instant-id-artistic

Maintainer: grandlineai

Total Score

1

Last updated 6/29/2024
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Model overview

instant-id-artistic is a state-of-the-art AI model created by grandlineai that enables zero-shot identity-preserving generation in seconds. The model is built upon Dreamshaper-XL as the base to encourage artistic generations. It offers capabilities that set it apart from similar models like instant-id-photorealistic, gfpgan, instant-id, instant-id-multicontrolnet, and sdxl-lightning-4step.

Model inputs and outputs

instant-id-artistic takes in an image, a text prompt, and several additional parameters to control the output. The model generates a new image that preserves the identity of the input face while applying the specified artistic style based on the text prompt.

Inputs

  • image: The input image containing a face to preserve
  • prompt: The text prompt describing the desired artistic style
  • negative_prompt: The text prompt describing styles to avoid
  • width: The desired width of the output image
  • height: The desired height of the output image
  • guidance_scale: The scale for classifier-free guidance
  • ip_adapter_scale: The scale for the IP adapter
  • controlnet_conditioning_scale: The scale for ControlNet conditioning
  • num_inference_steps: The number of denoising steps

Outputs

  • Output image: The generated image that preserves the identity of the input face while applying the desired artistic style

Capabilities

instant-id-artistic can generate highly customized, identity-preserving images in a matter of seconds. The model is capable of blending the input face with a wide range of artistic styles, from analog film to vintage photography to ink sketches. Unlike previous works, instant-id-artistic achieves better fidelity and retains good text editability, allowing the generated images to seamlessly blend the face and background.

What can I use it for?

instant-id-artistic can be a powerful tool for creatives, artists, and designers who need to generate personalized, stylized images quickly. The model can be used to create unique portraits, character designs, or even to enhance existing images with a specific artistic look. The zero-shot nature of the model also makes it appealing for applications where a large dataset of labeled images is not available.

Things to try

One interesting aspect of instant-id-artistic is its ability to adapt to various base models, such as Dreamshaper-XL, to encourage different types of artistic generations. Users can experiment with different base models and prompts to explore the range of styles and aesthetics that the model can produce. Additionally, the model's compatibility with LCM-LoRA allows for faster inference times, making it more suitable for real-time applications or large-scale image generation.



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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