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VideoAgent: A Memory-augmented Multimodal Agent for Video Understanding (ECCV 2024)

Introduction

This is the official code repository of VideoAgent: A Memory-augmented Multimodal Agent for Video Understanding . VideoAgent is a mulit-modal agent that can understand the input video and answer the questions raised by you.

Given a video and a question, VideoAgent has two phases: memory construction phase and inference phase. During the memory construction phase, structured information is extracted from the video and stored in the memory. During the inference phase, a LLM is prompted to use a set of tools interacting with the memory to answer the question.

Prerequisites

This project is tested on Ubuntu 20.04 with a NVIDIA RTX 4090(24GB).

Installation Guide

Use the following command to create the environment named as videoagent:

conda env create -f environment.yaml

Create the environment of Video-LLaVA by running the following command:

git clone https://github.com/PKU-YuanGroup/Video-LLaVA
cd Video-LLaVA
conda create -n videollava python=3.10 -y
conda activate videollava
pip install --upgrade pip  # enable PEP 660 support
pip install -e .
pip install -e ".[train]"
pip install flash-attn --no-build-isolation
pip install decord opencv-python git+https://github.com/facebookresearch/pytorchvideo.git@28fe037d212663c6a24f373b94cc5d478c8c1a1d

Note: Only the conda envrionment named videollava is required for this project, while the Video-LLaVA repository is not required. You can clone Video-LLaVA repository to anywhere you want and build the conda environment named videollava.

Download the cache_dir.zip and tool_models.zip from here and unzip them to the directory of VideoAgent. This will create two folder cache_dir(the model weights of VideoLLaVA) and tool_models(the model weights of all other models) under VideoAgent.

Usage

Make sure you are under VideoAgent directory. Enter your OpenAI api key in config/default.yaml.

First, open a terminal and run:

conda activate videollava
python video-llava.py

This will start a Video-LLaVA server process that will deal with Visual Question Answering request raised by VideoAgent.

Once you see ready for connection! in the first process, Then, open another terminal and run:

conda activate videoagent
python demo.py

This will create a Gradio demo shown as follows.

You can choose the example videos for inference, or you can also upload your own videos and questions. Once submitted, VideoAgent will start processing your video and store the files under ```preprocess/your_video_name```. After processing the input video, it will answer your question.

The results will provide:

  1. the answer to the question
  2. the replay with object re-ID of the input video
  3. the inference log (chain-of-thought) of VideoAgent

For batch inference, you can run

conda activate videoagent
python main.py

Citation

If you find our paper and code useful in your research, please consider giving a star ⭐ and citation 📝.

@inproceedings{fan2025videoagent,
  title={Videoagent: A memory-augmented multimodal agent for video understanding},
  author={Fan, Yue and Ma, Xiaojian and Wu, Rujie and Du, Yuntao and Li, Jiaqi and Gao, Zhi and Li, Qing},
  booktitle={European Conference on Computer Vision},
  pages={75--92},
  year={2025},
  organization={Springer}
}