sd-webui-segment-anything
kohya_ss
sd-webui-segment-anything | kohya_ss | |
---|---|---|
17 | 132 | |
3,268 | 8,630 | |
- | - | |
6.3 | 9.8 | |
about 2 months ago | 13 days ago | |
Python | Python | |
- | Apache License 2.0 |
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sd-webui-segment-anything
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Textual inversion. The best way to prepare photos of a person?
One idea would be to use Segment Anything to cut out the character/face from the background and then replace with random backgrounds that you generate with stable diffusion. Here's an extension for Automatic1111 :) https://github.com/continue-revolution/sd-webui-segment-anything
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How hard is it to "code" a tool based on segment-anything and Stable diffusion ?
Checkout this code https://github.com/continue-revolution/sd-webui-segment-anything
- Can I use Interrogate CLIP or something similar to get image position data?
- Best way to mask images automatically?
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Information is currently available.
Segment anything is the extension that you're looking for.
- What's your favorite small tweaks to make? I'll go first
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Show HN: Image background removal without annoying subscriptions
If anyone is already running auto1111, or simply uninterested in paying, there's an addon that does this very well available here https://github.com/KutsuyaYuki/ABG_extension, additionally I've had very good results using the masks generated by Facebook's SAM, which is also available as an addon here https://github.com/continue-revolution/sd-webui-segment-anyt...
- The main reason why people will keep using open source vs Photoshop and other big-tech generative AIs
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Stable Diffusion + Segment Anything App and Tutorial
There’s an A111 extension already that I think does the same thing (I’ve had it installed for a few weeks now). https://github.com/continue-revolution/sd-webui-segment-anything
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YourVision: Stable Diffusion + Segment Anything
use this and inpainting https://github.com/continue-revolution/sd-webui-segment-anything
kohya_ss
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Some semi-advanced LoRA & kohya_ss questions
Many of the options are explained here https://github.com/bmaltais/kohya_ss/wiki/LoRA-training-parameters
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Lora training with Kohya issue
training in BF16 might solve this issue from what I saw in this ticket. I know other people ran into the issue too https://github.com/bmaltais/kohya_ss/issues/1382
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What is the best way to merge multiple loras in to one model?
for lycoris loras you can use the command-line script from the kohya-ss repo https://github.com/bmaltais/kohya_ss/blob/master/networks/merge_lora.py i have an older version checked out from late july, it had a separate merge_lycoris.py for for this purpose, it's probably unified now in a single file
- Evidence that LoRA extraction in Kohya is broken?
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Merging Lora with Checkpoint Model?
I usually do that with kohya_ss, a tool made for making LoRAs and finetunes. It might be a bit of a pain to set up just to do this one task, but if nobody gives you an easier method, look into it. https://github.com/bmaltais/kohya_ss
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How I got Kohya_SS working on Arch Linux, including an up-to-date pip requirements file
After that, make your staging directory, and do the git clone https://github.com/bmaltais/kohya_ss.git, and navigate inside of it. Now, here's where things can become a pain. I used pyenv to set my system level python to 3.10.6 with pyenv global 3.10.6, though you can probably just use "local" and do it for the current shell. You NEED it to be active however before you set up your venv. If you do python --version and get 3.10.6, you're ready for this next part. Make your venv with python -m venv venv. This is the simplest way, it'll create a virtual environment in your current folder named venv. You'll do a source venv/bin/activate and then do which python to make sure it's using the python from the venv. Now for the fun part. The included setup scripts have been flaky for me, so I just went through the requirements and installed everything by hand. I'm going to do this guide right now for nvidia, because I just got a 4090 for this stuff. If this ends up working well for others and there's demand, I'll try to reproduce this for AMD (But I'll be honest, I got an nvidia card because bitsandbytes doesn't have full rocm support, nor do most libraries, so it's not very reliable). After installing everything and testing it works at least at a basic level for dreambooth training, my finished requirements.txt for pip is as below:
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The best open source LoRA model training tools
Earlier I created a post where I asked for recommendations for LoRA model training tutorials. The first one I looked at used the kohya_ss GUI. That GitHub repo already has two tutorials, which are quite good, so I ended up using those:
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Script does...nothing
I have tried my best to research this issue and have not come up with much. It is obvious that its a backend issue right? The guides that I used https://github.com/bmaltais/kohya_ss and https://github.com/pyenv-win/pyenv-win/
- Using LoRa on SDXL 1.0 (not using the Kohra GUIs)
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How do I reduce the size of my Lora models?
I am training on a 12GB 3060 using kohya_ss. Is there a setting or something I'm missing?
What are some alternatives?
stable-diffusion-webui-wd14-tagger - Labeling extension for Automatic1111's Web UI
sd_dreambooth_extension
stable-diffusion-webui-rembg - Removes backgrounds from pictures. Extension for webui.
EveryDream-trainer - General fine tuning for Stable Diffusion
stable-diffusion-webui-amdgpu - Stable Diffusion web UI
sd-scripts
ddetailer
automatic - SD.Next: Advanced Implementation of Stable Diffusion and other Diffusion-based generative image models
segment-anything - The repository provides code for running inference with the SegmentAnything Model (SAM), links for downloading the trained model checkpoints, and example notebooks that show how to use the model.
kohya_ss_colab - a (successful) attepmt to port kohya_ss to colab
Auto-Photoshop-StableDiffusion-Plugin - A user-friendly plug-in that makes it easy to generate stable diffusion images inside Photoshop using either Automatic or ComfyUI as a backend.
LoRA_Easy_Training_Scripts - A UI made in Pyside6 to make training LoRA/LoCon and other LoRA type models in sd-scripts easy