MDETR: Modulated Detection for End-to-End Multi-Modal Understanding

Related tags

Deep Learningmdetr
Overview

MDETR: Modulated Detection for End-to-End Multi-Modal Understanding

WebsiteColabPaper

This repository contains code and links to pre-trained models for MDETR (Modulated DETR) for pre-training on data having aligned text and images with box annotations, as well as fine-tuning on tasks requiring fine grained understanding of image and text.

We show big gains on the phrase grounding task (Flickr30k), Referring Expression Comprehension (RefCOCO, RefCOCO+ and RefCOCOg) as well as Referring Expression Segmentation (PhraseCut, CLEVR Ref+). We also achieve competitive performance on visual question answering (GQA, CLEVR).

MDETR

TL;DR. We depart from the fixed frozen object detector approach of several popular vision + language pre-trained models and achieve true end-to-end multi-modal understanding by training our detector in the loop. In addition, we only detect objects that are relevant to the given text query, where the class labels for the objects are just the relevant words in the text query. This allows us to expand our vocabulary to anything found in free form text, making it possible to detect and reason over novel combination of object classes and attributes.

For details, please see the paper: MDETR - Modulated Detection for End-to-End Multi-Modal Understanding by Aishwarya Kamath, Mannat Singh, Yann LeCun, Ishan Misra, Gabriel Synnaeve and Nicolas Carion.

Aishwarya Kamath and Nicolas Carion made equal contributions to this codebase.

Usage

The requirements file has all the dependencies that are needed by MDETR.

We provide instructions how to install dependencies via conda. First, clone the repository locally:

git clone https://github.com/ashkamath/mdetr.git

Make a new conda env and activate it:

conda create -n mdetr_env python=3.8
conda activate mdetr_env

Install the the packages in the requirements.txt:

pip install -r requirements.txt

Multinode training

Distributed training is available via Slurm and submitit:

pip install submitit

Pre-training

The links to data, steps for data preparation and script for running finetuning can be found in Pretraining Instructions We also provide the pre-trained model weights for MDETR trained on our combined aligned dataset of 1.3 million images paired with text.

The models are summarized in the following table. Note that the performance reported is "raw", without any fine-tuning. For each dataset, we report the class-agnostic box [email protected], which measures how well the model finds the boxes mentioned in the text. All performances are reported on the respective validation sets of each dataset.

Backbone GQA Flickr Refcoco Url
Size
AP AP [email protected] AP Refcoco [email protected] Refcoco+ [email protected] Refcocog [email protected]
1 R101 58.9 75.6 82.5 60.3 72.1 58.0 55.7 model 3GB
2 ENB3 59.5 76.6 82.9 57.6 70.2 56.7 53.8 model 2.4GB
3 ENB5 59.9 76.4 83.7 61.8 73.4 58.8 57.1 model 2.7GB

Downstream tasks

Phrase grounding on Flickr30k

Instructions for data preparation and script to run evaluation can be found at Flickr30k Instructions

AnyBox protocol

Backbone Pre-training Image Data Val [email protected] Val [email protected] Val [email protected] Test [email protected] Test [email protected] Test [email protected] url size
Resnet-101 COCO+VG+Flickr 82.5 92.9 94.9 83.4 93.5 95.3 model 3GB
EfficientNet-B3 COCO+VG+Flickr 82.9 93.2 95.2 84.0 93.8 95.6 model 2.4GB
EfficientNet-B5 COCO+VG+Flickr 83.6 93.4 95.1 84.3 93.9 95.8 model 2.7GB

MergedBox protocol

Backbone Pre-training Image Data Val [email protected] Val [email protected] Val [email protected] Test [email protected] Test [email protected] Test [email protected] url size
Resnet-101 COCO+VG+Flickr 82.3 91.8 93.7 83.8 92.7 94.4 model 3GB

Referring expression comprehension on RefCOCO, RefCOCO+, RefCOCOg

Instructions for data preparation and script to run finetuning and evaluation can be found at Referring Expression Instructions

RefCOCO

Backbone Pre-training Image Data Val TestA TestB url size
Resnet-101 COCO+VG+Flickr 86.75 89.58 81.41 model 3GB
EfficientNet-B3 COCO+VG+Flickr 87.51 90.40 82.67 model 2.4GB

