"""SRT (SubRip subtitle) parser. Lenient by design — many "SRT" files in the wild are slightly off-spec (missing index numbers, blank-line variants, BOM, `.` instead of `,` in the milliseconds separator). We accept what we can, drop what we can't, and report counts so the caller can warn the user. Returns a list of segments compatible with the dub-pipeline shape used elsewhere in the backend: { "id": int, "start": float, # seconds "end": float, # seconds "text": str, "text_original": str, # same as `text` on import; mutable later "speaker_id": "Speaker 1", # filler — no diarization on raw .srt } """ from __future__ import annotations import re from dataclasses import dataclass # Captures: HH MM SS sep(`,` or `.`) ms (1-3 digits) _TS = r"(\d{1,2}):([0-5]?\d):([0-5]?\d)[,.](\d{1,3})" # Whole timing line: `00:00:01,000 --> 00:00:04,500` plus optional trailing # cue style hints (X1: Y1: ... ) we just throw away. _TIMING_RE = re.compile(rf"^\s*{_TS}\s*-->\s*{_TS}.*$", re.MULTILINE) def _ts_to_seconds(h: str, m: str, s: str, ms: str) -> float: # Pad ms to 3 digits so "5" -> 0.005, "50" -> 0.050. ms_padded = (ms + "000")[:3] return int(h) * 3600 + int(m) * 60 + int(s) + int(ms_padded) / 1000.0 @dataclass class SrtParseResult: segments: list[dict] skipped_cues: int # malformed cues we couldn't recover dropped_overlaps: int # cues that overlapped a kept one def parse_srt(content: str) -> SrtParseResult: """Parse SRT text and return cleaned, non-overlapping segments. - Skips cues with non-positive duration or unparseable timestamps. - When two cues overlap, keeps the earlier one and shifts the later one's `start` forward to the earlier's `end` (rather than dropping it outright — overlapping is common in captions and the user's intent is usually "both lines should play, in order"). If the adjustment leaves the later cue with zero/negative duration it gets dropped and `dropped_overlaps` increments. """ if not content: return SrtParseResult([], 0, 0) # Strip BOM and normalise line endings; many editors save SRTs as CRLF. text = content.lstrip("").replace("\r\n", "\n").replace("\r", "\n") raw: list[dict] = [] skipped = 0 # Find every timing line, slice the cue text from there to the next # timing line (or end of file). This is robust to missing index # numbers and to spec deviations in the blank-line separator. matches = list(_TIMING_RE.finditer(text)) for i, m in enumerate(matches): try: start = _ts_to_seconds(m.group(1), m.group(2), m.group(3), m.group(4)) end = _ts_to_seconds(m.group(5), m.group(6), m.group(7), m.group(8)) except (ValueError, IndexError): skipped += 1 continue if end <= start: skipped += 1 continue body_start = m.end() body_end = matches[i + 1].start() if i + 1 < len(matches) else len(text) body = text[body_start:body_end].strip("\n") # Drop the trailing index number of the NEXT cue (which got eaten # into our body) by trimming trailing digit-only lines. lines = body.split("\n") while lines and lines[-1].strip().isdigit(): lines.pop() cue_text = "\n".join(line.strip() for line in lines if line.strip()) if not cue_text: skipped += 1 continue raw.append({"start": start, "end": end, "text": cue_text}) raw.sort(key=lambda r: r["start"]) # De-overlap pass. out: list[dict] = [] dropped = 0 last_end = 0.0 for r in raw: s, e = r["start"], r["end"] if s < last_end: s = last_end if e <= s: dropped += 1 continue out.append({"start": s, "end": e, "text": r["text"]}) last_end = e segments = [ { "id": i, "start": round(seg["start"], 3), "end": round(seg["end"], 3), "text": seg["text"], "text_original": seg["text"], "speaker_id": "Speaker 1", } for i, seg in enumerate(out) ] return SrtParseResult(segments=segments, skipped_cues=skipped, dropped_overlaps=dropped)