Dense Unsupervised Learning for Video Segmentation (NeurIPS*2021)

Overview

Dense Unsupervised Learning for Video Segmentation

License Framework

This repository contains the official implementation of our paper:

Dense Unsupervised Learning for Video Segmentation
Nikita Araslanov, Simone Schaub-Mayer and Stefan Roth
To appear at NeurIPS*2021. [paper] [supp] [talk] [example results] [arXiv]

drawing

We efficiently learn spatio-temporal correspondences
without any supervision, and achieve state-of-the-art
accuracy of video object segmentation.

Contact: Nikita Araslanov fname.lname (at) visinf.tu-darmstadt.de


Installation

Requirements. To reproduce our results, we recommend Python >=3.6, PyTorch >=1.4, CUDA >=10.0. At least one Titan X GPUs (12GB) or equivalent is required. The code was primarily developed under PyTorch 1.8 on a single A100 GPU.

The following steps will set up a local copy of the repository.

  1. Create conda environment:
conda create --name dense-ulearn-vos
source activate dense-ulearn-vos
  1. Install PyTorch >=1.4 (see PyTorch instructions). For example on Linux, run:
conda install pytorch torchvision torchaudio cudatoolkit=11.3 -c pytorch
  1. Install the dependencies:
pip install -r requirements.txt
  1. Download the data:
Dataset Website Target directory with video sequences
YouTube-VOS Link data/ytvos/train/JPEGImages/
OxUvA Link data/OxUvA/images/dev/
TrackingNet Link data/tracking/train/jpegs/
Kinetics-400 Link data/kinetics400/video_jpeg/train/

The last column in this table specifies a path to subdirectories (relative to the project root) containing images of video frames. You can obviously use a different path structure. In this case, you will need to adjust the paths in data/filelists/ for every dataset accordingly.

  1. Download filelists:
cd data/filelists
bash download.sh

This will download lists of training and validation paths for all datasets.

Training

We following bash script will train a ResNet-18 model from scratch on one of the four supported datasets (see above):

bash ./launch/train.sh [ytvos|oxuva|track|kinetics]

We also provide our final models for download.

Dataset Mean J&F (DAVIS-2017) Link MD5
OxUvA 65.3 oxuva_e430_res4.pth (132M) af541[...]d09b3
YouTube-VOS 69.3 ytvos_e060_res4.pth (132M) c3ae3[...]55faf
TrackingNet 69.4 trackingnet_e088_res4.pth (88M) 3e7e9[...]95fa9
Kinetics-400 68.7 kinetics_e026_res4.pth (88M) 086db[...]a7d98

Inference and evaluation

Inference

To run the inference use launch/infer_vos.sh:

bash ./launch/infer_vos.sh [davis|ytvos]

The first argument selects the validation dataset to use (davis for DAVIS-2017; ytvos for YouTube-VOS). The bash variables declared in the script further help to set up the paths for reading the data and the pre-trained models as well as the output directory:

  • EXP, RUN_ID and SNAPSHOT determine the pre-trained model to load.
  • VER specifies a suffix for the output directory (in case you would like to experiment with different configurations for label propagation). Please, refer to launch/infer_vos.sh for their usage.

The inference script will create two directories with the result: [res3|res4|key]_vos and [res3|res4|key]_vis, where the prefix corresponds to the codename of the output CNN layer used in the evaluation (selected in infer_vos.sh using KEY variable). The vos-directory contains the segmentation result ready for evaluation; the vis-directory produces the results for visualisation purposes. You can optionally disable generating the visualisation by setting VERBOSE=False in infer_vos.py.

Evaluation: DAVIS-2017

Please use the official evaluation package. Install the repository, then simply run:

python evaluation_method.py --task semi-supervised --davis_path data/davis2017 --results_path <path-to-vos-directory>

Evaluation: YouTube-VOS 2018

Please use the official CodaLab evaluation server. To create the submission, rename the vos-directory to Annotations and compress it to Annotations.zip for uploading.

Acknowledgements

We thank PyTorch contributors and Allan Jabri for releasing their implementation of the label propagation.

Citation

We hope you find our work useful. If you would like to acknowledge it in your project, please use the following citation:

@inproceedings{Araslanov:2021:DUL,
  author    = {Araslanov, Nikita and Simone Schaub-Mayer and Roth, Stefan},
  title     = {Dense Unsupervised Learning for Video Segmentation},
  booktitle = {Advances in Neural Information Processing Systems (NeurIPS)},
  volume    = {34},
  year = {2021}
}
Owner
Visual Inference Lab @TU Darmstadt
Visual Inference Lab @TU Darmstadt
《Where am I looking at? Joint Location and Orientation Estimation by Cross-View Matching》(CVPR 2020)

This contains the codes for cross-view geo-localization method described in: Where am I looking at? Joint Location and Orientation Estimation by Cross-View Matching, CVPR2020.

41 Oct 27, 2022
This is the official repository for our paper: ''Pruning Self-attentions into Convolutional Layers in Single Path''.

