ROSITA: Enhancing Vision-and-Language Semantic Alignments via Cross- and Intra-modal Knowledge Integration

Overview

ROSITA

News & Updates

(24/08/2021)

  • Release the demo to perform fine-grained semantic alignments using the pretrained ROSITA model.

(15/08/2021)

  • Release the basic framework for ROSITA, including the pretrained base ROSITA model, as well as the scripts to run the fine-tuning and evaluation on three downstream tasks (i.e., VQA, REC, ITR) over six datasets.

Introduction

This repository contains source code necessary to reproduce the results presented in our ACM MM paper ROSITA: Enhancing Vision-and-Language Semantic Alignments via Cross- and Intra-modal Knowledge Integration, which encodes the cROSs- and InTrA-model prior knowledge in a in a unified scene graph to perform knowledge-guided vision-and-language pretraining. Compared with existing counterparts, ROSITA learns better fine-grained semantic alignments across different modalities, thus improving the capability of the pretrained model.

Performance

We compare ROSITA against existing state-of-the-art VLP methods on three downstream tasks. All methods use the base model of Transformer for a fair comparison. The trained checkpoints to reproduce these results are provided in finetune.md.

Tasks VQA REC ITR
Datasets VQAv2
dev | std
RefCOCO
val | testA | testB
RefCOCO+
val | testA | testB
RefCOCOg
val | test
IR-COCO
[email protected] | [email protected] | [email protected]
TR-COCO
[email protected] | [email protected] | [email protected]
IR-Flickr
[email protected] | [email protected] | [email protected]
TR-Flickr
[email protected] | [email protected] | [email protected]
ROSITA 73.91 | 73.97 84.79 | 87.99 | 78.28 76.06 | 82.01 | 67.40 78.23 | 78.25 54.40 | 80.92 | 88.60 71.26 | 91.62 | 95.58 74.08 | 92.44 | 96.08 88.90 | 98.10 | 99.30
SoTA-base 73.59 | 73.67 81.56 | 87.40 | 74.48 76.05 | 81.65 | 65.70 75.90 | 75.93 54.00 | 80.80 | 88.50 70.00 | 91.10 | 95.50 74.74 | 92.86 | 95.82 86.60 | 97.90 | 99.20

Installation

Software and Hardware Requirements

We recommand a workstation with 4 GPU (>= 24GB, e.g., RTX 3090 or V100), 120GB memory and 50GB free disk space. We strongly recommend to use a SSD drive to guarantee high-speed I/O. Also, you should first install some necessary package as follows:

  • Python >= 3.6
  • PyTorch >= 1.4 with Cuda >=10.2
  • torchvision >= 0.5.0
  • Cython
# git clone
$ git clone https://github.com/MILVLG/rosita.git 

# build essential utils
$ cd rosita/rosita/utils/rec
$ python setup.py build
$ cp build/lib*/bbox.cpython*.so .

Dataset Setup

To download the required datasets to run this project, please check datasets.md for details.

Pretraining

Please check pretrain.md for the details for ROSITA pretraining. We currently only provide the pretrained model to run finetuning on downstream tasks. The codes to run pretraining will be released later.

Finetuning

Please check finetune.md for the details for finetuning on downstream tasks. Scripts to run finetuning on downstream tasks are provided. Also, we provide trained models that can be directly evaluated to reproduce the results.

Demo

We provide the Jupyter notebook scripts for reproducing the visualization results shown in our paper.

Acknowledgment

We appreciate the well-known open-source projects such as LXMERT, UNITER, OSCAR, and Huggingface, which help us a lot when writing our codes.

Yuhao Cui (@cuiyuhao1996) and Tong-An Luo (@Zoroaster97) are the main contributors to this repository. Please kindly contact them if you find any issue.

Citations

Please consider citing this paper if you use the code:

@inProceedings{cui2021rosita,
  title={ROSITA: Enhancing Vision-and-Language Semantic Alignments via Cross- and Intra-modal Knowledge Integration},
  author={Cui, Yuhao and Yu, Zhou and Wang, Chunqi and Zhao, Zhongzhou and Zhang, Ji and Wang, Meng and Yu, Jun},
  booktitle={Proceedings of the 29th ACM International Conference on Multimedia},
  year={2021}
}
Owner
Vision and Language Group@ MIL
Hangzhou Dianzi University
Vision and Language Group@ MIL
Implementation of "Semi-supervised Domain Adaptive Structure Learning"

Semi-supervised Domain Adaptive Structure Learning - ASDA This repo contains the source code and dataset for our ASDA paper. Illustration of the propo

3 Dec 13, 2021
Differentiable Neural Computers, Sparse Access Memory and Sparse Differentiable Neural Computers, for Pytorch

Differentiable Neural Computers and family, for Pytorch Includes: Differentiable Neural Computers (DNC) Sparse Access Memory (SAM) Sparse Differentiab

ixaxaar 302 Dec 14, 2022
Forecasting Nonverbal Social Signals during Dyadic Interactions with Generative Adversarial Neural Networks

ForecastingNonverbalSignals This is the implementation for the paper Forecasting Nonverbal Social Signals during Dyadic Interactions with Generative A

1 Feb 10, 2022
Source code for NAACL 2021 paper "TR-BERT: Dynamic Token Reduction for Accelerating BERT Inference"

TR-BERT Source code and dataset for "TR-BERT: Dynamic Token Reduction for Accelerating BERT Inference". The code is based on huggaface's transformers.

