models/Anti-blur Flux Lora - v1.0

Anti-blur Flux Lora - v1.0

|
7/14/2025
|
5:19:15 AM
| Discussion

Recommended Negative Prompts

blur, dof

Recommended Parameters

samplers

Euler a, Euler

steps

30

cfg

1

resolution

1128x976

other models

AntiBlur (c0a3b5cf7376), [flux1]-dev (5be71bf8f4)

Recommended Hires (High-Resolution) Parameters

upscaler

4x-UltraSharp, Latent

upscale

1.65

denoising strength

0.55 - 0.61

Tips

Adjust the Lora's weight to control DoF: 0 for shallow DoF typical of Flux, 1.0 for balanced DoF with pleasant bokeh, above 1.0 for deep DoF effects up to 3.0+.

Use AntiBlur Lora in combination with hires.fix to improve image details and minimize shallow DoF artifacts.

No trigger words are needed; simply connect the Lora for it to work.

The model was trained on a large dataset including focus stacking and deep DoF images, ensuring stylistic neutrality and reduced artifacts.

Version Highlights

AntiBlur Lora has been significantly improved!

Improvements in new Lora:

  • DoF can be adjusted by Lora's weight.

So a weight of 0 will give a shallow DoF, typical for Flux generations.

A default weight of 1.0 will reduce DoF to a (hopefully) more pleasing image, without significant changes in style and composition. The goal was to get DoF at a weight 1 to be exactly how you'd expect it to be: minor good bokeh here and there, without overkills inherent to Flux (more on that later)

A weight of over 1.0 can be used to make shots with deep DoF. Lora can handle weights up to 3.0 and beyond without significant degradation in quality

  • Stylistically neutral

The dataset was made from hundreds of images created with Flux, so as not to take the style too far from the original model, while small number of real photos were used to keep Flux from degrading in composition (which is what happens when you train AI on it's own pictures)

  • No more Trigger words

Just connect the Lora and it'll do the job

  • Pairs well with Hires. fix

This Lora works well with hiresfix, allowing you to further increase the details and minimize shallow DoF. This was not the case with basic Flux, because by trying to hires. fix a

blurred image with shallow DoF, it'd stil remain blurred with the same DoF effect. You just need the details to start appearing in the image, for hires.fix to improve them further.

  • Much less artifacts

Using Flux-generated images minimizes artifacts. I also trained a lot of models, and made a merge of the best, using tool by anashel (This smoothed out the edges of individual models that led to artifacts. Merging turned out to be especially useful for making model stylistically diverse.)

Why does Lora weight 655mb?

It seemed to me that Lora with basically a deep DoF effect should be small, as it doesn't introduce a new style or concept, it just has to remove shallow DoF.

So I tried different Lora ranks, but as it turned out, information about the backgrounds is everywhere, and the larger the model, the better it gives the result. That's how I settled on the 128th-ranked Lora.

It's possible to isolate Lora's layers, and only use layers with DoF information in them, but as it turned out, information about DoF is scattered throughout the layers. For example, when generating macro shots, DoF is generated from the first layers. Information about backgrounds is really everywhere in the model, and constant shallow DoF is just the way training data looked for Flux. To make matters worse, Flux has a really poor understanding of DoF and blur. So not only it is present in much bigger amount than SD1.5/SDXL, it also provides much worse control over it.

How was this Lora made?

First, I put together a huge dataset with focus stacking techniques and deep DoF, on this I trained a new Lora. Next, using this Lora, I created images for a new dataset.

I've got several hundred variants of the "antiblur" Lora, selected the best ones each with their advantages, and combined them into a one well-balanced model.

What's next?

Since the higher the rank, the better the quality, the obvious way to improve the result would be to train a full finetune (and effectively touch every corner of the latent space, where there is information related to backgrounds), and then extract the Lora.

Another theoretical option is to find the "blur" or "dof" concept/weights in Flux latent space, and make a Lora out of inverted weights. This method wasn't very effective for dof control in SD-based models though.

As of now though I'm happy with the result. The model will remain my best effort for a while

AntiBlur Lora has been significantly improved!

Improvements in new Lora:

  • DoF can be adjusted by Lora's weight.

So a weight of 0 will give a shallow DoF, typical for Flux generations.

A default weight of 1.0 will reduce DoF to a (hopefully) more pleasant image, without significant changes in style and composition. The goal was to get DoF at weight 1.0 to be exactly how you'd expect it to be: minor good bokeh here and there, without overdoing it as is often the case with Flux (more on that later)

A weight of over 1.0 can be used to make shots with deep DoF. Lora can handle weights up to 3.0 and beyond without significant degradation in quality.

  • Stylistically neutral

The dataset was made from hundreds of images created with Flux, so as not to take the style too far from the original model, while small number of real photos were used to keep Flux from degrading in composition (which is what happens when you train AI on it's own pictures)

  • Pairs well with Hires. fix

This Lora works well with hiresfix, allowing you to further increase the details and minimize shallow DoF. This was not the case with basic Flux, because by trying to do hires. fix to a blurred image with shallow DoF, it'd stil remain blurred with the same DoF effect. You just need the details to start appearing in the image, for hires.fix to improve them further.

  • No more Trigger words

Just connect the Lora and it'll do the job

  • Much less artifacts

Using Flux-generated images minimizes artifacts. I also trained a lot of models, and made a merge of the best of them, using tool provided by anashel (This smoothed out the edges of individual models that led to artifacts. Also, merging turned out to be especially useful for making the model more stylistically diverse.)

Why does Lora weight 655mb

It seemed to me that Lora with basically a "deep DoF" effect should be small, as it doesn't introduce a new style or concept, it just has to remove shallow DoF.

So I tried different Lora ranks, but as it turned out, information about the backgrounds is everywhere in the latent space, and the larger the model, the better results it gives. That's how I settled on the 128-rank Lora.

It's possible to isolate Lora's layers, and only use layers with DoF information in them, but as it turned out, information about DoF is scattered throughout most of the layers. For example, when generating macro shots, DoF is generated from the first layers. Information that appears in the backgrounds is really everywhere in the model, and constant shallow DoF is just the way training data was like for Flux. To make matters worse, Flux has a really poor understanding of DoF and blur conceptually. So not only it is present in much bigger amount than SD1.5/SDXL, it also provides much worse control over it than SD1.5/SDXL.

How was this Lora made

First, I put together a huge dataset with focus stacking techniques and deep DoF, on this I trained a new Lora. Next, using this Lora, I created images for a new dataset.

I've got several hundred variants of the "antiblur" Lora, selected the best ones each with their advantages, and combined them into a one well-balanced model.

What's next?

Since the higher the rank, the better the quality, the obvious way to improve the result would be to train a full finetune (and effectively touch every corner of the latent space, where there is information related to backgrounds), and then extract the Lora.

Another theoretical option is to find the "blur" or "dof" concept/weights in Flux latent space, and make a Lora out of inverted weights. This method wasn't very effective for dof control in SD-based models though.

As of now though I'm happy with the result. The model will remain my best effort for a while

Contributor

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Model Details

Model type

LORA

Base model

Flux.1 D

Model version

v1.0

Model hash

328f945688

Discussion

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