import fitz # PyMuPDF from typing import List, Dict, Any, Tuple import language_tool_python import io def extract_pdf_text(file) -> str: """Extracts full text from a PDF file using PyMuPDF.""" try: # Open the PDF file doc = fitz.open(stream=file.read(), filetype="pdf") if not isinstance(file, str) else fitz.open(file) full_text = "" for page_num, page in enumerate(doc, start=1): text = page.get_text("text") full_text += text + "\n" print(f"Extracted text from page {page_num}: {len(text)} characters.") doc.close() print(f"Total extracted text length: {len(full_text)} characters.") return full_text except Exception as e: print(f"Error extracting text from PDF: {e}") return "" def check_language_issues(full_text: str) -> Dict[str, Any]: """Check for language issues using LanguageTool.""" try: language_tool = language_tool_python.LanguageTool('en-US') matches = language_tool.check(full_text) issues = [] for match in matches: issues.append({ "message": match.message, "context": match.context.strip(), "suggestions": match.replacements[:3] if match.replacements else [], "category": match.category, "rule_id": match.ruleId, "offset": match.offset, "length": match.errorLength }) print(f"Total language issues found: {len(issues)}") return { "total_issues": len(issues), "issues": issues } except Exception as e: print(f"Error checking language issues: {e}") return {"error": str(e)} def highlight_issues_in_pdf(file, language_matches: List[Dict[str, Any]]) -> bytes: """ Highlights language issues in the PDF and returns the annotated PDF as bytes. This function maps LanguageTool matches to specific words in the PDF and highlights those words. """ try: # Open the PDF doc = fitz.open(stream=file.read(), filetype="pdf") if not isinstance(file, str) else fitz.open(file) print(f"Opened PDF with {len(doc)} pages.") # Extract words with positions from each page word_list = [] # List of tuples: (page_number, word, x0, y0, x1, y1) for page_number in range(len(doc)): page = doc[page_number] words = page.get_text("words") # List of tuples: (x0, y0, x1, y1, "word", block_no, line_no, word_no) for w in words: word_text = w[4] # **Fix:** Insert a space before '[' to ensure "globally [2]" instead of "globally[2]" if '[' in word_text: word_text = word_text.replace('[', ' [') word_list.append((page_number, word_text, w[0], w[1], w[2], w[3])) print(f"Total words extracted: {len(word_list)}") # Concatenate all words to form the full text concatenated_text = " ".join([w[1] for w in word_list]) print(f"Concatenated text length: {len(concatenated_text)} characters.") # Iterate over each language issue for idx, issue in enumerate(language_matches, start=1): offset = issue["offset"] length = issue["length"] error_text = concatenated_text[offset:offset+length] print(f"\nIssue {idx}: '{error_text}' at offset {offset} with length {length}") # Find the words that fall within the error span current_pos = 0 target_words = [] for word in word_list: word_text = word[1] word_length = len(word_text) + 1 # +1 for the space if current_pos + word_length > offset and current_pos < offset + length: target_words.append(word) current_pos += word_length if not target_words: print("No matching words found for this issue.") continue # Add highlight annotations to the target words for target in target_words: page_num, word_text, x0, y0, x1, y1 = target page = doc[page_num] # Define a rectangle around the word with some padding rect = fitz.Rect(x0 - 1, y0 - 1, x1 + 1, y1 + 1) # Add a highlight annotation highlight = page.add_highlight_annot(rect) highlight.set_colors(stroke=(1, 1, 0)) # Yellow color highlight.update() print(f"Highlighted '{word_text}' on page {page_num + 1} at position ({x0}, {y0}, {x1}, {y1})") # Save annotated PDF to bytes byte_stream = io.BytesIO() doc.save(byte_stream) annotated_pdf_bytes = byte_stream.getvalue() doc.close() # Save annotated PDF locally for verification with open("annotated_temp.pdf", "wb") as f: f.write(annotated_pdf_bytes) print("Annotated PDF saved as 'annotated_temp.pdf' for manual verification.") return annotated_pdf_bytes except Exception as e: print(f"Error in highlighting PDF: {e}") return b"" def analyze_pdf(file) -> Tuple[Dict[str, Any], bytes]: """Analyzes the PDF for language issues and returns results and annotated PDF.""" try: # Reset file pointer before reading file.seek(0) full_text = extract_pdf_text(file) if not full_text: return {"error": "Failed to extract text from PDF."}, None language_issues = check_language_issues(full_text) if "error" in language_issues: return language_issues, None issues = language_issues.get("issues", []) # Reset file pointer before highlighting file.seek(0) annotated_pdf = highlight_issues_in_pdf(file, issues) if issues else None return language_issues, annotated_pdf except Exception as e: return {"error": str(e)}, None