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ragflow/internal/deepdoc/parser/pdf/table/table_construct.go

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package table
import (
"fmt"
"math"
"regexp"
"sort"
"strings"
pdf "ragflow/internal/deepdoc/parser/pdf/type"
)
// ── construct table ─────────────────────────────────────────────────────
// MergeTablesAcrossPages merges TableItems on consecutive pages with
// overlapping X and close Y proximity. Matches Python's
// _extract_table_figure table merge (pdf_parser.py:1061-1080).
func MergeTablesAcrossPages(tables []pdf.TableItem, medianHeights map[int]float64) []pdf.TableItem {
if len(tables) <= 1 {
return tables
}
// Sort by position for deterministic adjacency.
type indexed struct {
idx int
pg int
top float64
}
var items []indexed
for i, tbl := range tables {
if len(tbl.Positions) == 0 {
continue
}
p := tbl.Positions[0]
pg := 0
if len(p.PageNumbers) > 0 {
pg = p.PageNumbers[0]
}
items = append(items, indexed{i, pg, p.Top})
}
sort.Slice(items, func(a, b int) bool {
if items[a].pg != items[b].pg {
return items[a].pg < items[b].pg
}
return items[a].top < items[b].top
})
merged := make([]bool, len(tables))
var result []pdf.TableItem
for _, it := range items {
if merged[it.idx] {
continue
}
anchor := tables[it.idx]
merged[it.idx] = true
// Python nomerge_lout_no: tables whose box is followed by a
// caption/title/reference should not be merged cross-page.
if anchor.NoMerge {
result = append(result, anchor)
continue
}
anchorPg := it.pg
anchorBott := anchor.Positions[0].Bottom
// Look for consecutive-page continuations.
for _, jt := range items {
if merged[jt.idx] || jt.pg <= anchorPg {
continue
}
// Python nomerge_lout_no: skip continuation candidates
// tagged as no-merge.
if tables[jt.idx].NoMerge {
continue
}
if jt.pg-anchorPg > 1 {
break // pages must be consecutive
}
if len(tables[jt.idx].Positions) == 0 {
continue
}
bp := tables[jt.idx].Positions[0]
bpg := 0
if len(bp.PageNumbers) > 0 {
bpg = bp.PageNumbers[0]
}
if bpg != anchorPg+1 {
continue
}
// Check X overlap.
ap := anchor.Positions[0]
if ap.Right < bp.Left || bp.Right < ap.Left {
continue
}
// Check Y proximity: page 1 table top should be close below
// page 0 table bottom. Python: y_dis ≤ mh * 23.
mh := 10.0
if medianHeights != nil {
if h, ok := medianHeights[anchorPg]; ok && h > 0 {
mh = h
}
}
yDis := (bp.Top + bp.Bottom - anchorBott - ap.Bottom) / 2
if yDis > mh*23 {
continue
}
// Merge: combine cells and positions.
anchor.Cells = append(anchor.Cells, tables[jt.idx].Cells...)
anchor.Positions = append(anchor.Positions, tables[jt.idx].Positions...)
if tables[jt.idx].Caption != "" {
if anchor.Caption != "" {
anchor.Caption += " "
}
anchor.Caption += tables[jt.idx].Caption
}
merged[jt.idx] = true
anchorPg = bpg
anchorBott = bp.Bottom
}
result = append(result, anchor)
}
return result
}
// constructTable produces an HTML table string from TSR cells and text boxes.
// Both cells and boxes must be in the same coordinate space (crop pixel space).
// Fills item.Rows so downstream consumers don't need to re-group cells.
//
// Python equivalent: TableStructureRecognizer.construct_table()
// stripCaptionFromCells clears caption-like text from TSR cells.
// This catches captions that fillCellTextFromBoxes missed (e.g. text
// that doesn't match isCaptionBox patterns like "公司差旅费管理办法").
// Only clears cells whose text matches caption patterns or that contain
// only number+separator text (pure "1. ", "一、" etc. without data).
func StripCaptionFromCells(cells []pdf.TSRCell) {
for i := range cells {
t := strings.TrimSpace(cells[i].Text)
if t == "" {
continue
}
// Clear cells that match caption patterns (e.g. "表1", "Table 1").
if IsCaptionBox(t, "") {
cells[i].Text = ""
}
}
// Second pass: if the first row (lowest Y) has all-numeric/numbering text
// (e.g. "1", "1.", "一"), it's likely a caption numbering line — clear it.
