|
|
|
|
|
import copy |
|
import math |
|
import random |
|
|
|
import numpy as np |
|
import torch |
|
import torch.nn as nn |
|
import torch.nn.functional as F |
|
import torchvision.transforms.functional as TF |
|
from PIL import Image |
|
import torchvision.transforms as T |
|
from scepter.modules.model.registry import DIFFUSIONS |
|
from scepter.modules.model.utils.basic_utils import check_list_of_list |
|
from scepter.modules.model.utils.basic_utils import \ |
|
pack_imagelist_into_tensor_v2 as pack_imagelist_into_tensor |
|
from scepter.modules.model.utils.basic_utils import ( |
|
to_device, unpack_tensor_into_imagelist) |
|
from scepter.modules.utils.distribute import we |
|
from scepter.modules.utils.logger import get_logger |
|
|
|
from scepter.modules.inference.diffusion_inference import DiffusionInference, get_model |
|
|
|
|
|
def process_edit_image(images, |
|
masks, |
|
tasks, |
|
max_seq_len=1024, |
|
max_aspect_ratio=4, |
|
d=16, |
|
**kwargs): |
|
|
|
if not isinstance(images, list): |
|
images = [images] |
|
if not isinstance(masks, list): |
|
masks = [masks] |
|
if not isinstance(tasks, list): |
|
tasks = [tasks] |
|
|
|
img_tensors = [] |
|
mask_tensors = [] |
|
for img, mask, task in zip(images, masks, tasks): |
|
if mask is None or mask == '': |
|
mask = Image.new('L', img.size, 0) |
|
W, H = img.size |
|
if H / W > max_aspect_ratio: |
|
img = TF.center_crop(img, [int(max_aspect_ratio * W), W]) |
|
mask = TF.center_crop(mask, [int(max_aspect_ratio * W), W]) |
|
elif W / H > max_aspect_ratio: |
|
img = TF.center_crop(img, [H, int(max_aspect_ratio * H)]) |
|
mask = TF.center_crop(mask, [H, int(max_aspect_ratio * H)]) |
|
|
|
H, W = img.height, img.width |
|
scale = min(1.0, math.sqrt(max_seq_len / ((H / d) * (W / d)))) |
|
rH = int(H * scale) // d * d |
|
rW = int(W * scale) // d * d |
|
|
|
img = TF.resize(img, (rH, rW), |
|
interpolation=TF.InterpolationMode.BICUBIC) |
|
mask = TF.resize(mask, (rH, rW), |
|
interpolation=TF.InterpolationMode.NEAREST_EXACT) |
|
|
|
mask = np.asarray(mask) |
|
mask = np.where(mask > 128, 1, 0) |
|
mask = mask.astype( |
|
np.float32) if np.any(mask) else np.ones_like(mask).astype( |
|
np.float32) |
|
|
|
img_tensor = TF.to_tensor(img).to(we.device_id) |
|
img_tensor = TF.normalize(img_tensor, |
|
mean=[0.5, 0.5, 0.5], |
|
std=[0.5, 0.5, 0.5]) |
|
mask_tensor = TF.to_tensor(mask).to(we.device_id) |
|
if task in ['inpainting', 'Try On', 'Inpainting']: |
|
mask_indicator = mask_tensor.repeat(3, 1, 1) |
|
img_tensor[mask_indicator == 1] = -1.0 |
|
img_tensors.append(img_tensor) |
|
mask_tensors.append(mask_tensor) |
|
return img_tensors, mask_tensors |
|
|
|
class TextEmbedding(nn.Module): |
|
def __init__(self, embedding_shape): |
|
super().__init__() |
|
self.pos = nn.Parameter(data=torch.zeros(embedding_shape)) |
|
|
|
class ACEInference(DiffusionInference): |
|
def __init__(self, logger=None): |
|
if logger is None: |
|
logger = get_logger(name='scepter') |
|
self.logger = logger |
|
self.loaded_model = {} |
|
