| import os |
| from typing import Union, List |
|
|
| import math |
| import numpy as np |
| import streamlit as st |
| import torch |
| from PIL import Image |
| from einops import rearrange, repeat |
| from imwatermark import WatermarkEncoder |
| from omegaconf import OmegaConf, ListConfig |
| from torch import autocast |
| from torchvision import transforms |
| from torchvision.utils import make_grid |
| from safetensors.torch import load_file as load_safetensors |
|
|
| from sgm.modules.diffusionmodules.sampling import ( |
| EulerEDMSampler, |
| HeunEDMSampler, |
| EulerAncestralSampler, |
| DPMPP2SAncestralSampler, |
| DPMPP2MSampler, |
| LinearMultistepSampler, |
| ) |
| from sgm.util import append_dims |
| from sgm.util import instantiate_from_config |
|
|
|
|
| class WatermarkEmbedder: |
| def __init__(self, watermark): |
| self.watermark = watermark |
| self.num_bits = len(WATERMARK_BITS) |
| self.encoder = WatermarkEncoder() |
| self.encoder.set_watermark("bits", self.watermark) |
|
|
| def __call__(self, image: torch.Tensor): |
| """ |
| Adds a predefined watermark to the input image |
| |
| Args: |
| image: ([N,] B, C, H, W) in range [0, 1] |
| |
| Returns: |
| same as input but watermarked |
| """ |
| |
| squeeze = len(image.shape) == 4 |
| if squeeze: |
| image = image[None, ...] |
| n = image.shape[0] |
| image_np = rearrange( |
| (255 * image).detach().cpu(), "n b c h w -> (n b) h w c" |
| ).numpy()[:, :, :, ::-1] |
| |
| for k in range(image_np.shape[0]): |
| image_np[k] = self.encoder.encode(image_np[k], "dwtDct") |
| image = torch.from_numpy( |
| rearrange(image_np[:, :, :, ::-1], "(n b) h w c -> n b c h w", n=n) |
| ).to(image.device) |
| image = torch.clamp(image / 255, min=0.0, max=1.0) |
| if squeeze: |
| image = image[0] |
| return image |
|
|
|
|
| |
| |
| WATERMARK_MESSAGE = 0b101100111110110010010000011110111011000110011110 |
| |
| WATERMARK_BITS = [int(bit) for bit in bin(WATERMARK_MESSAGE)[2:]] |
| embed_watemark = WatermarkEmbedder(WATERMARK_BITS) |
|
|
|
|
| @st.cache_resource() |
| def init_st(version_dict, load_ckpt=True): |
| state = dict() |
| if not "model" in state: |
| config = version_dict["config"] |
| ckpt = version_dict["ckpt"] |
|
|
| config = OmegaConf.load(config) |
| model, msg = load_model_from_config(config, ckpt if load_ckpt else None) |
|
|
| state["msg"] = msg |
| state["model"] = model |
| state["ckpt"] = ckpt if load_ckpt else None |
| state["config"] = config |
| return state |
|
|
|
|
| def load_model_from_config(config, ckpt=None, verbose=True): |
| model = instantiate_from_config(config.model) |
|
|
| if ckpt is not None: |
| print(f"Loading model from {ckpt}") |
| if ckpt.endswith("ckpt"): |
| pl_sd = torch.load(ckpt, map_location="cpu") |
| if "global_step" in pl_sd: |
| global_step = pl_sd["global_step"] |
| st.info(f"loaded ckpt from global step {global_step}") |
| print(f"Global Step: {pl_sd['global_step']}") |
| sd = pl_sd["state_dict"] |
| elif ckpt.endswith("safetensors"): |
| sd = load_safetensors(ckpt) |
| else: |
| raise NotImplementedError |
|
|
| msg = None |
|
|
| m, u = model.load_state_dict(sd, strict=False) |
