chenxwh/ominicontrol-spatial 🔢🖼️❓📝 → 🖼️

▶️ 109 runs 📅 Dec 2024 ⚙️ Cog 0.9.23 🔗 GitHub 📄 Paper ⚖️ License
image-colorization image-inpainting image-to-image

About

Minimal and Universal Control for Diffusion Transformer - demo for Spatially aligned control

Example Output

Prompt:

"The Mona Lisa is wearing a white VR headset with "OMINI" written on it."

Output

Example output

Performance Metrics

16.41s Prediction Time
16.42s Total Time
All Input Parameters
{
  "image": "https://replicate.delivery/pbxt/MF6fbaFCPPXLDUYYRQZhP0S93K3HQzzZDduHwxXQNAWiOgdb/masked.png",
  "model": "fill",
  "prompt": "The Mona Lisa is wearing a white VR headset with \"OMINI\" written on it.",
  "guidance_scale": 7.5,
  "num_inference_steps": 50
}
Input Parameters
seed Type: integer
Random seed. Leave blank to randomize the seed
image (required) Type: string
Input image
model Default: fill
Choose a task
prompt Type: stringDefault: The Mona Lisa is wearing a white VR headset with 'Omini' written on it.
Input prompt.
guidance_scale Type: numberDefault: 7.5Range: 1 - 20
Scale for classifier-free guidance
num_inference_steps Type: integerDefault: 50Range: 1 - 500
Number of denoising steps
Output Schema

Output

Type: stringFormat: uri

Example Execution Logs
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Version Details
Version ID
1b9423cc867733ca0fcf0bc9e677a731fd8654206fc6f3fbddb7279cd91ce917
Version Created
December 31, 2024
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