self.loaded_model_name = [ |
|
'diffusion_model', 'first_stage_model', 'cond_stage_model', 'ref_cond_stage_model' |
|
] |
|
|
|
def init_from_cfg(self, cfg): |
|
self.name = cfg.NAME |
|
self.is_default = cfg.get('IS_DEFAULT', False) |
|
self.use_dynamic_model = cfg.get('USE_DYNAMIC_MODEL', True) |
|
module_paras = self.load_default(cfg.get('DEFAULT_PARAS', None)) |
|
assert cfg.have('MODEL') |
|
self.size_factor = cfg.get('SIZE_FACTOR', 8) |
|
self.diffusion_model = self.infer_model( |
|
cfg.MODEL.DIFFUSION_MODEL, module_paras.get( |
|
'DIFFUSION_MODEL', |
|
None)) if cfg.MODEL.have('DIFFUSION_MODEL') else None |
|
self.first_stage_model = self.infer_model( |
|
cfg.MODEL.FIRST_STAGE_MODEL, |
|
module_paras.get( |
|
'FIRST_STAGE_MODEL', |
|
None)) if cfg.MODEL.have('FIRST_STAGE_MODEL') else None |
|
self.cond_stage_model = self.infer_model( |
|
cfg.MODEL.COND_STAGE_MODEL, |
|
module_paras.get( |
|
'COND_STAGE_MODEL', |
|
None)) if cfg.MODEL.have('COND_STAGE_MODEL') else None |
|
|
|
self.ref_cond_stage_model = self.infer_model( |
|
cfg.MODEL.REF_COND_STAGE_MODEL, |
|
module_paras.get( |
|
'REF_COND_STAGE_MODEL', |
|
None)) if cfg.MODEL.have('REF_COND_STAGE_MODEL') else None |
|
|
|
self.diffusion = DIFFUSIONS.build(cfg.MODEL.DIFFUSION, |
|
logger=self.logger) |
|
self.interpolate_func = lambda x: (F.interpolate( |
|
x.unsqueeze(0), |
|
scale_factor=1 / self.size_factor, |
|
mode='nearest-exact') if x is not None else None) |
|
|
|
self.max_seq_length = cfg.get("MAX_SEQ_LENGTH", 4096) |
|
self.src_max_seq_length = cfg.get("SRC_MAX_SEQ_LENGTH", 1024) |
|
self.image_token = cfg.MODEL.get("IMAGE_TOKEN", "<img>") |
|
|
|
self.text_indentifers = cfg.MODEL.get('TEXT_IDENTIFIER', []) |
|
self.use_text_pos_embeddings = cfg.MODEL.get('USE_TEXT_POS_EMBEDDINGS', |
|
False) |
|
if self.use_text_pos_embeddings: |
|
self.text_position_embeddings = TextEmbedding( |
|
(10, 4096)).eval().requires_grad_(False).to(we.device_id) |
|
else: |
|
self.text_position_embeddings = None |
|
|
|
if not self.use_dynamic_model: |
|
self.dynamic_load(self.first_stage_model, 'first_stage_model') |
|
self.dynamic_load(self.cond_stage_model, 'cond_stage_model') |
|
if self.ref_cond_stage_model is not None: self.dynamic_load(self.ref_cond_stage_model, 'ref_cond_stage_model') |
|
self.dynamic_load(self.diffusion_model, 'diffusion_model') |
|
self.diffusion_model["model"].to(torch.bfloat16) |
|
|
|
def upscale_resize(self, image, interpolation=T.InterpolationMode.BILINEAR): |
|
c, H, W = image.shape |
|
scale = max(1.0, math.sqrt(self.max_seq_length / ((H / 16) * (W / 16)))) |
|
rH = int(H * scale) // 16 * 16 |
|
rW = int(W * scale) // 16 * 16 |
|
image = T.Resize((rH, rW), interpolation=interpolation, antialias=True)(image) |
|
return image |
|
|
|
|
|
@torch.no_grad() |
|
def encode_first_stage(self, x, **kwargs): |
|
_, dtype = self.get_function_info(self.first_stage_model, 'encode') |
|
with torch.autocast('cuda', |
|
enabled=dtype in ('float16', 'bfloat16'), |
|
dtype=getattr(torch, dtype)): |
|
def run_one_image(u): |
