabeled.bbox.json) above to DSL-style annotations

python3 tools/generate_unlabel_annos_coco.py \ 
          --input_path workdir_coco/xx/epoch_xxx.pth-unlabeled.bbox.json \
          --input_list data_list/coco_semi/semi_supervised/instances_train2017.${seed}@${percent}-unlabeled.json \
          --cat_info ${project_root_dir}/data/semicoco/mmdet_category_info.json \
          --thres 0.1

You will obtain (workdir_coco/xx/epoch_xxx.pth-unlabeled.bbox.json_thres0.1_annos/) dir which contains the DSL-style annotations.

7. DSL Training

Use (demo/model_train/unlabel_train.sh) to train our semi-supervised algorithm. Before training, please change the corresponding paths in config file and shell script.

./demo/model_train/unlabel_train.sh

For COCO Fully Labeled Data protocol

The overall steps are similar as steps in above Partially Labeled Data guaidline. The additional steps to do is to download and organize the new unlabeled data.

1. Organize the new images

Put all the jpg images into the generated DSL-style semicoco data dir like: semicoco/unlabel_images/full/xx.jpg;

cd ${project_root_dir}
cp ori_data/coco/unlabled2017/* data/semicoco/unlabel_images/full/

2. Download the corresponding files

Download (STAC_JSON.tar.gz) and unzip it; move (coco/annotations/instances_unlabeled2017.json) to (data_list/coco_semi/semi_supervised/) dir

cd ${project_root_dir}/ori_data
wget https://storage.cloud.google.com/gresearch/ssl_detection/STAC_JSON.tar
tar -xf STAC_JSON.tar.gz

# resulting files
# coco/annotations/instances_unlabeled2017.json
# coco/annotations/semi_supervised/instances_unlabeledtrainval20class.json
# voc/VOCdevkit/VOC2007/instances_diff_test.json
# voc/VOCdevkit/VOC2007/instances_diff_trainval.json
# voc/VOCdevkit/VOC2007/instances_test.json
# voc/VOCdevkit/VOC2007/instances_trainval.json
# voc/VOCdevkit/VOC2012/instances_diff_trainval.json
# voc/VOCdevkit/VOC2012/instances_trainval.json

cp coco/annotations/instances_unlabeled2017.json ${project_root_dir}/DSL/data_list/coco_semi/semi_supervised/

3. Train as steps4-steps7 which are used in Partially Labeled data protocol

Change the corresponding paths before training.

For VOC dataset

1. Download VOC data

Download VOC dataset to dir xx and unzip it, we will get (VOCdevkit/)

cd ${project_root_dir}/ori_data
wget http://host.robots.ox.ac.uk/pascal/VOC/voc2007/VOCtrainval_06-Nov-2007.tar
wget http://host.robots.ox.ac.uk/pascal/VOC/voc2007/VOCtest_06-Nov-2007.tar
wget http://host.robots.ox.ac.uk/pascal/VOC/voc2012/VOCtrainval_11-May-2012.tar
tar -xf VOCtrainval_06-Nov-2007.tar
tar -xf VOCtest_06-Nov-2007.tar
tar -xf VOCtrainval_11-May-2012.tar

# resulting format
# ori_data/
#   - VOCdevkit
#     - VOC2007
#       - Annotations
#       - JPEGImages
#       - ...
#     - VOC2012
#       - Annotations
#       - JPEGImages
#       - ...

2. Convert voc to semivoc dataset

Use (tools/voc_convert2_semivoc_json.py) to generate DSL-style voc data dir, i.e., semivoc/, which matches the code of unlabel training and pseudo-label update.

cd ${project_root_dir}/DSL
python3 tools/voc_convert2_semivoc_json.py --input ${project_root_dir}/ori_data/VOCdevkit --output ${project_root_dir}/data/semivoc

And then use (tools/dataset_converters/pascal_voc.py) to convert the original voc list file to coco style file for evaluating VOC performances under COCO 'bbox' metric.

python3 tools/dataset_converters/pascal_voc.py ${project_root_dir}/ori_data/VOCdevkit -o data_list/voc_semi/ --out-format coco

You will obtain the list files in COCO-Style in dir: data_list/voc_semi/. These files are only used as val files, please refer to (configs/fcos_semi/voc/xx.py)

3. Combine with coco20class images

Copy (instances_unlabeledtrainval20class.json) to (data_list/voc_semi/) dir; and then run script (data_list/voc_semi/combine_coco20class_voc12.py) to produce the additional unlabel set with coco20classes.

cp ${project_root_dir}/ori_data/coco/annotations/semi_supervised/instances_unlabeledtrainval20class.json data_list/voc_semi/
cd data_list/voc_semi
python3 data_list/voc_semi/combine_coco20class_voc12.py \
                --cocojson instances_unlabeledtrainval20class.json \
                --vocjson voc12_trainval.json \
                --cocoimage_path ${project_root_dir}/data/semicoco/images/full \
                --outtxt_path ${project_root_dir}/data/semivoc/unlabel_prepared_annos/Industry/ \
                --outimage_path ${project_root_dir}/data/semivoc/unlabel_images/full
cd ../..

You will obtain the corresponding list file(.json): (voc12_trainval_coco20class.json), and the corresponding coco20classes images will be copyed to (${project_root_dir}/data/semivoc/unlabeled_images/full/) and the list file(.txt) will also be generated at (${project_root_dir}/data/semivoc/unlabel_prepared_annos/Industry/voc12_trainval_coco20class.txt)

4. Train as steps4-steps7 which are used in Partially Labeled data protocol

Please change the corresponding paths before training, and refer to configs/fcos_semi/voc/xx.py.

