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diff --git a/docs/research/TTS_RESEARCH_NOTES.md b/docs/research/TTS_RESEARCH_NOTES.md new file mode 100644 index 0000000..72ac8c6 --- /dev/null +++ b/docs/research/TTS_RESEARCH_NOTES.md @@ -0,0 +1,405 @@ +# TTS Replacement Research Notes + +## Executive Summary + +This document summarizes research on replacing the existing TTS endpoint in makima with Qwen3-TTS-12Hz-0.6B-Base, with the goal of supporting voice cloning using Makima's Japanese voice speaking English, and achieving near-live/streaming TTS capabilities. + +--- + +## 1. Current TTS Implementation Analysis + +### 1.1 Current Model: Chatterbox-Turbo + +The existing TTS implementation in `makima/src/tts.rs` uses **ResembleAI/chatterbox-turbo-ONNX**: + +- **Architecture**: 4-component ONNX model pipeline + - `speech_encoder.onnx` - Encodes reference voice audio + - `embed_tokens.onnx` - Token embedding layer + - `language_model.onnx` - Autoregressive language model (24 layers, 16 KV heads, 64 head dim) + - `conditional_decoder.onnx` - Decodes speech tokens to audio waveform + +- **Sample Rate**: 24,000 Hz output +- **Voice Cloning**: Required (no default voice support) +- **Special Tokens**: + - START_SPEECH_TOKEN: 6561 + - STOP_SPEECH_TOKEN: 6562 + - SILENCE_TOKEN: 4299 + +### 1.2 Current API Surface + +**Core TTS Functions:** +```rust +pub fn generate_tts(&mut self, _text: &str) -> Result<Vec<f32>, TtsError> + // Returns VoiceRequired error - voice cloning is mandatory + +pub fn generate_tts_with_voice(&mut self, text: &str, sample_audio_path: &Path) -> Result<Vec<f32>, TtsError> + // Voice cloning from file path + +pub fn generate_tts_with_samples(&mut self, text: &str, samples: &[f32], sample_rate: u32) -> Result<Vec<f32>, TtsError> + // Voice cloning from raw samples +``` + +**Audio Processing:** +- Input audio resampled to 24kHz +- Reference voice encoded into: + - `audio_features` - Acoustic features + - `prompt_tokens` - Token representation + - `speaker_embeddings` - Speaker identity + - `speaker_features` - Voice characteristics + +### 1.3 Current Limitations + +1. **No Streaming Support**: Current implementation generates complete audio before returning +2. **No Default Voice**: Requires voice reference audio for every call +3. **No HTTP Endpoint**: TTS is only available as a Rust library, not exposed via REST API +4. **Single Language**: Optimized for English, unclear multilingual support +5. **High Latency**: Full autoregressive generation before any audio output + +### 1.4 Related Components + +**Audio Processing (`makima/src/audio.rs`):** +- Uses Symphonia for audio decoding (MP3, WAV, FLAC, OGG, etc.) +- Resampling via sinc interpolation +- Stereo to mono mixdown +- Target: 16kHz mono for STT + +**Listen Endpoint (`makima/src/server/handlers/listen.rs`):** +- WebSocket-based streaming STT +- Uses Parakeet for transcription +- Sortformer for speaker diarization +- Already has real-time audio streaming infrastructure + +--- + +## 2. Qwen3-TTS-12Hz-0.6B-Base Model Analysis + +### 2.1 Model Capabilities + +| Feature | Specification | +|---------|---------------| +| **Model Size** | 0.6B parameters (lightweight variant) | +| **Voice Cloning** | 3-second reference audio only | +| **Streaming** | Dual-track hybrid architecture | +| **Minimum Latency** | 97ms end-to-end | +| **Languages** | 10 (Chinese, English, Japanese, Korean, German, French, Russian, Portuguese, Spanish, Italian) | +| **Cross-lingual Cloning** | Japanese voice to English speech supported | +| **Speaker Similarity** | 0.95 (near human-level) | +| **Output Sample Rate** | Up to 48kHz (standard 24kHz) | + +### 2.2 Voice Cloning Requirements + +**Reference Audio:** +- **Minimum Duration**: 3 seconds +- **Recommended Duration**: 5-15 seconds +- **Format**: WAV preferred; also supports URL, base64, numpy array +- **Quality**: Clean, noise-free audio essential +- **Transcript**: Providing `ref_text` significantly improves quality + +**Cross-Lingual Usage (Japanese to English):** +```python +ref_audio = "makima_japanese.wav" # Japanese reference +ref_text = "日本語のテキスト" # Japanese transcription + +wavs, sr = model.generate_voice_clone( + text="This is English text", # English output + language="English", + ref_audio=ref_audio, + ref_text=ref_text, +) +``` + +### 2.3 Technical Requirements + +**Python Dependencies:** +```bash +pip install -U qwen-tts +pip install -U flash-attn --no-build-isolation # For optimal performance +``` + +**Hardware:** +- CUDA-compatible GPU required +- FlashAttention 2 for optimal memory usage +- Float16/bfloat16 precision support +- For <96GB RAM: `MAX_JOBS=4` for flash-attn installation + +**Model Loading:** +```python +from qwen_tts import Qwen3TTSModel +import torch + +model = Qwen3TTSModel.from_pretrained( + "Qwen/Qwen3-TTS-12Hz-0.6B-Base", + device_map="cuda:0", + dtype=torch.bfloat16, + attn_implementation="flash_attention_2", +) +``` + +### 2.4 Streaming Architecture + +**Dual-Track Hybrid Design:** +- Single model supports both streaming and non-streaming +- Audio output begins after minimal text input +- 97ms minimum latency achieved through: + - Proprietary Qwen3-TTS-Tokenizer-12Hz (efficient acoustic compression) + - Discrete multi-codebook LM (eliminates LM+DiT bottleneck) + - Lightweight non-DiT vocoder + +**Reusable Voice Clone Prompt (Critical for Performance):** +```python +# Pre-compute once +prompt_items = model.create_voice_clone_prompt( + ref_audio=ref_audio, + ref_text=ref_text, + x_vector_only_mode=False +) + +# Reuse for multiple generations +wavs, sr = model.generate_voice_clone( + text=["Line 1", "Line 2"], + language=["English", "English"], + voice_clone_prompt=prompt_items, # Cached prompt +) +``` + +--- + +## 3. Makima Voice Audio Sources + +### 3.1 Character Information + +- **Character**: Makima from Chainsaw Man anime +- **Japanese Voice Actress**: Tomori Kusunoki (楠木ともり) +- **English Voice Actress**: Suzie Yeung + +### 3.2 Potential Audio Sources + +| Source | Type | Notes | +|--------|------|-------| +| **Voicy Network Soundboard** | Official clips | MP3 download available, 20+ sound effects | +| **101Soundboards** | Fan-curated clips | Various character sounds | +| **Anime Episodes** | Source material | Highest quality, requires extraction | +| **Nikke: Goddess of Victory** | Game voicelines | Same voice actress (Tomori Kusunoki) | +| **Ko-fi (erusha)** | WAV files | x5 character impression audio files | + +### 3.3 Recommended Approach + +1. **Primary Source**: Extract 5-15 seconds of clean dialogue from Chainsaw Man anime (Japanese audio track) +2. **Selection Criteria**: + - Clear, isolated dialogue (no background music/effects) + - Natural speaking tone (not shouting/whispering) + - Variety of phonemes for better cloning +3. **Transcription**: Provide accurate Japanese transcription for `ref_text` +4. **Processing**: Convert to WAV format, ensure clean audio quality + +### 3.4 Legal Considerations + +- Voice cloning of real voice actors for commercial use may have legal implications +- Synthetic voice generation based on copyrighted characters may require licenses +- Consider using for internal/personal use only, or creating disclaimer + +--- + +## 4. Feasibility Assessment + +### 4.1 Live/Streaming TTS Feasibility: HIGHLY FEASIBLE + +**Evidence:** +- Qwen3-TTS achieves 97ms latency (well under 200ms real-time threshold) +- Existing WebSocket infrastructure in makima (`/api/v1/listen`) can be adapted +- Streaming architecture designed for interactive scenarios + +**Implementation Approach:** +1. Create new WebSocket endpoint `/api/v1/speak` mirroring listen endpoint +2. Pre-compute voice clone prompt on connection start +3. Stream audio chunks as they're generated +4. Use chunked audio encoding (similar to listen's binary message handling) + +### 4.2 Voice Cloning with Japanese Voice: FULLY SUPPORTED + +**Evidence:** +- Qwen3-TTS explicitly supports cross-lingual voice cloning +- Japanese is one of 10 supported languages +- 0.95 speaker similarity maintained across languages + +**Implementation Approach:** +1. Pre-process Makima voice clips (5-15 seconds Japanese audio) +2. Include Japanese transcription +3. Generate English speech while preserving voice characteristics + +### 4.3 Integration Challenges + +| Challenge | Difficulty | Mitigation | +|-----------|-----------|------------| +| **Python to Rust Integration** | Medium | Use Python subprocess or microservice | +| **GPU Memory** | Low | 