[AAAI22] Reliable Propagation-Correction Modulation for Video Object Segmentation

Overview

Reliable Propagation-Correction Modulation for Video Object Segmentation (AAAI22)

Picture1

Preview version paper of this work is available at: https://arxiv.org/abs/2112.02853

Qualitative results and comparisons with previous SOTAs are available at: https://youtu.be/X6BsS3t3wnc

This repo is a preview version. More details will be added later.

Abstract

Error propagation is a general but crucial problem in online semi-supervised video object segmentation. We aim to suppress error propagation through a correction mechanism with high reliability.

The key insight is to disentangle the correction from the conventional mask propagation process with reliable cues.

We introduce two modulators, propagation and correction modulators, to separately perform channel-wise re-calibration on the target frame embeddings according to local temporal correlations and reliable references respectively. Specifically, we assemble the modulators with a cascaded propagation-correction scheme. This avoids overriding the effects of the reliable correction modulator by the propagation modulator.

Although the reference frame with the ground truth label provides reliable cues, it could be very different from the target frame and introduce uncertain or incomplete correlations. We augment the reference cues by supplementing reliable feature patches to a maintained pool, thus offering more comprehensive and expressive object representations to the modulators. In addition, a reliability filter is designed to retrieve reliable patches and pass them in subsequent frames.

Our model achieves state-of-the-art performance on YouTube-VOS18/19 and DAVIS17-Val/Test benchmarks. Extensive experiments demonstrate that the correction mechanism provides considerable performance gain by fully utilizing reliable guidance.

Requirements

This docker image may contain some redundent packages. A more light-weight one will be generated later.

docker image: xxiaoh/vos:10.1-cudnn7-torch1.4_v3

Citation

If you find this work is useful for your research, please consider citing:

@misc{xu2021reliable,
  title={Reliable Propagation-Correction Modulation for Video Object Segmentation}, 
  author={Xiaohao Xu and Jinglu Wang and Xiao Li and Yan Lu},
  year={2021},
  eprint={2112.02853},
  archivePrefix={arXiv},
  primaryClass={cs.CV}
}

Credit

CFBI: https://github.com/z-x-yang/CFBI

Deeplab: https://github.com/VainF/DeepLabV3Plus-Pytorch

GCT: https://github.com/z-x-yang/GCT

Acknowledgement

Firstly, the author would like to thank Rex for his insightful viewpoints about VOS during e-mail discussion! Also, this work is largely built upon the codebase of CFBI. Thanks for the author of CFBI to release such a wonderful code repo for further work to build upon!

Related impressive works in VOS

AOT [NeurIPS 2021]: https://github.com/z-x-yang/AOT

STCN [NeurIPS 2021]: https://github.com/hkchengrex/STCN

MiVOS [CVPR 2021]: https://github.com/hkchengrex/MiVOS

SSTVOS [CVPR 2021]: https://github.com/dukebw/SSTVOS

GraphMemVOS [ECCV 2020]: https://github.com/carrierlxk/GraphMemVOS

CFBI [ECCV 2020]: https://github.com/z-x-yang/CFBI

STM [ICCV 2019]: https://github.com/seoungwugoh/STM

FEELVOS [CVPR 2019]: https://github.com/kim-younghan/FEELVOS

Useful websites for VOS

The 1st Large-scale Video Object Segmentation Challenge: https://competitions.codalab.org/competitions/19544#learn_the_details

The 2nd Large-scale Video Object Segmentation Challenge - Track 1: Video Object Segmentation: https://competitions.codalab.org/competitions/20127#learn_the_details

The Semi-Supervised DAVIS Challenge on Video Object Segmentation @ CVPR 2020: https://competitions.codalab.org/competitions/20516#participate-submit_results

DAVIS: https://davischallenge.org/

YouTube-VOS: https://youtube-vos.org/

Papers with code for Semi-VOS: https://paperswithcode.com/task/semi-supervised-video-object-segmentation

Welcome to comments and discussions!!

Xiaohao Xu: [email protected]

Owner
Xiaohao Xu
Xiaohao Xu
Si Adek Keras is software VR dangerous object detection.

Si Adek Python Keras Sistem Informasi Deteksi Benda Berbahaya Keras Python. Version 1.0 Developed by Ananda Rauf Maududi. Developed date: 24 November

Ananda Rauf 1 Dec 21, 2021
PyTorch implementation of PP-LCNet: A Lightweight CPU Convolutional Neural Network

PyTorch implementation of PP-LCNet Reproduction of PP-LCNet architecture as described in PP-LCNet: A Lightweight CPU Convolutional Neural Network by C

Quan Nguyen (Fly) 47 Nov 02, 2022
Price-Prediction-For-a-Dream-Home - A machine learning based linear regression trained model for house price prediction.

