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Animix - Anime Screenshot-like Style Mix LoRA (アニメスクショ風/动画截图风)

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17k
86
Verified:
SafeTensor
Type
LoRA
Stats
15,083
Reviews
Published
Mar 24, 2023
Base Model
SD 1.5
Hash
AutoV2
D1A7C41F2A

You can also download a full-merged model here (just in case you don't have Anything V4.5 or want to train a LoRA based on this style): https://huggingface.co/OedoSoldier/animix

你可以在这里下载大模型(以防你没有Anything V4.5或者想要以此画风训练LoRA):https://huggingface.co/OedoSoldier/animix

Check the new variant: Ambientmix!

Recommend settings:

Model: Anything V4.5

VAE: Orangemix (the same with NAI)

LoRA Strength: 1

Sampler: DPM++ 2M Karras

Sampling steps: 20

CFG: 7

Negative embedding: EasyNegativebadhandv4

Highres fix is also recommended.

Note: all the LoRA names used in sample images are my local name, you need to change them to your saved LoRA filename!

推荐设置:

基模:Anything V4.5

VAE:Orangemix(同NAI)

LoRA强度:1

采样器:DPM++ 2M Karras

采样步数:20

CFG:7

负面embedding:EasyNegativebadhandv4

推荐使用高清修复。

注意:样图中的LoRA名称是我本地文件名,要改成你保存的文件名!

This model is suitable for reproducing images similar to anime screenshots, and it is recommended to use LoRA block weight expansion when using LoRA and character LoRA together. Setting the block weights of the character LoRA to presetting MIDD will reduce the distortion caused by the influence of the character LoRA on the style.

本模型适合复现类似于动漫截图的图像,建议在此LoRA与角色LoRA一起使用时使用LoRA块权重扩展。将角色LoRA的输出权重设置为MIDD预设将减少角色LoRA影响对风格产生的影响。

This is a LoRA mix of:

  • 2020s Anime Magazine Illustration Style

  • Anime-like 2D (extracted LoRA)

  • Anime Lineart Style

  • Anime Screencap Style

  • Avas Anime Hamster

  • Epi Noise Offset

  • Hipoly 3D Model Lora

  • Makoto Shinkai Substyles

Merged with special tweaks to make full use of the strengths of each LoRA.

本LoRA由以下LoRA混合而成:

  • 2020s Anime Magazine Illustration Style

  • Anime-like 2D (extracted LoRA)

  • Anime Lineart Style

  • Anime Screencap Style

  • Avas Anime Hamster

  • Epi Noise Offset

  • Hipoly 3D Model Lora

  • Makoto Shinkai Substyles

经过特别调教,得以发挥各LoRA的长处。