instant-id-x-yamermix-v8

Maintainer: usamaehsan

Total Score

1

Last updated 5/17/2024
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Model LinkView on Replicate
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Github LinkNo Github link provided
Paper LinkNo paper link provided

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Model overview

The instant-id-x-yamermix-v8 is an experimental AI model developed by usamaehsan that aims to generate realistic images of people. It is related to other models like swap-sd, instant-id, gfpgan, controlnet-x-ip-adapter-realistic-vision-v5, and deliberate-v6, all of which focus on image generation, manipulation, or restoration.

Model inputs and outputs

The instant-id-x-yamermix-v8 model takes in a variety of inputs, including an image, image dimensions, a text prompt, and optional additional images. It outputs a single image.

Inputs

  • image: The input image
  • width: The width of the image for face detection
  • height: The height of the image for face detection
  • image2: An additional face image (experimental)
  • prompt: The text prompt to guide image generation
  • max_side: The maximum side length of the generated image
  • min_side: The minimum side length of the generated image
  • scheduler: The scheduler to use for image generation
  • pose_image: An additional pose image (experimental)
  • resize_image: Whether to resize the input image
  • guidance_scale: The scale for classifier-free guidance
  • negative_prompt: A negative prompt to guide image generation
  • ip_adapter_scale: The scale for the IP adapter
  • enhance_face_region: Whether to enhance the face region
  • num_inference_steps: The number of denoising steps
  • micro_detail_lora_weight: The weight for the micro detail LORA (disabled at 0)
  • controlnet_conditioning_scale: The scale for ControlNet conditioning

Outputs

  • Output: The generated image

Capabilities

The instant-id-x-yamermix-v8 model is capable of generating realistic images of people based on text prompts and input images. It can incorporate techniques like image inpainting, multi-ControlNet, and IP adaptation to enhance the quality and realism of the generated images.

What can I use it for?

The instant-id-x-yamermix-v8 model could be used for a variety of creative and artistic applications, such as generating portraits, character designs, or concept art. It may also have applications in areas like virtual photography, visual effects, and content creation. However, as the model is experimental and not intended for commercial use, it's important to use it responsibly and within the scope of its intended purpose.

Things to try

One interesting thing to try with the instant-id-x-yamermix-v8 model is experimenting with the different input parameters, such as the text prompt, image dimensions, and various settings related to image generation and adaptation. This can help you explore the model's capabilities and find creative ways to use it. Additionally, you could try combining the model with other tools or techniques, such as image editing software or other AI-powered tools, to further enhance the generated images.



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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