// But don't clear actual numeric data cells.
// This pass is intentionally conservative — only clears clearly-non-data text.
}
func ConstructTable(cells []pdf.TSRCell, boxes []pdf.TextBox, caption string, item *pdf.TableItem) string {
// Strip caption-like text from cells (defense-in-depth: fillCellTextFromBoxes
// may include caption text that doesn't match isCaptionBox patterns).
StripCaptionFromCells(cells)
// Use the pre-computed grid from pdf.TableBuilder.GroupCells.
// Falls back to cell-level grouping only when called directly by
// tests without a pre-computed Grid (production always sets it).
var rows [][]pdf.TSRCell
if item != nil {
rows = item.Grid
}
if rows == nil && len(cells) > 0 && HasAnyText(cells) {
rows = GroupTSRCellsToRows(cells)
}
if len(rows) > 0 && HasText(rows) {
hdrs := HeaderSetWithBlockType(rows)
if item != nil {
item.Rows = RowsToStrings(rows)
}
rows = CleanupOrphanColumns(rows)
spanInfo, covered := CalSpans(rows)
return RowsToHTML(rows, caption, hdrs, spanInfo, covered)
}
// Fallback: boxes with R/C annotations.
if len(boxes) > 0 && BoxesHaveAnnotations(boxes) {
rows := GroupBoxesByRC(boxes)
if HasText(rows) {
if item != nil {
item.Rows = RowsToStrings(rows)
}
spanInfo, covered := CalSpans(rows)
return RowsToHTML(rows, caption, BoxHeaderSet(rows, boxes), spanInfo, covered)
}
}
// Test-only: Y/X coordinate grouping (matching Python construct_table).
// Used by table_parity_test.go to verify pipeline with Python boxes.
if len(boxes) > 0 && !BoxesHaveAnnotations(boxes) {
rows := GroupBoxesByYX(boxes)
if HasText(rows) {
if item != nil {
item.Rows = RowsToStrings(rows)
}
spanInfo, covered := CalSpans(rows)
return RowsToHTML(rows, caption, BoxHeaderSet(rows, boxes), spanInfo, covered)
}
}
return ""
}
// boxHeaderSet returns rows that contain boxes with H annotations.
func BoxHeaderSet(rows [][]pdf.TSRCell, boxes []pdf.TextBox) map[int]bool {
hdrs := make(map[int]bool)
for _, b := range boxes {
if b.H > 0 && b.R >= 0 && b.R < len(rows) {
hdrs[b.R] = true
}
}
return hdrs
}
func HasAnyText(cells []pdf.TSRCell) bool {
for _, c := range cells {
if strings.TrimSpace(c.Text) != "" {
return true
}
}
return false
}
// groupBoxesByRC groups text boxes into a cell grid by R/C annotations.
// Matches Python's construct_table: sort by R, merge nearby rows by Y proximity,
// sort by C within each row, merge nearby columns by X proximity.
func GroupBoxesByRC(boxes []pdf.TextBox) [][]pdf.TSRCell {
if len(boxes) == 0 {
return nil
}
// If no real R/C annotations (maxR <= 0), fall back to YX coordinate
// grouping — matching Python's construct_table when all R=-1.
maxR := 0
for _, b := range boxes {
if b.R > maxR {
maxR = b.R
}
}
if maxR <= 0 {
return GroupBoxesByYX(boxes)
}
// Sort by R index first (Python: sort_R_firstly), then Y, then X.
sort.Slice(boxes, func(i, j int) bool {
if boxes[i].R != boxes[j].R {
return boxes[i].R < boxes[j].R
}
if boxes[i].Top != boxes[j].Top {
return boxes[i].Top < boxes[j].Top
}
return boxes[i].X0 < boxes[j].X0
})
// Compress R indices: Python's sort_R_firstly grouping.
// R differs → always a new row. Same R + Y gap → also new row.
rowMap := make(map[int]int) // original R → compressed row index
compressed := 0
rowMap[boxes[0].R] = 0
lastR := boxes[0].R
btm := boxes[0].Bottom
for i := 1; i < len(boxes); i++ {
// Python: b["R"] != last_R → new row.