|
zu = get_model(self.first_stage_model).encode(u) |
|
if isinstance(zu, (tuple, list)): |
|
zu = zu[0] |
|
return zu |
|
|
|
z = [run_one_image(u.unsqueeze(0) if u.dim() == 3 else u) for u in x] |
|
return z |
|
|
|
|
|
@torch.no_grad() |
|
def decode_first_stage(self, z): |
|
_, dtype = self.get_function_info(self.first_stage_model, 'decode') |
|
with torch.autocast('cuda', |
|
enabled=dtype in ('float16', 'bfloat16'), |
|
dtype=getattr(torch, dtype)): |
|
return [get_model(self.first_stage_model).decode(zu) for zu in z] |
|
|
|
def noise_sample(self, num_samples, h, w, seed, device = None, dtype = torch.bfloat16): |
|
noise = torch.randn( |
|
num_samples, |
|
16, |
|
|
|
2 * math.ceil(h / 16), |
|
2 * math.ceil(w / 16), |
|
device=device, |
|
dtype=dtype, |
|
generator=torch.Generator(device=device).manual_seed(seed), |
|
) |
|
return noise |
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
@torch.no_grad() |
|
def __call__(self, |
|
image=None, |
|
mask=None, |
|
prompt='', |
|
task=None, |
|
negative_prompt='', |
|
output_height=1024, |
|
output_width=1024, |
|
sampler='flow_euler', |
|
sample_steps=20, |
|
guide_scale=3.5, |
|
seed=-1, |
|
history_io=None, |
|
tar_index=0, |
|
align=0, |
|
**kwargs): |
|
input_image, input_mask = image, mask |
|
seed = seed if seed >= 0 else random.randint(0, 2**32 - 1) |
|
if input_image is not None: |
|
|
|
if task is None: |
|
task = [''] * len(input_image) |
|
if not isinstance(prompt, list): |
|
prompt = [prompt] * len(input_image) |
|
prompt = [ |
|
pp.replace('{image}', f'{{image{i}}}') if i > 0 else pp |
|
for i, pp in enumerate(prompt) |
|
] |
|
edit_image, edit_image_mask = process_edit_image( |
|
input_image, input_mask, task, max_seq_len=self.src_max_seq_length) |
|
image, image_mask = self.upscale_resize(edit_image[tar_index]), self.upscale_resize(edit_image_mask[ |
|
tar_index]) |
|
|
|
|
|
edit_image, edit_image_mask = [edit_image], [edit_image_mask] |
|
else: |
|
edit_image = edit_image_mask = [[]] |
|
image = torch.zeros( |
|
size=[3, int(output_height), |
|
int(output_width)]) |
|
image_mask = torch.ones( |
|
size=[1, int(output_height), |
|
int(output_width)]) |
|
if not isinstance(prompt, list): |
|
prompt = [prompt] |
|
|
|
image, image_mask, prompt = [image], [image_mask], [prompt], |
|
align = [align for p in prompt] if isinstance(align, int) else align |
|
|
|
assert check_list_of_list(prompt) and check_list_of_list( |
|
edit_image) and check_list_of_list(edit_image_mask) |
|
|
|
image = to_device(image) |
|
ctx = {} |
|
|
|
self.dynamic_load(self.first_stage_model, 'first_stage_model') |
|
x = self.encode_first_stage(image) |
|
self.dynamic_unload(self.first_stage_model, |
|
'first_stage_model', |
|
skip_loaded=not self.use_dynamic_model) |
|
|
|
g = torch.Generator(device=we.device_id).manual_seed(seed) |
|
|
|
noise = [ |
|
torch.randn((1, 16, i.shape[2], i.shape[3]), device=we.device_id, dtype=torch.bfloat16).normal_(generator=g) |
|
for i in x |
|
] |
|
noise, x_shapes = pack_imagelist_into_tensor(noise) |
