Publication | Closed Access
An Improved Scene Text Extraction Method Using Conditional Random Field and Optical Character Recognition
42
Citations
10
References
2011
Year
Unknown Venue
Natural Language ProcessingImage AnalysisComputer VisionMachine VisionData SciencePattern RecognitionMachine LearningCondition Random FieldEngineeringText RecognitionText SegmentationOptical Character RecognitionScene Text ExtractionComputer ScienceCharacter RecognitionIcdar 2005Document ProcessingText Mining
Over the past few years, research on scene text extraction has developed rapidly. Recently, condition random field (CRF) has been used to give connected components (CCs) 'text' or 'non-text' labels. However, a burning issue in CRF model comes from multiple text lines extraction. In this paper, we propose a two-step iterative CRF algorithm with a Belief Propagation inference and an OCR filtering stage. Two kinds of neighborhood relationship graph are used in the respective iterations for extracting multiple text lines. Furthermore, OCR confidence is used as an indicator for identifying the text regions, while a traditional OCR filter module only considered the recognition results. The first CRF iteration aims at finding certain text CCs, especially in multiple text lines, and sending uncertain CCs to the second iteration. The second iteration gives second chance for the uncertain CCs and filter false alarm CCs with the help of OCR. Experiments based on the public dataset of ICDAR 2005 prove that the proposed method is comparative with the existing algorithms.
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