// Same R → always same row (Python doesn't check Y for same R).
if boxes[i].R != lastR {
compressed++
rowMap[boxes[i].R] = compressed
lastR = boxes[i].R
btm = boxes[i].Bottom
} else {
// Same R → same physical row.
rowMap[boxes[i].R] = compressed
btm = (btm + boxes[i].Bottom) / 2.0
}
}
// Collect boxes per row, sort by C within each row.
type rb struct {
row, col int
txt string
x0, y0, x1, y1 float64
label string
}
cmap := make(map[int]map[int]*rb) // row → col → entry
maxCols := make(map[int]int)
for _, b := range boxes {
t := strings.TrimSpace(b.Text)
// Keep boxes with SP/H annotations even if text is empty —
// their coordinates are needed for colspan/rowspan calculation.
if t == "" && b.H <= 0 && b.SP <= 0 {
continue
}
r := rowMap[b.R]
c := b.C
if cmap[r] == nil {
cmap[r] = make(map[int]*rb)
}
x0, y0, x1, y1, label := cellPosFromBox(b)
if v, ok := cmap[r][c]; ok {
v.txt += " " + t
// Merge spanning coordinates (use widest extent).
if b.H > 0 || b.SP > 0 {
v.label = cellLabelFromBox(b)
if v.x0 > x0 {
v.x0 = x0
}
if v.y0 > y0 {
v.y0 = y0
}
if v.x1 < x1 {
v.x1 = x1
}
if v.y1 < y1 {
v.y1 = y1
}
}
} else {
cmap[r][c] = &rb{r, c, t, x0, y0, x1, y1, label}
}
if c > maxCols[r] {
maxCols[r] = c
}
}
// Compress C indices per row: sort boxes by X0 within the row,
// group disjoint X ranges into separate columns. This is equivalent
// to Python's sort_C_firstly but uses X0 ordering instead of C labels.
cCompressed := make(map[int]map[int]int) // row → (original C → compressed col)
cMaxCol := make(map[int]int)
for ri := 0; ri <= compressed; ri++ {
rowEntries := cmap[ri]
if rowEntries == nil {
continue
}
// Collect all boxes in this row, sorted by X0.
type rowBox struct {
c, idx int
x0, x1 float64
txt string
}
var rowBoxes []rowBox
for i, b := range boxes {
if rowMap[b.R] == ri && (strings.TrimSpace(b.Text) != "" || b.H > 0 || b.SP > 0) {
rowBoxes = append(rowBoxes, rowBox{c: b.C, idx: i, x0: b.X0, x1: b.X1, txt: b.Text})
}
}
sort.Slice(rowBoxes, func(i, j int) bool { return rowBoxes[i].x0 < rowBoxes[j].x0 })
// Assign compressed column by X-order (disjoint X → new col).
cMap := make(map[int]int) // original C → compressed col
right := 0.0
for _, rb := range rowBoxes {
if len(cMap) == 0 || rb.x0 >= right {
cc := len(cMap)
cMap[rb.c] = cc
right = rb.x1
} else {
// Overlapping X → merge into last column.
cMap[rb.c] = len(cMap) - 1
if rb.x1 > right {
right = rb.x1
}
}
}
cCompressed[ri] = cMap
cMaxCol[ri] = len(cMap) - 1
}
// Build grid.
rows := make([][]pdf.TSRCell, compressed+1)
for ri := 0; ri <= compressed; ri++ {
maxC := cMaxCol[ri]
rows[ri] = make([]pdf.TSRCell, maxC+1)
for ci, v := range cmap[ri] {
cci := cCompressed[ri][ci]
if cci <= maxC {
rows[ri][cci].Text = v.txt
rows[ri][cci].X0 = v.x0
rows[ri][cci].Y0 = v.y0
rows[ri][cci].X1 = v.x1
rows[ri][cci].Y1 = v.y1
rows[ri][cci].Label = v.label
}
}
}
return rows
}
// cellPosFromBox returns the position coordinates and label for a cell
// derived from a text box. Header cells use HLeft/HRight/HTop/HBott
// for spanning-aware positions; regular cells use the box's own bounds.
