PDFSegmenter
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This library builds a graph-representation of the content of PDFs. The graph is then clustered, resulting page segments are classified and returned. Tables are retrieved formatted as a CSV.
PDF Segmenter
This library builds a graph-representation of the content of PDFs. The graph is then clustered, resulting page segments are classified and returned. Tables are retrieved formatted in a CSV-style.
How-to
- Pass the path of the PDF file (as a string) which is wanted to be converted to
PDFSegmenter. - Call the function
segment_document(). - The function
get_labeled_graphs()returns page-wise document graph representations as a list ofnetworkxgraphs. The labels indicate a clustering assignment. segments2json()returns a JSON representation of the segmented document.segments2text()returns a textual representation of the segmented document. This can be either annotated (lists, text and tables are supported) or not and controlled via the boolean parameterannotate.
Example call:
segmenter = PDFSegmenter(pdf)
segmenter.segment_document()
result = segmenter.segments2json()
text = segmenter.segments2text()
graphs = get_labeled_graphs()
A file is the only parameter mandatory for the page segmentation.
A more detailed example usage is also given in Tester.py.
Example
JSON
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Annotated text
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Graph
The following image shows a resulting document graph representation when using the GraphConverter.

Settings
Clustering
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Merging
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Classification
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Graph
General parameters:
file: file namemerge_boxes: indicating if PDF text boxes should be graph nodes, based on visual rectangles present in documents.regress_parameters: indicating if graph parameters are regressed or used as a priori optimized default ones.
Edge restrictions:
use_font: differing font sizeuse_width: differing widthuse_rect: nodes contained in differing visual structuresuse_horizontal_overlap: indicating if horizontal edges should be built on overlap. If not, default deltas are used.use_vertical_overlap: indicating if vertical edges should be built on overlap. If not, default deltas are used.
Edge thresholds:
page_ratio_x: maximal relative horizontal distance of two nodes where an edge can be createdpage_ratio_y: maximal relative vertical distance of two nodes where an edge can be createdx_eps: alignment epsilon for vertical edges in points ifuse_horizontal_overlapis not enabledy_eps: alignment epsilon for horizontal edges in points ifuse_vertical_overlapis not enabledfont_eps_h: indicates how much font sizes of nodes are allowed to differ as a constraint for building horizontal edges whenuse_fontis enabledfont_eps_v: indicates how much font sizes of nodes are allowed to differ as a constraint for building vertical edges whenuse_fontis enabledwidth_pct_eps: relative width difference of nodes as a condition for vertical edges ifuse_widthis enabledwidth_page_eps: indicating at which maximal width of a node the width should act as an edge condition ifuse_widthis enabled
Project Structure
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Output Format
JSON
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Text
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Graph
As a result, a list of networkx graphs is returned.
Each graph encapsulates a structured representation of a single page.
Edges are attributed with the following features:
direction: shows the direction of an edge.v: Vertical edgeh: Horizontal edgel: Rectangular loop. This represents a novel concept encapsulating structural characteristics of document segments by observing if two different paths end up in the same node.
length: Scaled length of an edgelengthx_phys: Horizontal edge lengthlengthy_phys: Vertical edge lengthweight: Scaled total length
All nodes contain the following content attributes:
id: unique identifier of the PDF elementpage: page number, starting with 0text: text of the PDF elementx_0: left x coordinatex_1: right x coordinatey_0: top y coordinatey_1: bottom y coordinatepos_x: center x coordinatepos_y: center y coordinateabs_pos: tuple containing a page independent representation of(pos_x,pos_y)coordinatesoriginal_font: font as extracted by pdfminerfont_name: name of the font extracted fromoriginal_fontcode: font code as provided by pdfminerbold: factor 1 indicating that a text is bold and 0 otherwiseitalic: factor 1 indicating that a text is italic and 0 otherwisefont_size: size of the text in pointsmasked: text with numeric content substituted as #frequency_hist: histogram of character type frequencies in a text, stored as a tuple containing percentages of textual, numerical, text symbolic and other symbolslen_text: number of charactersn_tokens: number of wordstag: tag for key-value pair extractions, indicating keys or values based on simple heuristicsbox: box extracted by pdfminer Layout Analysisin_element_ids: contains IDs of surrounding visual elements such as rectangles or lists. They are stored as a list [left, right, top, bottom]. -1 is indicating that there is no adjacent visual element.in_element: indicates based on in_element_ids whether an element is stored in a visual rectangle representation (stored as "rectangle") or not (stored as "none").is_loop: indicates whether or not a node is connected via a rectangular loop
Acknowledgements
- Example PDFs are obtained from the ICDAR Table Recognition Challenge 2013 https://roundtrippdf.com/en/data-extraction/pdf-table-recognition-dataset/.
Authors
- Michael Benedikt Aigner
- Florian Preis