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import gradio as gr |
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import torch |
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import os |
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import yaml |
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from PIL import Image, ImageOps, ExifTags |
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import shutil |
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import gc |
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import subprocess |
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import google.generativeai as genai |
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import numpy as np |
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import imageio |
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from pathlib import Path |
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import huggingface_hub |
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import json |
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import time |
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from inference import create_ltx_video_pipeline, load_image_to_tensor_with_resize_and_crop, ConditioningItem, calculate_padding |
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from dreamo_helpers import dreamo_generator_singleton |
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config_file_path = "configs/ltxv-13b-0.9.8-distilled.yaml" |
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with open(config_file_path, "r") as file: PIPELINE_CONFIG_YAML = yaml.safe_load(file) |
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LTX_REPO = "Lightricks/LTX-Video" |
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models_dir = "downloaded_models_gradio" |
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Path(models_dir).mkdir(parents=True, exist_ok=True) |
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WORKSPACE_DIR = "aduc_workspace" |
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GEMINI_API_KEY = os.environ.get("GEMINI_API_KEY") |
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VIDEO_FPS = 30 |
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VIDEO_DURATION_SECONDS = 3.5 |
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VIDEO_TOTAL_FRAMES = VIDEO_DURATION_SECONDS * VIDEO_FPS |
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TARGET_RESOLUTION = 720 |
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print("Criando pipelines LTX na CPU (estado de repouso)...") |
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distilled_model_actual_path = huggingface_hub.hf_hub_download(repo_id=LTX_REPO, filename=PIPELINE_CONFIG_YAML["checkpoint_path"], local_dir=models_dir, local_dir_use_symlinks=False) |
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pipeline_instance = create_ltx_video_pipeline( |
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ckpt_path=distilled_model_actual_path, |
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precision=PIPELINE_CONFIG_YAML["precision"], |
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text_encoder_model_name_or_path=PIPELINE_CONFIG_YAML["text_encoder_model_name_or_path"], |
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sampler=PIPELINE_CONFIG_YAML["sampler"], |
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device='cpu' |
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) |
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print("Modelos LTX prontos (na CPU).") |
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def robust_json_parser(raw_text: str) -> dict: |
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"""Um parser robusto que encontra e decodifica o primeiro objeto JSON válido em uma string.""" |
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try: |
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start_index = raw_text.find('{') |
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end_index = raw_text.rfind('}') |
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if start_index != -1 and end_index != -1 and end_index > start_index: |
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json_str = raw_text[start_index : end_index + 1] |
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return json.loads(json_str) |
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else: raise ValueError("Nenhum objeto JSON válido encontrado na resposta da IA.") |
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except json.JSONDecodeError as e: |
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raise ValueError(f"Falha ao decodificar JSON: {e}") |
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def extract_image_exif(image_path: str) -> str: |
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"""Extrai metadados EXIF de uma imagem e os formata como uma string.""" |
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try: |
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img = Image.open(image_path); exif_data = img._getexif() |
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if not exif_data: return "No EXIF metadata found." |
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exif = { ExifTags.TAGS[k]: v for k, v in exif_data.items() if k in ExifTags.TAGS } |
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relevant_tags = ['DateTimeOriginal', 'Model', 'LensModel', 'FNumber', 'ExposureTime', 'ISOSpeedRatings', 'FocalLength'] |
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metadata_str = ", ".join(f"{key}: {exif[key]}" for key in relevant_tags if key in exif) |
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return metadata_str if metadata_str else "No relevant EXIF metadata found." |
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except Exception: return "Could not read EXIF data." |
