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| import os | |
| from dotenv import load_dotenv | |
| import torch | |
| import numpy as np | |
| import cv2 | |
| from PIL import Image | |
| from diffusers import StableDiffusionXLControlNetPipeline, ControlNetModel | |
| class ArchIntelligent: | |
| def __init__(self): | |
| # Get private variables from enviroment | |
| load_dotenv() | |
| self.hf_token = os.getenv("HF_TOKEN") | |
| self.style_models = os.getenv("STYLE_MODELS") | |
| self.functional_models= os.getenv("FUNCTION_MODELS") | |
| self.enhancement= os.getenv("REALISM_ENHANCE") | |
| self.controlnet_model= os.getenv("CONTROLNET") | |
| self.base_model = os.getenv("BASEMODEL") | |
| self.model_config = {} | |
| # Configure ControlNet model | |
| controlnet = ControlNetModel.from_pretrained( | |
| self.controlnet_model, | |
| torch_dtype= torch.float16, | |
| cache_dir= r"huggingface_cache", | |
| token= self.hf_token, | |
| variant= 'fp16', | |
| ) | |
| self.pipeline= StableDiffusionXLControlNetPipeline.from_pretrained( | |
| self.base_model, | |
| controlnet= controlnet, | |
| torch_dtype= torch.float16, | |
| cache_dir= r"huggingface_cache", | |
| token= self.hf_token, | |
| variant= 'fp16', | |
| ) | |
| # Enable memory-efficient optimizations | |
| try: | |
| self.pipeline.enable_xformers_memory_efficient_attention() | |
| self.pipeline.enable_vae_slicing() | |
| self.pipeline.enable_sequential_cpu_offload() | |
| print(f"xFormers enabled\nVAE Slicing mode enabled\nSequential CPU Offload enabled!") | |
| except Exception as e: | |
| print(f"Warning: Some optimizations failed: {e}") | |
| def img2canny(self, input_img): | |
| """ | |
| Processing user's condition image into edge map | |
| Parameters | |
| input_img : PIL image | |
| Returns | |
| PIL image | |
| """ | |
| np_image = np.array(input_img) | |
| # Convert the image into a grayscale image then extract edge map | |
| canny = cv2.cvtColor(np_image, cv2.COLOR_RGB2GRAY) | |
| canny = cv2.resize(canny, (1024, 1024)) | |
| canny = cv2.Canny(canny, 100, 200) | |
| canny = Image.fromarray(canny) | |
| return canny | |
| def process_config(self, config: dict): | |
| style_dict = {"Modern": "Modernism", "Minimalism": "Minimalism", "Art Deco": "ArtDeco", | |
| "Art Nouveau": "ArtNouveau", "Baroque": "Baroque", "Brutalist": "Brutalist", | |
| "Classical": "Classical", "Neo-Classical": "Neo-Classical", "Cyberpunk": "Cyberpunk", | |
| "Deconstructivism": "Deconstructivism", "Futurism": "Futurism", "Gothic": "Gothic", | |
| "Neo-Futurism": "Neo-Futurism", "Sustainable": "Sustainable", "Victorian": "Victorian"} | |
| functional_dict = {"Residential": "Modern", "Villa": "Modern", "Office": "Office", "Skyscraper": "SkyScraper", | |
| "Hotel": "Hotel", "School Campus": "SchoolCampus", "Farmhouse": "Farmhouse", "Playground": "PlayGround", | |
| "Park": "Park", "Apartment": "Apartment", "Hospital": "Hospital", "Kindergarten": "KinderGarten", | |
| "Church": "Church", "Container": "Container", "Bridge": "Bridge", "Resort": "Resort", "Airport": "Airport", | |
| "Factory": "Factory", "Stadium": "Stadium", "Temple": "Temple", "Tree House": "TreeHouse"} | |
| styles= config['style_names'] | |
| functional= config['functional_names'] | |
| season = config['season'] | |
| landscape= config['landscape'] | |
| weather= config['weather'] | |
| day= config['time_of_day'] | |
| config['posprompt_2'] = f"(((realistic))), (({styles})), (({functional})), ({landscape}), ({season}), ({weather}), ({day}), (high quality),\ | |