|
|
| if len(m) > 0 and verbose: |
| print("missing keys:") |
| print(m) |
| if len(u) > 0 and verbose: |
| print("unexpected keys:") |
| print(u) |
| else: |
| msg = None |
|
|
| model.cuda() |
| model.eval() |
| return model, msg |
|
|
|
|
| def get_unique_embedder_keys_from_conditioner(conditioner): |
| return list(set([x.input_key for x in conditioner.embedders])) |
|
|
|
|
| def init_embedder_options(keys, init_dict, prompt=None, negative_prompt=None): |
| |
|
|
| value_dict = {} |
| for key in keys: |
| if key == "txt": |
| if prompt is None: |
| prompt = st.text_input( |
| "Prompt", "A professional photograph of an astronaut riding a pig" |
| ) |
| if negative_prompt is None: |
| negative_prompt = st.text_input("Negative prompt", "") |
|
|
| value_dict["prompt"] = prompt |
| value_dict["negative_prompt"] = negative_prompt |
|
|
| if key == "original_size_as_tuple": |
| orig_width = st.number_input( |
| "orig_width", |
| value=init_dict["orig_width"], |
| min_value=16, |
| ) |
| orig_height = st.number_input( |
| "orig_height", |
| value=init_dict["orig_height"], |
| min_value=16, |
| ) |
|
|
| value_dict["orig_width"] = orig_width |
| value_dict["orig_height"] = orig_height |
|
|
| if key == "crop_coords_top_left": |
| crop_coord_top = st.number_input("crop_coords_top", value=0, min_value=0) |
| crop_coord_left = st.number_input("crop_coords_left", value=0, min_value=0) |
|
|
| value_dict["crop_coords_top"] = crop_coord_top |
| value_dict["crop_coords_left"] = crop_coord_left |
|
|
| if key == "aesthetic_score": |
| value_dict["aesthetic_score"] = 6.0 |
| value_dict["negative_aesthetic_score"] = 2.5 |
|
|
| if key == "target_size_as_tuple": |
| target_width = st.number_input( |
| "target_width", |
| value=init_dict["target_width"], |
| min_value=16, |
| ) |
| target_height = st.number_input( |
| "target_height", |
| value=init_dict["target_height"], |
| min_value=16, |
| ) |
|
|
| value_dict["target_width"] = target_width |
| value_dict["target_height"] = target_height |
|
|
| return value_dict |
|
|
|
|
| def perform_save_locally(save_path, samples): |
| os.makedirs(os.path.join(save_path), exist_ok=True) |
| base_count = len(os.listdir(os.path.join(save_path))) |
| samples = embed_watemark(samples) |
| for sample in samples: |
| sample = 255.0 * rearrange(sample.cpu().numpy(), "c h w -> h w c") |
| Image.fromarray(sample.astype(np.uint8)).save( |
| os.path.join(save_path, f"{base_count:09}.png") |
| ) |
| base_count += 1 |
|
|
|
|
| def init_save_locally(_dir, init_value: bool = False): |
| save_locally = st.sidebar.checkbox("Save images locally", value=init_value) |
| if save_locally: |
| save_path = st.text_input("Save path", value=os.path.join(_dir, "samples")) |
| else: |
| save_path = None |
|
|
| return save_locally, save_path |
|
|
|
|
| class Img2ImgDiscretizationWrapper: |
| """ |
| wraps a discretizer, and prunes the sigmas |
| params: |
| strength: float between 0.0 and 1.0. 1.0 means full sampling (all sigmas are returned) |
| """ |
|
|
| def __init__(self, discretization, strength: float = 1.0): |
