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Guide: 1to2: Training Multiple-Subject Models using only Single-Subject Data (Experimental)

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Updated: Oct 5, 2024
guide
Verified:
SafeTensor
Type
LoRA
Stats
593
Reviews
Published
Apr 4, 2023
Base Model
SD 1.5
Hash
AutoV2
10F79BDC6F
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gustproof's Avatar
gustproof

Updates will be mirrored on both Hugging Face and Civitai.

Introduction

It has been shown that multiple characters can be trained into the same model. A harder task is to create a model that can generate multiple characters simultaneously without modifying the generation pipeline. This document describes a simple technique that has been shown to help generating multiple characters in the same image.

Method

Requirement: Sets of single-character images
Steps:
1. Train a multi-concept model using the original dataset
2. Create an augmentation dataset of joined image pairs (composites) from the original dataset
3. Train on the augmentation dataset

Experiment

Setup

3 characters from the game Cinderella Girls are chosen for the experiment. The base model is anime-final-pruned. It has been checked that the base model has minimal knowledge of the trained characters. Images with multiple characters were removed (edit: after training it was found that some unrelated background characters were not removed).

For the captions of the joined images, the template format CharLeft/CharRight/COMPOSITE, TagsLeft, TagsRight is used.

A LoRA (Hadamard product) is trained using the config file below:

[model_arguments]
v2 = false
v_parameterization = false
pretrained_model_name_or_path = "Animefull-final-pruned.ckpt"

[additional_network_arguments]
no_metadata = false
unet_lr = 0.0005
text_encoder_lr = 0.0005
network_module = "lycoris.kohya"
network_dim = 8
network_alpha = 1
network_args = [ "conv_dim=0", "conv_alpha=16", "algo=loha",]
network_train_unet_only = false
network_train_text_encoder_only = false

[optimizer_arguments]
optimizer_type = "AdamW8bit"
learning_rate = 0.0005
max_grad_norm = 1.0
lr_scheduler = "cosine"
lr_warmup_steps = 0

[dataset_arguments]
debug_dataset = false
# keep token 1
# resolution 640*640

[training_arguments]
output_name = "cg3comp"
save_precision = "fp16"
save_every_n_epochs = 1
train_batch_size = 4
max_token_length = 225
mem_eff_attn = false
xformers = true
max_train_epochs = 40
max_data_loader_n_workers = 8
persistent_data_loader_workers = true
gradient_checkpointing = false
gradient_accumulation_steps = 1
mixed_precision = "fp16"
clip_skip = 2
lowram = true

[sample_prompt_arguments]
sample_every_n_epochs = 1
sample_sampler = "k_euler_a"

[saving_arguments]
save_model_as = "safetensors"

For the second stage of training, the batch size was reduced to 2 and the resolution was set to 768 * 768 while keeping other settings identical. The training took less than 2 hours on a T4 GPU.

Results

(see preview images)

Limitations

  • This technique doubles the memory/compute requirement

  • Composites can still be generated despite negative prompting

  • Cloned characters seem to become the primary failure mode in place of blended characters

  • Can generate 2 characters but not 3 for some reason

Related Works

Models been trained on datasets based on anime shows have demonstrated multi-subject capability. Simply using concepts distant enough such as 1girl, 1boy has also been shown to be effective.

Future work

Below is a list of ideas yet to be explored

  • Synthetic datasets

  • Unequal aspect ratios

  • Regularization

  • Joint training instaed of sequential