Type | |
Stats | 873 0 |
Reviews | (92) |
Published | May 25, 2024 |
Base Model | |
Usage Tips | Clip Skip: 1 |
Hash | AutoV2 B6CEF2EF6A |
I tried to remove the old yellow tint for V0.2, changed the captions a bit, and added some images to the dataset.
The main drawback of V0.2 is that signatures appear more often at the bottom of the images.
This checkpoint is a fine-tune from of the base SD XL model.
The objective of this model is to reproduce traditional painting styles and artistic representations of classical themes.
The trained artists are :
EBls = Eugen von Blaas
Bnhr = Rosa Bonheur
bchr = François Boucher
WllBgr = William Bouguereau
Cbnl = Alexandre Cabanel
Crvgg = Caravaggio
Chpln = Charles Chaplin
edgs = Edgar Degas
DLCRX = Eugène Delacroix
dlflt = Albert Edelfelt
DlpEjl = Delphin Enjolras
LRFlr = Luis Ricardo Falero
frnt = Émile Friant
grm = Jean-Léon Gérôme
gdwrd = John William Godward
ltr = Henri Fantin-Latour
EBLght = Edmund Blair Leighton
AlfMch = Alphonse Mucha
rmnd = Raimundo de Madrazo y Garreta
TdRll = Theodoros Ralli
rmbrndt = Rembrandt van Rijn
Srgnt = John Singer Sargent
Sgnc = Guillaume Seignac
srll = Joaquín Sorolla
AZrn = Anders Zorn
Since I trained the model with a low learning rate, using the artist tag may not have a huge impact on the image. Employing them with their usual theme can work better.
For resolution, you can use 768x1024, 768x1152, 896x1024, 1024x768, 1024x896, 1152x768.
You can use it with my artist lora for XL to reinforce a specific style.
I plan to update it later by training with a bigger dataset, curently it uses around 5000 images.