| self.discretization = discretization |
| self.strength = strength |
| assert 0.0 <= self.strength <= 1.0 |
|
|
| def __call__(self, *args, **kwargs): |
| |
| sigmas = self.discretization(*args, **kwargs) |
| print(f"sigmas after discretization, before pruning img2img: ", sigmas) |
| sigmas = torch.flip(sigmas, (0,)) |
| sigmas = sigmas[: max(int(self.strength * len(sigmas)), 1)] |
| print("prune index:", max(int(self.strength * len(sigmas)), 1)) |
| sigmas = torch.flip(sigmas, (0,)) |
| print(f"sigmas after pruning: ", sigmas) |
| return sigmas |
|
|
|
|
| def get_guider(key): |
| guider = st.sidebar.selectbox( |
| f"Discretization #{key}", |
| [ |
| "VanillaCFG", |
| "IdentityGuider", |
| ], |
| ) |
|
|
| if guider == "IdentityGuider": |
| guider_config = { |
| "target": "sgm.modules.diffusionmodules.guiders.IdentityGuider" |
| } |
| elif guider == "VanillaCFG": |
| scale = st.number_input( |
| f"cfg-scale #{key}", value=5.0, min_value=0.0, max_value=100.0 |
| ) |
|
|
| thresholder = st.sidebar.selectbox( |
| f"Thresholder #{key}", |
| [ |
| "None", |
| ], |
| ) |
|
|
| if thresholder == "None": |
| dyn_thresh_config = { |
| "target": "sgm.modules.diffusionmodules.sampling_utils.NoDynamicThresholding" |
| } |
| else: |
| raise NotImplementedError |
|
|
| guider_config = { |
| "target": "sgm.modules.diffusionmodules.guiders.VanillaCFG", |
| "params": {"scale": scale, "dyn_thresh_config": dyn_thresh_config}, |
| } |
| else: |
| raise NotImplementedError |
| return guider_config |
|
|
|
|
| def init_sampling( |
| key=1, img2img_strength=1.0, use_identity_guider=False, get_num_samples=True |
| ): |
| if get_num_samples: |
| num_rows = 1 |
| num_cols = st.number_input( |
| f"num cols #{key}", value=2, min_value=1, max_value=10 |
| ) |
|
|
| steps = st.sidebar.number_input( |
| f"steps #{key}", value=50, min_value=1, max_value=1000 |
| ) |
| sampler = st.sidebar.selectbox( |
| f"Sampler #{key}", |
| [ |
| "EulerEDMSampler", |
| "HeunEDMSampler", |
| "EulerAncestralSampler", |
| "DPMPP2SAncestralSampler", |
| "DPMPP2MSampler", |
| "LinearMultistepSampler", |
| ], |
| 0, |
| ) |
| discretization = st.sidebar.selectbox( |
| f"Discretization #{key}", |
| [ |
| "LegacyDDPMDiscretization", |
| "EDMDiscretization", |
| ], |
| ) |
|
|
| discretization_config = get_discretization(discretization, key=key) |
|
|
| guider_config = get_guider(key=key) |
|
|
| sampler = get_sampler(sampler, steps, discretization_config, guider_config, key=key) |
| if img2img_strength < 1.0: |
| st.warning( |
| f"Wrapping {sampler.__class__.__name__} with Img2ImgDiscretizationWrapper" |
| ) |
| sampler.discretization = Img2ImgDiscretizationWrapper( |
| sampler.discretization, strength=img2img_strength |
| ) |
| if get_num_samples: |
| return num_rows, num_cols, sampler |
| return sampler |
|
|
|
|
| def get_discretization(discretization, key=1): |
| if discretization == "LegacyDDPMDiscretization": |
| discretization_config = { |
| "target": "sgm.modules.diffusionmodules.discretizer.LegacyDDPMDiscretization", |
| } |
| elif discretization == "EDMDiscretization": |
| sigma_min = st.number_input(f"sigma_min #{key}", value=0.03) |
