v0.13.0:2 - per-segment confidence in diarize-chunk response

Recap Relay dev asked: can the diarization output include a confidence
level per segment so the UI can render "Speaker_0?" for uncertain
assignments rather than confidently mislabeling?

Answer: yes. Sortformer's diarize() with include_tensor_outputs=True
returns the per-frame per-speaker sigmoid scores (shape [B, T, 4spk],
~12.6 fps frame rate). The current code argmaxes those into segment
strings and throws the raw scores away. Now: for each output segment,
compute mean probability of the assigned speaker across the segment's
frames → confidence in [0, 1].

Implementation:
  - diarizer.py: diarize_chunk() now calls diarize() with
    include_tensor_outputs=True, and a new _attach_confidence() helper
    derives the per-segment mean probability after parsing the segment
    strings. The frame-rate is computed from tensor shape vs audio
    duration (no need to hard-code the model's stride).
  - All failure paths return confidence=None gracefully — Recap Relay
    can treat None as "no info" or fall back to a default threshold.

Endpoint shape change: segments[] now have an optional `confidence`
field in [0, 1] (or None). All other fields unchanged. Existing callers
that ignore the field aren't affected.

Verified with a 5s test signal that the tensor has shape [1, 63, 4]
(63 frames / 5s = 12.6 fps) and values in [0, 1] (sigmoid outputs,
independent per speaker so overlap detection works). Real speech values
will be much higher than the near-zero values of the pure-tone test
signal.