0.6B model is lightweight | +| **Latency Target** | Low | 97ms base latency is excellent | +| **Audio Format Conversion** | Low | Existing symphonia infrastructure | +| **Default Voice Setup** | Low | One-time voice prompt caching | + +### 4.4 Architecture Options + +**Option A: Python Microservice** +``` +[Makima Rust Server] --HTTP/WebSocket--> [Python TTS Service] + | + [Qwen3-TTS Model] +``` +Pros: Clean separation, easy Python integration +Cons: Network overhead, deployment complexity + +**Option B: PyO3 Rust Bindings** +``` +[Makima Rust Server] --FFI--> [pyo3 Python Bindings] --> [Qwen3-TTS] +``` +Pros: Single process, lower latency +Cons: Complex build, Python GIL issues + +**Option C: ONNX Export (Like Current Chatterbox)** +``` +[Makima Rust Server] --ort--> [Qwen3-TTS ONNX Models] +``` +Pros: Pure Rust, consistent with existing architecture +Cons: May not have ONNX export available for Qwen3-TTS + +**Recommended: Option A (Python Microservice)** +- Fastest time to implementation +- Aligns with Qwen3-TTS's native Python API +- Can use WebSocket for streaming audio chunks +- Easy to deploy alongside existing makima server + +--- + +## 5. Preliminary Technical Approach + +### 5.1 Phase 1: Python TTS Microservice + +```python +# tts_service.py +from fastapi import FastAPI, WebSocket +from qwen_tts import Qwen3TTSModel +import torch +import base64 + +app = FastAPI() +model = None +voice_prompt = None + +@app.on_event("startup") +async def load_model(): + global model, voice_prompt + model = Qwen3TTSModel.from_pretrained( + "Qwen/Qwen3-TTS-12Hz-0.6B-Base", + device_map="cuda:0", + dtype=torch.bfloat16, + ) + # Pre-load Makima voice + voice_prompt = model.create_voice_clone_prompt( + ref_audio="makima_voice.wav", + ref_text="日本語の台詞...", + ) + +@app.websocket("/ws/speak") +async def speak(websocket: WebSocket): + await websocket.accept() + while True: + text = await websocket.receive_text() + wavs, sr = model.generate_voice_clone( + text=text, + language="English", + voice_clone_prompt=voice_prompt, + ) + # Stream audio chunks + audio_bytes = wavs[0].tobytes() + await websocket.send_bytes(audio_bytes) +``` + +### 5.2 Phase 2: Rust Integration + +```rust +// makima/src/server/handlers/speak.rs +pub async fn websocket_handler( + ws: WebSocketUpgrade, + State(state): State<SharedState>, +) -> Response { + ws.on_upgrade(|socket| handle_speak_socket(socket, state)) +} + +async fn handle_speak_socket(socket: WebSocket, state: SharedState) { + // Connect to Python TTS service + let tts_ws = tokio_tungstenite::connect_async("ws://localhost:8001/ws/speak").await?; + + // Forward text to TTS, stream audio back to client + // ... +} +``` + +### 5.3 API Design + +**WebSocket Endpoint: `/api/v1/speak`** + +**Client to Server Messages:** +```json +{ + "type": "start", + "sample_rate": 24000, + "encoding": "pcm16" +} + +{ + "type": "speak", + "text": "Hello, I am Makima." +} + +{ + "type": "stop" +} +``` + +**Server to Client Messages:** +```json +{ + "type": "ready", + "session_id": "uuid" +} + +{ + "type": "audio_chunk", + "data": "<base64-encoded-audio>", + "is_final": false +} + +{ + "type": "complete" +} +``` + +--- + +## 6. Next Steps + +### Immediate Actions +1. [ ] Obtain Makima voice clips (5-15 seconds clean Japanese audio) +2. [ ] Create Japanese transcription of voice clips +3. [ ] Test Qwen3-TTS voice cloning with Makima samples +4. [ ] Benchmark latency on target hardware + +### Development Phases +1. **Phase 1**: Python TTS microservice proof-of-concept +2. **Phase 2**: WebSocket streaming integration +3. **Phase 3**: Rust proxy endpoint in makima +4. **Phase 4**: Listen page integration for bidirectional speech + +### Hardware Requirements +- CUDA-compatible GPU (minimum) +- Recommended: 8GB+ VRAM for 0.6B model with FlashAttention 2 +- Python 3.12+ environment + +--- + +## References + +- [Qwen3-TTS-12Hz-0.6B-Base on HuggingFace](https://huggingface.co/Qwen/Qwen3-TTS-12Hz-0.6B-Base) +- [Qwen3-TTS GitHub Repository](https://github.com/QwenLM/Qwen3-TTS) +- [Behind The Voice Actors - Makima](https://www.behindthevoiceactors.com/tv-shows/Chainsaw-Man/Makima/) +- [Voicy Network Chainsaw Man Soundboard](https://www.voicy.network/official-soundboards/anime/chainsaw-man) |