Testing

Please refer to (tools/semi_dist_test.sh).

./tools/semi_dist_test.sh

Acknowledgement

Owner
Bhchen
Bhchen
PyTorch implementation of "Conformer: Convolution-augmented Transformer for Speech Recognition" (INTERSPEECH 2020)

PyTorch implementation of Conformer: Convolution-augmented Transformer for Speech Recognition. Transformer models are good at capturing content-based

Soohwan Kim 565 Jan 04, 2023
2021 credit card consuming recommendation

2021 credit card consuming recommendation

Wang, Chung-Che 7 Mar 08, 2022
The aim of this project is to build an AI bot that can play the Wordle game, or more generally Squabble

Wordle RL The aim of this project is to build an AI bot that can play the Wordle game, or more generally Squabble I know there are more deterministic

Aditya Arora 3 Feb 22, 2022
AI drive app that can help user become beautiful.

爱美丽 Beauty 简体中文 Features Beauty is an AI drive app that can help user become beautiful. it contain those functions: face score cheek face beauty repor

Starved Midnight 1 Jan 30, 2022
Publication describing 3 ML examples at NSLS-II and interfacing into Bluesky

Machine learning enabling high-throughput and remote operations at large-scale user facilities. Overview This repository contains the source code and

BNL 4 Sep 24, 2022
Source code for CVPR 2020 paper "Learning to Forget for Meta-Learning"

L2F - Learning to Forget for Meta-Learning Sungyong Baik, Seokil Hong, Kyoung Mu Lee Source code for CVPR 2020 paper "Learning to Forget for Meta-Lear

Sungyong Baik 29 May 22, 2022
Official Pytorch and JAX implementation of "Efficient-VDVAE: Less is more"

The Official Pytorch and JAX implementation of "Efficient-VDVAE: Less is more" Arxiv preprint Louay Hazami   ·   Rayhane Mama   ·   Ragavan Thurairatn

Rayhane Mama 144 Dec 23, 2022
EMNLP'2021: SimCSE: Simple Contrastive Learning of Sentence Embeddings

SimCSE: Simple Contrastive Learning of Sentence Embeddings This repository contains the code and pre-trained models for our paper SimCSE: Simple Contr

Princeton Natural Language Processing 2.5k Dec 29, 2022
unofficial pytorch implement of "Squareplus: A Softplus-Like Algebraic Rectifier"

SquarePlus (Pytorch implement) unofficial pytorch implement of "Squareplus: A Softplus-Like Algebraic Rectifier" SquarePlus Squareplus is a Softplus-L

SeeFun 3 Dec 29, 2021
This repository contains the accompanying code for Deep Virtual Markers for Articulated 3D Shapes, ICCV'21

Deep Virtual Markers This repository contains the accompanying code for Deep Virtual Markers for Articulated 3D Shapes, ICCV'21 Getting Started Get sa

KimHyomin 45 Oct 07, 2022
The official codes for the ICCV2021 Oral presentation "Rethinking Counting and Localization in Crowds: A Purely Point-Based Framework"

P2PNet (ICCV2021 Oral Presentation) This repository contains codes for the official implementation in PyTorch of P2PNet as described in Rethinking Cou

Tencent YouTu Research 208 Dec 26, 2022
Breast-Cancer-Prediction

Breast-Cancer-Prediction Trying to predict whether the cancer is benign or malignant using REGRESSION MODELS in Python. Team Members NAME ROLL-NUMBER

Shyamdev Krishnan J 3 Feb 18, 2022
PyTorch code for our ECCV 2018 paper "Image Super-Resolution Using Very Deep Residual Channel Attention Networks"

PyTorch code for our ECCV 2018 paper "Image Super-Resolution Using Very Deep Residual Channel Attention Networks"

Yulun Zhang 1.2k Dec 26, 2022
Welcome to The Eigensolver Quantum School, a quantum computing crash course designed by students for students.

TEQS Welcome to The Eigensolver Quantum School, a crash course designed by students for students. The aim of this program is to take someone who has n

The Eigensolvers 53 May 18, 2022
Official codebase for "B-Pref: Benchmarking Preference-BasedReinforcement Learning" contains scripts to reproduce experiments.

B-Pref Official codebase for B-Pref: Benchmarking Preference-BasedReinforcement Learning contains scripts to reproduce experiments. Install conda env

48 Dec 20, 2022
Utilizes Pose Estimation to offer sprinters cues based on an image of their running form.

Running-Form-Correction Utilizes Pose Estimation to offer sprinters cues based on an image of their running form. How to Run Dependencies You will nee

3 Nov 08, 2022
Earth Vision Foundation

EVer - A Library for Earth Vision Researcher EVer is a Pytorch-based Python library to simplify the training and inference of the deep learning model.

Zhuo Zheng 34 Nov 26, 2022
Official Implementation of PCT

Official Implementation of PCT Prerequisites python == 3.8.5 Please make sure you have the following libraries installed: numpy torch=1.4.0 torchvisi

32 Nov 21, 2022
Wide Residual Networks (WideResNets) in PyTorch

Wide Residual Networks (WideResNets) in PyTorch WideResNets for CIFAR10/100 implemented in PyTorch. This implementation requires less GPU memory than

Jason Kuen 296 Dec 27, 2022
The official project of SimSwap (ACM MM 2020)

SimSwap: An Efficient Framework For High Fidelity Face Swapping Proceedings of the 28th ACM International Conference on Multimedia The official reposi

Six_God 2.6k Jan 08, 2023