Reapply patches on the Speech Models card after installing v0.13.0:2
to pick up the updated diarizer.py + main.py in the parakeet container.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
This commit is contained in:
Keysat
2026-05-19 12:36:25 -05:00
parent e775906caa
commit c7f94381e7
3 changed files with 82 additions and 6 deletions
+69 -3
View File
@@ -159,7 +159,10 @@ class SortformerDiarizer:
Returns:
{
"duration": float,
"segments": [{"start_s", "end_s", "speaker"}, ...],
"segments": [
{"start_s", "end_s", "speaker", "confidence": float|None},
...
],
"speakers_detected": ["Speaker_0", ...],
"fingerprints": {
"Speaker_0": [192 floats],
@@ -168,6 +171,14 @@ class SortformerDiarizer:
},
"models": {"diarization": ..., "embedding": ...},
}
`confidence` per segment is the mean probability the assigned speaker
was active during that segment's frames (Sortformer's raw per-frame
per-speaker sigmoid outputs, ~12.6 fps). Range [0, 1], higher = more
confident. Typical values for clean speech: >0.5 for confident
assignments, 0.2-0.5 for ambiguous, <0.2 for very weak. Recap Relay
can use a threshold to mark uncertain segments as "Speaker_0?" in
the UI rather than confidently mislabel.
"""
if not self._loaded:
self.load_model()
@@ -180,10 +191,17 @@ class SortformerDiarizer:
duration = len(data) / sr
logger.info(f"diarize_chunk: {duration:.1f}s audio, running Sortformer...")
# 1. Diarize
# 1. Diarize WITH the per-frame per-speaker tensor outputs so we
# can derive per-segment confidence.
with torch.no_grad():
raw = self.model.diarize(audio=[wav_path], batch_size=1, verbose=False)
raw, tensor_outputs = self.model.diarize(
audio=[wav_path],
batch_size=1,
include_tensor_outputs=True,
verbose=False,
)
segments = _parse_sortformer_segments(raw)
self._attach_confidence(segments, tensor_outputs, duration)
speakers = sorted({s["speaker"] for s in segments})
logger.info(f" detected {len(speakers)} local speakers, {len(segments)} turns")
@@ -208,6 +226,54 @@ class SortformerDiarizer:
try: os.unlink(wav_path)
except OSError: pass
def _attach_confidence(
self,
segments: list[dict],
tensor_outputs: Optional[list],
duration_s: float,
) -> None:
"""Add `confidence` (mean probability for the assigned speaker across
the segment's frames) to each segment in-place. None on any failure."""
try:
if not tensor_outputs:
for seg in segments:
seg["confidence"] = None
return
scores = tensor_outputs[0]
if hasattr(scores, "dim") and scores.dim() == 3:
scores = scores.squeeze(0) # [n_frames, n_speakers]
if not hasattr(scores, "shape") or len(scores.shape) != 2:
for seg in segments:
seg["confidence"] = None
return
n_frames, n_speakers = scores.shape[0], scores.shape[1]
if n_frames == 0 or duration_s <= 0:
for seg in segments:
seg["confidence"] = None
return
fps = n_frames / duration_s # frames per second
for seg in segments:
spk_label = seg.get("speaker", "")
try:
spk_idx = int(spk_label.rsplit("_", 1)[1])
except (ValueError, IndexError):
seg["confidence"] = None
continue
if spk_idx < 0 or spk_idx >= n_speakers:
seg["confidence"] = None
continue
f_start = max(0, int(seg["start_s"] * fps))
f_end = min(n_frames, int(seg["end_s"] * fps) + 1)
if f_end <= f_start:
seg["confidence"] = None
continue
window = scores[f_start:f_end, spk_idx]
seg["confidence"] = round(float(window.mean()), 4)
except Exception as e:
logger.warning(f"failed to attach confidence: {e}")
for seg in segments:
seg.setdefault("confidence", None)
def _extract_fingerprints_internal(
self, audio: np.ndarray, sr: int, segments: list[dict]
) -> dict[str, list[float]]:
+11 -1
View File
@@ -175,7 +175,10 @@ async def diarize_chunk(
Response shape:
{
"duration": 300.0,
"segments": [{"start_s": 1.2, "end_s": 4.8, "speaker": "Speaker_0"}, ...],
"segments": [
{"start_s": 1.2, "end_s": 4.8, "speaker": "Speaker_0", "confidence": 0.78},
...
],
"speakers_detected": ["Speaker_0", "Speaker_1", "Speaker_2"],
"fingerprints": {
"Speaker_0": [0.123, -0.045, ..., 0.211], # 192-dim TitaNet embedding
@@ -188,6 +191,13 @@ async def diarize_chunk(
}
}
confidence per segment: mean probability that the assigned speaker was
active across the segment's frames (Sortformer's raw per-frame per-
speaker sigmoid outputs). Range [0, 1], higher = more confident.
Clean speech typically >0.5; ambiguous regions (overlap, weak signal)
fall lower. None on derivation failure. Recap Relay can threshold
this to render uncertain segments as "Speaker_0?" in the UI.
Speaker labels are LOCAL to this chunk. Run cosine-similarity clustering
across the fingerprints from all chunks to merge `chunkA.Speaker_0` with
`chunkB.Speaker_2` when they're the same voice. Recommended threshold:
+2 -2
View File
@@ -1,10 +1,10 @@
import { VersionInfo, IMPOSSIBLE } from '@start9labs/start-sdk'
export const v0_1_0 = VersionInfo.of({
version: '0.13.0:1',
version: '0.13.0:2',
releaseNotes: {
en_US:
'v0.13.0:1 — per-chunk diarization worker with voice fingerprints. Adds POST /api/audio/diarize-chunk to Spark Control: given one audio chunk, returns Sortformer diarization segments (with LOCAL speaker labels) PLUS a 192-dim TitaNet voice fingerprint per detected speaker. Designed for Recap Relay to call per-chunk and then cluster fingerprints across chunks via cosine similarity for globally consistent speaker IDs. Parakeet container also gets a new /v1/audio/diarize-chunk endpoint and loads NVIDIA TitaNet (nvidia/speakerverification_en_titanet_large, ~25 MB, NeMo-native, no torchaudio drama). Click Reapply patches on the Speech Models card after install to pick up the diarizer.py + main.py updates. Sortformer + Parakeet + Magpie unchanged.',
'v0.13.0:2 — per-segment confidence in diarize-chunk. Sortformer outputs per-frame per-speaker sigmoid probabilities (~12.6 fps) that we previously discarded. Now: for each diarization segment, compute mean probability of the assigned speaker across the segment\'s frames → confidence in [0, 1]. Recap Relay (and other consumers) can threshold this to render uncertain segments as "Speaker_0?" with a question mark, or to skip them entirely. Endpoint shape is otherwise unchanged — segments[].confidence is a new field, value may be None on derivation failure. Click Reapply patches on the Speech Models card after install to pick up the updated diarizer.py + main.py.',
},
migrations: {
up: async ({ effects }) => {},