SeaArt ComfyUI WIKI
  • SeaArt ComfyUI WIKI
  • Core Nodes
    • Advanced
      • conditioning
        • CLIP Text Encode SDXL
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          • CLIPTextEncodeFlux Node for ComfyUI Explained
          • FluxGuidance - ComfyUI Node Functionality Description
      • Loaders
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    • Mask
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    • Utils
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  • ComfyUI Workflow Example
    • 1-Img2Img
    • 2-2 Pass Txt2Img
    • 3-Inpaint
    • 4-Area Composition
    • 5-Upscale Models
    • 6-LoRA
    • 7-ControlNet
    • 8-Noisy Latent Composition
    • 9-Textual Inversion Embeddings
    • 10-Edit Models
    • 11-Model Merging
    • 12-SDXL
    • 13-Stable Cascade
    • 14-UnCLIP
    • 15-Hypernetworks
    • 16-Gligen
    • 17-3D Examples
    • 18-Video
    • 19-LCM Examples
    • 20-ComfyUI SDXL Turbo Examples
  • How to publish as an AI app
  • FAQ (Must see!!!)
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  1. ComfyUI Workflow Example

8-Noisy Latent Composition

Previous7-ControlNetNext9-Textual Inversion Embeddings

Last updated 4 months ago

You can Load these images in to get the full workflow.

Here are examples of Noisy Latent Composition. Noisy latent composition is when latents are composited together while still noisy before the image is fully denoised. Since general shapes like poses and subjects are denoised in the first sampling steps this lets us for example position subjects with specific poses anywhere on the image while keeping a great amount of consistency.

Here is an example. This example contains 4 images composited together. 1 background image and 3 subjects. The total steps is 16. The latents are sampled for 4 steps with a different prompt for each. The background is 1920x1088 and the subjects are 384x768 each. After these 4 steps the images are still extremely noisy. The subjects are then composited (pasted) onto the background with some feathering applied. The rest of the sampling steps are then run on this composited image.

These examples are done with the WD1.5 beta 3 illusion model.

With the positions of the subjects changed:

You can see that the subjects that were composited from different noisy latent images actually interact with each other because I put “holding hands” in the prompt. You’ll also notice how consistent the background is which shows how powerful this method is.

This technique has some limitations in that it can’t control details on subjects like eye color for example but it seems to work extremely well for subject position, pose and general color.

ComfyUI