muse maskgit pytorch
0.3.5
Muse 的实现:在 Pytorch 中通过 Masked Generative Transformers 生成文本到图像
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$ pip install muse-maskgit-pytorch
首先训练你的 VAE - VQGanVAE
import torch
from muse_maskgit_pytorch import VQGanVAE , VQGanVAETrainer
vae = VQGanVAE (
dim = 256 ,
codebook_size = 65536
)
# train on folder of images, as many images as possible
trainer = VQGanVAETrainer (
vae = vae ,
image_size = 128 , # you may want to start with small images, and then curriculum learn to larger ones, but because the vae is all convolution, it should generalize to 512 (as in paper) without training on it
folder = '/path/to/images' ,
batch_size = 4 ,
grad_accum_every = 8 ,
num_train_steps = 50000
). cuda ()
trainer . train ()
然后将训练好的VQGanVAE
和一个Transformer
传递给MaskGit
import torch
from muse_maskgit_pytorch import VQGanVAE , MaskGit , MaskGitTransformer
# first instantiate your vae
vae = VQGanVAE (
dim = 256 ,
codebook_size = 65536
). cuda ()
vae . load ( '/path/to/vae.pt' ) # you will want to load the exponentially moving averaged VAE
# then you plug the vae and transformer into your MaskGit as so
# (1) create your transformer / attention network
transformer = MaskGitTransformer (
num_tokens = 65536 , # must be same as codebook size above
seq_len = 256 , # must be equivalent to fmap_size ** 2 in vae
dim = 512 , # model dimension
depth = 8 , # depth
dim_head = 64 , # attention head dimension
heads = 8 , # attention heads,
ff_mult = 4 , # feedforward expansion factor
t5_name = 't5-small' , # name of your T5
)
# (2) pass your trained VAE and the base transformer to MaskGit
base_maskgit = MaskGit (
vae = vae , # vqgan vae
transformer = transformer , # transformer
image_size = 256 , # image size
cond_drop_prob = 0.25 , # conditional dropout, for classifier free guidance
). cuda ()
# ready your training text and images
texts = [
'a child screaming at finding a worm within a half-eaten apple' ,
'lizard running across the desert on two feet' ,
'waking up to a psychedelic landscape' ,
'seashells sparkling in the shallow waters'
]
images = torch . randn ( 4 , 3 , 256 , 256 ). cuda ()
# feed it into your maskgit instance, with return_loss set to True
loss = base_maskgit (
images ,
texts = texts
)
loss . backward ()
# do this for a long time on much data
# then...
images = base_maskgit . generate ( texts = [
'a whale breaching from afar' ,
'young girl blowing out candles on her birthday cake' ,
'fireworks with blue and green sparkles'
], cond_scale = 3. ) # conditioning scale for classifier free guidance
images . shape # (3, 3, 256, 256)
要训练超分辨率 maskgit 需要您更改MaskGit
实例化上的 1 个字段(您现在需要传入cond_image_size
,因为之前的图像大小受到限制)
或者,您可以传入不同的VAE
作为cond_vae
来调节低分辨率图像。默认情况下,它将使用vae
来标记超分辨率图像和低分辨率图像。
import torch
import torch . nn . functional as F
from muse_maskgit_pytorch import VQGanVAE , MaskGit , MaskGitTransformer
# first instantiate your ViT VQGan VAE
# a VQGan VAE made of transformers
vae = VQGanVAE (
dim = 256 ,
codebook_size = 65536
). cuda ()
vae . load ( './path/to/vae.pt' ) # you will want to load the exponentially moving averaged VAE
# then you plug the VqGan VAE into your MaskGit as so
# (1) create your transformer / attention network
transformer = MaskGitTransformer (
num_tokens = 65536 , # must be same as codebook size above
seq_len = 1024 , # must be equivalent to fmap_size ** 2 in vae
dim = 512 , # model dimension
depth = 2 , # depth
dim_head = 64 , # attention head dimension
heads = 8 , # attention heads,
ff_mult = 4 , # feedforward expansion factor
t5_name = 't5-small' , # name of your T5
)
# (2) pass your trained VAE and the base transformer to MaskGit
superres_maskgit = MaskGit (
vae = vae ,
transformer = transformer ,
cond_drop_prob = 0.25 ,
image_size = 512 , # larger image size
cond_image_size = 256 , # conditioning image size <- this must be set
). cuda ()
# ready your training text and images
texts = [
'a child screaming at finding a worm within a half-eaten apple' ,
'lizard running across the desert on two feet' ,
'waking up to a psychedelic landscape' ,
'seashells sparkling in the shallow waters'
]
images = torch . randn ( 4 , 3 , 512 , 512 ). cuda ()
# feed it into your maskgit instance, with return_loss set to True
loss = superres_maskgit (
images ,
texts = texts
)
loss . backward ()
# do this for a long time on much data
# then...
images = superres_maskgit . generate (
texts = [
'a whale breaching from afar' ,
'young girl blowing out candles on her birthday cake' ,
'fireworks with blue and green sparkles' ,
'waking up to a psychedelic landscape'
],
cond_images = F . interpolate ( images , 256 ), # conditioning images must be passed in for generating from superres
cond_scale = 3.