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def run_storyboard_generation(num_fragments: int, prompt: str, initial_image_path: str): |
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"""Orquestra a geração do roteiro em UMA ÚNICA ETAPA, combinando análise de visão e criação de roteiro.""" |
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if not initial_image_path: raise gr.Error("Por favor, forneça uma imagem de referência inicial.") |
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if not GEMINI_API_KEY: raise gr.Error("Chave da API Gemini não configurada!") |
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exif_metadata = extract_image_exif(initial_image_path) |
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prompt_file = "prompts/unified_storyboard_prompt.txt" |
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with open(os.path.join(os.path.dirname(__file__), prompt_file), "r", encoding="utf-8") as f: template = f.read() |
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director_prompt = template.format(user_prompt=prompt, num_fragments=int(num_fragments), image_metadata=exif_metadata) |
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genai.configure(api_key=GEMINI_API_KEY) |
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model = genai.GenerativeModel('gemini-2.0-flash') |
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img = Image.open(initial_image_path) |
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print("Gerando roteiro com análise de visão integrada...") |
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response = model.generate_content([director_prompt, img]) |
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try: |
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storyboard_data = robust_json_parser(response.text) |
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storyboard = storyboard_data.get("scene_storyboard", []) |
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if not storyboard or len(storyboard) != int(num_fragments): |
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raise ValueError(f"A IA não gerou o número correto de cenas. Esperado: {num_fragments}, Recebido: {len(storyboard)}") |
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return storyboard |
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except Exception as e: |
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raise gr.Error(f"O Roteirista (Gemini) falhou ao criar o roteiro: {e}. Resposta recebida: {response.text}") |
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def get_dreamo_prompt_for_transition(previous_image_path: str, target_scene_description: str) -> str: |
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genai.configure(api_key=GEMINI_API_KEY) |
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prompt_file = "prompts/img2img_evolution_prompt.txt" |
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with open(os.path.join(os.path.dirname(__file__), prompt_file), "r", encoding="utf-8") as f: template = f.read() |
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director_prompt = template.format(target_scene_description=target_scene_description) |
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model = genai.GenerativeModel('gemini-2.0-flash'); img = Image.open(previous_image_path) |
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response = model.generate_content([director_prompt, "Previous Image:", img]) |
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return response.text.strip().replace("\"", "") |
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def run_keyframe_generation(storyboard, initial_ref_image_path, sequential_ref_task, progress=gr.Progress()): |
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if not storyboard: raise gr.Error("Nenhum roteiro para gerar keyframes.") |
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if not initial_ref_image_path or not os.path.exists(initial_ref_image_path): raise gr.Error("A imagem de referência principal é obrigatória.") |
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log_history = "" |
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try: |
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pipeline_instance.to('cpu'); gc.collect(); torch.cuda.empty_cache() |
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dreamo_generator_singleton.to_gpu() |
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with Image.open(initial_ref_image_path) as img: width, height = (img.width // 32) * 32, (img.height // 32) * 32 |
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keyframe_paths, current_ref_image_path = [initial_ref_image_path], initial_ref_image_path |
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for i, scene_description in enumerate(storyboard): |
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progress(i / len(storyboard), desc=f"Pintando Keyframe {i+1}/{len(storyboard)}") |
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log_history += f"\n--- PINTANDO KEYFRAME {i+1}/{len(storyboard)} ---\n" |
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dreamo_prompt = get_dreamo_prompt_for_transition(current_ref_image_path, scene_description) |
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log_history += f" - Roteiro: '{scene_description}'\n - Base: {os.path.basename(current_ref_image_path)}\n - Prompt do D.A.: \"{dreamo_prompt}\"\n" |
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yield {keyframe_log_output: gr.update(value=log_history), keyframe_gallery_output: gr.update(value=keyframe_paths)} |
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reference_items = [{'image_np': np.array(Image.open(current_ref_image_path).convert("RGB")), 'task': sequential_ref_task}] |
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output_path = os.path.join(WORKSPACE_DIR, f"keyframe_{i+1}.png") |
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image = dreamo_generator_singleton.generate_image_with_gpu_management(reference_items=reference_items, prompt=dreamo_prompt, width=width, height=height) |
