Open-source code for Generic Grouping Network (GGN, CVPR 2022)

Overview

Open-World Instance Segmentation: Exploiting Pseudo Ground Truth From Learned Pairwise Affinity

Pytorch implementation for "Open-World Instance Segmentation: Exploiting Pseudo Ground Truth From Learned Pairwise Affinity" (CVPR 2022, link TBD) by Weiyao Wang, Matt Feiszli, Heng Wang, Jitendra Malik, and Du Tran. We propose a framework for open-world instance segmentation, Generic Grouping Network (GGN), which exploits pseudo Ground Truth training strategy. On the same backbone, GGN produces impressive AR gains compared to closed-world training on cross-category generalization (+11% VOC to Non-VOC) and cross-dataset generalization (+5.2% COCO to UVO).

What is it? Open-world instance segmentation requires a model to group pixels into object instances without a pre-defined taxonomy, that is, both "seen" categories (those present during training) and "unseen" categories (not seen during training). There is generally a large performance gap between the seen and unseen domains. For example, a baseline Mask R-CNN miss 15 annotated masks in the example below. Without additional training data or annotations, Mask R-CNN trained with GGN framework produces 9 more segments correctly, being much closer to ground truth annotations.

How we do it? Our approach first learns a pairwise affinity predictor that captures correctly if two pixels belong to same instance or not. We demonstrate such pairwise affinity representation generalizes well to unseen domains. We then use a grouping module (e.g. MCG) to extract and rank segments from predicted PA. We can run this on any image dataset without using annotations; we extract highest ranked segments as "pseudo ground truth" candidate masks. This is a large and category-agnostic set; we add it to our (much smaller) datasets of curated annotations to train a detector.


About the code. This repo is built based on mmdetection with the addition of OLN backbone (concurrent work). The repo is tested under Python 3.7, PyTorch 1.7.0, Cuda 11.0, and mmcv==1.2.5. We thank authors of OLN for releasing their work to facilitate research.

Model zoo

Below we release PA predictor models, pseudo-GT generated by PA predictors and GGN trained with both annotated-GT and pseudo-GT. We also release some of the processed annotations from LVIS to conduct cross-category generalization experiments.

Training Eval url Baseline AR GGN AR Top-K Pseudo
Person, COCO Non-Person, COCO PA/Pseudo/GGN 4.9 20.9 3
VOC, COCO Non-VOC, COCO PA/Pseudo/Pseudo-OLN/ GGN/GGN-OLN 19.9 28.7 (33.7 with OLN) 3
COCO, LVIS Non-COCO, LVIS PA/Pseudo/GGN 16.5 20.4 1
Non-COCO, LVIS COCO PA/Pseudo/GGN 21.7 23.6 1
COCO UVO PA/Pseudo/GGN 40.1 43.4 3
COCO, random init ImageNet PA/Pseudo/GGN 10

We remark using large-scale pre-training in the last row as initialization and finetune GGN on COCO with pseudo-GT on COCO gives further improvement (45.3 on UVO), with model.

Installation

This repo is built based on mmdetection.

You can use following commands to create conda env with related dependencies.

conda create -n ggn python=3.7 -y
conda activate ggn
conda install pytorch=1.7.0 torchvision cudatoolkit=11.0 -c pytorch -y
pip install mmcv-full
pip install -r requirements.txt
pip install -v -e .

Please also refer to get_started.md for more details of installation.

Next you will need to build the library for our grouping module:

cd pa_lib/cython_lib
python3 setup.py build_ext --inplace

Data Preparation

Download and extract COCO 2017 train and val images with annotations from http://cocodataset.org. We expect the directory structure to be the following:

path/to/coco/
  annotations/  # annotation json files
  train2017/    # train images
  val2017/      # val images

Our work also uses LVIS, UVO and ADE20K. To use ADE20K, please convert them into COCO-style annotations.