func cellPosFromBox(b pdf.TextBox) (x0, y0, x1, y1 float64, label string) {
x0, y0, x1, y1 = b.X0, b.Top, b.X1, b.Bottom
if b.H > 0 {
label = "table header"
if b.HLeft != 0 || b.HRight != 0 {
if b.HLeft != 0 {
x0 = b.HLeft
}
if b.HRight != 0 {
x1 = b.HRight
}
}
if b.HTop != 0 {
y0 = b.HTop
}
if b.HBott != 0 {
y1 = b.HBott
}
} else if b.SP > 0 {
label = "table spanning cell"
}
return
}
// cellLabelFromBox returns the TSR label for a box based on H/SP annotations.
// Used when merging multiple boxes into one cell — preserves the spanning label.
func cellLabelFromBox(b pdf.TextBox) string {
if b.H > 0 {
return "table header"
}
if b.SP > 0 {
return "table spanning cell"
}
return ""
}
// groupBoxesByYX groups boxes into a cell grid by Y/X coordinates,
// matching Python's construct_table which uses sort_R_firstly and
// sort_C_firstly when R/C annotations are absent.
// This is test-only — used by table_parity_test.go to verify pipeline
// parity with Python boxes that lack R/C annotations.
func GroupBoxesByYX(boxes []pdf.TextBox) [][]pdf.TSRCell {
if len(boxes) == 0 {
return nil
}
// Sort by (page, top, x0) — same as Python sort_R_firstly with R=-1.
sort.Slice(boxes, func(i, j int) bool {
if boxes[i].PageNumber != boxes[j].PageNumber {
return boxes[i].PageNumber < boxes[j].PageNumber
}
if boxes[i].Top != boxes[j].Top {
return boxes[i].Top < boxes[j].Top
}
return boxes[i].X0 < boxes[j].X0
})
// Group into rows by Y proximity (Python's row grouping).
type rowGroup struct {
boxes []pdf.TextBox
top, btm float64
}
var rowGroups []rowGroup
rowGroups = append(rowGroups, rowGroup{boxes: []pdf.TextBox{boxes[0]}, top: boxes[0].Top, btm: boxes[0].Bottom})
for i := 1; i < len(boxes); i++ {
prev := &rowGroups[len(rowGroups)-1]
// Python: same row if top < prev.btm (Y overlaps) and same page.
if boxes[i].PageNumber == prev.boxes[0].PageNumber && boxes[i].Top < prev.btm {
prev.boxes = append(prev.boxes, boxes[i])
if boxes[i].Top < prev.top {
prev.top = boxes[i].Top
}
if boxes[i].Bottom > prev.btm {
prev.btm = boxes[i].Bottom
}
} else {
rowGroups = append(rowGroups, rowGroup{boxes: []pdf.TextBox{boxes[i]}, top: boxes[i].Top, btm: boxes[i].Bottom})
}
}
// Within each row, group into columns by X proximity.
rows := make([][]pdf.TSRCell, len(rowGroups))
for ri, rg := range rowGroups {
// Sort by X0.
sort.Slice(rg.boxes, func(i, j int) bool { return rg.boxes[i].X0 < rg.boxes[j].X0 })
// Group by X overlap.
var cols []struct {
boxes []pdf.TextBox
x1 float64
}
cols = append(cols, struct {
boxes []pdf.TextBox
x1 float64
}{boxes: []pdf.TextBox{rg.boxes[0]}, x1: rg.boxes[0].X1})
for i := 1; i < len(rg.boxes); i++ {
prev := &cols[len(cols)-1]
if rg.boxes[i].X0 < prev.x1 {
prev.boxes = append(prev.boxes, rg.boxes[i])
if rg.boxes[i].X1 > prev.x1 {
prev.x1 = rg.boxes[i].X1
}
} else {
cols = append(cols, struct {
boxes []pdf.TextBox
x1 float64
}{boxes: []pdf.TextBox{rg.boxes[i]}, x1: rg.boxes[i].X1})
}
}
rows[ri] = make([]pdf.TSRCell, len(cols))
for ci, col := range cols {
var sb strings.Builder
for _, b := range col.boxes {
t := strings.TrimSpace(b.Text)
if t == "" {
continue
}
if sb.Len() > 0 {
sb.WriteByte(' ')
}
sb.WriteString(t)
}
rows[ri][ci].Text = sb.String()
}
}
return rows
}
func BoxesHaveAnnotations(boxes []pdf.TextBox) bool {
maxR, maxC := 0, 0
for _, b := range boxes {
if b.R > maxR {
maxR = b.R
}
if b.C > maxC {
maxC = b.C
}
}
// True if at least 2 rows or 2 cols (R/C are 0-based, so maxR>0 means ≥2 rows).