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image.save(output_path) |
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keyframe_paths.append(output_path) |
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current_ref_image_path = output_path |
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yield {keyframe_log_output: gr.update(value=log_history), keyframe_gallery_output: gr.update(value=keyframe_paths)} |
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except Exception as e: raise gr.Error(f"O Pintor (DreamO) ou Diretor de Arte (Gemini) falhou: {e}") |
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finally: |
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dreamo_generator_singleton.to_cpu(); gc.collect(); torch.cuda.empty_cache() |
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log_history += "\nPintura de todos os keyframes concluída.\n" |
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yield {keyframe_log_output: gr.update(value=log_history), keyframe_gallery_output: gr.update(value=keyframe_paths), keyframe_images_state: keyframe_paths} |
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def get_dynamic_motion_prompt(user_prompt: str, story_history: str, memory_image_path: str, path_image_path: str, destination_image_path: str, path_scene_desc: str, dest_scene_desc: str): |
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if not GEMINI_API_KEY: raise gr.Error("Chave da API Gemini não configurada!") |
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try: |
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genai.configure(api_key=GEMINI_API_KEY) |
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model = genai.GenerativeModel('gemini-2.0-flash') |
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prompt_file = "prompts/dynamic_motion_prompt.txt" |
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with open(os.path.join(os.path.dirname(__file__), prompt_file), "r", encoding="utf-8") as f: template = f.read() |
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cinematographer_prompt = template.format(user_prompt=user_prompt, story_history=story_history, midpoint_scene_description=path_scene_desc, destination_scene_description=dest_scene_desc) |
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mem_img, path_img, dest_img = Image.open(memory_image_path), Image.open(path_image_path), Image.open(destination_image_path) |
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model_contents = ["START Image (Memory):", mem_img, "MIDPOINT Image (Path):", path_img, "DESTINATION Image (Destination):", dest_img, cinematographer_prompt] |
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response = model.generate_content(model_contents) |
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return response.text.strip() |
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except Exception as e: |
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raise gr.Error(f"O Cineasta de IA (Gemini) falhou: {e}. Resposta: {getattr(e, 'text', 'No text available.')}") |
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def run_video_production(prompt_geral, keyframe_images_state, scene_storyboard, seed, cfg, cut_frames_value, progress=gr.Progress()): |
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if not keyframe_images_state or len(keyframe_images_state) < 2: raise gr.Error("Pinte pelo menos um keyframe (para um total de 2+ imagens) na Etapa 2.") |
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log_history = "\n--- FASE 3/4: Iniciando Produção com 'Handoff Cinético'...\n" |
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yield {production_log_output: log_history, video_gallery_glitch: []} |
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MID_COND_FRAME, MID_COND_STRENGTH = 54, 0.5 |
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END_COND_FRAME = VIDEO_TOTAL_FRAMES - 8 |
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target_device = 'cuda' if torch.cuda.is_available() else 'cpu' |
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try: |
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pipeline_instance.to(target_device) |
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video_fragments, story_history = [], "" |
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kinetic_memory_path = keyframe_images_state[0] |
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with Image.open(keyframe_images_state[0]) as img: width, height = img.size |
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num_transitions = len(keyframe_images_state) - 1 |
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for i in range(num_transitions): |
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fragment_num = i + 1 |
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progress(i / num_transitions, desc=f"Filmando Fragmento {fragment_num}/{num_transitions}") |
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memory_path, path_path, destination_path = kinetic_memory_path, keyframe_images_state[i], keyframe_images_state[i+1] |
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path_scene_desc = scene_storyboard[i] |
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dest_scene_desc = scene_storyboard[i+1] if (i+1) < len(scene_storyboard) else "Final scene" |
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log_history += f"\n--- FRAGMENTO {fragment_num} ---\n - Memória Cinética: {os.path.basename(memory_path)}\n - Caminho: {os.path.basename(path_path)}\n - Destino: {os.path.basename(destination_path)}\n" |
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current_motion_prompt = get_dynamic_motion_prompt(prompt_geral, story_history, memory_path, path_path, destination_path, path_scene_desc, dest_scene_desc) |
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story_history += f"\n- Ato {fragment_num}: {current_motion_prompt}" |
