Hallucination is a big shadow hanging over the rapidly evolving Multimodal Large Language Models (MLLMs), referring to the phenomenon that the generated text is inconsistent with the image content. In order to mitigate hallucinations, existing studies mainly resort to an instruction-tuning manner that requires retraining the models with specific data. In this paper, we pave a different way, introducing a training-free method named Woodpecker. Like a woodpecker heals trees, it picks out and corrects hallucinations from the generated text. Concretely, Woodpecker consists of five stages: key concept extraction, question formulation, visual knowledge validation, visual claim generation, and hallucination correction. Implemented in a post-remedy manner, Woodpecker can easily serve different MLLMs, while being interpretable by accessing intermediate outputs of the five stages. We evaluate Woodpecker both quantitatively and qualitatively and show the huge potential of this new paradigm. On the POPE benchmark, our method obtains a 30.66%/24.33% improvement in accuracy over the baseline MiniGPT-4/mPLUG-Owl.
This is the first work to correct hallucination in multimodal large language models. If you have any question, please feel free to email bradyfu24@gmail.com or add weChat ID xjtupanda.
We perform experiments based on four baseline models:
The experimental results are shown below. For more details, please check out our paper.
This part focuses on object-level hallucinations.
This part focuses on both object- and attribute-level hallucinations.
We also propose to perform open-ended evaluation directly via the recently opened GPT-4V interface. We design two metrics: accuracy and detailedness.
Please feel free to try our Online Demo!
- Create conda environment
conda create -n corrector python=3.10
conda activate corrector
pip install -r requirements.txt
- Install required packages and models
- Install
spacy
and relevant model packages, following the instructions in Link. This is used for some text processing operations.
pip install -U spacy
python -m spacy download en_core_web_lg
python -m spacy download en_core_web_md
python -m spacy download en_core_web_sm
- For our Open-set Detector. Install GroundingDINO following the instructions in Link.
1. Inference
To make corrections based on an image and a text output from MLLM, run the inference code as follows:
python inference.py \
--image-path {path/to/image} \
--query "Some query.(e.x. Describe this image.)" \
--text "Some text to be corrected." \
--detector-config "path/to/GroundingDINO_SwinT_OGC.py" \
--detector-model "path/to/groundingdino_swint_ogc.pth" \
--api-key "sk-xxxxxxx" \
The output text will be printed in the terminal, and intermediate results saved by default as ./intermediate_view.json
.
2. Demo setup
We use mPLUG-Owl as our default MLLM in experiments. If you wish to replicate the online demo, please clone the project and modify the variables in
Line 7 in e3fcac3
Lines 35 to 36 in e3fcac3
Then simply run:
CUDA_VISIBLE_DEVICES=0,1 python gradio_demo.py
Here we put the corrector components on GPU with id 0 and mPLUG-Owl on GPU with id 1.
This repository benefits from mPLUG-Owl, GroundingDINO, BLIP-2, and LLaMA-Adapter. Thanks for their awesome works.
If you find our project helpful to your research, please consider citing:
@article{yin2024woodpecker,
title={Woodpecker: Hallucination correction for multimodal large language models},
author={Yin, Shukang and Fu, Chaoyou and Zhao, Sirui and Xu, Tong and Wang, Hao and Sui, Dianbo and Shen, Yunhang and Li, Ke and Sun, Xing and Chen, Enhong},
journal={Science China Information Sciences},
volume={67},
number={12},
pages={220105},
year={2024},
publisher={Springer}
}