import os import sys import logging import numpy as np import torch import gradio as gr from typing import Optional, Tuple from funasr import AutoModel from pathlib import Path os.environ["TOKENIZERS_PARALLELISM"] = "false" import voxcpm logging.basicConfig( level=logging.INFO, format="%(asctime)s - %(levelname)s - %(message)s", handlers=[logging.StreamHandler(sys.stdout)], ) logger = logging.getLogger(__name__) # ---------- Inline i18n (en + zh-CN only) ---------- _USAGE_INSTRUCTIONS_EN = ( "**VoxCPM2 — Three Modes of Speech Generation:**\n\n" "🎨 **Voice Design** — Create a brand-new voice \n" "No reference audio required. Describe the desired voice characteristics " "(gender, age, tone, emotion, pace …) in **Control Instruction**, and VoxCPM2 " "will craft a unique voice from your description alone.\n\n" "🎛️ **Controllable Cloning** — Clone a voice with optional style guidance \n" "Upload a reference audio clip, then use **Control Instruction** to steer " "emotion, speaking pace, and overall style while preserving the original timbre.\n\n" "🎙️ **Ultimate Cloning** — Reproduce every vocal nuance through audio continuation \n" "Turn on **Ultimate Cloning Mode** and provide (or auto-transcribe) the reference audio's transcript. " "The model treats the reference clip as a spoken prefix and seamlessly **continues** from it, faithfully preserving every vocal detail." "Note: This mode will disable Control Instruction." ) _EXAMPLES_FOOTER_EN = ( "---\n" "**💡 Voice Description Examples:** \n" "Try the following Control Instructions to explore different voices: \n\n" "**Example 1 — Gentle & Melancholic Girl** \n" '`Control Instruction`: *"A young girl with a soft, sweet voice. ' 'Speaks slowly with a melancholic, slightly tsundere tone."* \n' '`Target Text`: *"I never asked you to stay… It\'s not like I care or anything. ' 'But… why does it still hurt so much now that you\'re gone?"* \n\n' "**Example 2 — Laid-Back Surfer Dude** \n" '`Control Instruction`: *"Relaxed young male voice, slightly nasal, ' 'lazy drawl, very casual and chill."* \n' '`Target Text`: *"Dude, did you see that set? The waves out there are totally gnarly today. ' "Just catching barrels all morning — it's like, totally righteous, you know what I mean?\"*" ) _USAGE_INSTRUCTIONS_ZH = ( "**VoxCPM2 — 三种语音生成方式:**\n\n" "🎨 **声音设计(Voice Design)** \n" "无需参考音频。在 **Control Instruction** 中描述目标音色特征" "(性别、年龄、语气、情绪、语速等),VoxCPM2 即可为你从零创造独一无二的声音。\n\n" "🎛️ **可控克隆(Controllable Cloning)** \n" "上传参考音频,同时可选地使用 **Control Instruction** 来指定情绪、语速、风格等表达方式," "在保留原始音色的基础上灵活控制说话风格。\n\n" "🎙️ **极致克隆(Ultimate Cloning)** \n" "开启 **极致克隆模式** 并提供参考音频的文字内容(可自动识别)。" "模型会将参考音频视为已说出的前文,以**音频续写**的方式完整还原参考音频中的所有声音细节。" "注意:该模式与可控克隆模式互斥,将禁用Control Instruction。\n\n" ) _EXAMPLES_FOOTER_ZH = ( "---\n" "**💡 声音描述示例(中英文均可):** \n\n" "**示例 1 — 深宫太后** \n" '`Control Instruction`: *"中老年女性,声音低沉阴冷,语速缓慢而有力,' '字字深思熟虑,带有深不可测的城府与威慑感。"* \n' '`Target Text`: *"哀家在这深宫待了四十年,什么风浪没见过?你以为瞒得过哀家?"* \n\n' "**示例 2 — 暴躁驾校教练** \n" '`Control Instruction`: *"暴躁的中年男声,语速快,充满无奈和愤怒"* \n' '`Target Text`: *"踩离合!踩刹车啊!你往哪儿开呢?前面是树你看不见吗?' '我教了你八百遍了,打死方向盘!你是不是想把车给我开到沟里去?"* \n\n' "---\n" "**🗣️ 方言生成指南:** \n" "要生成地道的方言语音,请在 **Target Text** 中直接使用方言词汇和句式," "并在 **Control Instruction** 中描述方言特征。 \n\n" "**示例 — 广东话** \n" '`Control Instruction`: *"粤语,中年男性,语气平淡"* \n' '✅ 正确(粤语表达):*"伙計,唔該一個A餐,凍奶茶少甜!"* \n' '❌ 错误(普通话原文):*"伙计,麻烦来一个A餐,冻奶茶少甜!"* \n\n' "**示例 — 河南话** \n" '`Control Instruction`: *"河南话,接地气的大叔"* \n' '✅ 正确(河南话表达):*"恁这是弄啥嘞?晌午吃啥饭?"* \n' '❌ 错误(普通话原文):*"你这是在干什么呢?中午吃什么饭?"* \n\n' "🤖 **小技巧:** 不知道方言怎么写?可以用豆包、DeepSeek、Kimi 等 AI 助手" "将普通话翻译为方言文本,再粘贴到 Target Text 中即可。 \n\n" ) _I18N_TRANSLATIONS = { "en": { "reference_audio_label": "🎤 Reference Audio (optional — upload for cloning)", "show_prompt_text_label": "🎙️ Ultimate Cloning Mode (transcript-guided cloning)", "show_prompt_text_info": "Auto-transcribes reference audio for every vocal nuance reproduced. Control Instruction will be disabled when active.", "prompt_text_label": "Transcript of Reference Audio (auto-filled via ASR, editable)", "prompt_text_placeholder": "The transcript of your reference audio will appear here …", "control_label": "🎛️ Control Instruction (optional — supports Chinese & English)", "control_placeholder": "e.g. A warm young woman / 年轻女性,温柔甜美 / Excited and fast-paced", "target_text_label": "✍️ Target Text — the content to speak", "generate_btn": "🔊 Generate Speech", "generated_audio_label": "Generated Audio", "advanced_settings_title": "⚙️ Advanced Settings", "ref_denoise_label": "Reference audio enhancement", "ref_denoise_info": "Apply ZipEnhancer denoising to the reference audio before cloning", "normalize_label": "Text normalization", "normalize_info": "Normalize numbers, dates, and abbreviations via wetext", "cfg_label": "CFG (guidance scale)", "cfg_info": "Higher → closer to the prompt / reference; lower → more creative variation", "dit_steps_label": "LocDiT flow-matching steps", "dit_steps_info": "LocDiT flow-matching steps — more steps → maybe better audio quality, but slower", "usage_instructions": _USAGE_INSTRUCTIONS_EN, "examples_footer": _EXAMPLES_FOOTER_EN, }, "zh-CN": { "reference_audio_label": "🎤 参考音频(可选 — 上传后用于克隆)", "show_prompt_text_label": "🎙️ 极致克隆模式(基于文本引导的极致克隆)", "show_prompt_text_info": "自动识别参考音频文本,完整还原音色、节奏、情感等全部声音细节。开启后 Control Instruction 将暂时禁用", "prompt_text_label": "参考音频内容文本(ASR 自动填充,可手动编辑)", "prompt_text_placeholder": "参考音频的文字内容将自动识别并显示在此处 …", "control_label": "🎛️ Control Instruction(可选 — 支持中英文描述)", "control_placeholder": "如:年轻女性,温柔甜美 / A warm young woman / 暴躁老哥,语速飞快", "target_text_label": "✍️ Target Text — 要合成的目标文本", "generate_btn": "🔊 开始生成", "generated_audio_label": "生成结果", "advanced_settings_title": "⚙️ 高级设置", "ref_denoise_label": "参考音频降噪增强", "ref_denoise_info": "克隆前使用 ZipEnhancer 对参考音频进行降噪处理", "normalize_label": "文本规范化", "normalize_info": "自动规范化数字、日期及缩写(基于 wetext)", "cfg_label": "CFG(引导强度)", "cfg_info": "数值越高 → 越贴合提示/参考音色;数值越低 → 生成风格更自由", "dit_steps_label": "LocDiT 流匹配迭代步数", "dit_steps_info": "LocDiT 流匹配生成迭代步数 — 步数越多 → 可能生成更好的音频质量,但速度变慢", "usage_instructions": _USAGE_INSTRUCTIONS_ZH, "examples_footer": _EXAMPLES_FOOTER_ZH, }, "zh-Hans": None, # alias, filled below "zh": None, # alias, filled below } _I18N_TRANSLATIONS["zh-Hans"] = _I18N_TRANSLATIONS["zh-CN"] _I18N_TRANSLATIONS["zh"] = _I18N_TRANSLATIONS["zh-CN"] for _d in _I18N_TRANSLATIONS.values(): if _d is not None: for _k, _v in _I18N_TRANSLATIONS["en"].items(): _d.setdefault(_k, _v) I18N = gr.I18n(**_I18N_TRANSLATIONS) DEFAULT_TARGET_TEXT = ( "VoxCPM2 is a creative multilingual TTS model from ModelBest, " "designed to generate highly realistic speech." ) _CUSTOM_CSS = """ .logo-container { text-align: center; margin: 0.5rem 0 1rem 0; } .logo-container img { height: 80px; width: auto; max-width: 200px; display: inline-block; } /* Toggle switch style */ .switch-toggle { padding: 8px 12px; border-radius: 8px; background: var(--block-background-fill); } .switch-toggle input[type="checkbox"] { appearance: none; -webkit-appearance: none; width: 44px; height: 24px; background: #ccc; border-radius: 12px; position: relative; cursor: pointer; transition: background 0.3s ease; flex-shrink: 0; } .switch-toggle input[type="checkbox"]::after { content: ""; position: absolute; top: 2px; left: 2px; width: 20px; height: 20px; background: white; border-radius: 50%; transition: transform 0.3s ease; box-shadow: 0 1px 3px rgba(0,0,0,0.2); } .switch-toggle input[type="checkbox"]:checked { background: var(--color-accent); } .switch-toggle input[type="checkbox"]:checked::after { transform: translateX(20px); } """ _APP_THEME = gr.themes.Soft( primary_hue="blue", secondary_hue="gray", neutral_hue="slate", font=[gr.themes.GoogleFont("Inter"), "Arial", "sans-serif"], ) # ---------- Model ---------- class VoxCPMDemo: def __init__(self, model_id: str = "openbmb/VoxCPM2") -> None: self.device = "cuda" if torch.cuda.is_available() else "cpu" logger.info(f"Running on device: {self.device}") self.asr_model_id = "iic/SenseVoiceSmall" self.asr_model: Optional[AutoModel] = AutoModel( model=self.asr_model_id, disable_update=True, log_level="DEBUG", device="cuda:0" if self.device == "cuda" else "cpu", ) self.voxcpm_model: Optional[voxcpm.VoxCPM] = None self._model_id = model_id def get_or_load_voxcpm(self) -> voxcpm.VoxCPM: if self.voxcpm_model is not None: return self.voxcpm_model logger.info(f"Loading model: {self._model_id}") self.voxcpm_model = voxcpm.VoxCPM.from_pretrained(self._model_id, optimize=True) logger.info("Model loaded successfully.") return self.voxcpm_model def prompt_wav_recognition(self, prompt_wav: Optional[str]) -> str: if prompt_wav is None: return "" res = self.asr_model.generate(input=prompt_wav, language="auto", use_itn=True) return res[0]["text"].split("|>")[-1] def _build_generate_kwargs( self, *, final_text: str, audio_path: Optional[str], prompt_text_clean: Optional[str], cfg_value_input: float, do_normalize: bool, denoise: bool, inference_timesteps: int = 10, ) -> dict: generate_kwargs = dict( text=final_text, reference_wav_path=audio_path, cfg_value=float(cfg_value_input), inference_timesteps=inference_timesteps, normalize=do_normalize, denoise=denoise, ) if prompt_text_clean and audio_path: generate_kwargs["prompt_wav_path"] = audio_path generate_kwargs["prompt_text"] = prompt_text_clean return generate_kwargs def generate_tts_audio( self, text_input: str, control_instruction: str = "", reference_wav_path_input: Optional[str] = None, prompt_text: str = "", cfg_value_input: float = 2.0, do_normalize: bool = True, denoise: bool = True, inference_timesteps: int = 10, ) -> Tuple[int, np.ndarray]: current_model = self.get_or_load_voxcpm() text = (text_input or "").strip() if len(text) == 0: raise ValueError("Please input text to synthesize.") control = (control_instruction or "").strip() final_text = f"({control}){text}" if control else text audio_path = reference_wav_path_input if reference_wav_path_input else None prompt_text_clean = (prompt_text or "").strip() or None if audio_path and prompt_text_clean: logger.info(f"[Voice Cloning] prompt_wav + prompt_text + reference_wav") elif audio_path: logger.info(f"[Voice Control] reference_wav only") else: logger.info(f"[Voice Design] control: {control[:50] if control else 'None'}...") logger.info(f"Generating audio for text: '{final_text[:80]}...'") generate_kwargs = self._build_generate_kwargs( final_text=final_text, audio_path=audio_path, prompt_text_clean=prompt_text_clean, cfg_value_input=cfg_value_input, do_normalize=do_normalize, denoise=denoise, inference_timesteps=inference_timesteps, ) wav = current_model.generate(**generate_kwargs) return (current_model.tts_model.sample_rate, wav) # ---------- UI ---------- def create_demo_interface(demo: VoxCPMDemo): gr.set_static_paths(paths=[Path.cwd().absolute() / "assets"]) def _generate( text: str, control_instruction: str, ref_wav: Optional[str], use_prompt_text: bool, prompt_text_value: str, cfg_value: float, do_normalize: bool, denoise: bool, dit_steps: int, ): actual_prompt_text = prompt_text_value.strip() if use_prompt_text else "" actual_control = "" if use_prompt_text else control_instruction sr, wav_np = demo.generate_tts_audio( text_input=text, control_instruction=actual_control, reference_wav_path_input=ref_wav, prompt_text=actual_prompt_text, cfg_value_input=cfg_value, do_normalize=do_normalize, denoise=denoise, inference_timesteps=int(dit_steps), ) return (sr, wav_np) def _on_toggle_instant(checked): """Instant UI toggle — no ASR, no blocking.""" if checked: return ( gr.update(visible=True, value="", placeholder="Recognizing reference audio..."), gr.update(visible=False), ) return ( gr.update(visible=False), gr.update(visible=True, interactive=True), ) def _run_asr_if_needed(checked, audio_path): """Run ASR after the UI has updated. Only when toggled ON.""" if not checked or not audio_path: return gr.update() try: logger.info("Running ASR on reference audio...") asr_text = demo.prompt_wav_recognition(audio_path) logger.info(f"ASR result: {asr_text[:60]}...") return gr.update(value=asr_text) except Exception as e: logger.warning(f"ASR recognition failed: {e}") return gr.update(value="") with gr.Blocks() as interface: gr.HTML( '
'
"