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Control
Native control module for SD.Next for Diffusers backend
Can be used for Control generation as well as Image and Text workflows
For a guide on the options and settings, as well as explanations for the controls themselves, see the Control Guide page.
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lllyasviel ControlNet for SD 1.5 and SD-XL models
Includes ControlNets as well as Reference-only mode and any compatible 3rd party models
Original ControlNets for SD15 are 1.4GB each and for SDXL its at massive 4.9GB -
VisLearn ControlNet XS for SD-XL models
Lightweight ControlNet models for SDXL at 165MB only with near-identical results -
TencentARC T2I-Adapter for SD 1.5 and SD-XL models
T2I-Adapters provide similar functionality at much lower resource cost at only 300MB each -
Kohya Control LLite for SD-XL models
LLLite models for SDXL at 46MB only provide lightweight image control -
TenecentAILab IP-Adapter for SD 1.5 and SD-XL models
IP-Adapters provides great style transfer functionality at much lower resource cost at below 100MB for SD15 and 700MB for SDXL
IP-Adapters can be combined with ControlNet for more stable results, especially when doing batch/video processing -
CiaraRowles TemporalNet for SD 1.5 models
ControlNet model designed to enhance temporal consistency and reduce flickering for batch/video processing
All built-in models are downloaded upon first use and stored stored in:
/models/controlnet
, /models/adapter
, /models/xs
, /models/lite
, /models/processor
Listed below are all models that are supported out-of-the-box:
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SD15:
Canny, Depth, IP2P, LineArt, LineArt Anime, MLDS, NormalBae, OpenPose,
Scribble, Segment, Shuffle, SoftEdge, TemporalNet, HED, Tile -
SDXL:
Canny Small XL, Canny Mid XL, Canny XL, Depth Zoe XL, Depth Mid XL
Note: only models compatible with currently loaded base model are listed
Additional ControlNet models in safetensors can be downloaded manually and placed into corresponding folder: /models/control/controlnet
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SDXL:
Canny, Depth
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SDXL:
Canny, Canny anime, Depth anime, Blur anime, Pose anime, Replicate anime
Note: control-lllite is implemented using unofficial implementation and its considered experimental
Additional ControlNet models in safetensors can be downloaded manually and placed into corresponding folder: /models/control/lite
'Segment': 'TencentARC/t2iadapter_seg_sd14v1',
'Zoe Depth': 'TencentARC/t2iadapter_zoedepth_sd15v1',
'OpenPose': 'TencentARC/t2iadapter_openpose_sd14v1',
'KeyPose': 'TencentARC/t2iadapter_keypose_sd14v1',
'Color': 'TencentARC/t2iadapter_color_sd14v1',
'Depth v1': 'TencentARC/t2iadapter_depth_sd14v1',
'Depth v2': 'TencentARC/t2iadapter_depth_sd15v2',
'Canny v1': 'TencentARC/t2iadapter_canny_sd14v1',
'Canny v2': 'TencentARC/t2iadapter_canny_sd15v2',
'Sketch v1': 'TencentARC/t2iadapter_sketch_sd14v1',
'Sketch v2': 'TencentARC/t2iadapter_sketch_sd15v2',
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SD15:
Segment, Zoe Depth, OpenPose, KeyPose, Color, Depth v1, Depth v2, Canny v1, Canny v2, Sketch v1, Sketch v2 -
SDXL:
Canny XL, Depth Zoe XL, Depth Midas XL, LineArt XL, OpenPose XL, Sketch XL
Note: Only models compatible with currently loaded base model are listed
- Pose style: OpenPose, DWPose, MediaPipe Face
- Outline style: Canny, Edge, LineArt Realistic, LineArt Anime, HED, PidiNet
- Depth style: Midas Depth Hybrid, Zoe Depth, Leres Depth, Normal Bae
- Segmentation style: SegmentAnything
- Other: MLSD, Shuffle
Note: Processor sizes can vary from none for built-in ones to anywhere between 200MB up to 4.2GB for ZoeDepth-Large
There are 8 Auto-segmentation models available:
- Facebook SAM ViT Base (357MB)
- Facebook SAM ViT Large (1.16GB)
- Facebook SAM ViT Huge (2.56GB)
- SlimSAM Uniform (106MB)
- SlimSAM Uniform Tiny (37MB)
- Rembg Silueta
- Rembg U2Net
- Rembg ISNet
Reference mode is its own pipeline, so it cannot have multiple units or processors
- Image -> Image
- Batch: list of images -> Gallery and/or Video
- Folder: folder with images -> Gallery and/or Video
- Video -> Gallery and/or Video
Notes:
- Input/Output/Preview panels can be minimized by clicking on them
- For video output, make sure to set video options
- Unit is: input plus process plus control
- Pipeline consists of any number of configured units
If unit is using using control modules, all control modules inside pipeline must be of same type
e.g. ControlNet, ControlNet-XS, T2I-Adapter or Reference - Each unit can use primary input or its own override input
- Each unit can have no processor in which case it will run control on input directly
Use when you're using predefined input templates - Unit can have no control in which case it will run processor only
- Any combination of input, processor and control is possible
For example, two enabled units with process only will produce compound processed image but without control
- If no input is provided then pipeline will run in txt2img mode
Can be freely used instead of standardtxt2img
- If none of units have control or adapter, pipeline will run in img2img mode using input image
Can be freely used instead of standardimg2img
- If you have processor enabled, but no controlnet or adapter loaded,
pipeline will run in img2img mode using processed input - If you have multiple processors enabled, but no controlnet or adapter loaded,
pipeline will run in img2img mode on blended processed image - Output resolution is by default set to input resolution,
Use resize settings to force any resolution - Resize operation can run before (on input image) or after processing (on output image)
- Using video input will run pipeline on each frame unless skip frames is set
Video output is standard list of images (gallery) and can be optionally encoded into a video file
Video file can be interpolated using RIFE for smoother playback
- Control can be based on main input or each individual unit can have its own override input
- By default, control runs in default control+txt2img mode
- If init image is provided, it runs in control+img2img mode
Init image can be same as control image or separate - IP adapter can be applied to any workflow
- IP adapter can use same input as control input or separate
- Inpaint workflow is triggered when input image is provided in inpaint mode
- Inpaint mode can be used with image-to-image or controlnet workflows
- Other unit types such as T2I, XS or Lite do not support inpaint mode
- Outpaint workflow is triggered when input image is provided in outpaint mode
- Outpaint mode can be used with image-to-image or controlnet workflows
- Other unit types such as T2I, XS or Lite do not support outpaint mode
- Recommendation is to increase denoising strength to at least 0.8 since outpained area is blank and needs to be filled with noise
- Outpaint folloing input image can be controled by overlap setting - higher overlap and more of original image will be part of the outpaint process
To enable extra logging for troubleshooting purposes,
set environment variables before running SD.Next
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Linux:
export SD_CONTROL_DEBUG=true
export SD_PROCESS_DEBUG=true
./webui.sh --debug -
Windows:
set SD_CONTROL_DEBUG=true
set SD_PROCESS_DEBUG=true
webui.bat --debug
Note: Starting with debug info enabled also enables Test mode in Control module
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Using model offload can cause Control models to be on the wrong device at the time of the execution
Example error message:Input type (torch.FloatTensor) and weight type (torch.cuda.FloatTensor) should be the same
Workaround: Disable model offload in settings -> diffusers and use move model option instead
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Issues after trying to use DWPose and installation fails: `` error.
Example error message:Control processor DWPose: DLL load failed while importing _ext
Workaround: Activate venv and run following commands to install dwpose dependencies manually:
pip install --upgrade --no-deps --force-reinstall openmim==0.3.9 mmengine==0.10.4 mmcv==2.1.0 mmpose==1.3.1 mmdet==3.3.0
- Pose editor
- Process multiple images in batch in parallel
- ControlLora https://huggingface.co/stabilityai/control-lora
- Multi-frame rendering https://xanthius.itch.io/multi-frame-rendering-for-stablediffusion
- Deflickering and deghosting