feat: add --normalize compressor + limiter for input audio

Adds a feedforward dynamic range compressor with a brick-wall limiter
applied in the audio callback. Quiet speech gets +12 dB makeup gain,
loud bursts are attenuated 4:1 above -20 dBFS, and the output is
hard-limited at -1 dBFS so nothing clips. Enabled via --normalize/-n
on `cohere on` and `cohere transcribe`.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
This commit is contained in:
2026-06-06 22:56:21 +08:00
parent 853b5523e5
commit 58fa7526fb
7 changed files with 86 additions and 11 deletions
+7 -3
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@@ -26,6 +26,7 @@ def on(
language: str = typer.Option("en", "--lang", "-l", help="Language code"), language: str = typer.Option("en", "--lang", "-l", help="Language code"),
pause: float = typer.Option(0.3, "--pause", "-p", help="Seconds of silence before sending text"), pause: float = typer.Option(0.3, "--pause", "-p", help="Seconds of silence before sending text"),
device: str = typer.Option(None, "--device", "-d", help="Input device index or name substring (see `cohere devices`)"), device: str = typer.Option(None, "--device", "-d", help="Input device index or name substring (see `cohere devices`)"),
normalize: bool = typer.Option(False, "--normalize", "-n", help="Enable compressor + limiter to even out loudness"),
foreground: bool = typer.Option(False, "--fg", help="Run in foreground (don't daemonize)"), foreground: bool = typer.Option(False, "--fg", help="Run in foreground (don't daemonize)"),
): ):
"""Start transcribing and typing into your focused window.""" """Start transcribing and typing into your focused window."""
@@ -36,7 +37,7 @@ def on(
if foreground: if foreground:
from ..daemon import run_daemon from ..daemon import run_daemon
console.print("[green]Starting cohere (foreground)...[/green]") console.print("[green]Starting cohere (foreground)...[/green]")
run_daemon(language, pause=pause, device=_parse_device(device)) run_daemon(language, pause=pause, device=_parse_device(device), normalize=normalize)
return return
console.print("[green]Starting cohere daemon...[/green]") console.print("[green]Starting cohere daemon...[/green]")
@@ -46,6 +47,8 @@ def on(
cmd += ["--pause", str(pause)] cmd += ["--pause", str(pause)]
if device is not None: if device is not None:
cmd += ["--device", device] cmd += ["--device", device]
if normalize:
cmd += ["--normalize"]
subprocess.Popen( subprocess.Popen(
cmd, cmd,
start_new_session=True, start_new_session=True,
@@ -103,6 +106,7 @@ def transcribe(
language: str = typer.Option("en", "--lang", "-l", help="Language code"), language: str = typer.Option("en", "--lang", "-l", help="Language code"),
pause: float = typer.Option(0.3, "--pause", "-p", help="Seconds of silence before sending text"), pause: float = typer.Option(0.3, "--pause", "-p", help="Seconds of silence before sending text"),
device: str = typer.Option(None, "--device", "-d", help="Input device index or name substring (see `cohere devices`)"), device: str = typer.Option(None, "--device", "-d", help="Input device index or name substring (see `cohere devices`)"),
normalize: bool = typer.Option(False, "--normalize", "-n", help="Enable compressor + limiter to even out loudness"),
): ):
"""One-shot transcription (file, mic, or stream to terminal).""" """One-shot transcription (file, mic, or stream to terminal)."""
from ..model import load_model, transcribe_audio from ..model import load_model, transcribe_audio
@@ -113,12 +117,12 @@ def transcribe(
if stream: if stream:
from ..stream import stream_transcribe from ..stream import stream_transcribe
processor, model = load_model() processor, model = load_model()
stream_transcribe(processor, model, language, silence_frames=pause_seconds_to_frames(pause), device=dev) stream_transcribe(processor, model, language, silence_frames=pause_seconds_to_frames(pause), device=dev, normalize=normalize)
elif mic is not None: elif mic is not None:
from ..model import record_audio from ..model import record_audio
processor, model = load_model() processor, model = load_model()
try: try:
audio = record_audio(mic, device=dev) audio = record_audio(mic, device=dev, normalize=normalize)
console.print("Transcribing...") console.print("Transcribing...")
text = transcribe_audio(processor, model, audio, language) text = transcribe_audio(processor, model, audio, language)
console.print(f"\n{text}\n") console.print(f"\n{text}\n")
+52
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@@ -0,0 +1,52 @@
import math
import numpy as np
from .model import SAMPLE_RATE
class Compressor:
"""Feedforward dynamic range compressor + brick-wall limiter for speech.
Per sample: track an attack/release-smoothed envelope of |x|, compute gain
reduction above the threshold, apply makeup gain, then hard-limit to the ceiling.
