- Remove "NeDonald's → McDonald's" from LLM vendor correction examples; the
example was biasing the model to return McDonald's for any ambiguous receipt
(Home Depot, Sergio's/HMSHost). Replace with neutral brand examples and add
an explicit instruction not to substitute a brand name absent from the OCR text.
- Add `net\s*fee` to _TOTAL_RE so MIA Parking kiosk receipts ("net fee: 150.00 USD")
are captured by Pass 1 rather than the max-scan which could pick a larger line.
- Add Step 5b grayscale fallback in receipt_parser: if all binarized PSM attempts
yield < 20 chars, retry OCR on the pre-binarization grayscale image. Fixes
dot-matrix and certain thermal-print fonts destroyed by the 160-threshold.
- Tests: 88 passing (test_net_fee_parking, test_vendor_prompt_does_not_contain_mcdonalds,
test_vendor_prompt_instructs_not_to_guess_absent_brand).
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
234 lines
9.7 KiB
Python
234 lines
9.7 KiB
Python
from __future__ import annotations
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import base64
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import hashlib
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import io
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import logging
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import re
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import zipfile
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from pathlib import Path
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logger = logging.getLogger(__name__)
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# Extract YYYYMMDD from filenames like 20260509_180857.jpg
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_DATE_PATTERN = re.compile(r'(\d{4})(\d{2})(\d{2})_\d{6}')
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_MIME = {
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'.jpg': 'image/jpeg', '.jpeg': 'image/jpeg',
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'.png': 'image/png', '.gif': 'image/gif',
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'.bmp': 'image/bmp', '.tiff': 'image/tiff', '.tif': 'image/tiff',
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'.webp': 'image/webp', '.pdf': 'application/pdf',
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'.html': 'text/html', '.htm': 'text/html',
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'.txt': 'text/plain', '.zip': 'application/zip',
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}
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_IMAGE_EXTS = {'.jpg', '.jpeg', '.png', '.gif', '.bmp', '.tiff', '.tif', '.webp'}
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def parse_upload(filename: str, data: bytes) -> list[dict]:
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"""
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Parse one uploaded file into a list of receipt dicts.
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ZIP files are recursively unpacked; all other types return a single entry.
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Each dict: {filename, text, b64, mimetype}
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"""
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ext = Path(filename).suffix.lower()
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if ext == '.zip':
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return _extract_zip(filename, data)
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b64 = base64.b64encode(data).decode()
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mimetype = _MIME.get(ext, 'application/octet-stream')
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sha256 = hashlib.sha256(data).hexdigest()
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# Extract date from timestamp-style filenames (e.g. 20260509_180857.jpg)
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date_from_name = None
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m = _DATE_PATTERN.search(filename)
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if m:
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date_from_name = f'{m.group(1)}-{m.group(2)}-{m.group(3)}'
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if ext in _IMAGE_EXTS:
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text = _ocr_image(data, filename)
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elif ext == '.pdf':
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text = _extract_pdf(data, filename)
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elif ext in ('.html', '.htm'):
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text = _extract_html(data, filename)
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elif ext == '.txt':
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text = data.decode('utf-8', errors='replace')
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else:
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try:
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text = data.decode('utf-8', errors='replace')
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except Exception:
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text = f'[Binary file: {filename}]'
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return [{'filename': filename, 'text': text, 'b64': b64, 'mimetype': mimetype,
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'sha256': sha256, 'date_from_name': date_from_name}]
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def _extract_zip(zip_filename: str, data: bytes) -> list[dict]:
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results = []
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try:
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with zipfile.ZipFile(io.BytesIO(data)) as zf:
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for member in zf.namelist():
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if member.endswith('/'):
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continue
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try:
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member_data = zf.read(member)
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results.extend(parse_upload(Path(member).name, member_data))
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except Exception as exc:
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logger.warning('receipt_parser: zip member %s failed: %s', member, exc)
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except Exception as exc:
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logger.error('receipt_parser: zip %s failed: %s', zip_filename, exc)
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return results
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def _ocr_image(data: bytes, filename: str) -> str:
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"""Extract text from a receipt image using Tesseract."""
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return _ocr_image_tesseract(data, filename)
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def _ocr_image_tesseract(data: bytes, filename: str) -> str:
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"""Tesseract-based OCR pipeline with phone-photo preprocessing."""
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try:
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from PIL import Image, ImageFilter, ImageOps
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import pytesseract
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img = Image.open(io.BytesIO(data))
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# ── Step 1: EXIF rotation correction ─────────────────────────────────
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# Phone photos are stored with EXIF orientation metadata but the pixel
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# data is not actually rotated. Without this fix Tesseract reads a
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# portrait receipt as a landscape image and produces garbage.
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try:
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img = ImageOps.exif_transpose(img)
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except Exception:
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pass # exif_transpose requires Pillow >= 6.0
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# ── Step 1b: Content-based rotation correction ───────────────────────
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# EXIF transpose (Step 1) only corrects for phone-tilt metadata.
