sdxl-based/realvisxl-v3-multi-controlnet-lora

RealVisXl V3 with multi-controlnet, lora loading, img2img, inpainting

Input
Configure the inputs for the AI model.

Input mask for inpaint mode. Black areas will be preserved, white areas will be inpainted.

Random seed. Leave blank to randomize the seed

Input image for img2img or inpaint mode

0
100

Width of output image

0
100

Height of output image

Input prompt

Which refine style to use

scheduler

0
1

LoRA additive scale. Only applicable on trained models.

1
4

Number of images to output

Controlnet

Controlnet

Controlnet

Replicate LoRA weights to use. Leave blank to use the default weights.

0
100

For base_image_refiner, the number of steps to refine, defaults to num_inference_steps

1
50

Scale for classifier-free guidance

Applies a watermark to enable determining if an image is generated in downstream applications. If you have other provisions for generating or deploying images safely, you can use this to disable watermarking.

Negative Prompt

Prompt strength when using img2img / inpaint. 1.0 corresponds to full destruction of information in image

Decide how to resize images – use width/height, resize based on input image or control image

0
1

When controlnet conditioning ends

0
1

When controlnet conditioning ends

0
1

When controlnet conditioning ends

Input image for first controlnet

0
1

When controlnet conditioning starts

Input image for second controlnet

0
1

When controlnet conditioning starts

Input image for third controlnet

0
1

When controlnet conditioning starts

1
500

Number of denoising steps

Disable safety checker for generated images. This feature is only available through the API.

0
4

How strong the controlnet conditioning is

0
4

How strong the controlnet conditioning is

0
4

How strong the controlnet conditioning is

Output
The generated output will appear here.

No output yet

Click "Generate" to create an output.

realvisxl-v3-multi-controlnet-lora - ikalos.ai