Marginal Noise Reduction in Historical Handwritten Documents -- A Survey

@article{Chakraborty2016MarginalNR,
  title={Marginal Noise Reduction in Historical Handwritten Documents -- A Survey},
  author={Arpita Chakraborty and Michael Blumenstein},
  journal={2016 12th IAPR Workshop on Document Analysis Systems (DAS)},
  year={2016},
  pages={323-328}
}
This paper presents a survey on different approaches for removing the marginal noise from document images, and anlaysing the research challenges of those methods relating to handwritten historical datasets. In this survey, historical documents collected from Australian Archives and Libraries are introduced and the associated layout complexities of those document images are also described. Benchmarking other historical databases related to this work is also discussed. This survey discusses the… CONTINUE READING

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