feat: init

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2026-01-30 19:41:16 +01:00
commit 76581db30b
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config.py Normal file
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# config.py
SYNC_CONFIG = {
# Sampling
"sample_count": 20,
"scan_duration_sec": 45,
# Matching
"min_match_count": 3,
"min_match_score": 0.70,
"search_window_sec": 30,
# Logic & Decision Thresholds
"fix_drift": True,
"correction_method": "auto", # Options: "auto", "constant", "force_elastic"
"jitter_tolerance_ms": 300,
"min_drift_slope": 0.00005,
"linear_r2_threshold": 0.80,
}

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core/__init__.py Normal file
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core/analysis.py Normal file
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import statistics
from typing import List, Tuple
from config import SYNC_CONFIG
from .types import AnalysisPoint
class Analyzer:
@staticmethod
def filter_outliers(points: List[AnalysisPoint]) -> List[AnalysisPoint]:
"""IQR Filter to remove bad matches."""
if len(points) < 4: return points
offsets = sorted([p.offset_ms for p in points])
q1 = offsets[len(offsets) // 4]
q3 = offsets[3 * len(offsets) // 4]
iqr = q3 - q1
lower, upper = q1 - (1.5 * iqr), q3 + (1.5 * iqr)
return [p for p in points if lower <= p.offset_ms <= upper]
@staticmethod
def calculate_weighted_regression(points: List[AnalysisPoint]) -> Tuple[float, float, float]:
"""Returns (Slope, Intercept, R2) weighted by match confidence."""
n = len(points)
if n < 2: return 1.0, 0.0, 0.0
x = [p.timestamp_ms for p in points]
y = [p.timestamp_ms + p.offset_ms for p in points]
w = [p.match_count for p in points]
sum_w = sum(w)
sum_wx = sum(wi * xi for wi, xi in zip(w, x))
sum_wy = sum(wi * yi for wi, yi in zip(w, y))
sum_wxx = sum(wi * xi * xi for wi, xi in zip(w, x))
sum_wxy = sum(wi * xi * yi for wi, xi, yi in zip(w, x, y))
denom = sum_w * sum_wxx - sum_wx * sum_wx
if denom == 0: return 1.0, 0.0, 0.0
slope = (sum_w * sum_wxy - sum_wx * sum_wy) / denom
intercept = (sum_wy - slope * sum_wx) / sum_w
# Unweighted R2
y_mean = sum(y) / n
ss_tot = sum((yi - y_mean) ** 2 for yi in y)
ss_res = sum((yi - (slope * xi + intercept)) ** 2 for xi, yi in zip(x, y))
r2 = 1 - (ss_res / ss_tot) if ss_tot != 0 else 0
return slope, intercept, r2
@staticmethod
def smooth_points(points: List[AnalysisPoint]) -> List[AnalysisPoint]:
"""Weighted smoothing for Elastic mode."""
if len(points) < 3: return points
points.sort(key=lambda p: p.timestamp_ms)
smoothed = [points[0]]
for i in range(1, len(points) - 1):
prev, curr, next_p = points[i - 1], points[i], points[i + 1]
avg_offset = (prev.offset_ms * 0.25) + (curr.offset_ms * 0.5) + (next_p.offset_ms * 0.25)
smoothed.append(AnalysisPoint(curr.timestamp_ms, avg_offset, curr.match_count))
smoothed.append(points[-1])
return smoothed
@staticmethod
def get_interpolated_offset(target_ms: int, anchors: List[AnalysisPoint]) -> float:
if target_ms <= anchors[0].timestamp_ms: return anchors[0].offset_ms
if target_ms >= anchors[-1].timestamp_ms: return anchors[-1].offset_ms
for i in range(len(anchors) - 1):
p1, p2 = anchors[i], anchors[i + 1]
if p1.timestamp_ms <= target_ms < p2.timestamp_ms:
alpha = (target_ms - p1.timestamp_ms) / (p2.timestamp_ms - p1.timestamp_ms)
return p1.offset_ms + (alpha * (p2.offset_ms - p1.offset_ms))
return anchors[0].offset_ms
@staticmethod
def decide_sync_strategy(points: List[AnalysisPoint]) -> str:
clean_points = Analyzer.filter_outliers(points)
if len(clean_points) < 2: return 'CONSTANT'
offsets = [p.offset_ms for p in clean_points]
std_dev = statistics.stdev(offsets) if len(offsets) > 1 else 0
print(f"\nAnalysis Metrics (Cleaned Data):")
print(f" Spread: {max(offsets) - min(offsets)}ms")
print(f" StdDev: {std_dev:.2f}ms")
if std_dev < SYNC_CONFIG['jitter_tolerance_ms']:
print(" Decision: Offsets are stable (Low Jitter).")
return 'CONSTANT'
if not SYNC_CONFIG['fix_drift']:
print(" Decision: Drift detected but 'fix_drift' is False.")
return 'CONSTANT'
slope, _, r2 = Analyzer.calculate_weighted_regression(clean_points)
drift_per_hour = abs(slope - 1.0) * 3600000
print(f" Linear Fit: R2={r2:.4f}, Slope={slope:.6f} (Drift: {drift_per_hour:.0f}ms/hr)")
if r2 >= SYNC_CONFIG['linear_r2_threshold'] and drift_per_hour > 100:
print(" Decision: Linear drift detected.")
return 'LINEAR'
print(" Decision: Variable/irregular drift.")
return 'ELASTIC'

