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tags:
  - text-to-image
  - stable-diffusion

Control-LoRA Model Card

Introduction

By adding low-rank parameter efficient fine tuning to ControlNet, we introduce Control-LoRAs. This approach offers a more efficient and compact method to bring model control to a wider variety of consumer GPUs.

For each model below, you'll find:

  • Rank 256 files (reducing the original 4.7GB ControlNet models down to ~738MB Control-LoRA models) and experimental
  • Rank 128 files (reducing to model down to ~377MB)

Each Control-LoRA has been trained on a diverse range of image concepts and aspect ratios.

MiDaS and ClipDrop Depth

canny

Depth estimation is an image processing technique that determines the distance of objects in a scene, providing a depth map that highlights variations in proximity.

The Control-LoRA utilizes a grayscale depth map for guided generation.

In the example above, we compare the depth results of MiDaS dpt_beit_large_512 and the Portrait Depth Estimation (available in the ClipDrop API by Stability AI).

Canny Edge

canny Canny Edge Detection is an image processing technique that identifies abrupt changes in intensity to highlight edges in an image.

This Control-LoRA uses the edges from an image to generate the final image.

Photograph and Sketch Colorizer

photograph colorizer These two Control-LoRAs can be used to colorize images.

Recolor is designed to colorize black and white photographs.

Sketch is designed to color in drawings input as a white-on-black image (either hand-drawn, or created with a pidi edge model).

Revision

revision Revision is a novel approach of using images to prompt SDXL.

It uses pooled CLIP embeddings to produce images conceptually similar to the input. It can be used either in addition, or to replace text prompts.

Revision also includes a blending function for combining multiple image or text concepts, as either positive or negative prompts.