Price-Prediction-For-a-Dream-Home ROADMAP TO THIS LINEAR REGRESSION BASED HOUSE PRICE PREDICTION PREDICTION MODEL Import all the dependencies of the p

DIKSHA DESWAL 1 Dec 29, 2021
Toontown House CT Edition

Toontown House: Classic Toontown House Classic source that should just work. ❓ W

Open Source Toontown Servers 5 Jan 09, 2022
This repository contains the implementation of Deep Detail Enhancment for Any Garment proposed in Eurographics 2021

Deep-Detail-Enhancement-for-Any-Garment Introduction This repository contains the implementation of Deep Detail Enhancment for Any Garment proposed in

40 Dec 13, 2022
Source code for paper "Deep Superpixel-based Network for Blind Image Quality Assessment"

DSN-IQA Source code for paper "Deep Superpixel-based Network for Blind Image Quality Assessment" Requirements Python =3.8.0 Pytorch =1.7.1 Usage wit

7 Oct 13, 2022
Official code for "Maximum Likelihood Training of Score-Based Diffusion Models", NeurIPS 2021 (spotlight)

Maximum Likelihood Training of Score-Based Diffusion Models This repo contains the official implementation for the paper Maximum Likelihood Training o

Yang Song 84 Dec 12, 2022
Empower Sequence Labeling with Task-Aware Language Model

LM-LSTM-CRF Check Our New NER Toolkit 🚀 🚀 🚀 Inference: LightNER: inference w. models pre-trained / trained w. any following tools, efficiently. Tra

Liyuan Liu 838 Jan 05, 2023
Tutorial page of the Climate Hack, the greatest hackathon ever

Tutorial page of the Climate Hack, the greatest hackathon ever

UCL Artificial Intelligence Society 12 Jul 02, 2022
This is the pytorch re-implementation of the IterNorm

IterNorm-pytorch Pytorch reimplementation of the IterNorm methods, which is described in the following paper: Iterative Normalization: Beyond Standard

Lei Huang 32 Dec 27, 2022
HDR Video Reconstruction: A Coarse-to-fine Network and A Real-world Benchmark Dataset (ICCV 2021)

Code for HDR Video Reconstruction HDR Video Reconstruction: A Coarse-to-fine Network and A Real-world Benchmark Dataset (ICCV 2021) Guanying Chen, Cha

Guanying Chen 64 Nov 19, 2022
An implementation for the ICCV 2021 paper Deep Permutation Equivariant Structure from Motion.

Deep Permutation Equivariant Structure from Motion Paper | Poster This repository contains an implementation for the ICCV 2021 paper Deep Permutation

72 Dec 27, 2022
Dynamic Bottleneck for Robust Self-Supervised Exploration

Dynamic Bottleneck Introduction This is a TensorFlow based implementation for our paper on "Dynamic Bottleneck for Robust Self-Supervised Exploration"

Bai Chenjia 4 Nov 14, 2022
Stratified Transformer for 3D Point Cloud Segmentation (CVPR 2022)

Stratified Transformer for 3D Point Cloud Segmentation Xin Lai*, Jianhui Liu*, Li Jiang, Liwei Wang, Hengshuang Zhao, Shu Liu, Xiaojuan Qi, Jiaya Jia

DV Lab 195 Jan 01, 2023
Code for DeepCurrents: Learning Implicit Representations of Shapes with Boundaries

DeepCurrents | Webpage | Paper DeepCurrents: Learning Implicit Representations of Shapes with Boundaries David Palmer*, Dmitriy Smirnov*, Stephanie Wa

Dima Smirnov 36 Dec 08, 2022
DeepOBS: A Deep Learning Optimizer Benchmark Suite

DeepOBS - A Deep Learning Optimizer Benchmark Suite DeepOBS is a benchmarking suite that drastically simplifies, automates and improves the evaluation

Aaron Bahde 7 May 12, 2020
Official code for "End-to-End Optimization of Scene Layout" -- including VAE, Diff Render, SPADE for colorization (CVPR 2020 Oral)

End-to-End Optimization of Scene Layout Code release for: End-to-End Optimization of Scene Layout CVPR 2020 (Oral) Project site, Bibtex For help conta

Andrew Luo 41 Dec 09, 2022
This repository contains the source code of our work on designing efficient CNNs for computer vision

Efficient networks for Computer Vision This repo contains source code of our work on designing efficient networks for different computer vision tasks:

Sachin Mehta 386 Nov 26, 2022
Official code release for 3DV 2021 paper Human Performance Capture from Monocular Video in the Wild.

Official code release for 3DV 2021 paper Human Performance Capture from Monocular Video in the Wild.

Chen Guo 58 Dec 24, 2022
A lightweight library designed to accelerate the process of training PyTorch models by providing a minimal

A lightweight library designed to accelerate the process of training PyTorch models by providing a minimal, but extensible training loop which is flexible enough to handle the majority of use cases,

Chris Hughes 110 Dec 23, 2022