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core/matcher.py Normal file
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import re
from difflib import SequenceMatcher
from typing import List, Tuple
from config import SYNC_CONFIG
from .types import SubtitleEntry, WhisperSegment
class TextMatcher:
@staticmethod
def normalize_text(text: str) -> str:
return re.sub(r'\s+', ' ', re.sub(r'[^\w\s]', '', text).lower().replace('\n', ' ')).strip()
@staticmethod
def text_similarity(text1: str, text2: str) -> float:
n1, n2 = TextMatcher.normalize_text(text1), TextMatcher.normalize_text(text2)
if not n1 or not n2: return 0.0
return SequenceMatcher(None, n1, n2).ratio()
@staticmethod
def find_matches(subtitles: List[SubtitleEntry], whisper_segments: List[WhisperSegment], chunk_start_ms: int) -> \
List[Tuple[SubtitleEntry, int, float]]:
matches = []
window = SYNC_CONFIG['search_window_sec'] * 1000
scan_dur = SYNC_CONFIG['scan_duration_sec'] * 1000
# Optimization: Pre-filter subtitles
relevant_subs = [
s for s in subtitles
if (chunk_start_ms - window) <= s.start_ms <= (chunk_start_ms + scan_dur + window)
]
for w_seg in whisper_segments:
abs_start = w_seg.start_ms + chunk_start_ms
best_sub = None
best_score = 0.0
for sub in relevant_subs:
if not (abs_start - window <= sub.start_ms <= abs_start + window): continue
if len(sub.raw_text) < 3: continue
score = TextMatcher.text_similarity(sub.raw_text, w_seg.text)
if score > best_score:
best_score = score
best_sub = sub
if best_sub and best_score >= SYNC_CONFIG['min_match_score']:
matches.append((best_sub, abs_start, best_score))
return matches

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core/media.py Normal file
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import json
import os
import subprocess
import tempfile
class MediaHandler:
@staticmethod
def get_media_duration(media_path: str) -> float:
cmd = ["ffprobe", "-v", "error", "-show_entries", "format=duration", "-of",
"default=noprint_wrappers=1:nokey=1", media_path]
try:
return float(subprocess.run(cmd, capture_output=True, text=True).stdout.strip())
except Exception:
return 3600.0
@staticmethod
def get_audio_stream_index(media_path: str, language: str) -> str:
lang_map = {'english': 'eng', 'french': 'fre', 'fra': 'fre', 'german': 'ger', 'spanish': 'spa',
'italian': 'ita'}
target_iso = lang_map.get(language.lower(), 'eng')
cmd = ["ffprobe", "-v", "quiet", "-print_format", "json", "-show_streams", "-select_streams", "a", media_path]
try:
data = json.loads(subprocess.run(cmd, capture_output=True, text=True).stdout)
for i, stream in enumerate(data.get('streams', [])):
if stream.get('tags', {}).get('language', 'und').lower() == target_iso:
return f"0:a:{i}"
return "0:a:0"
except Exception:
return "0:a:0"
@staticmethod
def extract_audio_chunk(media_path: str, start_sec: int, duration_sec: int, stream_index: str) -> str:
fd, tmp_name = tempfile.mkstemp(suffix=".wav")
os.close(fd)
cmd = [
"ffmpeg", "-y", "-ss", str(start_sec), "-i", media_path,
"-map", stream_index, "-t", str(duration_sec),
"-ac", "1", "-ar", "16000", "-vn", "-loglevel", "error", tmp_name
]
subprocess.run(cmd, check=True)
return tmp_name