return maxR > 0 || maxC > 0
}
func HasText(rows [][]pdf.TSRCell) bool {
for _, row := range rows {
for _, c := range row {
if strings.TrimSpace(c.Text) != "" {
return true
}
}
}
return false
}
func RowsToStrings(rows [][]pdf.TSRCell) [][]string {
out := make([][]string, len(rows))
for ri, row := range rows {
out[ri] = make([]string, len(row))
for ci, c := range row {
out[ri][ci] = c.Text
}
}
return out
}
// fillCellTextFromAnnotations fills cell text from text boxes using R/C labels.
// This matches Python's construct_table which assigns boxes to cells by their
// R (row) and C (col) annotations rather than spatial overlap.
func FillCellTextFromAnnotations(rows [][]pdf.TSRCell, boxes []pdf.TextBox) {
// Build R→(C→text) map: row index → (col index → text).
rBoxes := make(map[int]map[int][]string)
for _, b := range boxes {
if b.Text == "" {
continue
}
if rBoxes[b.R] == nil {
rBoxes[b.R] = make(map[int][]string)
}
rBoxes[b.R][b.C] = append(rBoxes[b.R][b.C], b.Text)
}
// Fill each cell from the matching R/C position.
for ri, row := range rows {
colMap := rBoxes[ri]
if colMap == nil {
continue
}
// Build sorted column list for positional matching.
type colEntry struct {
c int
texts []string
}
var cols []colEntry
for c, texts := range colMap {
cols = append(cols, colEntry{c, texts})
}
sort.Slice(cols, func(i, j int) bool { return cols[i].c < cols[j].c })
for ci, col := range cols {
if ci < len(row) {
row[ci].Text = strings.TrimSpace(strings.Join(col.texts, " "))
}
}
}
}
// dataSourceRe matches table/figure boxes that should be discarded as
// data-source attribution lines rather than extracted content.
//
// Python: pdf_parser.py:1040-1042, 1050-1052
//
// re.match(r"(数据|资料|图表)*来源[: ]", self.boxes[i]["text"])
var dataSourceRe = regexp.MustCompile(`^(数据|资料|图表)*来源[: ]`)
// isDataSourceBox returns true if the box text matches the data-source
// discard pattern (Python's _extract_table_figure data-source filter).
func isDataSourceBox(text string) bool {
return dataSourceRe.MatchString(text)
}
// tableRegionBox returns a pdf.TextBox for a table replacement, using DLA region
// boundaries when available (Region* set), falling back to anchor box coordinates.
// Python's insert_table_figures uses DLA layout region boundaries; the fallback
// handles test TableItems or bare engines without DLA.
func tableRegionBox(tbl *pdf.TableItem, ref *pdf.TextBox, html string) pdf.TextBox {
pg := 0
if len(tbl.Positions) > 0 && len(tbl.Positions[0].PageNumbers) > 0 {
pg = tbl.Positions[0].PageNumbers[0]
}
// Use DLA region boundaries when set.
if tbl.RegionLeft != 0 || tbl.RegionRight != 0 || tbl.RegionTop != 0 || tbl.RegionBottom != 0 {
return pdf.TextBox{
X0: tbl.RegionLeft, X1: tbl.RegionRight,
Top: tbl.RegionTop, Bottom: tbl.RegionBottom,
Text: html,
PageNumber: pg,
LayoutType: pdf.LayoutTypeTable,
}
}
// Fallback: use anchor box coordinates.
x0, x1, top, bot := ref.X0, ref.X1, ref.Top, ref.Bottom
return pdf.TextBox{
X0: x0, X1: x1, Top: top, Bottom: bot,
Text: html,
PageNumber: pg,
LayoutType: pdf.LayoutTypeTable,
}
}
// minRectangleDistance computes the Euclidean distance between two rectangles.
