Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
3.2 KiB
Live Streaming Microphone Transcription
Summary
Add a --stream mode to transcribe.py that continuously captures audio from the microphone, detects speech segments using energy-based VAD, and transcribes each segment in near-real-time using the Cohere ASR model. Output scrolls as timestamped lines in the terminal. Ctrl+C stops the session.
Context
- Model: CohereLabs/cohere-transcribe-03-2026, max 35s audio clips, 5s overlap for auto-chunking
- Inference speed: ~0.4s for 5-10s audio on GPU (0.04-0.08x real-time)
- Microphone: PD200X Podcast Microphone via PipeWire, 16kHz mono
- Existing code:
transcribe.pyhas--mic(fixed duration) and demo file modes
Architecture
Audio Capture
sounddevice.InputStream with a callback streams 16kHz mono float32 audio into a thread-safe buffer. The callback appends raw samples; a separate consumer reads them.
Voice Activity Detection
Energy-based VAD using RMS amplitude over 50ms frames (800 samples at 16kHz):
- Threshold: Calibrated from
0.5s of ambient silence at startup, with a sensible fallback (-40 dBFS) - State machine:
SILENCE -> SPEAKING -> SILENCE- SILENCE -> SPEAKING: RMS exceeds threshold for >= 3 consecutive frames (~150ms)
- SPEAKING -> SILENCE: RMS stays below threshold for >= 0.8s
- Pre-roll: ~0.3s of audio before speech onset is included to avoid clipping word beginnings
- Safety cap: If speech exceeds 30s without a pause, force a chunk boundary (model max is 35s)
Threading Model
Two threads communicating via queue.Queue:
- Audio thread (sounddevice callback + VAD logic): captures audio, runs VAD state machine, pushes completed speech segments onto the queue
- Transcription thread: pulls segments from the queue, runs
processor() -> model.generate() -> processor.decode(), prints results
No state carried between segments. Each is transcribed independently.
Output
Timestamped lines printed to stdout as each segment is transcribed:
[00:03] Good morning, this is a test of the live captioning system.
[00:08] The model seems to be picking up my voice pretty well.
Shutdown
Ctrl+C sets a stop flag via signal handler. The audio stream stops, any buffered speech is flushed and transcribed, then the program exits cleanly.
CLI Interface
uv run python transcribe.py --stream # stream, default language (en)
uv run python transcribe.py --stream --lang ja # stream in Japanese
uv run python transcribe.py --mic [duration] # existing fixed-duration mode
uv run python transcribe.py # existing demo file mode
Startup Sequence
- Print "Loading model..." and load model
- Record ~0.5s of ambient audio, compute silence threshold
- Print threshold info and "Listening... (Ctrl+C to stop)"
- Begin streaming
Dependencies
No new dependencies. Uses: sounddevice, numpy, threading, queue, signal, time (all already available).
Code Organization
All new logic in transcribe.py. File grows from ~50 to ~150-180 lines. No new files.
Constraints
- Model max input: 35s per chunk (safety cap at 30s)
- Sampling rate must be 16kHz
- Single-channel (mono) audio only