CivArchive
    Gurren Lagann Eyecatch - v1.0
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    This model aims to reproduce the unique art style seen in the eyecatches from the 2007 anime "Tengen Toppa Gurren Lagann".

    Important!

    For the best results apply the LoRA on checkpoint AnyLora

    Try strengths: between 0.5-0.9

    If you're looking to reproduce some of my examples, don't forget to update the LoRA filename in the prompt. These were from training and I forgot about them.

    For more details see https://github.com/jamesz96/ttgl-eyecatch-LoRA

    Description

    FAQ

    Comments (3)

    jamsz
    Author
    Apr 18, 2023
    CivitAI

    Results are not as good on other anime models and straight up damning on non-anime ones.


    Anyone have any advice on this?

    I tried training on the SD 1.5 checkpoint with the same relatively small training set (28 images) and couldn't get anything matching the aesthetics I was looking for.

    neilarmstron12Apr 19, 2023

    Don't know what you're talking about. I used Based65 and it worked just fine.

    From what little I know about LoRA training, you can do it with 28 images and still be fine if your tagging is good. Maybe to help reinforce the style you're after you should add images that have the look you're after, but not necessarily the pose? I'm not sure if that will negatively effect the "Eye Catch" part of this LoRA though.

    psoftApr 19, 2023

    Try using NAI (anime-full-prunned) as a base model instead of SD1.5. Most anime checkpoints are based on NAI. And probably most anime LoRAs you can find here use NAI or a variant for training.

    LORA
    SD 1.5

    Details

    Downloads
    1,218
    Platform
    CivitAI
    Platform Status
    Available
    Created
    4/18/2023
    Updated
    5/15/2026
    Deleted
    -

    Available On (1 platform)

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