)
images . shape # (4, 3, 512, 512)
现在都在一起了
from muse_maskgit_pytorch import Muse
base_maskgit . load ( './path/to/base.pt' )
superres_maskgit . load ( './path/to/superres.pt' )
# pass in the trained base_maskgit and superres_maskgit from above
muse = Muse (
base = base_maskgit ,
superres = superres_maskgit
)
images = muse ([
'a whale breaching from afar' ,
'young girl blowing out candles on her birthday cake' ,
'fireworks with blue and green sparkles' ,
'waking up to a psychedelic landscape'
])
images # List[PIL.Image.Image]
StabilityAI 以及我的其他赞助商为我提供了开源人工智能的独立性。
? Huggingface 的变形金刚和加速库,都很棒
端到端测试
单独的 cond_images_or_ids ,这样做不正确
添加vae的训练代码
在嵌入上添加可选的自调节
与已在 Phenaki 实施的代币评论家论文相结合
连接 maskgit 的加速训练代码
@inproceedings { Chang2023MuseTG ,
title = { Muse: Text-To-Image Generation via Masked Generative Transformers } ,
author = { Huiwen Chang and Han Zhang and Jarred Barber and AJ Maschinot and Jos{'e} Lezama and Lu Jiang and Ming-Hsuan Yang and Kevin P. Murphy and William T. Freeman and Michael Rubinstein and Yuanzhen Li and Dilip Krishnan } ,
year = { 2023 }
}
@article { Chen2022AnalogBG ,
title = { Analog Bits: Generating Discrete Data using Diffusion Models with Self-Conditioning } ,
author = { Ting Chen and Ruixiang Zhang and Geo rey E. Hinton } ,
journal = { ArXiv } ,
year = { 2022 } ,
volume = { abs/2208.04202 }
}
@misc { jabri2022scalable ,
title = { Scalable Adaptive Computation for Iterative Generation } ,
author = { Allan Jabri and David Fleet and Ting Chen } ,
year = { 2022 } ,
eprint = { 2212.11972 } ,
archivePrefix = { arXiv } ,
primaryClass = { cs.LG }
}
@article { Lezama2022ImprovedMI ,
title = { Improved Masked Image Generation with Token-Critic } ,
author = { Jos{'e} Lezama and Huiwen Chang and Lu Jiang and Irfan Essa } ,
journal = { ArXiv } ,
year = { 2022 } ,
volume = { abs/2209.04439 }
}
@inproceedings { Nijkamp2021SCRIPTSP ,
title = { SCRIPT: Self-Critic PreTraining of Transformers } ,
author = { Erik Nijkamp and Bo Pang and Ying Nian Wu and Caiming Xiong } ,
booktitle = { North American Chapter of the Association for Computational Linguistics } ,
year = { 2021 }
}
@inproceedings { dao2022flashattention ,
title = { Flash{A}ttention: Fast and Memory-Efficient Exact Attention with {IO}-Awareness } ,
author = { Dao, Tri and Fu, Daniel Y. and Ermon, Stefano and Rudra, Atri and R{'e}, Christopher } ,
booktitle = { Advances in Neural Information Processing Systems } ,
year = { 2022 }
}
@misc { mentzer2023finite ,
title = { Finite Scalar Quantization: VQ-VAE Made Simple } ,
author = { Fabian Mentzer and David Minnen and Eirikur Agustsson and Michael Tschannen } ,
year = { 2023 } ,
eprint = { 2309.15505 } ,
archivePrefix = { arXiv } ,
primaryClass = { cs.CV }
}
@misc { yu2023language ,
title = { Language Model Beats Diffusion -- Tokenizer is Key to Visual Generation } ,
author = { Lijun Yu and José Lezama and Nitesh B. Gundavarapu and Luca Versari and Kihyuk Sohn and David Minnen and Yong Cheng and Agrim Gupta and Xiuye Gu and Alexander G. Hauptmann and Boqing Gong and Ming-Hsuan Yang and Irfan Essa and David A. Ross and Lu Jiang } ,
year = { 2023 } ,
eprint = { 2310.05737 } ,
archivePrefix = { arXiv } ,
primaryClass = { cs.CV }
}