154 lines
6.9 KiB
Python
154 lines
6.9 KiB
Python
import re
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with open('youtube_tab_to_pdf.py', 'r', encoding='utf-8') as f:
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code = f.read()
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new_func = """def extract_unique_scroll(frames: List[np.ndarray], threshold: float = SIMILARITY_THRESHOLD) -> List[np.ndarray]:
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print(f"[4/5] 순차 Stable Content Trigger 방식 추출 중...")
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strip_tops, strip_bottoms = [], []
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for frame in frames[:50]:
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strip = _find_white_tab_strip(frame)
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if strip:
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strip_tops.append(strip[0])
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strip_bottoms.append(strip[1])
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if not strip_tops: return []
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median_top = int(np.median(strip_tops))
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median_bottom = int(np.median(strip_bottoms))
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def get_clean_binary(img):
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gray = np.max(img, axis=2)
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_, binary = cv2.threshold(gray, 200, 255, cv2.THRESH_BINARY)
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return binary
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unique_measures = []
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chunk_width = 1280
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last_1fps_bin = None
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last_solid_page = None
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for frame_idx, frame in enumerate(frames):
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h = frame.shape[0]
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tab_crop = frame[max(0, median_top):min(h, median_bottom), :]
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if not _has_tab_content(tab_crop):
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continue
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clean_bin = get_clean_binary(tab_crop)
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if last_1fps_bin is not None:
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# Check stability compared to 1 second ago
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diff = cv2.absdiff(clean_bin, last_1fps_bin)
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error = np.count_nonzero(diff) / clean_bin.size
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if error < 0.05: # Page is fully stabilized (not a fading transition)
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has_changed_since_last_solid = True
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if last_solid_page is not None:
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s_diff = cv2.absdiff(clean_bin, last_solid_page)
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s_err = np.count_nonzero(s_diff) / clean_bin.size
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if s_err < 0.05:
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has_changed_since_last_solid = False
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# We only process this page if it's securely stable AND we haven't already processed it
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if has_changed_since_last_solid:
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last_solid_page = clean_bin.copy()
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# Extract measures
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gray_page = _extract_print_channel(tab_crop)
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bar_coords = _detect_measure_bars(gray_page)
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if bar_coords:
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coords = [0] + bar_coords + [tab_crop.shape[1]]
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coords = sorted(list(set(coords)))
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page_measures = []
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for i in range(len(coords) - 1):
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x_start = coords[i]
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x_end = coords[i+1]
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if x_end - x_start < 40: continue
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page_measures.append(tab_crop[:, x_start:x_end])
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if page_measures:
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if not unique_measures:
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unique_measures.extend(page_measures)
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else:
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first_m = page_measures[0]
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bin_first = get_clean_binary(first_m)
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best_error = 1.0
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best_offset = 0
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anchored = False
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# scan_dist=4 ensures we never loop back to identical repeating choruses from 10 seconds ago!
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for scan_dist in range(1, min(4, len(unique_measures) + 1)):
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past_idx = len(unique_measures) - scan_dist
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past_m = unique_measures[past_idx]
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bin_past = get_clean_binary(past_m)
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if abs(bin_first.shape[1] - bin_past.shape[1]) <= 25:
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hs = min(bin_first.shape[0], bin_past.shape[0])
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ws = min(bin_first.shape[1], bin_past.shape[1])
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s1 = bin_first[:hs, :ws]
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s2 = bin_past[:hs, :ws]
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m_diff = cv2.absdiff(s1, s2)
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error_ratio = np.sum(m_diff > 0) / s1.size
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if error_ratio < best_error:
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best_error = error_ratio
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best_offset = len(unique_measures) - past_idx
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if best_error < 0.15:
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new_start_offset = best_offset
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if new_start_offset < len(page_measures):
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unique_measures.extend(page_measures[new_start_offset:])
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else:
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unique_measures.extend(page_measures)
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last_1fps_bin = clean_bin.copy()
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print(f" -> 동기화 중복 제거 완료: Stability 기반 {len(unique_measures)}개 마디 보존")
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final_chunks = []
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current_row_measures = []
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current_row_width = 0
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for measure_img in unique_measures:
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measure_w = measure_img.shape[1]
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if current_row_width + measure_w > chunk_width and len(current_row_measures) > 0:
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row_img = np.hstack(current_row_measures)
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pad_w = chunk_width - row_img.shape[1]
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if pad_w > 0:
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pad_img = np.full((row_img.shape[0], pad_w, 3), 255, dtype=np.uint8)
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row_img = np.hstack([row_img, pad_img])
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final_chunks.append(row_img)
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current_row_measures = [measure_img]
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current_row_width = measure_w
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else:
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current_row_measures.append(measure_img)
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current_row_width += measure_w
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if current_row_measures:
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row_img = np.hstack(current_row_measures)
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if row_img.shape[1] > chunk_width:
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row_img = row_img[:, :chunk_width]
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else:
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pad_w = chunk_width - row_img.shape[1]
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if pad_w > 0:
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pad_img = np.full((row_img.shape[0], pad_w, 3), 255, dtype=np.uint8)
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row_img = np.hstack([row_img, pad_img])
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final_chunks.append(row_img)
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print(f" -> A4 분할 컷: {len(final_chunks)}개 줄(Row)")
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return final_chunks
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"""
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pattern = r'def extract_unique_scroll\(frames: List\[np\.ndarray\], threshold: float = SIMILARITY_THRESHOLD\) -> List\[np\.ndarray\]:.*?return final_chunks'
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new_code = re.sub(pattern, new_func, code, flags=re.DOTALL)
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with open('youtube_tab_to_pdf.py', 'w', encoding='utf-8') as f:
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f.write(new_code)
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print("Stable Content Trigger Patched.")
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