Training of pairwise affinity predictor

bash tools/dist_train.sh configs/pairwise_affinity/pa_train.py ${NUM_GPUS} --work-dir ${WORK_DIR}

Test PA

We provide a tool tools/test_pa.py to directly evaluate PA performance (e.g. on PA prediction and on grouped masks).

python tools/test_pa.py configs/pairwise_affinity/pa_train.py ${WORK_DIR}/latest.pth --eval pa --eval-proposals --test-partition nonvoc

Extracting pseudo-GT masks

We first begin by extracting masks. Example config pa_extract.py extracts pseudo-GT masks from PA trained on VOC subsets of COCO. use-gt-masks flag asks the pipeline to compute maximum IoU an extracted masks has with the GT. It is recommended to split the dataset into multiple shards to run extractions. On original image resolution and Nvidia V100 machine, it takes about 4.8s per image to run the full pipeline (compute PA, run grouping, ranking then compute IoU with annotated GT) without globalization and trained ranker or 10s with globalization and trained ranker.

python tools/extract_pa_masks.py configs/pairwise_affinity/pa_extract.py ${PA_MODEL_PATH} --out ${OUT_DIR}/masks.json --use-gt-masks 1

The extracted masks will be stored in JSON with the following format

[
  [segm1, segm2,..., segm20] ## Result of an image
  ...
]

We refer to tools/merge_annotations.py for reference on formatting the extracted masks as a new COCO-style annotation file. We remark that tools/interpolate_extracted_masks.py may be necessary if not running extraction on original image resolution.

Training of GGN

Please specify additional_ann_file with the extracted pseudo-GT in previous step in class_agn_mask_rcnn_pa.py.

bash tools/dist_train.sh configs/mask_rcnn/class_agn_mask_rcnn_pa.py ${NUM_GPUS}

class_agn_mask_rcnn_gn_online.py is used to train ImageNet extracted masks since there are too many annotations and we cannot store everything in a single json file without OOM. We will need to break it into per-image annotations in the format of "{image_id}.json".

Testing

python tools/test.py configs/mask_rcnn/class_agn_mask_rcnn.py ${WORK_DIR}/latest.pth --eval segm

To cite this work

@article{wang2022ggn,
  title={Open-World Instance Segmentation: Exploiting Pseudo Ground Truth From Learned Pairwise Affinity},
  author={Wang, Weiyao and Feiszli, Matt and Wang, Heng and Malik, Jitendra and Tran, Du},
  journal={CVPR},
  year={2022}
}

License

This project is under the CC-BY-NC 4.0 license. See LICENSE for details.

Owner
Meta Research
Meta Research
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
Hand Gesture Volume Control | Open CV | Computer Vision

Gesture Volume Control Hand Gesture Volume Control | Open CV | Computer Vision Use gesture control to change the volume of a computer. First we look i

Jhenil Parihar 3 Jun 15, 2022
An automated algorithm to extract the linear blend skinning (LBS) from a set of example poses

Dem Bones This repository contains an implementation of Smooth Skinning Decomposition with Rigid Bones, an automated algorithm to extract the Linear B

Electronic Arts 684 Dec 26, 2022
A Low Complexity Speech Enhancement Framework for Full-Band Audio (48kHz) based on Deep Filtering.

DeepFilterNet A Low Complexity Speech Enhancement Framework for Full-Band Audio (48kHz) based on Deep Filtering. libDF contains Rust code used for dat

Hendrik Schröter 292 Dec 25, 2022
基于AlphaPose的TensorRT加速

1. Requirements CUDA 11.1 TensorRT 7.2.2 Python 3.8.5 Cython PyTorch 1.8.1 torchvision 0.9.1 numpy 1.17.4 (numpy版本过高会出报错 this issue ) python-package s

52 Dec 06, 2022
Make your AirPlay devices as TTS speakers

Apple AirPlayer Home Assistant integration component, make your AirPlay devices as TTS speakers. Before Use 2021.6.X or earlier Apple Airplayer compon

George Zhao 117 Dec 15, 2022
Mind the Trade-off: Debiasing NLU Models without Degrading the In-distribution Performance

Models for natural language understanding (NLU) tasks often rely on the idiosyncratic biases of the dataset, which make them brittle against test cases outside the training distribution.