| (high resolution), 4k render, detail, beautiful, cinematic lighting, hyper-realistic" | |
| config['negprompt_2'] = "((blurry)), details are low, overlapping, (grainy), multiple angles, deformed structures, unnatural, unrealistic, cartoon, \ | |
| anime, (painting), drawing, sketch, gibberish text, logo, noise, jpeg artifacts, mutation, (((worst quality))), ((low quality)), (((low resolution))),\ | |
| messy, watermark, signature, cut off, low contrast, underexposed, overexposed, draft, disfigured, ugly, tiling, out of frame" | |
| config["LoRA_style"] = style_dict[styles] | |
| config["LoRA_functional"] = functional_dict[functional] | |
| config['adapter_weights'] = [1.0, 1.0, 0.8] | |
| self.model_config = config | |
| def generate(self): | |
| """ | |
| Generate building image using user's input arguments | |
| """ | |
| # Get user's prompts from dictionary | |
| first_prompt = self.model_config["posprompt_1"] | |
| second_prompt = self.model_config["posprompt_2"] | |
| first_negprompt = self.model_config["negprompt_1"] | |
| second_negprompt = self.model_config["negprompt_2"] | |
| # Get user's image | |
| input_image = self.model_config['image'] | |
| # Get ControlNet conditioning scale value | |
| controlnet_condition = self.model_config["condition_scale"] | |
| # Get guidance scale value | |
| guidance_scale = self.model_config["guidance"] | |
| # Get render speed | |
| render_speed = self.model_config["render_speed"] | |
| # Get LoRA weight's name and their corresponding adapter weights | |
| LoRA_style_names = self.model_config['LoRA_style'] | |
| LoRA_functional_names = self.model_config['LoRA_functional'] | |
| LoRA_enhancement_names = 'Realism' | |
| adapter_weights = self.model_config['adapter_weights'] | |
| LoRA_names = [LoRA_style_names, LoRA_functional_names, LoRA_enhancement_names] | |
| self.pipeline.unload_lora_weights() | |
| print(f"\n\nUNLOADED LORA WEIGHTS\n\n") | |
| os.environ['HF_HOME'] = r"huggingface_cache" | |
| self.pipeline.load_lora_weights( | |
| self.style_models, | |
| weight_name= f"{LoRA_style_names}.safetensors", | |
| adapter_name= LoRA_style_names | |
| ) | |
| self.pipeline.load_lora_weights( | |
| self.functional_models, | |
| weight_name= f"{LoRA_functional_names}.safetensors", | |
| adapter_name= LoRA_functional_names | |
| ) | |
| self.pipeline.load_lora_weights( | |
| self.enhancement, | |
| weight_name= f"realarchvis_xlV10.safetensors", | |
| adapter_name= LoRA_enhancement_names | |
| ) | |
| print(f"Finished loadded 3 LoRA weights {LoRA_style_names}, {LoRA_functional_names} and {LoRA_enhancement_names}") | |
| self.pipeline.set_adapters(adapter_names= LoRA_names, adapter_weights= adapter_weights) | |
| print(f"Adapted 3 lora weights") | |
| # Transform the image into a depth map that is compatible with ControlNet | |
| conditional_image = self.img2canny(input_image) | |
| # Setup the pipeline then generate image | |
| image = self.pipeline( | |
| prompt= first_prompt, | |
| prompt_2= second_prompt, | |
| negative_prompt= first_negprompt, | |
| negative_prompt_2= second_negprompt, | |
| image= conditional_image, | |
| controlnet_conditioning_scale= controlnet_condition, | |
| num_inference_steps= render_speed, | |
| guidance_scale= guidance_scale | |
| ).images[0] | |
| return image | |
| if __name__ == '__main__': | |
| print("Loading") | |
| pipe = ArchIntelligent() | |
| print("Finished") |