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log_history += f" - Instrução do Cineasta: '{current_motion_prompt}'\n"; yield {production_log_output: log_history} |
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if i == 0: |
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conditioning_items_data = [(memory_path, 0, 1.0), (destination_path, END_COND_FRAME, 1.0)] |
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else: |
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conditioning_items_data = [(memory_path, 0, 1.0), (path_path, MID_COND_FRAME, MID_COND_STRENGTH), (destination_path, END_COND_FRAME, 1.0)] |
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full_fragment_path, _ = run_ltx_animation(fragment_num, current_motion_prompt, conditioning_items_data, width, height, seed, cfg, progress) |
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is_last_fragment = (i == num_transitions - 1) |
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if not is_last_fragment: |
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trimmed_fragment_path = os.path.join(WORKSPACE_DIR, f"fragment_{fragment_num}_trimmed.mp4") |
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trim_video_to_frames(full_fragment_path, trimmed_fragment_path, int(cut_frames_value)) |
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eco_output_path = os.path.join(WORKSPACE_DIR, f"eco_from_frag_{fragment_num}.png") |
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kinetic_memory_path = extract_last_frame_as_image(trimmed_fragment_path, eco_output_path) |
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video_fragments.append(trimmed_fragment_path) |
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log_history += f" - Gerado e cortado. Novo Eco Dinâmico: {os.path.basename(kinetic_memory_path)}\n" |
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else: |
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video_fragments.append(full_fragment_path) |
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log_history += " - Último fragmento gerado, mantendo a duração total.\n" |
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yield {production_log_output: log_history, video_gallery_glitch: video_fragments} |
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progress(1.0, desc="Produção Concluída.") |
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yield {production_log_output: log_history, video_gallery_glitch: video_fragments, fragment_list_state: video_fragments} |
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finally: |
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pipeline_instance.to('cpu'); gc.collect(); torch.cuda.empty_cache() |
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def process_image_to_square(image_path: str, size: int = TARGET_RESOLUTION) -> str: |
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if not image_path or not os.path.exists(image_path): return None |
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try: |
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img = Image.open(image_path).convert("RGB"); img_square = ImageOps.fit(img, (size, size), Image.Resampling.LANCZOS) |
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output_path = os.path.join(WORKSPACE_DIR, f"initial_ref_{size}x{size}.png"); img_square.save(output_path) |
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return output_path |
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except Exception as e: raise gr.Error(f"Falha ao processar a imagem de referência: {e}") |
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def load_conditioning_tensor(media_path: str, height: int, width: int) -> torch.Tensor: |
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return load_image_to_tensor_with_resize_and_crop(media_path, height, width) |
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def run_ltx_animation(current_fragment_index, motion_prompt, conditioning_items_data, width, height, seed, cfg, progress=gr.Progress()): |
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progress(0, desc=f"[Câmera LTX] Filmando Cena {current_fragment_index}..."); |
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output_path = os.path.join(WORKSPACE_DIR, f"fragment_{current_fragment_index}_full.mp4"); target_device = pipeline_instance.device |
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conditioning_items = [ConditioningItem(load_conditioning_tensor(p, height, width).to(target_device), s, t) for p, s, t in conditioning_items_data] |
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actual_num_frames = int(round((float(VIDEO_TOTAL_FRAMES) - 1.0) / 8.0) * 8 + 1) |
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padded_h, padded_w = ((height - 1) // 32 + 1) * 32, ((width - 1) // 32 + 1) * 32 |
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padding_vals = calculate_padding(height, width, padded_h, padded_w) |
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for item in conditioning_items: item.media_item = torch.nn.functional.pad(item.media_item, padding_vals) |
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kwargs = {"prompt": motion_prompt, "negative_prompt": "blurry, distorted, bad quality, artifacts", "height": padded_h, "width": padded_w, "num_frames": actual_num_frames, "frame_rate": VIDEO_FPS, "generator": torch.Generator(device=target_device).manual_seed(int(seed) + current_fragment_index), "output_type": "pt", "guidance_scale": float(cfg), "timesteps": PIPELINE_CONFIG_YAML.get("first_pass", {}).get("timesteps"), "conditioning_items": conditioning_items, "decode_timestep": PIPELINE_CONFIG_YAML.get("decode_timestep"), "decode_noise_scale": PIPELINE_CONFIG_YAML.get("decode_noise_scale"), "stochastic_sampling": PIPELINE_CONFIG_YAML.get("stochastic_sampling"), "image_cond_noise_scale": 0.15, "is_video": True, "vae_per_channel_normalize": True, "mixed_precision": (PIPELINE_CONFIG_YAML.get("precision") == "mixed_precision"), "enhance_prompt": False, "decode_every": 4} |
