Amateur Selfies v2
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Amateur Selfies v2
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Amateur Selfies v2

https://civitai.com/models/1969289?modelVersionId=2279752


Amateur Selfies is a LoRA trained on ~1000 casual self-portrait photos, designed to capture the look, feel, and imperfections of real-world selfies. It emphasizes natural framing, handheld angles, everyday environments, and the aesthetics of self shot phone photographs.

Recommended settings after more experimentation

  • LoRA strength: 0.9 - 1.0. I accidentally generated the 'redux' showcase images with 0.9 and they're fine.

  • FP8 or BF16 UNET. GGUF quants cause checkboard artifacts, do not recommend! FP8 can actually 'enhance' the amateur look

  • 50 steps

  • CFG 3.0

  • euler/beta

  • <= 2.0 MP

Workflow is included in the sample images.

I have identified a couple of issues with training captions and masks:

  • captions were natural language formatted in paragraphs. The newline paragraph separators however are interpreted by SimpleTuner as delimiter for individual captions.

  • masks weren't applied due to a derp in the dataset config

I'm working on training v2.0 now using the same image set, but with new captions and fixed masks (face removal). Also appending some quality captions which should improve the sharpness of outputs when not prompting specifically for poor quality / compression artifacts.

此模型源自站外搬运(搬运地址: https://civitai.com/models/1969289?modelVersionId=2279752 ),若原作者对于本次搬运的结果存在异议,可点
申诉
我们会在 24 小时内,按照原作者的要求,对本模型展开编辑、删除或是转移给原作者等相关处理。由衷欢迎原作者入驻本站,共建 AI绘图的学习交流社区。

user_h4r8bfxd

user_h4r8bfxd

画风加强

模型信息

已冻结
原创作者:
psychologicau
模型类型:
LoRA
基础模型:
Qwen-image
文件名称:
models/loras/AmateurSelfie_v2.safetensors
MD5:
b7b01ed5eb00d4165de4ad833bfdbb4c

https://civitai.com/models/1969289?modelVersionId=2279752


Amateur Selfies is a LoRA trained on ~1000 casual self-portrait photos, designed to capture the look, feel, and imperfections of real-world selfies. It emphasizes natural framing, handheld angles, everyday environments, and the aesthetics of self shot phone photographs.

Recommended settings after more experimentation

  • LoRA strength: 0.9 - 1.0. I accidentally generated the 'redux' showcase images with 0.9 and they're fine.

  • FP8 or BF16 UNET. GGUF quants cause checkboard artifacts, do not recommend! FP8 can actually 'enhance' the amateur look

  • 50 steps

  • CFG 3.0

  • euler/beta

  • <= 2.0 MP

Workflow is included in the sample images.

I have identified a couple of issues with training captions and masks:

  • captions were natural language formatted in paragraphs. The newline paragraph separators however are interpreted by SimpleTuner as delimiter for individual captions.

  • masks weren't applied due to a derp in the dataset config

I'm working on training v2.0 now using the same image set, but with new captions and fixed masks (face removal). Also appending some quality captions which should improve the sharpness of outputs when not prompting specifically for poor quality / compression artifacts.

此模型源自站外搬运(搬运地址: https://civitai.com/models/1969289?modelVersionId=2279752 ),若原作者对于本次搬运的结果存在异议,可点
申诉
我们会在 24 小时内,按照原作者的要求,对本模型展开编辑、删除或是转移给原作者等相关处理。由衷欢迎原作者入驻本站,共建 AI绘图的学习交流社区。