CivArchive
    Asuka and Miki / Viper CTR (Illustrious / Pony) - illustrious
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    Illustrious version on Illustrious-XL. Examples generated with SmoothFT (game style) and NoobAI (promotional art style).

    Pony version trained on Pony Diffusion V6 XL. Examples made with Anime Confetti Comrade Mix.

    Used weight 0.8 in example images.

    Asuka

    trigger: aska, brown hair, black hairband

    dress: white dress, medium dress, yellow cardigan

    serafuku: serafuku, skirt

    hakama: hakama, white shirt, blue skirt

    Miki

    trigger: miki, blue hair

    crop top: crop top, turtleneck, dark blue shirt, short sleeves, cutoffs

    crop top with jacket: turtleneck, dark blue shirt, red jacket, cropped jacket, cutoffs

    Add short hair if needed

    Description

    Training data updated and trained on Illustrious-XL. Images generated with SmoothFT (game style) and NoobAI (promotional art style).

    FAQ

    Comments (6)

    leepeter1231Nov 29, 2024
    CivitAI

    hi tappy, I like your lora very much, may I know how you train more than 1 characters within 1 lora?

    tappy
    Author
    Nov 29, 2024· 1 reaction

    Thank you. Give each character a different trigger tag and have a similar amount of images for each character by themselves. Avoid using the same clothing tags for each character.

    Also include images with both characters in the same picture. This is what can help you generate both characters in the same image. However, the only consistent way to make that work is using extensions like forge couple or regional prompter.

    leepeter1231Nov 29, 2024

    @tappy thank you for your information, I dont know if you first created the tags using https://github.com/toriato/stable-diffusion-webui-wd14-tagger and then the trigger word should be entered in "Additional tags (comma split)" ? https://imgur.com/a/JSoDQdq I am not sure if I understand correctly

    tappy
    Author
    Nov 30, 2024

    @leepeter1231 what i mean is the txt file for each image should have the character's name in the txt file.

    For example, images with Asuka have the aska tag. The images with Miki have the miki tag. These tags are the first tags that appear in the txt file. I also choose to keep 1 token when training using Kohya or civitai.

    For images with both characters then both aska and miki tags are included.

    I am not familiar with wd14-tagger so I am not sure what "additional tags (comma split)" does.

    leepeter1231Nov 30, 2024

    @tappy oh, so for images with both 2 characters, you have aska and miki tags, but will the AI identify which one is actually aska and which one is miki? or will it mix up?

    tappy
    Author
    Nov 30, 2024· 1 reaction

    @leepeter1231 yes. if you have enough images with only one character you will be able to generate images with only asuka or only miki.

    if you try to generate them together in the same image it may work sometimes but also sometimes mix them up. if it mixes them up use the forge couple (for forge-ui) or regional prompter (for automatic1111) extension to help the model generate them separately.

    LORA
    Illustrious

    Details

    Downloads
    959
    Platform
    CivitAI
    Platform Status
    Available
    Created
    10/14/2024
    Updated
    6/12/2026
    Deleted
    -
    Trigger Words:
    aska, brown hair, long hair, serafuku, green neckwear, short sleeves, pleated skirt, black skirt
    aska, brown hair, long hair, hakama, white shirt, black skirt, long skirt
    aska, brown hair, long hair, hairband, cardigan, yellow cardigan, dress, short dress, grey dress
    miki, short hair, blue hair, blue shirt, turtleneck, crop top, short sleeves, cutoffs
    miki, short hair, blue hair, blue shirt, turtleneck, crop top, short sleeves, red jacket, cropped jacket, cutoffs

    Files

    viper-ctr-illustrious-000028.safetensors

    Available On (1 platform)

    Same model published on other platforms. May have additional downloads or version variants.