Publication | Closed Access
Offline Writer Identification Using K-Adjacent Segments
66
Citations
14
References
2011
Year
Unknown Venue
EngineeringMachine LearningHandwritingBiometricsInformation ForensicsWriter IdentificationText MiningSpeech RecognitionImage AnalysisData ScienceData MiningPattern RecognitionText RecognitionCharacter RecognitionKnowledge DiscoveryK-adjacent SegmentComputer ScienceMadcat DatasetOffline Writer IdentificationDocument Processing
This paper presents a method for performing offline writer identification by using K-adjacent segment (KAS) features in a bag-of-features framework to model a user's handwriting. This approach achieves a top 1 recognition rate of 93% on the benchmark IAM English handwriting dataset, which outperforms current state of the art features. Results further demonstrate that identification performance improves as the number of training samples increase, and additionally, that the performance of the KAS features extend to Arabic handwriting found in the MADCAT dataset.
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