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result_tensor = pipeline_instance(**kwargs).images |
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pad_l, pad_r, pad_t, pad_b = map(int, padding_vals); slice_h = -pad_b if pad_b > 0 else None; slice_w = -pad_r if pad_r > 0 else None |
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cropped_tensor = result_tensor[:, :, :VIDEO_TOTAL_FRAMES, pad_t:slice_h, pad_l:slice_w]; video_np = (cropped_tensor[0].permute(1, 2, 3, 0).cpu().float().numpy() * 255).astype(np.uint8) |
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with imageio.get_writer(output_path, fps=VIDEO_FPS, codec='libx264', quality=8) as writer: |
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for i, frame in enumerate(video_np): writer.append_data(frame) |
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return output_path, actual_num_frames |
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|
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def trim_video_to_frames(input_path: str, output_path: str, frames_to_keep: int) -> str: |
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try: |
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subprocess.run(f"ffmpeg -y -v error -i \"{input_path}\" -vf \"select='lt(n,{frames_to_keep})'\" -an \"{output_path}\"", shell=True, check=True, text=True) |
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return output_path |
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except subprocess.CalledProcessError as e: raise gr.Error(f"FFmpeg falhou ao cortar vídeo: {e.stderr}") |
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|
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def extract_last_frame_as_image(video_path: str, output_image_path: str) -> str: |
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try: |
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subprocess.run(f"ffmpeg -y -v error -sseof -1 -i \"{video_path}\" -update 1 -q:v 1 \"{output_image_path}\"", shell=True, check=True, text=True) |
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return output_image_path |
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except subprocess.CalledProcessError as e: raise gr.Error(f"FFmpeg falhou ao extrair último frame: {e.stderr}") |
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|
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def concatenate_and_trim_masterpiece(fragment_paths: list, progress=gr.Progress()): |
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if not fragment_paths: raise gr.Error("Nenhum fragmento de vídeo para concatenar.") |
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progress(0.5, desc="Montando a obra-prima final..."); |
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try: |
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list_file_path = os.path.join(WORKSPACE_DIR, "concat_list.txt"); final_output_path = os.path.join(WORKSPACE_DIR, "masterpiece_final.mp4") |
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with open(list_file_path, "w") as f: |
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for p in fragment_paths: f.write(f"file '{os.path.abspath(p)}'\n") |
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subprocess.run(f"ffmpeg -y -v error -f concat -safe 0 -i \"{list_file_path}\" -c copy \"{final_output_path}\"", shell=True, check=True, text=True) |
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progress(1.0, desc="Montagem concluída!") |
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return final_output_path |
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except subprocess.CalledProcessError as e: raise gr.Error(f"FFmpeg falhou na concatenação final: {e.stderr}") |
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with gr.Blocks(theme=gr.themes.Soft()) as demo: |
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gr.Markdown("# NOVINHO-4.7 (Arquitetura Otimizada com Handoff Cinético)\n*By Carlex & Gemini & DreamO*") |
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|
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if os.path.exists(WORKSPACE_DIR): shutil.rmtree(WORKSPACE_DIR) |
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os.makedirs(WORKSPACE_DIR); Path("prompts").mkdir(exist_ok=True) |
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scene_storyboard_state, keyframe_images_state, fragment_list_state = gr.State([]), gr.State([]), gr.State([]) |
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prompt_geral_state, processed_ref_path_state = gr.State(""), gr.State("") |
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|
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gr.Markdown("--- \n ## ETAPA 1: O ROTEIRO (IA Roteirista)") |
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with gr.Row(): |
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with gr.Column(scale=1): |
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prompt_input = gr.Textbox(label="Ideia Geral (Prompt)") |
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num_fragments_input = gr.Slider(2, 10, 4, step=1, label="Número de Atos (Keyframes)") |
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image_input = gr.Image(type="filepath", label=f"Imagem de Referência Principal (será {TARGET_RESOLUTION}x{TARGET_RESOLUTION})") |
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director_button = gr.Button("▶️ 1. Gerar Roteiro", variant="primary") |
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with gr.Column(scale=2): storyboard_to_show = gr.JSON(label="Roteiro de Cenas Gerado (em Inglês)") |
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|
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gr.Markdown("--- \n ## ETAPA 2: OS KEYFRAMES (IA Pintor & Diretor de Arte)") |
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with gr.Row(): |