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core/subtitles.py Normal file
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import os
import re
from typing import List
from .types import SubtitleEntry
class SubtitleHandler:
@staticmethod
def parse_time(t):
h, m, s, ms = int(t[:2]), int(t[3:5]), int(t[6:8]), int(t[9:])
return h * 3600000 + m * 60000 + s * 1000 + ms
@staticmethod
def format_time(ms):
ms = max(0, ms)
h, r = divmod(ms, 3600000)
m, r = divmod(r, 60000)
s, ms = divmod(r, 1000)
return f"{h:02}:{m:02}:{s:02},{ms:03}"
@staticmethod
def parse_srt(filepath: str) -> List[SubtitleEntry]:
if not os.path.exists(filepath): return []
encodings = ['utf-8-sig', 'utf-8', 'latin-1']
content = ""
for enc in encodings:
try:
with open(filepath, 'r', encoding=enc) as f:
content = f.read()
break
except UnicodeDecodeError:
continue
entries = []
pattern = re.compile(r'(\d+)\n(\d{2}:\d{2}:\d{2},\d{3}) --> (\d{2}:\d{2}:\d{2},\d{3})\n((?:(?!\r?\n\r?\n).)*)',
re.DOTALL)
for match in pattern.finditer(content):
start = SubtitleHandler.parse_time(match.group(2))
end = SubtitleHandler.parse_time(match.group(3))
entries.append(SubtitleEntry(int(match.group(1)), start, end, match.group(4).strip()))
return entries
@staticmethod
def write_srt(filepath: str, entries: List[SubtitleEntry]):
with open(filepath, 'w', encoding='utf-8') as f:
for entry in entries:
f.write(
f"{entry.index}\n{SubtitleHandler.format_time(entry.start_ms)} --> {SubtitleHandler.format_time(entry.end_ms)}\n{entry.raw_text}\n\n")

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core/types.py Normal file
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from dataclasses import dataclass
@dataclass
class SubtitleEntry:
index: int
start_ms: int
end_ms: int
raw_text: str
@dataclass
class WhisperSegment:
start_ms: int
end_ms: int
text: str
@dataclass
class AnalysisPoint:
timestamp_ms: int
offset_ms: int
match_count: int
@dataclass
class SubtitleInfo:
episode_path: str
episode_name: str
subtitle_path: str
episode_language: str
subtitles_language: str