THUNLP 37 Oct 30, 2022
A python program to hack instagram

hackinsta a program to hack instagram Yokoback_(instahack) is the file to open, you need libraries write on import. You run that file in the same fold

2 Jan 22, 2022
PyTorch3D is FAIR's library of reusable components for deep learning with 3D data

Introduction PyTorch3D provides efficient, reusable components for 3D Computer Vision research with PyTorch. Key features include: Data structure for

Facebook Research 6.8k Jan 01, 2023
Benchmark spaces - Benchmarks of how well different two dimensional spaces work for clustering algorithms

benchmark_spaces Benchmarks of how well different two dimensional spaces work fo

Bram Cohen 6 May 07, 2022
Implementation of ETSformer, state of the art time-series Transformer, in Pytorch

ETSformer - Pytorch Implementation of ETSformer, state of the art time-series Transformer, in Pytorch Install $ pip install etsformer-pytorch Usage im

Phil Wang 121 Dec 30, 2022
VL-LTR: Learning Class-wise Visual-Linguistic Representation for Long-Tailed Visual Recognition

VL-LTR: Learning Class-wise Visual-Linguistic Representation for Long-Tailed Visual Recognition Usage First, install PyTorch 1.7.1+, torchvision 0.8.2

40 Dec 12, 2022
For holding anime-related object classification and detection models

Animesion An end-to-end framework for anime-related object classification, detection, segmentation, and other models. Update: 01/22/2020. Due to time-

Edwin Arkel Rios 72 Nov 30, 2022
Veri Setinizi Yolov5 Formatına Dönüştürün

Veri Setinizi Yolov5 Formatına Dönüştürün! Bu Repo da Neler Var? Xml Formatındaki Veri Setini .Txt Formatına Çevirme Xml Formatındaki Dosyaları Silme

Kadir Nar 4 Aug 22, 2022
UltraPose: Synthesizing Dense Pose with 1 Billion Points by Human-body Decoupling 3D Model

UltraPose: Synthesizing Dense Pose with 1 Billion Points by Human-body Decoupling 3D Model Official repository for the ICCV 2021 paper: UltraPose: Syn

MomoAILab 92 Dec 21, 2022
FAMIE is a comprehensive and efficient active learning (AL) toolkit for multilingual information extraction (IE)

FAMIE: A Fast Active Learning Framework for Multilingual Information Extraction

18 Sep 01, 2022
A very impractical 3D rendering engine that runs in the python terminal.

Terminal-3D-Render A very impractical 3D rendering engine that runs in the python terminal. do NOT try to run this program using the standard python I

23 Dec 31, 2022
EvDistill: Asynchronous Events to End-task Learning via Bidirectional Reconstruction-guided Cross-modal Knowledge Distillation (CVPR'21)

EvDistill: Asynchronous Events to End-task Learning via Bidirectional Reconstruction-guided Cross-modal Knowledge Distillation (CVPR'21) Citation If y

addisonwang 18 Nov 11, 2022
A vision library for performing sliced inference on large images/small objects

SAHI: Slicing Aided Hyper Inference A vision library for performing sliced inference on large images/small objects Overview Object detection and insta

Open Business Software Solutions 2.3k Jan 04, 2023
⚖️🔁🔮🕵️‍♂️🦹🖼️ Code for *Measuring the Contribution of Multiple Model Representations in Detecting Adversarial Instances* paper.

Measuring the Contribution of Multiple Model Representations in Detecting Adversarial Instances This repository contains the code for Measuring the Co

Daniel Steinberg 0 Nov 06, 2022
The official implementation of the Interspeech 2021 paper WSRGlow: A Glow-based Waveform Generative Model for Audio Super-Resolution.

WSRGlow The official implementation of the Interspeech 2021 paper WSRGlow: A Glow-based Waveform Generative Model for Audio Super-Resolution. Audio sa

Kexun Zhang 96 Jan 03, 2023
WarpDrive: Extremely Fast End-to-End Deep Multi-Agent Reinforcement Learning on a GPU

WarpDrive is a flexible, lightweight, and easy-to-use open-source reinforcement learning (RL) framework that implements end-to-end multi-agent RL on a single GPU (Graphics Processing Unit).

Salesforce 334 Jan 06, 2023
Self-Supervised Contrastive Learning of Music Spectrograms

Self-Supervised Music Analysis Self-Supervised Contrastive Learning of Music Spectrograms Dataset Songs on the Billboard Year End Hot 100 were collect

27 Dec 10, 2022