Disclaimer: Any resemblance with any person living or dead is pure coincidence.
Notice for Civitai generation service users: When using Civitai generation service with embeddings, you still have to manually copy and paste trigger word in your prompt (or in negative for negative embeddings). Otherwise your generated images won't be affected by embedding model. On how to best position character embedding within the prompt, please refer to Usage tips i have provided in description of the model down below. Also, model trained for SD 1.5 and not compatible with SDXL checkpoints.
I have converted .pt into .safetensors for your convinience. Usage is same as with .pt. Both file types available for download.
UPD:
added Variant 3 (Jaka).
added Variant 2 (Sofi).
Variant 1 (Maja):
Face. High consistency, will vary according to SD model associations, you can freely change hair color, hairstyle, and so on; some features may require additional (emphasis) to be changed.
Body shape and height. High consistency.
Breast size and shape. High consistency.
Spirit of sexiness. This TI has been trained on nudity. If you want to produce SFW images use clothes in your prompt or "nude" tag in negative. Unlike my first model (vol.1) this time it's not overtrained, usually it's not necessary to apply high weights for clothes.
Vectors per token: 7. This means that embedding will keep most of the character appearance approximately within first 50 tokens of your prompt. This also means that embedding have moderate token count and may interfere with your prompt, if it have complex scene that not registered within embedding (to deal with it - see usage tips).
Variant 2 (Sofi):
Face. High consistency, will vary according to SD model associations, you can freely change hair color, hairstyle, and so on; some features may require additional (emphasis) to be changed.
Body shape and height. High consistency.
Breast size and shape. Moderate consistency.
Spirit of sexiness. This TI has been trained on nudity. If you want to produce SFW images use clothes in your prompt or "nude" tag in negative. Usually it's not necessary to apply high weights for clothes.
Vectors per token: 6. This means that embedding will keep most of the character appearance approximately within first 30 tokens of your prompt. This also means that embedding have moderate token count and may interfere with your prompt, if it have complex scene that not registered within embedding (to deal with it - see usage tips).
Variant 3 (Jaka):
Face. High consistency, will vary according to SD model associations, you can freely change hair color, hairstyle, and so on; some features may require additional (emphasis) to be changed.
Body shape and height. High consistency.
Breast size and shape. High consistency.
Spirit of sexiness. This TI has been trained on nudity. If you want to produce SFW images use clothes in your prompt or "nude" tag in negative. Usually it's not necessary to apply high weights for clothes.
Vectors per token: 6. This means that embedding will keep most of the character appearance approximately within first 30 tokens of your prompt. This also means that embedding have moderate token count and may interfere with your prompt, if it have complex scene that not registered within embedding (to deal with it - see usage tips).
All features of all versions will vary depending on the SD model you use.
Usage tips:
Basically vectors per token parameter of character embeddings determine how much info can be learned about subject from training dataset you provide (higher = more info; it is mostly depth maps and some characters cannot be learned without sufficient vector count). Downside of high values for vectors per token is loose of flexibility within prompt (embedding will resist injection of anything that wasn't learned during training). Fortunately there is 2 methods to gain flexibility, and if you feel that embedding not allow you to get results you wanted use one of those:
Method 1. Positioning or weight adjastment (works with Civitai generation service).
You can either move embedding farther from beginning of the prompt (e.g.: RAW photo of woman, your lengthy prompt, embedding_name, your prompt again), or lower weight of embedding (e.g.: (embedding_name:0.8)). Both variants works identicaly - flexibility raising while likeness decreases. Raising weight of character embeddings will not improve likeness, but may add some details or introduce you some artifacts.
For Civitai generation service users:
Service currently is very raw. You have no choice but to position embeddings somewhere close to the beginning of the prompt (e.g.: RAW photo of woman, embedding_name). Note that moving embedding too far away from the beginning will completely "turn it off". How far depends solely on Vectors per token parameter with which it was trained (see above). Since service don't have even simple token counter you have to experimentally look for a good spot.
Method 2. BREAK word (doesn't work with Civitai generation service).
You can type all you want in your prompt, and then at the end add word BREAK (must be uppercase) after which add character embedding (e.g.: RAW photo of woman, your lengthy prompt BREAK embedding_name). This way you will get flexibility according to actual position of embedding in the prompt (farther from the beginning = better) while all likeness will remain intact. Most example images has been made using this method.
If you like my work, please consider to throw some stars at me. Also i would appreciate any feedback on the model and posts of your work with my embedding.
Description
ca45mv7-100. Read description for Variant 1 (Maja)
FAQ
Comments (6)
Hi, I tested it out, seems like you have been trying to train it with a model who goes by name "Carisha", am I right?
If I'm correct then the problem is not with the embedding but how it's being activated apparently. The woman that came out after just loading the embedding on my part was the slight variation of the default woman, but on activating the embedding it turned into carisha, after that it would ignore my requests to turn the hair black for example
Hey! Thanks for reply. Yep, this embedding has been trained on her photos. I'm curious have you even found out? On models i have tested she isn't recognizable.
Embeddings should be not only placed into your embeddings folder of A1111, but also name of a file should be manualy inserted in your prompt (check for examples showcase images). Thats how all embeddings being activated.
If you can't change hair color (or any other feature), then you have to either raise SD attention to select feature like that: (hair color:1.3), (hairstyle:1.3), - or read and follow usage tips i have provided in description of the model.
Hope this helps.
@Kinkau actually what I was trying to say is that the face that you think it generates is the default pureevolution v5 face and not an outcome of the embedding/lora, Carisha is in there waiting to get activated :P
the hack to activate this embedding on sd would be to place it in the loras folder and call it from there, I haven't tested it on sd-ui, I used nmkd to run this model
I think it was overtrained on some points and undertrained on others, so the face was very much distorted, but I could recognize her, Please share it with me when you get it working.
@aureagle from your explanation I think I understand where the problem is. I don't have experience with NMKD GUI, but after brief examination of NMKD guide i came to conclusion that issue, most likely, either related to GUI or to activation metod you use.
I can only guess why you wanted to use embedding from LoRAs folder, when in NMKD GUI (as in A1111 GUI) implemented separation of embeddings and LoRAs. Embedding supposed to be called for activation from embeddings folder, not from LoRAs folder, thats how GUI recognize whats what. I believe that either the embedding is not activated at all when you call it from a LoRAs folder (then you see "default model faces"), or NMKD GUI somehow recognize embedding as LoRA and trying to activate it as such (then you encounter artifacts that you mentioned).
If in NMKD GUI actually possible to call embeddings for activation from LoRAs folder (impossible in A1111), then maybe LoRAs file format (.safetensors) played a cruel joke on us. I will upload .pt version so you can try if it will activates by your method.
@Kinkau just wanted to say, I always appreciate posters who engage with the community, it's really not all that common unfortunately.
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