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    facialized: a new LoRA for facials on women

    LoRA to generate photo-realistic images of women with cum on their face.

    Include in your prompt <lora:facialized:1>, cum, facial.You might want to include in your negative prompt cum on breasts, cum on body.

    The model works best with low steps and CFG, I get good results with 10 steps and a CFG of 3 or 4.

    I am open to advice/help to improve this LoRA. If you are willing to help, you can send me a mail at the mail address at the end of this description.

    Training methodology below.

    Know issues with the model

    As rightly noted by some comments, the model is still imperfect. Here is a list of a few issues I found, along with ways to circumvent them when possible.
    I will share tags present in the training dataset that might help you circumvent some of these issues in the format the tag in question [number of images out of 2676 that were associated with this tag]. For example smiling at camera [486] means that 486 images in the dataset (composed of 2676 images in total) had the tag smiling at camera.

    Cum on the body / torso

    Most of the generated images depict women with cum on their body / torso / breasts. It is currently hard to remove it and ensure that cum only appears on the face.

    Here are some tags present in the training dataset that might help you with this issue:

    • cum on breasts [195]

    • cum on body [472]

    • cum on clothes [10]

    Bad eyes

    The model might generate faces with non-symmetrical eyes or ill-formed eyes. You can try to alleviate this by using tags such as:

    • symmetric eyes

    • same color eyes

    • bad eyes (negative prompt)

    • strange eyes (negative prompt)

    These tags do not appear in the training data but help the underlying stable diffusion checkpoint generating correct faces.

    Training methodology explained

    Disclaimer: this is my first time making a LoRA and I am more than open to advice to improve it! I am detailing my methodology below, if you have any idea on how to improve it please feel free to comment.

    Dataset

    The full dataset is composed of 2676 images, hand-picked from one source. Their quality varies greatly, but nearly all of them show a unique women with cum on her face. Some outliers show 2 women (~10 images).

    The image sizes are very disparate, I am reproducing here a count of the number of images for each resolution that has 10 or more images (there are 1454 different resolutions in the whole dataset).

        154 3024x4032
         98 1536x2048
         96 2316x3088
         51 960x1280
         46 750x1000
         36 768x1024
         27 853x1280
         25 510x680
         25 1920x1080
         22 1080x1920
         20 1000x1333
         19 1280x960
         17 1024x768
         14 1280x1707
         14 1000x750
         13 854x1280
         13 2268x4032
         13 1200x1600
         12 2448x3264
         11 1280x1920
         11 1067x1600
         11 1024x1365
         10 600x800
         10 2000x2666

    Filtering and tagging

    I used https://colab.research.google.com/github/hollowstrawberry/kohya-colab/blob/main/Dataset_Maker.ipynb to filter the dataset. Duplicates have been found with FiftyOne AI and a similarity threshold of 0.985.

    Image tagging has been performed locally in stable-diffusion-ui stable-diffusion-webui-wd14-tagger extension. Duplicate tags are removed, I used the wd14-vit-v2-git interrogator with a threshold of 0.35. I also added the additional tags "facial", "cum", "1girl", "1women", "face", "sperm".

    Below is a list of all the tags appearing on more than 20 images in the dataset. Note that these tags are mostly obtained from an auto-tagging procedure (as described above).

