A collection of models for image<->text generation in ACM MM 2021.

Overview

Bi-directional Image and Text Generation

UMT-BITG (image & text generator)

Unifying Multimodal Transformer for Bi-directional Image and Text Generation,
Yupan Huang, Bei Liu, Yutong Lu, in ACM MM 2021 (Industrial Track).

UMT-DBITG (diverse image & text generator)

A Picture is Worth a Thousand Words: A Unified System for Diverse Captions and Rich Images Generation,
Yupan Huang, Bei Liu, Jianlong Fu, Yutong Lu, in ACM MM 2021 (Video and Demo Track).

Poster or slides are available in the assets folder by visiting OneDrive.

Data & Pre-trained Models

Download preprocessed data and our pre-trained models by visiting OneDrive. We suggest following our data structures, which is consistent with the paths in config.py. You may need to modify the root_path in config.py. In addition, please following the instructions to prepare some other data:

  • Download grid features in path data/grid_features provided by X-LXMERT or follow feature extraction to extract these features.
    wget https://ai2-vision-x-lxmert.s3-us-west-2.amazonaws.com/butd_features/COCO/maskrcnn_train_grid8.h5 -P data/grid_features
    wget https://ai2-vision-x-lxmert.s3-us-west-2.amazonaws.com/butd_features/COCO/maskrcnn_valid_grid8.h5 -P data/grid_features
    wget https://ai2-vision-x-lxmert.s3-us-west-2.amazonaws.com/butd_features/COCO/maskrcnn_test_grid8.h5 -P data/grid_features
    
  • For text-to-image evaluation on MSCOCO dataset, we need the real images to calculate the FID metric. For UMT-DBITG, we use MSCOCO karpathy split, which has been included in the OneDrive folder (images/imgs_karpathy). For UMT-BITG, please download MSCOCO validation set in path images/coco_val2014.

Citation

If you like our paper or code, please generously cite us:

@inproceedings{huang2021unifying,
  author    = {Yupan Huang and Bei Liu and Yutong Lu},
  title     = {Unifying Multimodal Transformer for Bi-directional Image and Text Generation},
  booktitle = {Proceedings of the 29th ACM International Conference on Multimedia},
  year      = {2021}
}

@inproceedings{huang2021diverse,
  author    = {Yupan Huang and Bei Liu and Jianlong Fu and Yutong Lu},
  title     = {A Picture is Worth a Thousand Words: A Unified System for Diverse Captions and Rich Images Generation},
  booktitle = {Proceedings of the 29th ACM International Conference on Multimedia},
  year      = {2021}
}

Acknowledgement

Our code is based on LaBERT and X-LXMERT. Our evaluation code is from pytorch-fid and inception_score. We sincerely thank them for their contributions!

Feel free to open issues or email to me for help to use this code. Any feedback is welcome!

Owner
Multimedia Research
Multimedia Research at Microsoft Research Asia
Multimedia Research
LSTM-VAE Implementation and Relevant Evaluations

LSTM-VAE Implementation and Relevant Evaluations Before using any file in this repository, please create two directories under the root directory name

Lan Zhang 5 Oct 08, 2022
Copy Paste positive polyp using poisson image blending for medical image segmentation

Copy Paste positive polyp using poisson image blending for medical image segmentation According poisson image blending I've completely used it for bio

Phạm Vũ Hùng 2 Oct 19, 2021
Bolt Online Learning Toolbox

Bolt Online Learning Toolbox Bolt features discriminative learning of linear predictors (e.g. SVM or Logistic Regression) using fast online learning a

Peter Prettenhofer 87 Dec 12, 2022
Trained on Simulated Data, Tested in the Real World

Trained on Simulated Data, Tested in the Real World

livox 43 Nov 18, 2022
My take on a practical implementation of Linformer for Pytorch.

Linformer Pytorch Implementation A practical implementation of the Linformer paper. This is attention with only linear complexity in n, allowing for v

Peter 349 Dec 25, 2022
Python implementation of ADD: Frequency Attention and Multi-View based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images, AAAI2022.

