This is the code for our paper "Iconary: A Pictionary-Based Game for Testing Multimodal Communication with Drawings and Text"

Related tags

Deep Learningiconary
Overview

Iconary

This is the code for our paper "Iconary: A Pictionary-Based Game for Testing Multimodal Communication with Drawings and Text". It includes the datasets, models we trained, and our training/evaluations scripts.

Install

Install python >= 3.6 and pytorch >= 1.7.0. This project has been tested with torch==1.7.1, but later versions might work.

Then install the extra requirements:

pip install -r requirements

Finally add the top-level directory to PYTHONPATH:

cd iconary
export PYTHONPATH=`pwd`

Data

Datasets will be downloaded and cached automatically as needed, file_paths.py shows where the files will be stored. By defaults, datasets are stored in ~/data/iconary.

If you want to download the data manually, the dataest can be downloaded here:

We release the complete datasets without held-out labels since computing the automatic metrics for both the Guesser and Drawer requires the entire game to be known. Models should only be trained on the train set and researchers should avoid looking/evaluating on the test sets as much as possible.

Models

We release the following models on S3:

Guesser:

  • TGuesser: s3://ai2-vision-iconary/public-models/tguesser-3b/
  • w/T5-Large: s3://ai2-vision-iconary/public-models/tguesser-large/
  • w/T5-Base: s3://ai2-vision-iconary/public-models/tguesser-base/

Drawer:

  • TDrawer: s3://ai2-vision-iconary/public-models/tdrawer-large/
  • w/T5-Base: s3://ai2-vision-iconary/public-models/tdrawer-base/

To use these models, download the entire directory. For example:

mkdir -p models
aws s3 cp --recursive s3://ai2-vision-iconary/public-models/tguesser-base models/tguesser-base

Train

Guesser

Train TGuesser with:

python iconary/experiments/train_guesser.py --pretrained_model t5-base --output_dir models/tguesser-base

Note our full model use --pretrained_model t5-b3, but that requries a >16GB RAM GPU to run.

Drawing

Train TDrawer with:

python iconary/experiments/train_drawer.py --pretrained_model t5-base --output_dir models/tdrawer-base --grad_accumulation 2

Note our full model use --pretrained_model t5-large, but that requires a >16GB RAM GPU to run.

Automatic Evaluation

These scripts generate drawings/guesses for games in human/human games, and computes automatic metrics from those drawings/guesses. Note our generation scripts will use all GPUs that they can find with torch.cuda.device_count(), to control where it runs use the CUDA_VISIBLE_DEVICES environment variable.

Guesser

To compute automatic metrics for the Guesser, first generate guesses as:

python iconary/experiments/generate_guesses.py path/to/model --dataset ood-valid --output_file guesses.json --unk_boost 2.0

Note that most of our evaluations are done using --unk_boost 2.0 which implements rare-word boosting.

This script will report our automatic metrics, but they can also be re-computed using:

python iconary/experiments/eval_guesses.py guesses.json

Drawer

Generate drawings with:

python iconary/experiments/generate_drawings.py path/to/model --dataset ood-valid --output_file drawings.json

This script will report our automatic metrics, but they can also be re-computed using:

python iconary/experiments/eval_drawings.py drawings.json

Human/AI Evaluation

Our code for running human/AI games is not currently released, if you are interested in running your own trials contact us and we can help you follow our human/AI setup.

Cite

If you use this work, please cite:

"Iconary: A Pictionary-Based Game for Testing MultimodalCommunication with Drawings and Text". Christopher Clark, Jordi Salvador, Dustin Schwenk, Derrick Bonafilia, Mark Yatskar, Eric Kolve, Alvaro Herrasti, Jonghyun Choi, Sachin Mehta, Sam Skjonsberg, Carissa Schoenick, Aaron Sarnat, Hannaneh Hajishirzi, Aniruddha Kembhavi, Oren Etzioni, Ali Farhadi. In EMNLP 2021.

Cobalt Strike teamserver detection.

Cobalt-Strike-det Cobalt Strike teamserver detection. usage: cobaltstrike_verify.py [-l TARGETS] [-t THREADS] optional arguments: -h, --help show this

TimWhite 17 Sep 27, 2022
Weakly-supervised object detection.

Wetectron Wetectron is a software system that implements state-of-the-art weakly-supervised object detection algorithms. Project CVPR'20, ECCV'20 | Pa

NVIDIA Research Projects 342 Jan 05, 2023
This repository contains the code for our paper VDA (public in EMNLP2021 main conference)

Virtual Data Augmentation: A Robust and General Framework for Fine-tuning Pre-trained Models This repository contains the code for our paper VDA (publ

RUCAIBox 13 Aug 06, 2022
H&M Fashion Image similarity search with Weaviate and DocArray

H&M Fashion Image similarity search with Weaviate and DocArray This example shows how to do image similarity search using DocArray and Weaviate as Doc

Laura Ham 18 Aug 11, 2022
A generalist algorithm for cell and nucleus segmentation.