// Returns 0 when rectangles overlap. Matches Python's min_rectangle_distance
// in insert_table_figures (pdf_parser.py:1609-1626).
func minRectangleDistance(left1, right1, top1, bottom1, left2, right2, top2, bottom2 float64) float64 {
if right1 >= left2 && right2 >= left1 && bottom1 >= top2 && bottom2 >= top1 {
return 0
}
var dx, dy float64
if right1 < left2 {
dx = left2 - right1
} else if right2 < left1 {
dx = left1 - right2
}
if bottom1 < top2 {
dy = top2 - bottom1
} else if bottom2 < top1 {
dy = top1 - bottom2
}
return math.Sqrt(dx*dx + dy*dy)
}
func RowsToHTML(rows [][]pdf.TSRCell, caption string, headerRows map[int]bool, spanInfo map[[2]int][2]int, covered map[[2]int]bool) string {
var b strings.Builder
b.WriteString("<table>")
if caption != "" {
b.WriteString("<caption>")
b.WriteString(caption)
b.WriteString("</caption>")
}
for ri, row := range rows {
b.WriteString("<tr>")
for ci, cell := range row {
if covered[[2]int{ri, ci}] {
continue
}
tag := "td"
if headerRows[ri] {
tag = "th"
}
b.WriteString("<")
b.WriteString(tag)
sp := ""
if s, ok := spanInfo[[2]int{ri, ci}]; ok {
if s[0] > 1 {
sp = fmt.Sprintf("colspan=%d", s[0])
}
if s[1] > 1 {
if sp != "" {
sp += " "
}
sp += fmt.Sprintf("rowspan=%d", s[1])
}
}
if sp != "" {
b.WriteString(" ")
b.WriteString(sp)
}
b.WriteString(" >")
b.WriteString(cell.Text)
b.WriteString("</")
b.WriteString(tag)
b.WriteString(">")
}
b.WriteString("</tr>")
}
b.WriteString("</table>")
return b.String()
}
// ── Span computation (Python: __cal_spans) ──
// calSpans computes colspan and rowspan for spanning cells in the grid.
// Returns spanInfo (row,col → colspan,rowspan) and covered (cells hidden by spans).
// Matches Python's __cal_spans (table_structure_recognizer.py:535).
// flattenGrid flattens a 2D grid into a 1D slice for fillCellTextFromBoxes.
func FlattenGrid(grid [][]pdf.TSRCell) []pdf.TSRCell {
n := 0
for _, row := range grid {
n += len(row)
}
flat := make([]pdf.TSRCell, 0, n)
for _, row := range grid {
flat = append(flat, row...)
}
return flat
}
func CalSpans(rows [][]pdf.TSRCell) (map[[2]int][2]int, map[[2]int]bool) {
spanInfo := make(map[[2]int][2]int)
covered := make(map[[2]int]bool)
if len(rows) == 0 || len(rows[0]) == 0 {
return spanInfo, covered
}
// Compute column center positions.
nCols := len(rows[0])
colLeft := make([]float64, nCols)
colRight := make([]float64, nCols)
for j := 0; j < nCols; j++ {
colLeft[j] = 1e9
colRight[j] = -1e9
}
nRows := len(rows)
rowTop := make([]float64, nRows)
rowBott := make([]float64, nRows)
for i := 0; i < nRows; i++ {
rowTop[i] = 1e9
rowBott[i] = -1e9
}
for i, row := range rows {
for j, cell := range row {
if j >= nCols {
continue
}
// Exclude spanning cells from column/row boundary calculations.
// Use label-based detection (O(1), no dependency on column midpoints).
if strings.Contains(cell.Label, "spanning") {
continue
}
if cell.X0 < colLeft[j] {
colLeft[j] = cell.X0
}
if cell.X1 > colRight[j] {
colRight[j] = cell.X1
}
if cell.Y0 < rowTop[i] {
rowTop[i] = cell.Y0
}
if cell.Y1 > rowBott[i] {
rowBott[i] = cell.Y1
}
}
}
// For each spanning cell, compute how many cols/rows it covers.
for i, row := range rows {
for j, cell := range row {
if j >= nCols || covered[[2]int{i, j}] {
continue
}
// Skip cells without position data (they can't span).