Ubiquitous Knowledge Processing Lab 22 Jan 02, 2023
generate-2D-quadrilateral-mesh-with-neural-networks-and-tree-search

generate-2D-quadrilateral-mesh-with-neural-networks-and-tree-search This repository contains single-threaded TreeMesh code. I'm Hua Tong, a senior stu

Hua Tong 18 Sep 21, 2022
[ICCV 2021 Oral] SnowflakeNet: Point Cloud Completion by Snowflake Point Deconvolution with Skip-Transformer

This repository contains the source code for the paper SnowflakeNet: Point Cloud Completion by Snowflake Point Deconvolution with Skip-Transformer (ICCV 2021 Oral). The project page is here.

AllenXiang 65 Dec 26, 2022
Machine Learning toolbox for Humans

Reproducible Experiment Platform (REP) REP is ipython-based environment for conducting data-driven research in a consistent and reproducible way. Main

Yandex 662 Nov 20, 2022
[CVPR 2021] Official PyTorch Implementation for "Iterative Filter Adaptive Network for Single Image Defocus Deblurring"

IFAN: Iterative Filter Adaptive Network for Single Image Defocus Deblurring Checkout for the demo (GUI/Google Colab)! The GUI version might occasional

Junyong Lee 173 Dec 30, 2022
codes for Image Inpainting with External-internal Learning and Monochromic Bottleneck

Image Inpainting with External-internal Learning and Monochromic Bottleneck This repository is for the CVPR 2021 paper: 'Image Inpainting with Externa

97 Nov 29, 2022
LAnguage Model Analysis

LAMA: LAnguage Model Analysis LAMA is a probe for analyzing the factual and commonsense knowledge contained in pretrained language models. The dataset

Meta Research 960 Jan 08, 2023
Contrastive Learning with Non-Semantic Negatives

Contrastive Learning with Non-Semantic Negatives This repository is the official implementation of Robust Contrastive Learning Using Negative Samples

39 Jul 31, 2022
Generative Query Network (GQN) in PyTorch as described in "Neural Scene Representation and Rendering"

Update 2019/06/24: A model trained on 10% of the Shepard-Metzler dataset has been added, the following notebook explains the main features of this mod

Jesper Wohlert 313 Dec 27, 2022
Repo for paper "Dynamic Placement of Rapidly Deployable Mobile Sensor Robots Using Machine Learning and Expected Value of Information"

Repo for paper "Dynamic Placement of Rapidly Deployable Mobile Sensor Robots Using Machine Learning and Expected Value of Information" Notes I probabl

Berkeley Expert System Technologies Lab 0 Jul 01, 2021
This is just a funny project that we want to see AutoEncoder (AE) can actually work to enhance the features we want

Funny_muscle_enhancer :) 1.Discription: This is just a funny project that we want to see AutoEncoder (AE) can actually work on the some features. We w

Jing-Yao Chen (Jacob) 8 Oct 01, 2022
Official PyTorch implementation of "Improving Face Recognition with Large AgeGaps by Learning to Distinguish Children" (BMVC 2021)

Inter-Prototype (BMVC 2021): Official Project Webpage This repository provides the official PyTorch implementation of the following paper: Improving F

Jungsoo Lee 16 Jun 30, 2022
95.47% on CIFAR10 with PyTorch

Train CIFAR10 with PyTorch I'm playing with PyTorch on the CIFAR10 dataset. Prerequisites Python 3.6+ PyTorch 1.0+ Training # Start training with: py

5k Dec 30, 2022
K-Nearest Neighbor in Pytorch

Pytorch KNN CUDA 2019/11/02 This repository will no longer be maintained as pytorch supports sort() and kthvalue on tensors. git clone https://github.

Chris Choy 65 Dec 01, 2022