| sigma_max = st.number_input(f"sigma_max #{key}", value=14.61) |
| rho = st.number_input(f"rho #{key}", value=3.0) |
| discretization_config = { |
| "target": "sgm.modules.diffusionmodules.discretizer.EDMDiscretization", |
| "params": { |
| "sigma_min": sigma_min, |
| "sigma_max": sigma_max, |
| "rho": rho, |
| }, |
| } |
|
|
| return discretization_config |
|
|
|
|
| def get_sampler(sampler_name, steps, discretization_config, guider_config, key=1): |
| if sampler_name == "EulerEDMSampler" or sampler_name == "HeunEDMSampler": |
| s_churn = st.sidebar.number_input(f"s_churn #{key}", value=0.0, min_value=0.0) |
| s_tmin = st.sidebar.number_input(f"s_tmin #{key}", value=0.0, min_value=0.0) |
| s_tmax = st.sidebar.number_input(f"s_tmax #{key}", value=999.0, min_value=0.0) |
| s_noise = st.sidebar.number_input(f"s_noise #{key}", value=1.0, min_value=0.0) |
|
|
| if sampler_name == "EulerEDMSampler": |
| sampler = EulerEDMSampler( |
| num_steps=steps, |
| discretization_config=discretization_config, |
| guider_config=guider_config, |
| s_churn=s_churn, |
| s_tmin=s_tmin, |
| s_tmax=s_tmax, |
| s_noise=s_noise, |
| verbose=True, |
| ) |
| elif sampler_name == "HeunEDMSampler": |
| sampler = HeunEDMSampler( |
| num_steps=steps, |
| discretization_config=discretization_config, |
| guider_config=guider_config, |
| s_churn=s_churn, |
| s_tmin=s_tmin, |
| s_tmax=s_tmax, |
| s_noise=s_noise, |
| verbose=True, |
| ) |
| elif ( |
| sampler_name == "EulerAncestralSampler" |
| or sampler_name == "DPMPP2SAncestralSampler" |
| ): |
| s_noise = st.sidebar.number_input("s_noise", value=1.0, min_value=0.0) |
| eta = st.sidebar.number_input("eta", value=1.0, min_value=0.0) |
|
|
| if sampler_name == "EulerAncestralSampler": |
| sampler = EulerAncestralSampler( |
| num_steps=steps, |
| discretization_config=discretization_config, |
| guider_config=guider_config, |
| eta=eta, |
| s_noise=s_noise, |
| verbose=True, |
| ) |
| elif sampler_name == "DPMPP2SAncestralSampler": |
| sampler = DPMPP2SAncestralSampler( |
| num_steps=steps, |
| discretization_config=discretization_config, |
| guider_config=guider_config, |
| eta=eta, |
| s_noise=s_noise, |
| verbose=True, |
| ) |
| elif sampler_name == "DPMPP2MSampler": |
| sampler = DPMPP2MSampler( |
| num_steps=steps, |
| discretization_config=discretization_config, |
| guider_config=guider_config, |
| verbose=True, |
| ) |
| elif sampler_name == "LinearMultistepSampler": |
| order = st.sidebar.number_input("order", value=4, min_value=1) |
| sampler = LinearMultistepSampler( |
| num_steps=steps, |
| discretization_config=discretization_config, |
| guider_config=guider_config, |
| order=order, |
| verbose=True, |
| ) |
| else: |
| raise ValueError(f"unknown sampler {sampler_name}!") |
|
|
| return sampler |
|
|
|
|
| def get_interactive_image(key=None) -> Image.Image: |
| image = st.file_uploader("Input", type=["jpg", "JPEG", "png"], key=key) |
| if image is not None: |
| image = Image.open(image) |
| if not image.mode == "RGB": |
| image = image.convert("RGB") |
| return image |
|
|
|
|
| def load_img(display=True, key=None): |