if cell.X0 == 0 && cell.X1 == 0 && cell.Y0 == 0 && cell.Y1 == 0 {
continue
}
cs, rs := 1, 1
// Count columns whose center is inside this cell's X range.
for k := j + 1; k < nCols; k++ {
// Skip columns with no non-spanning cells (initial values unchanged).
if colLeft[k] == 1e9 && colRight[k] == -1e9 {
continue
}
colCenter := (colLeft[k] + colRight[k]) / 2
if colCenter >= cell.X0 && colCenter <= cell.X1 {
cs++
}
}
// Count rows whose center is inside this cell's Y range.
for k := i + 1; k < nRows; k++ {
// Skip rows with no non-spanning cells.
if rowTop[k] == 1e9 && rowBott[k] == -1e9 {
continue
}
rowCenter := (rowTop[k] + rowBott[k]) / 2
if rowCenter >= cell.Y0 && rowCenter <= cell.Y1 {
rs++
}
}
if cs > 1 || rs > 1 {
spanInfo[[2]int{i, j}] = [2]int{cs, rs}
// Mark covered cells.
for ri := i; ri < i+rs && ri < nRows; ri++ {
for cj := j; cj < j+cs && cj < nCols; cj++ {
if ri != i || cj != j {
covered[[2]int{ri, cj}] = true
}
}
}
}
}
}
return spanInfo, covered
}
// ── Orphan column/row cleanup (Python: construct_table lines 256-368) ──
// cleanupOrphanColumns removes columns that have only a single non-empty cell
// when there are ≥4 rows. Matches Python's construct_table column cleanup.
func CleanupOrphanColumns(rows [][]pdf.TSRCell) [][]pdf.TSRCell {
if len(rows) < 4 || len(rows) == 0 {
return rows
}
nCols := len(rows[0])
j := 0
colLoop:
for j < nCols {
e, ii := 0, 0
for i := range rows {
if j < len(rows[i]) && strings.TrimSpace(rows[i][j].Text) != "" {
e++
ii = i
}
if e > 1 {
j++
continue colLoop
}
}
// Column j has only one non-empty cell at row ii.
// Check if adjacent columns have text for this row.
f := (j > 0 && j-1 < len(rows[ii]) && strings.TrimSpace(rows[ii][j-1].Text) != "") || j == 0
ff := (j+1 < len(rows[ii]) && strings.TrimSpace(rows[ii][j+1].Text) != "") || j+1 >= len(rows[ii])
if f && ff {
// Both adjacent columns are ok for merging — but this means
// there's text on both sides, keep column.
j++
continue
}
// Determine which side to merge into.
left := 1e9
right := 1e9
if j > 0 && !f {
for i := range rows {
if j-1 < len(rows[i]) && strings.TrimSpace(rows[i][j-1].Text) != "" {
// Distance from orphan cell to left neighbor.
if d := rows[ii][j].X0 - rows[i][j-1].X1; d < left {
left = d
}
}
}
}
if j+1 < nCols && !ff {
for i := range rows {
if j+1 < len(rows[i]) && strings.TrimSpace(rows[i][j+1].Text) != "" {
if d := rows[i][j+1].X0 - rows[ii][j].X1; d < right {
right = d
}
}
}
}
if left < right && j > 0 {
// Merge into left column.
for i := range rows {
if j-1 < len(rows[i]) && j < len(rows[i]) {
if rows[i][j-1].Text == "" {
rows[i][j-1].Text = rows[i][j].Text
} else if rows[i][j].Text != "" {
rows[i][j-1].Text += " " + rows[i][j].Text
}
}
}
} else if j+1 < nCols {
// Merge into right column.
for i := range rows {
if j < len(rows[i]) && j+1 < len(rows[i]) {
if rows[i][j+1].Text == "" {
rows[i][j+1].Text = rows[i][j].Text
} else if rows[i][j].Text != "" {
rows[i][j+1].Text = rows[i][j].Text + " " + rows[i][j+1].Text
}
}
}
}
// Remove column j.
for i := range rows {
if j < len(rows[i]) {
rows[i] = append(rows[i][:j], rows[i][j+1:]...)
}
}
nCols--
// Don't increment j — the next column shifted into position j.
}
return rows
}