Code for Greedy Gradient Ensemble for Visual Question Answering (ICCV 2021, Oral)

Related tags

Deep LearningGGE
Overview

Greedy Gradient Ensemble for De-biased VQA

Code release for "Greedy Gradient Ensemble for Robust Visual Question Answering" (ICCV 2021, Oral). GGE can extend to other tasks with dataset biases.

@inproceedings{han2015greedy,
	title={Greedy Gradient Ensemble for Robust Visual Question Answering},
	author={Han, Xinzhe and Wang, Shuhui and Su, Chi and Huang, Qingming and Tian, Qi},
	booktitle={Proceedings of the IEEE international conference on computer vision},
	year={2021}
}

Prerequisites

We use Anaconda to manage our dependencies . You will need to execute the following steps to install all dependencies:

  • Edit the value for prefix variable in requirements.yml file, by assigning it the path to conda environment

  • Then, install all dependencies using: conda env create -f requirements.yml

  • Change to the new environment: bias

Data Setup

  • Download UpDn features from google drive into /data/detection_features folder
  • Download questions/answers for VQAv2 and VQA-CPv2 by executing bash tools/download.sh
  • Download visual cues/hints provided in A negative case analysis of visual grounding methods for VQA into data/hints. Note that we use caption based hints for grounding-based method reproduction, CGR and CGW.
  • Preprocess process the data with bash tools/process.sh

Training GGE

Run

CUDA_VISIBLE_DEVICES=0 python main.py --dataset cpv2 --mode MODE --debias gradient --topq 1 --topv -1 --qvp 5 --output [] 

to train a model. In main.py, import base_model for UpDn baseline; import base_model_ban as base_model for BAN baseline; import base_model_block as base_model for S-MRL baseline.

Set MODE as gge_iter and gge_tog for our best performance model; gge_d_bias and gge_q_bias for single bias ablation; base for baseline model.

Training ablations in Sec. 3 and Sec. 5

For models in Sec. 3, execute from train_ab import train and import base_model_ab as base_model in main.py. Run

CUDA_VISIBLE_DEVICES=0 python main.py --dataset cpv2 --mode MODE --debias METHODS --topq 1 --topv -1 --qvp 5 --output [] 

METHODS learned_mixin for LMH, MODE inv_sup for inv_sup strategy, v_inverse for inverse hint. Note that the results for HINT$_inv$ is obtained by running the code from A negative case analysis of visual grounding methods for VQA.

To test v_only model, import base_model_v_only as base_model in main.py.

To test RUBi and LMH+RUBi, run

CUDA_VISIBLE_DEVICES=0 python rubi_main.py --dataset cpv2 --mode MODE --output [] 

MODE updn is for RUBi, lmh_rubi is for LMH+RUBi.

Testing

For test stage, we output the overall Acc, CGR, CGW and CGD at threshold 0.2. change base_model to corresponding model in sensitivity.py and run

CUDA_VISIBLE_DEVICES=0 python sensitivity.py --dataset cpv2 --debias METHOD --load_checkpoint_path logs/your_path --output your_path

Visualization

We provide visualization in visualization.ipynb. If you want to see other visualization by yourself, download MS-COCO 2014 to data/images.

Acknowledgements

This repo uses features from A negative case analysis of visual grounding methods for VQA. Some codes are modified from CSS and UpDn.

Code for ICCV 2021 paper "Distilling Holistic Knowledge with Graph Neural Networks"

HKD Code for ICCV 2021 paper "Distilling Holistic Knowledge with Graph Neural Networks" cifia-100 result The implementation of compared methods are ba

Wang Yucheng 30 Dec 18, 2022
JAX-based neural network library

Haiku: Sonnet for JAX Overview | Why Haiku? | Quickstart | Installation | Examples | User manual | Documentation | Citing Haiku What is Haiku? Haiku i

DeepMind 2.3k Jan 04, 2023
Usable Implementation of "Bootstrap Your Own Latent" self-supervised learning, from Deepmind, in Pytorch

Bootstrap Your Own Latent (BYOL), in Pytorch Practical implementation of an astoundingly simple method for self-supervised learning that achieves a ne

Phil Wang 1.4k Dec 29, 2022
Mapping Conditional Distributions for Domain Adaptation Under Generalized Target Shift

This repository contains the official code of OSTAR in "Mapping Conditional Distributions for Domain Adaptation Under Generalized Target Shift" (ICLR 2022).