| image = get_interactive_image(key=key) |
| if image is None: |
| return None |
| if display: |
| st.image(image) |
| w, h = image.size |
| print(f"loaded input image of size ({w}, {h})") |
|
|
| transform = transforms.Compose( |
| [ |
| transforms.ToTensor(), |
| transforms.Lambda(lambda x: x * 2.0 - 1.0), |
| ] |
| ) |
| img = transform(image)[None, ...] |
| st.text(f"input min/max/mean: {img.min():.3f}/{img.max():.3f}/{img.mean():.3f}") |
| return img |
|
|
|
|
| def get_init_img(batch_size=1, key=None): |
| init_image = load_img(key=key).cuda() |
| init_image = repeat(init_image, "1 ... -> b ...", b=batch_size) |
| return init_image |
|
|
|
|
| def do_sample( |
| model, |
| sampler, |
| value_dict, |
| num_samples, |
| H, |
| W, |
| C, |
| F, |
| force_uc_zero_embeddings: List = None, |
| batch2model_input: List = None, |
| return_latents=False, |
| filter=None, |
| ): |
| if force_uc_zero_embeddings is None: |
| force_uc_zero_embeddings = [] |
| if batch2model_input is None: |
| batch2model_input = [] |
|
|
| st.text("Sampling") |
|
|
| outputs = st.empty() |
| precision_scope = autocast |
| with torch.no_grad(): |
| with precision_scope("cuda"): |
| with model.ema_scope(): |
| num_samples = [num_samples] |
| batch, batch_uc = get_batch( |
| get_unique_embedder_keys_from_conditioner(model.conditioner), |
| value_dict, |
| num_samples, |
| ) |
| for key in batch: |
| if isinstance(batch[key], torch.Tensor): |
| print(key, batch[key].shape) |
| elif isinstance(batch[key], list): |
| print(key, [len(l) for l in batch[key]]) |
| else: |
| print(key, batch[key]) |
| c, uc = model.conditioner.get_unconditional_conditioning( |
| batch, |
| batch_uc=batch_uc, |
| force_uc_zero_embeddings=force_uc_zero_embeddings, |
| ) |
|
|
| for k in c: |
| if not k == "crossattn": |
| c[k], uc[k] = map( |
| lambda y: y[k][: math.prod(num_samples)].to("cuda"), (c, uc) |
| ) |
|
|
| additional_model_inputs = {} |
| for k in batch2model_input: |
| additional_model_inputs[k] = batch[k] |
|
|
| shape = (math.prod(num_samples), C, H // F, W // F) |
| randn = torch.randn(shape).to("cuda") |
|
|
| def denoiser(input, sigma, c): |
| return model.denoiser( |
| model.model, input, sigma, c, **additional_model_inputs |
| ) |
|
|
| samples_z = sampler(denoiser, randn, cond=c, uc=uc) |
| samples_x = model.decode_first_stage(samples_z) |
| samples = torch.clamp((samples_x + 1.0) / 2.0, min=0.0, max=1.0) |
|
|
| if filter is not None: |
| samples = filter(samples) |
|
|
| grid = torch.stack([samples]) |
| grid = rearrange(grid, "n b c h w -> (n h) (b w) c") |
| outputs.image(grid.cpu().numpy()) |
|
|
| if return_latents: |
| return samples, samples_z |
| return samples |
|
|
|
|
| def get_batch(keys, value_dict, N: Union[List, ListConfig], device="cuda"): |
| |
|
|
| batch = {} |
| batch_uc = {} |
|
|
| for key in keys: |
| if key == "txt": |
| batch["txt"] = ( |
| np.repeat([value_dict["prompt"]], repeats=math.prod(N)) |
| .reshape(N) |
| .tolist() |
| ) |
| batch_uc["txt"] = ( |
| np.repeat([value_dict["negative_prompt"]], repeats=math.prod(N)) |
| .reshape(N) |
| .tolist() |
| ) |
