Obvious Research
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README.md
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# V2MIDI Dataset
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## Overview
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The V2MIDI dataset pairs 40,000 MIDI files with AI-generated videos, connecting music and visual art in a new way. It's designed to help researchers and artists explore how to synchronize music and visuals using AI. This dataset isn't just a collection of files – it's a tool that could change how we create and experience audio-visual content.
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## Dataset Description
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- **Size**: About 257GB
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- **Contents**: 40,000 pairs of MIDI files and MP4 videos
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- **Video Details**: 256x256 pixels, 16 seconds long, 24 frames per second
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- **Music Focus**: House music drum patterns
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- **Visual Variety**: AI-generated visuals based on diverse text prompts
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## How We Created the Dataset
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We built the V2MIDI dataset through several key steps:
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1. **Gathering MIDI Data**:
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We started with a large archive of drum and percussion MIDI files, focusing on house music. We picked files based on their rhythm quality and how well they might match with visuals.
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2. **Standardizing MIDI Files**:
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We processed each chosen MIDI file to make a 16-second sequence. We focused on five main drum sounds: kick, snare, closed hi-hat, open hi-hat, and pedal hi-hat. This helped keep things consistent across the dataset.
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3. **Linking Music to Visuals**:
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We created a system to turn MIDI events into visual changes. For example, a kick drum might make a peak of strength in the visuals, while hi-hats might make things rotate. This is the core of how we sync the music and visuals.
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4. **Creating Visual Ideas**:
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We came up with 10,000 text prompts across 100 themes. We used AI to help generate ideas, then went through and refined them by hand. This gave us a wide range of visual styles that fit well with electronic music.
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5. **Making the Videos**:
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We used our MIDI-to-visual system and tools such as Parseq, Deforum and Automatic1111 (Stable Diffusion web UI) to create videos for each MIDI file.
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6. **Organizing and Checking**:
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Finally, we paired each video with its MIDI file and organized everything neatly. We carefully made sure the visuals matched the music well and looked good.
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## Why It's Useful
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The V2MIDI dataset is special because it precisely matches MIDI events to visual changes. This opens up some exciting possibilities:
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- **See the music**: Train AI to create visuals that match music in real-time.
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- **Hear the visuals**: Explore whether AI can "guess" the music just by watching the video.
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- **New creative tools**: Develop apps that let musicians visualize their music or let artists "hear" their visual creations.
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- **Better live shows**: Create live visuals that perfectly sync with the music.
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## Flexible and Customizable
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We've built the V2MIDI creation process to be flexible. Researchers and artists can:
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- Adjust how MIDI files are processed
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- Change how music events are mapped to visual effects
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- Create different styles of visuals
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- Experiment with video settings like resolution and frame rate
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- Adapt the process to work on different computer setups
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This flexibility means the V2MIDI approach could be extended to other types of music or visual styles.
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## Training AI Models
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One of the most important aspects of the V2MIDI dataset is its potential for training AI models. Researchers can use this dataset to develop models that:
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- Predict musical features from video content
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- Create cross-modal representations linking audio and visual domains
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- Develop more sophisticated audio-visual generation models
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The size and quality of the dataset make it particularly valuable for deep learning approaches.
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## How to Get the Dataset
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The dataset is quite big so we've split it into 257 parts of about 1GB each. Here's how to put it back together:
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1. Download all the parts (they're named `img2img_part_aa` to `img2img_part_jw`)
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2. Stick them together with this command: `cat img2img_part_* > img2img-images_clean.tar`
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3. Unpack it: `tar -xvf img2img-images_clean.tar`
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Make sure you have at least 257GB of free space on your computer for this.
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## What's Next?
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We see the V2MIDI dataset as just the beginning. Future work could:
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- Include more types of music
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- Work with more complex musical structures
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- Try generating music from videos (not just videos from music)
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- Create tools for live performances
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## Thank You
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We couldn't have made this without the people who created the original MIDI archive and the open-source communities behind Stable Diffusion, Deforum, and AUTOMATIC1111.
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## Get in Touch
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If you have questions or want to know more about the V2MIDI dataset, email us at:
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