|
ctx['x_shapes'] = x_shapes |
|
ctx['align'] = align |
|
|
|
image_mask = to_device(image_mask, strict=False) |
|
cond_mask = [self.interpolate_func(i) for i in image_mask |
|
] if image_mask is not None else [None] * len(image) |
|
ctx['x_mask'] = cond_mask |
|
|
|
instruction_prompt = [[pp[-1]] if "{image}" in pp[-1] else ["{image} " + pp[-1]] for pp in prompt] |
|
self.dynamic_load(self.cond_stage_model, 'cond_stage_model') |
|
function_name, dtype = self.get_function_info(self.cond_stage_model) |
|
cont = getattr(get_model(self.cond_stage_model), function_name)(instruction_prompt) |
|
cont["context"] = [ct[-1] for ct in cont["context"]] |
|
cont["y"] = [ct[-1] for ct in cont["y"]] |
|
self.dynamic_unload(self.cond_stage_model, |
|
'cond_stage_model', |
|
skip_loaded=not self.use_dynamic_model) |
|
ctx.update(cont) |
|
|
|
|
|
self.dynamic_load(self.first_stage_model, 'first_stage_model') |
|
edit_image = [to_device(i, strict=False) for i in edit_image] |
|
edit_image_mask = [to_device(i, strict=False) for i in edit_image_mask] |
|
e_img, e_mask = [], [] |
|
for u, m in zip(edit_image, edit_image_mask): |
|
if u is None: |
|
continue |
|
if m is None: |
|
m = [None] * len(u) |
|
e_img.append(self.encode_first_stage(u, **kwargs)) |
|
e_mask.append([self.interpolate_func(i) for i in m]) |
|
self.dynamic_unload(self.first_stage_model, |
|
'first_stage_model', |
|
skip_loaded=not self.use_dynamic_model) |
|
ctx['edit_x'] = e_img |
|
ctx['edit_mask'] = e_mask |
|
|
|
if guide_scale is not None: |
|
guide_scale = torch.full((noise.shape[0],), guide_scale, device=noise.device, dtype=noise.dtype) |
|
else: |
|
guide_scale = None |
|
|
|
|
|
self.dynamic_load(self.diffusion_model, 'diffusion_model') |
|
function_name, dtype = self.get_function_info(self.diffusion_model) |
|
with torch.autocast('cuda', |
|
enabled=dtype in ('float16', 'bfloat16'), |
|
dtype=getattr(torch, dtype)): |
|
latent = self.diffusion.sample( |
|
noise=noise, |
|
sampler=sampler, |
|
model=get_model(self.diffusion_model), |
|
model_kwargs={ |
|
"cond": ctx, "guidance": guide_scale, "gc_seg": -1 |
|
}, |
|
steps=sample_steps, |
|
show_progress=True, |
|
guide_scale=guide_scale, |
|
return_intermediate=None, |
|
reverse_scale=-1, |
|
**kwargs).float() |
|
if self.use_dynamic_model: self.dynamic_unload(self.diffusion_model, |
|
'diffusion_model', |
|
skip_loaded=not self.use_dynamic_model) |
|
|
|
|
|
self.dynamic_load(self.first_stage_model, 'first_stage_model') |
|
samples = unpack_tensor_into_imagelist(latent, x_shapes) |
|
x_samples = self.decode_first_stage(samples) |
|
self.dynamic_unload(self.first_stage_model, |
|
'first_stage_model', |
|
skip_loaded=not self.use_dynamic_model) |
|
x_samples = [x.squeeze(0) for x in x_samples] |
|
|
|
imgs = [ |
|
torch.clamp((x_i.float() + 1.0) / 2.0, |
|
min=0.0, |
|
max=1.0).squeeze(0).permute(1, 2, 0).cpu().numpy() |
|
for x_i in x_samples |
|
] |
|
imgs = [Image.fromarray((img * 255).astype(np.uint8)) for img in imgs] |
|
return imgs |
|
|