| elif key == "original_size_as_tuple": |
| batch["original_size_as_tuple"] = ( |
| torch.tensor([value_dict["orig_height"], value_dict["orig_width"]]) |
| .to(device) |
| .repeat(*N, 1) |
| ) |
| elif key == "crop_coords_top_left": |
| batch["crop_coords_top_left"] = ( |
| torch.tensor( |
| [value_dict["crop_coords_top"], value_dict["crop_coords_left"]] |
| ) |
| .to(device) |
| .repeat(*N, 1) |
| ) |
| elif key == "aesthetic_score": |
| batch["aesthetic_score"] = ( |
| torch.tensor([value_dict["aesthetic_score"]]).to(device).repeat(*N, 1) |
| ) |
| batch_uc["aesthetic_score"] = ( |
| torch.tensor([value_dict["negative_aesthetic_score"]]) |
| .to(device) |
| .repeat(*N, 1) |
| ) |
|
|
| elif key == "target_size_as_tuple": |
| batch["target_size_as_tuple"] = ( |
| torch.tensor([value_dict["target_height"], value_dict["target_width"]]) |
| .to(device) |
| .repeat(*N, 1) |
| ) |
| else: |
| batch[key] = value_dict[key] |
|
|
| for key in batch.keys(): |
| if key not in batch_uc and isinstance(batch[key], torch.Tensor): |
| batch_uc[key] = torch.clone(batch[key]) |
| return batch, batch_uc |
|
|
|
|
| @torch.no_grad() |
| def do_img2img( |
| img, |
| model, |
| sampler, |
| value_dict, |
| num_samples, |
| force_uc_zero_embeddings=[], |
| additional_kwargs={}, |
| offset_noise_level: int = 0.0, |
| return_latents=False, |
| skip_encode=False, |
| filter=None, |
| ): |
| st.text("Sampling") |
|
|
| outputs = st.empty() |
| precision_scope = autocast |
| with torch.no_grad(): |
| with precision_scope("cuda"): |
| with model.ema_scope(): |
| batch, batch_uc = get_batch( |
| get_unique_embedder_keys_from_conditioner(model.conditioner), |
| value_dict, |
| [num_samples], |
| ) |
| c, uc = model.conditioner.get_unconditional_conditioning( |
| batch, |
| batch_uc=batch_uc, |
| force_uc_zero_embeddings=force_uc_zero_embeddings, |
| ) |
|
|
| for k in c: |
| c[k], uc[k] = map(lambda y: y[k][:num_samples].to("cuda"), (c, uc)) |
|
|
| for k in additional_kwargs: |
| c[k] = uc[k] = additional_kwargs[k] |
| if skip_encode: |
| z = img |
| else: |
| z = model.encode_first_stage(img) |
| noise = torch.randn_like(z) |
| sigmas = sampler.discretization(sampler.num_steps) |
| sigma = sigmas[0] |
|
|
| st.info(f"all sigmas: {sigmas}") |
| st.info(f"noising sigma: {sigma}") |
|
|
| if offset_noise_level > 0.0: |
| noise = noise + offset_noise_level * append_dims( |
| torch.randn(z.shape[0], device=z.device), z.ndim |
| ) |
| noised_z = z + noise * append_dims(sigma, z.ndim) |
| noised_z = noised_z / torch.sqrt( |
| 1.0 + sigmas[0] ** 2.0 |
| ) |
|
|
| def denoiser(x, sigma, c): |
| return model.denoiser(model.model, x, sigma, c) |
|
|
| samples_z = sampler(denoiser, noised_z, cond=c, uc=uc) |
| samples_x = model.decode_first_stage(samples_z) |
| samples = torch.clamp((samples_x + 1.0) / 2.0, min=0.0, max=1.0) |
|
|
| if filter is not None: |
| samples = filter(samples) |
|
|
| grid = embed_watemark(torch.stack([samples])) |
| grid = rearrange(grid, "n b c h w -> (n h) (b w) c") |
| outputs.image(grid.cpu().numpy()) |
| if return_latents: |
| return samples, samples_z |
| return samples |
|
|