RefCOCO+

Backbone Pre-training Image Data Val TestA TestB url size
Resnet-101 COCO+VG+Flickr 79.52 84.09 70.62 model 3GB
EfficientNet-B3 COCO+VG+Flickr 81.13 85.52 72.96 model 2.4GB

RefCOCOg

Backbone Pre-training Image Data Val Test url size
Resnet-101 COCO+VG+Flickr 81.64 80.89 model 3GB
EfficientNet-B3 COCO+VG+Flickr 83.35 83.31 model 2.4GB

Referring expression segmentation on PhraseCut

Instructions for data preparation and script to run finetuning and evaluation can be found at PhraseCut Instructions

Backbone M-IoU Precision @0.5 Precision @0.7 Precision @0.9 url size
Resnet-101 53.1 56.1 38.9 11.9 model 1.5GB
EfficientNet-B3 53.7 57.5 39.9 11.9 model 1.2GB

Visual question answering on GQA

Instructions for data preparation and scripts to run finetuning and evaluation can be found at GQA Instructions

Backbone Test-dev Test-std url size
Resnet-101 62.48 61.99 model 3GB
EfficientNet-B5 62.95 62.45 model 2.7GB

Long-tailed few-shot object detection

Instructions for data preparation and scripts to run finetuning and evaluation can be found at LVIS Instructions

Data AP AP 50 AP r APc AP f url size
1% 16.7 25.8 11.2 14.6 19.5 model 3GB
10% 24.2 38.0 20.9 24.9 24.3 model 3GB
100% 22.5 35.2 7.4 22.7 25.0 model 3GB

Synthetic datasets

Instructions to reproduce our results on CLEVR-based datasets are available at CLEVR instructions

Overall Accuracy Count Exist
Compare Number Query Attribute Compare Attribute Url Size
99.7 99.3 99.9 99.4 99.9 99.9 model 446MB

License

MDETR is released under the Apache 2.0 license. Please see the LICENSE file for more information.

Citation

If you find this repository useful please give it a star and cite as follows! :) :

    @article{kamath2021mdetr,
      title={MDETR--Modulated Detection for End-to-End Multi-Modal Understanding},
      author={Kamath, Aishwarya and Singh, Mannat and LeCun, Yann and Misra, Ishan and Synnaeve, Gabriel and Carion, Nicolas},
      journal={arXiv preprint arXiv:2104.12763},
      year={2021}
    }
Owner
Aishwarya Kamath
Find me @ ashkamath.github.io
Aishwarya Kamath
Real-Time and Accurate Full-Body Multi-Person Pose Estimation&Tracking System

News! Aug 2020: v0.4.0 version of AlphaPose is released! Stronger tracking! Include whole body(face,hand,foot) keypoints! Colab now available. Dec 201

Machine Vision and Intelligence Group @ SJTU 6.7k Dec 28, 2022
Build a medical knowledge graph based on Unified Language Medical System (UMLS)

UMLS-Graph Build a medical knowledge graph based on Unified Language Medical System (UMLS) Requisite Install MySQL Server 5.6 and import UMLS data int

Donghua Chen 6 Dec 25, 2022
Cycle Consistent Adversarial Domain Adaptation (CyCADA)

Cycle Consistent Adversarial Domain Adaptation (CyCADA) A pytorch implementation of CyCADA. If you use this code in your research please consider citi

Hyunwoo Ko 2 Jan 10, 2022
Perturbed Self-Distillation: Weakly Supervised Large-Scale Point Cloud Semantic Segmentation (ICCV2021)

Perturbed Self-Distillation: Weakly Supervised Large-Scale Point Cloud Semantic Segmentation (ICCV2021) This is the implementation of PSD (ICCV 2021),

12 Dec 12, 2022
Evaluating deep transfer learning for whole-brain cognitive decoding

Evaluating deep transfer learning for whole-brain cognitive decoding This README file contains the following sections: Project description Repository

Armin Thomas 5 Oct 31, 2022
Hide screen when boss is approaching.