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main.py Normal file
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import os
import statistics
import sys
from faster_whisper import WhisperModel
from config import SYNC_CONFIG
from core.analysis import Analyzer
from core.matcher import TextMatcher
from core.media import MediaHandler
from core.subtitles import SubtitleHandler
from core.types import SubtitleInfo, WhisperSegment, AnalysisPoint
def parse_bazarr_args(args) -> SubtitleInfo:
arg_dict = {}
for arg in args[1:]:
if '=' in arg:
key, value = arg.split('=', 1)
arg_dict[key] = value
return SubtitleInfo(
episode_path=arg_dict.get('episode', ''),
episode_name=arg_dict.get('episode_name', 'Unknown'),
subtitle_path=arg_dict.get('subtitles', ''),
episode_language=arg_dict.get('episode_language', 'English'),
subtitles_language=arg_dict.get('subtitles_language', 'English')
)
def main():
info = parse_bazarr_args(sys.argv)
print(f"Target: {info.episode_name}")
# 1. Init
audio_stream = MediaHandler.get_audio_stream_index(info.episode_path, info.episode_language)
media_duration = MediaHandler.get_media_duration(info.episode_path)
print(f"Duration: {int(media_duration // 60)}m. Loading Whisper...")
model_name = "base.en" if 'english' in info.episode_language.lower() else "base"
whisper = WhisperModel(model_name, device="cpu", compute_type="int8", cpu_threads=4)
subtitles = SubtitleHandler.parse_srt(info.subtitle_path)
if not subtitles:
print("Error: Subtitle file is empty.")
return
# 2. Scanning Loop
usable_duration = media_duration - 60
step = usable_duration / (SYNC_CONFIG['sample_count'] + 1)
sample_starts = [30 + (i * step) for i in range(SYNC_CONFIG['sample_count'])]
raw_points = []
print(f"\n--- Scanning {len(sample_starts)} Checkpoints ---")
for start_sec in sample_starts:
print(f"Scanning @ {int(start_sec // 60)}m...", end='', flush=True)
audio_file = None
try:
audio_file = MediaHandler.extract_audio_chunk(
info.episode_path, int(start_sec), SYNC_CONFIG['scan_duration_sec'], audio_stream
)
segments, _ = whisper.transcribe(audio_file, vad_filter=True)
w_segments = [WhisperSegment(int(s.start * 1000), int(s.end * 1000), s.text) for s in list(segments)]
matches = TextMatcher.find_matches(subtitles, w_segments, int(start_sec * 1000))
if len(matches) >= SYNC_CONFIG['min_match_count']:
offsets = [w_time - sub.start_ms for sub, w_time, _ in matches]
median_offset = statistics.median(offsets)
avg_sub_time = statistics.mean([sub.start_ms for sub, _, _ in matches])
raw_points.append(AnalysisPoint(avg_sub_time, median_offset, len(matches)))
print(f" Locked: {median_offset:+.0f}ms ({len(matches)} matches)")
else:
print(f" No Lock")
except Exception as e:
print(f" Error: {e}")
finally:
if audio_file and os.path.exists(audio_file):
os.unlink(audio_file)
if not raw_points:
print("FAILED: No sync points found.")
return
# 3. Decision
raw_points.sort(key=lambda x: x.timestamp_ms)
clean_points = Analyzer.filter_outliers(raw_points)
mode = SYNC_CONFIG['correction_method'].upper()
if mode == "AUTO":
mode = Analyzer.decide_sync_strategy(raw_points)
elif mode == "FORCE_ELASTIC":
mode = "ELASTIC"
else:
mode = "CONSTANT"
print(f"\n--- SYNC MODE: {mode} ---")
final_slope = 1.0
final_intercept = 0.0
final_anchors = []
if mode == "CONSTANT":
final_intercept = statistics.median([p.offset_ms for p in clean_points])
print(f"Applying Global Offset: {final_intercept:+.0f} ms")
elif mode == "LINEAR":
final_slope, final_intercept, _ = Analyzer.calculate_weighted_regression(clean_points)
print(f"Applying Linear Correction: Slope={final_slope:.6f}, Base={final_intercept:.0f}ms")
elif mode == "ELASTIC":
anchors = Analyzer.smooth_points(clean_points)
final_anchors = [AnalysisPoint(0, anchors[0].offset_ms, 0)] + anchors + \
[AnalysisPoint(int(media_duration * 1000), anchors[-1].offset_ms, 0)]
print("Applying Non-Linear (Elastic) Map.")
# 4. Apply
count = 0
for sub in subtitles:
new_start, new_end = sub.start_ms, sub.end_ms
if mode == "CONSTANT":
new_start += final_intercept
new_end += final_intercept
elif mode == "LINEAR":
new_start = (sub.start_ms * final_slope) + final_intercept
new_end = (sub.end_ms * final_slope) + final_intercept
elif mode == "ELASTIC":
off = Analyzer.get_interpolated_offset(sub.start_ms, final_anchors)
new_start += off
new_end += off
sub.start_ms = max(0, int(new_start))
sub.end_ms = max(0, int(new_end))
count += 1
SubtitleHandler.write_srt(info.subtitle_path, subtitles)
print(f"Successfully synced {count} lines.")
if __name__ == '__main__':
# sys.argv = [
# 'sync_script.py',
# 'episode=/home/mathieub/Documents/DEV/PycharmProjects/ai-subtitles-sync/test_data/Superman & Lois - S03E01/Superman & Lois - S03E01 - Closer Bluray-1080p.mkv',
# 'episode_name=Superman & Lois - S03E01',
# 'subtitles=/home/mathieub/Documents/DEV/PycharmProjects/ai-subtitles-sync/test_data/Superman & Lois - S03E01/Superman & Lois - S03E01 - Closer Bluray-1080p.en.hi.srt',
# 'episode_language=English',
# 'subtitles_language=English'
# ]
# sys.argv = [
# 'sync_script.py',
# 'episode=/home/mathieub/Documents/DEV/PycharmProjects/ai-subtitles-sync/test_data/Superman & Lois - S03E07/Superman & Lois - S03E07 - Forever And Always Bluray-1080p.mkv',
# 'episode_name=Superman & Lois - S03E07',
# 'subtitles=/home/mathieub/Documents/DEV/PycharmProjects/ai-subtitles-sync/test_data/Superman & Lois - S03E07/Superman & Lois - S03E07 - Forever And Always Bluray-1080p.en.srt',
# 'episode_language=English',
# 'subtitles_language=English'
# ]
sys.argv = [
'sync_script.py',
'episode=/home/mathieub/Documents/DEV/PycharmProjects/ai-subtitles-sync/test_data/Superman & Lois - S03E05/Superman & Lois - S03E05 - Head On Bluray-1080p.mkv',
'episode_name=Superman & Lois - S03E05',
'subtitles=/home/mathieub/Documents/DEV/PycharmProjects/ai-subtitles-sync/test_data/Superman & Lois - S03E05/Superman & Lois - S03E05 - Head On Bluray-1080p.en.srt',
'episode_language=English',
'subtitles_language=English'
]
main()

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requirements.txt Normal file
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git+https://github.com/absadiki/pywhispercpp