controlnet-qr-pattern-sdxl

Maintainer: Nacholmo

Total Score

47

Last updated 9/6/2024

🤷

PropertyValue
Run this modelRun on HuggingFace
API specView on HuggingFace
Github linkNo Github link provided
Paper linkNo paper link provided

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Model overview

controlnet-qr-pattern-sdxl is an AI model created by Nacholmo, an Argentinian university student, as a free community resource. This model is designed to generate creative QR codes that can still be scanned. It uses a conditioning technique that only conditions on the 25% of pixels closest to black and the 25% closest to white, allowing for interesting visual patterns while maintaining the QR code functionality. The model is based on the SDXL text-to-image model and can be used in conjunction with the controlnet-qr-pattern-v2 and control_v1p_sdxl_qrcode_monster models to create a variety of QR code-based artwork.

Model inputs and outputs

The controlnet-qr-pattern-sdxl model takes in a prompt and a condition image, which is the QR code pattern to be incorporated into the generated image. The model then outputs an image that combines the QR code pattern with the desired scene or subject, as specified in the prompt.

Inputs

  • Prompt: A text prompt that describes the desired scene or subject to be generated.
  • Condition image: The QR code pattern that will be incorporated into the generated image.

Outputs

  • Image: An image that combines the QR code pattern with the desired scene or subject, as specified in the prompt.

Capabilities

The controlnet-qr-pattern-sdxl model can generate a wide range of creative QR code-based artwork, from cityscapes to abstract patterns. The model is able to maintain the functionality of the QR code while incorporating it into the generated image in a visually interesting way. The model can also be used to generate QR codes that can be scanned by mobile devices, making it useful for various applications such as advertising, art projects, and more.

What can I use it for?

The controlnet-qr-pattern-sdxl model can be used for a variety of applications, such as:

  • Advertising and marketing: Generate QR code-based artwork for posters, billboards, or social media posts that can be scanned by mobile devices to direct users to a specific website or content.
  • Art projects: Create unique and visually interesting QR code-based artwork for exhibitions, installations, or digital art pieces.
  • Educational and informational materials: Incorporate QR codes into educational materials, such as worksheets or textbooks, to provide additional resources or information to students.
  • Personal projects: Experiment with the model to create unique and personalized QR code-based artwork, such as custom-designed t-shirts or greeting cards.

Things to try

One interesting way to experiment with the controlnet-qr-pattern-sdxl model is to try different prompts and condition images to see how the model combines the QR code pattern with various scenes and subjects. You can also try adjusting the model parameters, such as the control weight and guidance scale, to find the right balance between the QR code functionality and the generated image's creativity.

Additionally, you can try using the controlnet-qr-pattern-sdxl model in conjunction with other Controlnet models, such as the controlnet-qr-pattern-v2 and control_v1p_sdxl_qrcode_monster models, to explore more possibilities for QR code-based artwork.



This summary was produced with help from an AI and may contain inaccuracies - check out the links to read the original source documents!

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