Pruning Self-attentions into Convolutional Layers in Single Path This is the official repository for our paper: Pruning Self-attentions into Convoluti

Zhuang AI Group 77 Dec 26, 2022
Online Pseudo Label Generation by Hierarchical Cluster Dynamics for Adaptive Person Re-identification

Online Pseudo Label Generation by Hierarchical Cluster Dynamics for Adaptive Person Re-identification

TANG, shixiang 6 Nov 25, 2022
DPC: Unsupervised Deep Point Correspondence via Cross and Self Construction (3DV 2021)

DPC: Unsupervised Deep Point Correspondence via Cross and Self Construction (3DV 2021) This repo is the implementation of DPC. Tested environment Pyth

Dvir Ginzburg 30 Nov 30, 2022
RIFE: Real-Time Intermediate Flow Estimation for Video Frame Interpolation

RIFE - Real Time Video Interpolation arXiv | YouTube | Colab | Tutorial | Demo Table of Contents Introduction Collection Usage Evaluation Training and

hzwer 3k Jan 04, 2023
Tree Nested PyTorch Tensor Lib

DI-treetensor treetensor is a generalized tree-based tensor structure mainly developed by OpenDILab Contributors. Almost all the operation can be supp

OpenDILab 167 Dec 29, 2022
Official PyTorch implementation for "Low Precision Decentralized Distributed Training with Heterogenous Data"

Low Precision Decentralized Training with Heterogenous Data Official PyTorch implementation for "Low Precision Decentralized Distributed Training with

Aparna Aketi 0 Nov 23, 2021
Implementation of the "PSTNet: Point Spatio-Temporal Convolution on Point Cloud Sequences" paper.

PSTNet: Point Spatio-Temporal Convolution on Point Cloud Sequences Introduction Point cloud sequences are irregular and unordered in the spatial dimen

Hehe Fan 63 Dec 09, 2022
Python implementation of the multistate Bennett acceptance ratio (MBAR)

pymbar Python implementation of the multistate Bennett acceptance ratio (MBAR) method for estimating expectations and free energy differences from equ

Chodera lab // Memorial Sloan Kettering Cancer Center 169 Dec 02, 2022
[ICCV'21] Learning Conditional Knowledge Distillation for Degraded-Reference Image Quality Assessment

CKDN The official implementation of the ICCV2021 paper "Learning Conditional Knowledge Distillation for Degraded-Reference Image Quality Assessment" O

Multimedia Research 50 Dec 13, 2022
Tensorflow implementation of ID-Unet: Iterative Soft and Hard Deformation for View Synthesis.

ID-Unet: Iterative-view-synthesis(CVPR2021 Oral) Tensorflow implementation of ID-Unet: Iterative Soft and Hard Deformation for View Synthesis. Overvie

17 Aug 23, 2022
City-Scale Multi-Camera Vehicle Tracking Guided by Crossroad Zones Code

City-Scale Multi-Camera Vehicle Tracking Guided by Crossroad Zones Requirements Python 3.8 or later with all requirements.txt dependencies installed,

88 Dec 12, 2022
DeepLab resnet v2 model in pytorch

pytorch-deeplab-resnet DeepLab resnet v2 model implementation in pytorch. The architecture of deepLab-ResNet has been replicated exactly as it is from

Isht Dwivedi 601 Dec 22, 2022
Disagreement-Regularized Imitation Learning

Due to a normalization bug the expert trajectories have lower performance than the rl_baseline_zoo reported experts. Please see the following link in

Kianté Brantley 25 Apr 28, 2022
MNE: Magnetoencephalography (MEG) and Electroencephalography (EEG) in Python

MNE-Python MNE-Python software is an open-source Python package for exploring, visualizing, and analyzing human neurophysiological data such as MEG, E

MNE tools for MEG and EEG data analysis 2.1k Dec 28, 2022
Train CPPNs as a Generative Model, using Generative Adversarial Networks and Variational Autoencoder techniques to produce high resolution images.

cppn-gan-vae tensorflow Train Compositional Pattern Producing Network as a Generative Model, using Generative Adversarial Networks and Variational Aut

hardmaru 343 Dec 29, 2022
Lightweight, Portable, Flexible Distributed/Mobile Deep Learning with Dynamic, Mutation-aware Dataflow Dep Scheduler; for Python, R, Julia, Scala, Go, Javascript and more

Apache MXNet (incubating) for Deep Learning Master Docs License Apache MXNet (incubating) is a deep learning framework designed for both efficiency an

ROCm Software Platform 29 Nov 16, 2022
Self-describing JSON-RPC services made easy

ReflectRPC Self-describing JSON-RPC services made easy Contents What is ReflectRPC? Installation Features Datatypes Custom Datatypes Returning Errors

Andreas Heck 31 Jul 16, 2022
PyStan, a Python interface to Stan, a platform for statistical modeling. Documentation: https://pystan.readthedocs.io

PyStan NOTE: This documentation describes a BETA release of PyStan 3. PyStan is a Python interface to Stan, a package for Bayesian inference. Stan® is

Stan 229 Dec 29, 2022
Repository for MDPGT

MD-PGT Repository for implementing and reproducing the results for the paper MDPGT: Momentum-based Decentralized Policy Gradient Tracking. Available E

Xian Yeow Lee 2 Dec 30, 2021