Cellpose | A generalist algorithm for cell and nucleus segmentation. Cellpose was written by Carsen Stringer and Marius Pachitariu. To learn about Cel

MouseLand 733 Dec 29, 2022
The devkit of the nuScenes dataset.

nuScenes devkit Welcome to the devkit of the nuScenes and nuImages datasets. Overview Changelog Devkit setup nuImages nuImages setup Getting started w

Motional 1.6k Jan 05, 2023
Confidence Propagation Cluster aims to replace NMS-based methods as a better box fusion framework in 2D/3D Object detection

CP-Cluster Confidence Propagation Cluster aims to replace NMS-based methods as a better box fusion framework in 2D/3D Object detection, Instance Segme

Yichun Shen 41 Dec 08, 2022
Simple, but essential Bayesian optimization package

BayesO: A Bayesian optimization framework in Python Simple, but essential Bayesian optimization package. http://bayeso.org Online documentation Instal

Jungtaek Kim 74 Dec 05, 2022
ProMP: Proximal Meta-Policy Search

ProMP: Proximal Meta-Policy Search Implementations corresponding to ProMP (Rothfuss et al., 2018). Overall this repository consists of two branches: m

Jonas Rothfuss 212 Dec 20, 2022
[SIGGRAPH Asia 2019] Artistic Glyph Image Synthesis via One-Stage Few-Shot Learning

AGIS-Net Introduction This is the official PyTorch implementation of the Artistic Glyph Image Synthesis via One-Stage Few-Shot Learning. paper | suppl

Yue Gao 102 Jan 02, 2023
Code for GNMR in ICDE 2021

GNMR Code for GNMR in ICDE 2021 Please unzip data files in Datasets/MultiInt-ML10M first. Run labcode_preSamp.py (with graph sampling) for ECommerce-c

7 Oct 27, 2022
Official code repository for A Simple Long-Tailed Rocognition Baseline via Vision-Language Model.

This is the official code repository for A Simple Long-Tailed Rocognition Baseline via Vision-Language Model.

peng gao 42 Nov 26, 2022
This is project is the implementation of the DeepShift: Towards Multiplication-Less Neural Networks paper

DeepShift This is project is the implementation of the DeepShift: Towards Multiplication-Less Neural Networks paper, that aims to replace multiplicati

Mostafa Elhoushi 88 Dec 23, 2022
Contains supplementary materials for reproduce results in HMC divergence time estimation manuscript

Scalable Bayesian divergence time estimation with ratio transformations This repository contains the instructions and files to reproduce the analyses

Suchard Research Group 1 Sep 21, 2022
Denoising Diffusion Probabilistic Models

Denoising Diffusion Probabilistic Models This repo contains code for DDPM training. Based on Denoising Diffusion Probabilistic Models, Improved Denois

Alexander Markov 7 Dec 15, 2022
Clairvoyance: a Unified, End-to-End AutoML Pipeline for Medical Time Series

Clairvoyance: A Pipeline Toolkit for Medical Time Series Authors: van der Schaar Lab This repository contains implementations of Clairvoyance: A Pipel

van_der_Schaar \LAB 89 Dec 07, 2022
TransZero++: Cross Attribute-guided Transformer for Zero-Shot Learning

TransZero++ This repository contains the testing code for the paper "TransZero++: Cross Attribute-guided Transformer for Zero-Shot Learning" submitted

Shiming Chen 6 Aug 16, 2022
[CVPR 2022] Official PyTorch Implementation for "Reference-based Video Super-Resolution Using Multi-Camera Video Triplets"

Reference-based Video Super-Resolution (RefVSR) Official PyTorch Implementation of the CVPR 2022 Paper Project | arXiv | RealMCVSR Dataset This repo c

Junyong Lee 151 Dec 30, 2022
Mip-NeRF: A Multiscale Representation for Anti-Aliasing Neural Radiance Fields.

This repository contains the code release for Mip-NeRF: A Multiscale Representation for Anti-Aliasing Neural Radiance Fields. This implementation is written in JAX, and is a fork of Google's JaxNeRF

Google 625 Dec 30, 2022
This repository includes code of my study about Asynchronous in Frequency domain of GAN images.

Exploring the Asynchronous of the Frequency Spectra of GAN-generated Facial Images Binh M. Le & Simon S. Woo, "Exploring the Asynchronous of the Frequ

4 Aug 06, 2022