                        1girl  2676
                       1women  2676
                          cum  2676
                         face  2676
                       facial  2676
                        sperm  2676
                    realistic  2631
                         lips  2192
                         solo  2160
            looking at viewer  1459
                      breasts  1262
                    long hair  1085
                   brown hair  1031
                         nude  1011
                   black hair   997
                        smile   946
                      nipples   885
                      jewelry   883
                  closed eyes   804
                  blonde hair   718
                   brown eyes   706
                   open mouth   663
                     freckles   592
                         1boy   554
                        teeth   539
                       hetero   513
                   solo focus   496
               medium breasts   496
                       tongue   494
                     earrings   486
                        penis   479
                  cum on body   472
                     necklace   449
                   upper body   334
                   tongue out   328
                   uncensored   328
                small breasts   325
                         nose   298
                      indoors   290
                large breasts   279
                    blue eyes   262
                         grin   255
                         mole   253
                       blurry   253
                   short hair   246
                  cum on hair   242
                     piercing   234
                 cum in mouth   228
                   from above   227
                     cleavage   224
                 closed mouth   212
                       tattoo   209
                       makeup   201
               cum on breasts   195
                     forehead   185
                    underwear   177
                        shirt   171
                     portrait   171
                      sitting   165
                     erection   163
                      glasses   141
                        navel   138
                   looking up   136
                   black eyes   127
                        lying   126
                  parted lips   124
                          bra   119
                          pov   119
                         oral   118
                     fellatio   111
                     kneeling   110
                          bed   106
                   male focus   103
            blurry background    96
                multiple boys    95
               mole on breast    89
                      handjob    86
                      on back    84
                      topless    84
                         ring    83
                      bukkake    82
                  nail polish    81
                   green eyes    78
                   pubic hair    75
                       choker    73
               one eye closed    73
                       collar    73
              nipple piercing    73
             photo background    68
                        2boys    67
                    eyelashes    64
                hoop earrings    63
              male pubic hair    62
                    dark skin    59
                cum on tongue    57
             multiple penises    56
                   downblouse    56
                     close-up    55
                   thighhighs    55
                         what    55
                    twintails    53
                      panties    52
                     outdoors    52
                    testicles    52
            multicolored hair    52
                     censored    52
                   flat chest    49
                     red hair    48
                     barefoot    48
                       pillow    48
                     tank top    47
                     bracelet    46
                    group sex    44
                       selfie    44
                          wet    43
               bare shoulders    43
                        tears    43
                 clothes lift    42
                   collarbone    41
                    watermark    41
              completely nude    41
                         bdsm    39
                     lingerie    38
             half-closed eyes    37
                        bangs    37
                   shirt lift    36
                        bound    34
                        braid    34
                hair ornament    33
                  black shirt    32
                        veins    32
                      cosplay    31
               depth of field    31
                     swimsuit    31
                  white shirt    31
                        pants    30
              oral invitation    30
                        denim    29
                      bondage    29
                       saliva    28
                     fishnets    28
                        leash    28
                    black bra    27
                     ponytail    27
              tongue piercing    27
                          tan    27
          dark-skinned female    27
                    head tilt    27
                 open clothes    27
                       window    27
                 ear piercing    27
               multiple girls    26
                     lipstick    26
                breasts apart    26
                  artist name    26
                 body writing    26
               after fellatio    25
                     tanlines    25
                        couch    25
                        skirt    25
            simple background    24
                   curly hair    24
                    eyeshadow    24
                nose piercing    24
                       bikini    24
                  ejaculation    24
                        heart    23
                     bathroom    23
                     sleeping    23
                  breasts out    22
                    grey eyes    22
                        plant    22
                  twin braids    22
               navel piercing    22
         black-framed eyewear    21
                      sweater    21
                       2girls    21
                        watch    21

    Training

    I used https://colab.research.google.com/github/hollowstrawberry/kohya-colab/blob/main/Lora_Trainer.ipynb to train the LoRA. The training model was sd-v1-5-pruned-noema-fp16.safetensors. Tags are automatically shuffled and there is no activation tags (activation_tags set to 0).

    Due to the size of the dataset, each image is only repeated once (i.e., no repetition). I used 5 epochs, with a batch size of 2. The UNet learning rate was set to 5e-4. The LoRA network dimension was set to 32, and the network alpha to 16.

    Further notes on other tentatives

    I tried to manually filter images to only include "nice" images:

    • high enough resolution and quality

    • no cum on body

    • "pretty" women (according to my taste)

    I filtered down the dataset to 1170 images, re-trained a LoRA, but the resulting model is clearly under-performing. I even have hard times trying make cum appear on the generated images with this model.

    I tried different LoRA network dimension and alpha dimension ((16, 8), (32, 16) and (64, 32)), but the best performing one seems to be the (32, 16).

    Contact for collaboration

    If you want to help me generate a v0.2 or even v1 of this model, please contact me at the address below by presenting what you think you can bring to the project.

    For the address, everything enclosed in square braces should be replaced, spaces should be removed.

    [my pseudo here in civitai] [dot] dev [at] protonmail.com

    Description

    Initial version, I'm new to LoRA and I am open to suggestions to improve the model.