🎨 ComfyUI-Mosaica
Create colorful mosaic images in ComfyUI by computing label images and applying lookup tables.
Workflow Examples
K-Means
Generate an image using a stable diffusion model and apply the k-means clustering algorithm to convert it to a label image. The average color of each cluster is applied to the image's labels and a colorized image is returned.
K-means is quick and easy to use, but you must specify the number of clusters (i.e. unique labels) that you intend to find.
Mean Shift
Generate an image using a stable diffusion model and apply the mean shift clustering algorithm to convert it to a label image. The average color of each cluster is applied to the image's labels and a colorized image is returned.
Mean shift is much slower than k-means, especially for images greater than 512x512. However, you do not need to specify the number of clusters. Instead, you adjust the "bandwidth" parameter. From my experience, values in the range [0.0, 0.15] tend to produce the best results.
Watershed
Generate an image using a stable diffusion model and apply the watershed segmentation algorithm to convert it to a label image. The average color of each cluster is applied to the image's labels and a colorized image is returned.
Watershed is a fast region-based method and will only produce the best results on images with a lot of intensity variation. It does not account for the hue of the original image like k-means or mean shift.
Random LUT
Apply a randomly generated lookup table of RGB colors to colorize the label image from the mean shift clustering node.
Load LUT from Matplotlib
Apply a lookup table from Matplotlib to colorize the label image.
Label img2img
Apply an img2img with light denoising to the colorized label image.
Colorize an image with K-Means
This slightly more complex workflow uses a k-means label image and a Matplotlib LUT to colorize a generated image. The resulting image is then upscaled for a few additional denoising steps (similar to the hires fix technique) to smoothly blend the colors of the label image with the content from the generated image.
Nodes
- Mean Shift - Apply the Mean Shift clustering algorithm to an image.
- Apply LUT To Label Image - Converts a label image into an RGB image by applying a RGB lookup table (LUT).
- Random LUT - Randomly generate a LUT of RGB colors.
- Load LUT From Matplotlib - Load an RGB LUT from Matplotlib.
To do
- [ ] implement
LoadLUTFromFile
node - [ ] implement
MedianFilter
node - [x] implement
KMeans
node - [x] implement
Watershed
node - [ ] implement
Resize Label Image
node - [ ] add support for Segment Anything labels
- [ ] write unit tests
- [ ] use LAB space in RandomLUT for better perceptual uniformity
- [ ] add random seed option to
RandomLUT