"""
def __init__(
self,
threshold_db: float = -20.0,
ratio: float = 4.0,
attack_ms: float = 5.0,
release_ms: float = 80.0,
makeup_db: float = 12.0,
ceiling: float = 10 ** (-1.0 / 20), # -1 dBFS
sample_rate: int = SAMPLE_RATE,
):
self.threshold_db = threshold_db
self.ratio = ratio
self.makeup_gain = 10 ** (makeup_db / 20)
self.ceiling = ceiling
self.knee = 1.0 - 1.0 / ratio
self.a_att = math.exp(-1.0 / (attack_ms * 0.001 * sample_rate))
self.a_rel = math.exp(-1.0 / (release_ms * 0.001 * sample_rate))
self.envelope = 0.0
def process(self, x: np.ndarray) -> np.ndarray:
abs_x = np.abs(x)
env_out = np.empty_like(x)
e = self.envelope
a_att = self.a_att
a_rel = self.a_rel
for i in range(len(x)):
target = abs_x[i]
coef = a_att if target > e else a_rel
e = coef * e + (1.0 - coef) * target
env_out[i] = e
self.envelope = e
env_db = 20.0 * np.log10(np.maximum(env_out, 1e-10))
over = env_db - self.threshold_db
gr_db = np.where(over > 0, over * self.knee, 0.0)
gain = 10 ** (-gr_db / 20.0) * self.makeup_gain
y = x * gain
return np.clip(y, -self.ceiling, self.ceiling).astype(np.float32)
+8 -2
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@@ -10,6 +10,7 @@ import sounddevice as sd
from .backend import WtypeBackend from .backend import WtypeBackend
from .commands import process_and_output from .commands import process_and_output
from .compressor import Compressor
from .model import SAMPLE_RATE, load_model, transcribe_audio from .model import SAMPLE_RATE, load_model, transcribe_audio
from .vad import ( from .vad import (
DEFAULT_SILENCE_FRAMES, DEFAULT_SILENCE_FRAMES,
@@ -80,7 +81,7 @@ def stop_daemon() -> bool:
return False return False
def run_daemon(language: str = "en", pause: float | None = None, device=None): def run_daemon(language: str = "en", pause: float | None = None, device=None, normalize: bool = False):
pid = os.getpid() pid = os.getpid()
_write_state(pid, "starting") _write_state(pid, "starting")
@@ -92,7 +93,10 @@ def run_daemon(language: str = "en", pause: float | None = None, device=None):
silence_frames = pause_seconds_to_frames(pause) if pause else DEFAULT_SILENCE_FRAMES silence_frames = pause_seconds_to_frames(pause) if pause else DEFAULT_SILENCE_FRAMES
processor, model = load_model() processor, model = load_model()
print(f"Using input device: {describe_input_device(device)}") print(f"Using input device: {describe_input_device(device)}")
threshold = calibrate_silence(device=device) comp = Compressor() if normalize else None
if comp:
print(" Normalization: compressor+limiter enabled")
threshold = calibrate_silence(device=device, compressor=comp)
capture_rate = resolve_input_rate(device) capture_rate = resolve_input_rate(device)
capture_blocksize = FRAME_SIZE * capture_rate // SAMPLE_RATE capture_blocksize = FRAME_SIZE * capture_rate // SAMPLE_RATE
vad = VADStateMachine(threshold, silence_frames=silence_frames) vad = VADStateMachine(threshold, silence_frames=silence_frames)
@@ -121,6 +125,8 @@ def run_daemon(language: str = "en", pause: float | None = None, device=None):
return return
elapsed = time.monotonic() - start_time elapsed = time.monotonic() - start_time
frame = resample_to_target(indata[:, 0].copy(), capture_rate) frame = resample_to_target(indata[:, 0].copy(), capture_rate)
if comp is not None:
frame = comp.process(frame)
result = vad.process_frame(frame, elapsed) result = vad.process_frame(frame, elapsed)
if result is not None: if result is not None:
seg_queue.put(result) seg_queue.put(result)
+2 -1
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@@ -16,5 +16,6 @@ parser = argparse.ArgumentParser()
parser.add_argument("--lang", default="en") parser.add_argument("--lang", default="en")
parser.add_argument("--pause", type=float, default=None) parser.add_argument("--pause", type=float, default=None)
parser.add_argument("--device", default=None) parser.add_argument("--device", default=None)
parser.add_argument("--normalize", action="store_true")
args = parser.parse_args() args = parser.parse_args()
run_daemon(args.lang, pause=args.pause, device=_parse_device(args.device)) run_daemon(args.lang, pause=args.pause, device=_parse_device(args.device), normalize=args.normalize)
+6 -2
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@@ -23,7 +23,7 @@ def transcribe_audio(processor, model, audio, language="en"):
