6e19adab87
Speaker-ID-Modul (Hermes-Style „echtes Gespraech ohne Wake-Word"-Vision, Phase 1 von 5). Erkennt Stefans Stimme via 192-dim Embedding + Cosine- Match gegen einen persistierten Fingerprint. Module: - speaker_id.py: lazy-loaded ECAPA-TDNN (HuggingFace), enroll/verify/ status/delete. Fingerprint = L2-normalisierter Mittelwert aus N Enrollment-Samples in /voice-id/fingerprint.json. Fail-open: kein Fingerprint → verify() returnt (True, 0.0). - bridge.py: 3 Message-Handler — voice_id_status_request, voice_id_enroll_request (samples[]: base64 16kHz int16 PCM), voice_id_delete_request. Enrollment laeuft im Executor (Torch blockt sonst die Event-Loop). - Dockerfile: torch 2.3.1 + torchaudio mit CUDA-12.1-Wheels (sonst zieht speechbrain CPU-only Torch rein). Container ~1 GB groesser. - docker-compose.yml: ./voice-id:/voice-id Bind-Mount fuer Fingerprint- Persistenz (ueberlebt Container-Restart). - rvs/server.js: 6 neue Message-Types in ALLOWED_TYPES. Phase 2 (next): App-Enrollment-Flow + Diagnostic-Voice-ID-Section. Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
8 lines
230 B
Plaintext
8 lines
230 B
Plaintext
faster-whisper==1.0.3
|
|
websockets>=12.0
|
|
numpy>=1.24
|
|
requests>=2.31
|
|
# Speaker-ID via SpeechBrain ECAPA-TDNN — Stimme von Stefan zuverlaessig
|
|
# rauskennen damit Hintergrund-Gespraeche keine Brain-Calls triggern.
|
|
speechbrain>=1.0.0
|