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with gr.Column(scale=2): |
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gr.Markdown("O Diretor de Arte (IA) gerará prompts dinamicamente para cada Keyframe.") |
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with gr.Group(): |
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with gr.Row(): |
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ref_image_inputs_auto = gr.Image(label="Referência Sequencial (Automática)", type="filepath", interactive=False) |
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ref_task_input = gr.Dropdown(choices=["ip", "id", "style"], value="ip", label="Tarefa da Referência") |
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photographer_button = gr.Button("▶️ 2. Pintar Imagens-Chave em Cadeia", variant="primary") |
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with gr.Column(scale=1): |
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keyframe_log_output = gr.Textbox(label="Diário de Bordo do Pintor", lines=15, interactive=False) |
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keyframe_gallery_output = gr.Gallery(label="Imagens-Chave Pintadas", object_fit="contain", height="auto", type="filepath") |
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|
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gr.Markdown("--- \n ## ETAPA 3: A PRODUÇÃO (IA Cineasta & Câmera)") |
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with gr.Row(): |
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with gr.Column(scale=1): |
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with gr.Row(): seed_number = gr.Number(42, label="Seed"); cfg_slider = gr.Slider(1.0, 10.0, 2.5, step=0.1, label="CFG") |
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cut_frames_slider = gr.Slider(label="Duração do Fragmento (Frames)", minimum=36, maximum=VIDEO_TOTAL_FRAMES, value=72, step=1) |
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animator_button = gr.Button("▶️ 3. Produzir Cenas (Handoff Cinético)", variant="primary") |
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production_log_output = gr.Textbox(label="Diário de Bordo da Produção", lines=15, interactive=False) |
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with gr.Column(scale=1): video_gallery_glitch = gr.Gallery(label="Fragmentos Gerados", object_fit="contain", height="auto", type="video") |
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|
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gr.Markdown(f"--- \n ## ETAPA 4: PÓS-PRODUÇÃO (IA Editor)") |
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editor_button = gr.Button("▶️ 4. Montar Vídeo Final", variant="primary") |
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final_video_output = gr.Video(label="A Obra-Prima Final", width=TARGET_RESOLUTION) |
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gr.Markdown( |
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""" |
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--- |
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### A Arquitetura: Handoff Cinético |
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Nossa arquitetura é inspirada no conceito de "Handoff" da engenharia, como em uma corrida de revezamento. Cada fragmento de vídeo passa o "bastão" para o próximo de forma fluida, garantindo um movimento contínuo e ininterrupto. |
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* **O Bastão (O `Eco`):** Em vez de terminar em uma imagem estática, cada fragmento é cortado enquanto ainda está em movimento. O último frame deste clipe cortado, o `Eco`, carrega a "energia cinética" da cena. |
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* **O Handoff (A Geração):** O próximo fragmento é forçado a começar a partir deste `Eco` dinâmico. Isso garante a herança da "física" do movimento, iluminação e composição da cena anterior. |
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* **A Sincronização (O Cineasta de IA):** Para cada Handoff, o Cineasta de IA (`Γ`) analisa o ponto de partida (`Eco`), o caminho (`Keyframe` anterior) e o destino (`Keyframe` futuro) para criar uma instrução de movimento precisa, sincronizando a transição. |
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O resultado é um vídeo que flui como um único plano-sequência, em vez de uma série de clipes colados. |
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""" |
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) |
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director_button.click(fn=run_storyboard_generation, inputs=[num_fragments_input, prompt_input, image_input], outputs=[scene_storyboard_state]).success(fn=lambda s, p: (s, p), inputs=[scene_storyboard_state, prompt_input], outputs=[storyboard_to_show, prompt_geral_state]).success(fn=process_image_to_square, inputs=[image_input], outputs=[processed_ref_path_state]).success(fn=lambda p: p, inputs=[processed_ref_path_state], outputs=[ref_image_inputs_auto]) |
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photographer_button.click(fn=run_keyframe_generation, inputs=[scene_storyboard_state, processed_ref_path_state, ref_task_input], outputs=[keyframe_log_output, keyframe_gallery_output, keyframe_images_state]) |
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animator_button.click(fn=run_video_production, inputs=[prompt_geral_state, keyframe_images_state, scene_storyboard_state, seed_number, cfg_slider, cut_frames_slider], outputs=[production_log_output, video_gallery_glitch, fragment_list_state]) |
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editor_button.click(fn=concatenate_and_trim_masterpiece, inputs=[fragment_list_state], outputs=[final_video_output]) |
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if __name__ == "__main__": |
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demo.queue().launch(server_name="0.0.0.0", share=True) |