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# If the receipt was physically laid sideways in the frame (e.g. a
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# landscape receipt photographed with the phone upright), the pixels
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# are genuinely rotated and EXIF can't help. Ask Tesseract's OSD
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# engine to detect the text orientation and rotate to correct it.
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try:
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osd = pytesseract.image_to_osd(img, config='--psm 0')
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_am = re.search(r'Rotate:\s*(\d+)', osd)
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if _am:
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_angle = int(_am.group(1))
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if _angle:
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img = img.rotate(_angle, expand=True)
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logger.debug('OSD: rotated %s by %d°', filename, _angle)
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except Exception:
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pass # OSD unavailable or not enough text — proceed without correction
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# ── Step 2: Resize to working width (1800px) ──────────────────────────
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max_w = 1800
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if img.width > max_w:
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scale = max_w / img.width
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img = img.resize((max_w, int(img.height * scale)), Image.LANCZOS)
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# Upscale very small images — Tesseract accuracy drops below ~600px
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elif img.width < 600:
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scale = 600 / img.width
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img = img.resize((600, int(img.height * scale)), Image.LANCZOS)
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# ── Step 3: Grayscale + contrast ─────────────────────────────────────
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img = ImageOps.grayscale(img)
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img = ImageOps.autocontrast(img)
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img_gray = img # save grayscale for fallback — before binarization
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# ── Step 4: Sharpen then binarize ─────────────────────────────────────
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# Sharpen first so edges are crisp before thresholding.
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# Threshold 160 (was 140) — gentler for faint thermal-print receipts
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# where light gray text would be wiped out by the stricter threshold.
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img = img.filter(ImageFilter.SHARPEN)
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img = img.point(lambda x: 0 if x < 160 else 255)
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# ── Step 5: OCR — try PSM modes best-suited for receipt layout ────────
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# PSM 6 = single uniform text block (best for single-column receipts)
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# PSM 4 = single column, variable text sizes (wider fallback)
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# PSM 11 = sparse text — last resort for badly segmented images
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for psm in (6, 4, 11):
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try:
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text = pytesseract.image_to_string(
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img, config=f'--oem 3 --psm {psm}').strip()
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if len(text) >= 20:
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logger.debug('Tesseract OCR %s: psm=%d %d chars', filename, psm, len(text))
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return text
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except Exception:
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pass
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# ── Step 5b: Grayscale fallback ───────────────────────────────────────
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# Binarization at threshold 160 can destroy dot-matrix and certain
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# thermal-print fonts (e.g. parking kiosk receipts) where character
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# pixels are close to the threshold and get wiped to white. If every
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# binarized attempt failed, retry on the plain grayscale image —
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# Tesseract handles grey-level input reasonably well for these cases.
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for psm in (6, 4, 11):
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try:
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text = pytesseract.image_to_string(
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img_gray, config=f'--oem 3 --psm {psm}').strip()
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if len(text) >= 20:
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logger.debug('Tesseract grayscale fallback %s: psm=%d %d chars',
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filename, psm, len(text))
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return text
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except Exception:
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pass
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logger.warning('Tesseract OCR %s: all PSM modes returned < 20 chars', filename)
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return ''
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except ImportError:
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logger.warning('pytesseract/Pillow not installed — OCR unavailable for %s', filename)
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return f'[Image: {filename} — install pytesseract+Pillow for OCR]'
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except Exception as exc:
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logger.warning('Tesseract OCR failed for %s: %s', filename, exc)
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return f'[Image: {filename} — OCR failed: {exc}]'
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def _extract_pdf(data: bytes, filename: str) -> str:
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try:
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import pdfplumber
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parts = []
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with pdfplumber.open(io.BytesIO(data)) as pdf:
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for page in pdf.pages:
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t = page.extract_text()
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if t:
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parts.append(t)
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return '\n'.join(parts).strip()
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except ImportError:
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logger.warning('pdfplumber not installed — PDF extraction unavailable for %s', filename)
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return f'[PDF: {filename} — install pdfplumber for text extraction]'
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except Exception as exc:
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logger.warning('PDF extraction failed for %s: %s', filename, exc)
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return f'[PDF: {filename} — extraction failed: {exc}]'
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def _extract_html(data: bytes, filename: str) -> str:
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try:
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from html.parser import HTMLParser
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class _TextExtractor(HTMLParser):
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def __init__(self):
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super().__init__()
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self._parts: list[str] = []
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self._skip = False
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def handle_starttag(self, tag, attrs):
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if tag in ('script', 'style'):
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self._skip = True
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def handle_endtag(self, tag):
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if tag in ('script', 'style'):
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self._skip = False
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def handle_data(self, data):
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if not self._skip:
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s = data.strip()
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if s:
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self._parts.append(s)
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def text(self):
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return ' '.join(self._parts)
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parser = _TextExtractor()
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parser.feed(data.decode('utf-8', errors='replace'))
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return parser.text()
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except Exception as exc:
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logger.warning('HTML extraction failed for %s: %s', filename, exc)
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return f'[HTML: {filename} — extraction failed: {exc}]'
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