Matthieu Kirchmeyer 5 Dec 06, 2022
Code and datasets for the paper "Combining Events and Frames using Recurrent Asynchronous Multimodal Networks for Monocular Depth Prediction" (RA-L, 2021)

Combining Events and Frames using Recurrent Asynchronous Multimodal Networks for Monocular Depth Prediction This is the code for the paper Combining E

Robotics and Perception Group 69 Dec 26, 2022
ML-based medical imaging using Azure

Disclaimer This code is provided for research and development use only. This code is not intended for use in clinical decision-making or for any other

Microsoft Azure 68 Dec 23, 2022
Instance-Dependent Partial Label Learning

Instance-Dependent Partial Label Learning Installation pip install -r requirements.txt Run the Demo benchmark-random mnist python -u main.py --gpu 0 -

17 Dec 29, 2022
Pytorch GUI(demo) for iVOS(interactive VOS) and GIS (Guided iVOS)

GUI for iVOS(interactive VOS) and GIS (Guided iVOS) GUI Implementation of CVPR2021 paper "Guided Interactive Video Object Segmentation Using Reliabili

Yuk Heo 13 Dec 09, 2022
clDice - a Novel Topology-Preserving Loss Function for Tubular Structure Segmentation

README clDice - a Novel Topology-Preserving Loss Function for Tubular Structure Segmentation CVPR 2021 Authors: Suprosanna Shit and Johannes C. Paetzo

110 Dec 29, 2022
Paper: De-rendering Stylized Texts

Paper: De-rendering Stylized Texts Wataru Shimoda1, Daichi Haraguchi2, Seiichi Uchida2, Kota Yamaguchi1 1CyberAgent.Inc, 2 Kyushu University Accepted

CyberAgent AI Lab 55 Dec 18, 2022
One line to host them all. Bootstrap your image search case in minutes.

One line to host them all. Bootstrap your image search case in minutes. Survey NOW gives the world access to customized neural image search in just on

Jina AI 403 Dec 30, 2022
Net2net - Network-to-Network Translation with Conditional Invertible Neural Networks

Net2Net Code accompanying the NeurIPS 2020 oral paper Network-to-Network Translation with Conditional Invertible Neural Networks Robin Rombach*, Patri

CompVis Heidelberg 206 Dec 20, 2022
This code is part of the reproducibility package for the SANER 2022 paper "Generating Clarifying Questions for Query Refinement in Source Code Search".

Clarifying Questions for Query Refinement in Source Code Search This code is part of the reproducibility package for the SANER 2022 paper "Generating

Zachary Eberhart 0 Dec 04, 2021
A Multi-attribute Controllable Generative Model for Histopathology Image Synthesis

A Multi-attribute Controllable Generative Model for Histopathology Image Synthesis This is the pytorch implementation for our MICCAI 2021 paper. A Mul

Jiarong Ye 7 Apr 04, 2022
PyTorch implementation of an end-to-end Handwritten Text Recognition (HTR) system based on attention encoder-decoder networks

AttentionHTR PyTorch implementation of an end-to-end Handwritten Text Recognition (HTR) system based on attention encoder-decoder networks. Scene Text

Dmitrijs Kass 31 Dec 22, 2022
A basic duplicate image detection service using perceptual image hash functions and nearest neighbor search, implemented using faiss, fastapi, and imagehash

Duplicate Image Detection Getting Started Install dependencies pip install -r requirements.txt Run service python main.py Testing Test with pytest How

Matthew Podolak 21 Nov 11, 2022
T2F: text to face generation using Deep Learning

⭐ [NEW] ⭐ T2F - 2.0 Teaser (coming soon ...) Please note that all the faces in the above samples are generated ones. The T2F 2.0 will be using MSG-GAN

Animesh Karnewar 533 Dec 22, 2022
The official PyTorch implementation for NCSNv2 (NeurIPS 2020)

Improved Techniques for Training Score-Based Generative Models This repo contains the official implementation for the paper Improved Techniques for Tr

174 Dec 26, 2022
Model-based reinforcement learning in TensorFlow

Bellman Website | Twitter | Documentation (latest) What does Bellman do? Bellman is a package for model-based reinforcement learning (MBRL) in Python,

46 Nov 09, 2022
Code release for our paper, "SimNet: Enabling Robust Unknown Object Manipulation from Pure Synthetic Data via Stereo"

SimNet: Enabling Robust Unknown Object Manipulation from Pure Synthetic Data via Stereo Thomas Kollar, Michael Laskey, Kevin Stone, Brijen Thananjeyan

68 Dec 14, 2022