Publication | Closed Access
Table Detection in Handwritten Chemistry Documents Using Conditional Random Fields
11
Citations
8
References
2014
Year
Unknown Venue
EngineeringMachine LearningTable DetectionText MiningNatural Language ProcessingImage AnalysisData ScienceData MiningPattern RecognitionText RecognitionText SegmentationGlobal Conditional ProbabilityLocal ClassifierAutomatic ClassificationOptical Character RecognitionComputer ScienceInformation ExtractionConditional Random FieldsComputer VisionDocument Processing
In this paper, we present a new approach using conditional random fields (CRFs) to localize tabular components in an unconstrained handwritten compound document. Given a line-segmented document, the extraction of table is considered as a labeling task that consists in assigning a label to each line: Table Row label for a line which belongs to a table and Line Text label for a line which belongs to a text block. To perform the labeling task, we use a CRF model to combine two classifiers: a local classifier which assigns a label to the line based on local features and a contextual classifier which uses features taking into account the neighborhood. The CRF model gives the global conditional probability of a given labeling of the line considering the outputs of the two classifiers. A set of chemistry documents is used for the evaluation of this approach. The obtained results are around 88% of table lines correctly detected.
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