ADD: Frequency Attention and Multi-View based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images Binh M. Le & Simon S. Woo, "ADD:

2 Oct 24, 2022
ALBERT: A Lite BERT for Self-supervised Learning of Language Representations

ALBERT ***************New March 28, 2020 *************** Add a colab tutorial to run fine-tuning for GLUE datasets. ***************New January 7, 2020

Google Research 3k Jan 01, 2023
Code accompanying the paper "How Tight Can PAC-Bayes be in the Small Data Regime?"

How Tight Can PAC-Bayes be in the Small Data Regime? This is the code to reproduce all experiments for the following paper: @inproceedings{Foong:2021:

5 Dec 21, 2021
[CVPR'22] Official PyTorch Implementation of Collaborative Transformers for Grounded Situation Recognition

[CVPR'22] Collaborative Transformers for Grounded Situation Recognition Paper | Model Checkpoint This is the official PyTorch implementation of Collab

Junhyeong Cho 29 Dec 10, 2022
PlenOctrees: NeRF-SH Training & Conversion

PlenOctrees Official Repo: NeRF-SH training and conversion This repository contains code to train NeRF-SH and to extract the PlenOctree, constituting

Alex Yu 323 Dec 29, 2022
HIVE: Evaluating the Human Interpretability of Visual Explanations

HIVE: Evaluating the Human Interpretability of Visual Explanations Project Page | Paper This repo provides the code for HIVE, a human evaluation frame

Princeton Visual AI Lab 16 Dec 13, 2022
Robust Video Matting in PyTorch, TensorFlow, TensorFlow.js, ONNX, CoreML!

Robust Video Matting (RVM) English | 中文 Official repository for the paper Robust High-Resolution Video Matting with Temporal Guidance. RVM is specific

flow-dev 2 Aug 21, 2022
Scalable training for dense retrieval models.

Scalable implementation of dense retrieval. Training on cluster By default it trains locally: PYTHONPATH=.:$PYTHONPATH python dpr_scale/main.py traine

Facebook Research 90 Dec 28, 2022
A graphical Semi-automatic annotation tool based on labelImg and Yolov5

💕YOLOV5 semi-automatic annotation tool (Based on labelImg)

EricFang 247 Jan 05, 2023
Code for Multiple Instance Active Learning for Object Detection, CVPR 2021

MI-AOD Language: 简体中文 | English Introduction This is the code for Multiple Instance Active Learning for Object Detection (The PDF is not available tem

Tianning Yuan 269 Dec 21, 2022
Code for CVPR 2021 paper TransNAS-Bench-101: Improving Transferrability and Generalizability of Cross-Task Neural Architecture Search.

TransNAS-Bench-101 This repository contains the publishable code for CVPR 2021 paper TransNAS-Bench-101: Improving Transferrability and Generalizabili

Yawen Duan 17 Nov 20, 2022
Source code for ZePHyR: Zero-shot Pose Hypothesis Rating @ ICRA 2021

ZePHyR: Zero-shot Pose Hypothesis Rating ZePHyR is a zero-shot 6D object pose estimation pipeline. The core is a learned scoring function that compare

R-Pad - Robots Perceiving and Doing 18 Aug 22, 2022
Totally Versatile Miscellanea for Pytorch

Totally Versatile Miscellania for PyTorch Thomas Viehmann [email protected] Thi

Thomas Viehmann 428 Dec 28, 2022
NOMAD - A blackbox optimization software

################################################################################### #

Blackbox Optimization 78 Dec 29, 2022
Revisiting Discriminator in GAN Compression: A Generator-discriminator Cooperative Compression Scheme (NeurIPS2021)

Revisiting Discriminator in GAN Compression: A Generator-discriminator Cooperative Compression Scheme (NeurIPS2021) Overview Prerequisites Linux Pytho

Shaojie Li 34 Mar 31, 2022