BossSensor Hide your screen when your boss is approaching. Demo The boss stands up. He is approaching. When he is approaching, the program fetches fac

Hiroki Nakayama 6.2k Jan 07, 2023
a Lightweight library for sequential learning agents, including reinforcement learning

SaLinA: SaLinA - A Flexible and Simple Library for Learning Sequential Agents (including Reinforcement Learning) TL;DR salina is a lightweight library

Facebook Research 405 Dec 17, 2022
Generic image compressor for machine learning. Pytorch code for our paper "Lossy compression for lossless prediction".

Lossy Compression for Lossless Prediction Using: Training: This repostiory contains our implementation of the paper: Lossy Compression for Lossless Pr

Yann Dubois 84 Jan 02, 2023
Train Yolov4 using NBX-Jobs

yolov4-trainer-nbox Train Yolov4 using NBX-Jobs. Use the powerfull functionality available in nbox-SDK repo to train a tiny-Yolo v4 model on Pascal VO

Yash Bonde 1 Jan 12, 2022
torchsummaryDynamic: support real FLOPs calculation of dynamic network or user-custom PyTorch ops

torchsummaryDynamic Improved tool of torchsummaryX. torchsummaryDynamic support real FLOPs calculation of dynamic network or user-custom PyTorch ops.

Bohong Chen 1 Jan 07, 2022
bespoke tooling for offensive security's Windows Usermode Exploit Dev course (OSED)

osed-scripts bespoke tooling for offensive security's Windows Usermode Exploit Dev course (OSED) Table of Contents Standalone Scripts egghunter.py fin

epi 268 Jan 05, 2023
Optimizing DR with hard negatives and achieving SOTA first-stage retrieval performance on TREC DL Track (SIGIR 2021 Full Paper).

Optimizing Dense Retrieval Model Training with Hard Negatives Jingtao Zhan, Jiaxin Mao, Yiqun Liu, Jiafeng Guo, Min Zhang, Shaoping Ma 🔥 News 2021-10

Jingtao Zhan 99 Dec 27, 2022
Python lib to talk to pylontech lithium batteries (US2000, US3000, ...) using RS485

python-pylontech Python lib to talk to pylontech lithium batteries (US2000, US3000, ...) using RS485 What is this lib ? This lib is meant to talk to P

Frank 26 Dec 28, 2022
The codes and related files to reproduce the results for Image Similarity Challenge Track 2.

ISC-Track2-Submission The codes and related files to reproduce the results for Image Similarity Challenge Track 2. Required dependencies To begin with

Wenhao Wang 89 Jan 02, 2023
Normal Learning in Videos with Attention Prototype Network

Codes_APN Official codes of CVPR21 paper: Normal Learning in Videos with Attention Prototype Network (https://arxiv.org/abs/2108.11055) Overview of ou

11 Dec 13, 2022
A Pytorch Implementation of ClariNet

ClariNet A Pytorch Implementation of ClariNet (Mel Spectrogram -- Waveform) Requirements PyTorch 0.4.1 & python 3.6 & Librosa Examples Step 1. Downlo

Sungwon Kim 286 Sep 15, 2022
Boost learning for GNNs from the graph structure under challenging heterophily settings. (NeurIPS'20)

Beyond Homophily in Graph Neural Networks: Current Limitations and Effective Designs Jiong Zhu, Yujun Yan, Lingxiao Zhao, Mark Heimann, Leman Akoglu,

GEMS Lab: Graph Exploration & Mining at Scale, University of Michigan 70 Dec 18, 2022
[NeurIPS 2021] A weak-shot object detection approach by transferring semantic similarity and mask prior.

[NeurIPS 2021] A weak-shot object detection approach by transferring semantic similarity and mask prior.

BCMI 49 Jul 27, 2022
🦙 LaMa Image Inpainting, Resolution-robust Large Mask Inpainting with Fourier Convolutions, WACV 2022

🦙 LaMa Image Inpainting, Resolution-robust Large Mask Inpainting with Fourier Convolutions, WACV 2022

Advanced Image Manipulation Lab @ Samsung AI Center Moscow 4.7k Dec 31, 2022
A general, feasible, and extensible framework for classification tasks.

Pytorch Classification A general, feasible and extensible framework for 2D image classification. Features Easy to configure (model, hyperparameters) T

Eugene 26 Nov 22, 2022