return " ".join(texts) if isinstance(texts, list) else texts return " ".join(texts) if isinstance(texts, list) else texts
def record_audio(duration, device=None): def record_audio(duration, device=None, normalize=False):
import sounddevice as sd import sounddevice as sd
from .vad import resolve_input_rate, resample_to_target from .vad import resolve_input_rate, resample_to_target
@@ -31,4 +31,8 @@ def record_audio(duration, device=None):
rate = resolve_input_rate(device) rate = resolve_input_rate(device)
audio = sd.rec(int(duration * rate), samplerate=rate, channels=1, dtype="float32", device=device) audio = sd.rec(int(duration * rate), samplerate=rate, channels=1, dtype="float32", device=device)
sd.wait() sd.wait()
return resample_to_target(audio.flatten(), rate) audio = resample_to_target(audio.flatten(), rate)
if normalize:
from .compressor import Compressor
audio = Compressor().process(audio)
return audio
+8 -2
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@@ -6,13 +6,17 @@ import time
import numpy as np import numpy as np
import sounddevice as sd import sounddevice as sd
from .compressor import Compressor
from .model import SAMPLE_RATE, transcribe_audio from .model import SAMPLE_RATE, transcribe_audio
from .vad import DEFAULT_SILENCE_FRAMES, FRAME_SIZE, VADStateMachine, calibrate_silence, describe_input_device, resample_to_target, resolve_input_rate from .vad import DEFAULT_SILENCE_FRAMES, FRAME_SIZE, VADStateMachine, calibrate_silence, describe_input_device, resample_to_target, resolve_input_rate
def stream_transcribe(processor, model, language, silence_frames=DEFAULT_SILENCE_FRAMES, device=None): def stream_transcribe(processor, model, language, silence_frames=DEFAULT_SILENCE_FRAMES, device=None, normalize=False):
print(f"Using input device: {describe_input_device(device)}") print(f"Using input device: {describe_input_device(device)}")
threshold = calibrate_silence(device=device) comp = Compressor() if normalize else None
if comp:
print(" Normalization: compressor+limiter enabled")
threshold = calibrate_silence(device=device, compressor=comp)
capture_rate = resolve_input_rate(device) capture_rate = resolve_input_rate(device)
capture_blocksize = FRAME_SIZE * capture_rate // SAMPLE_RATE capture_blocksize = FRAME_SIZE * capture_rate // SAMPLE_RATE
vad = VADStateMachine(threshold, silence_frames=silence_frames) vad = VADStateMachine(threshold, silence_frames=silence_frames)
@@ -40,6 +44,8 @@ def stream_transcribe(processor, model, language, silence_frames=DEFAULT_SILENCE
return return
elapsed = time.monotonic() - start_time elapsed = time.monotonic() - start_time
frame = resample_to_target(indata[:, 0].copy(), capture_rate) frame = resample_to_target(indata[:, 0].copy(), capture_rate)
if comp is not None:
frame = comp.process(frame)
result = vad.process_frame(frame, elapsed) result = vad.process_frame(frame, elapsed)
if result is not None: if result is not None:
seg_queue.put(result) seg_queue.put(result)
+3 -1
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@@ -55,12 +55,14 @@ def resample_to_target(audio: np.ndarray, src_rate: int) -> np.ndarray:
return resample_poly(audio, SAMPLE_RATE // g, src_rate // g).astype(np.float32) return resample_poly(audio, SAMPLE_RATE // g, src_rate // g).astype(np.float32)
def calibrate_silence(duration=0.5, device=None): def calibrate_silence(duration=0.5, device=None, compressor=None):
print("Calibrating silence threshold...") print("Calibrating silence threshold...")
rate = resolve_input_rate(device) rate = resolve_input_rate(device)
audio = sd.rec(int(duration * rate), samplerate=rate, channels=1, dtype="float32", device=device) audio = sd.rec(int(duration * rate), samplerate=rate, channels=1, dtype="float32", device=device)
sd.wait() sd.wait()
audio = resample_to_target(audio.flatten(), rate) audio = resample_to_target(audio.flatten(), rate)
if compressor is not None:
audio = compressor.process(audio)
rms = np.sqrt(np.mean(audio ** 2)) rms = np.sqrt(np.mean(audio ** 2))
threshold = max(rms * 3, 0.01) threshold = max(rms * 3, 0.01)
print(f" Ambient RMS: {rms:.4f}, threshold: {threshold:.4f}") print(f" Ambient RMS: {rms:.4f}, threshold: {threshold:.4f}")