Title
Trends in Handwriting Recognition
Abstract
The field of Handwriting recognition has evolved over the past three or four decades into a broad based activity which has had a measurable impact on applications. Some of the most significant practical impact has occurred in the past decade in handwriting recognition. Successful application of the established methods requires good understanding of their behavior and how well they match a particular context. Difficulties can arise from either the intrinsic complexity of a problem or a mismatch of methods to problems. Many emerging applications of involve complicated high-dimensional pattern spaces, small amounts of data-per-dimension, low signal-to-noise ratio, poorly specified statistical distributions, and anomalous statistical outliers. In some cases these difficulties are compounded by distributed data collection requirements that impose constraints on data integration and decentralized decision making. This creates both challenges and opportunities for Handwriting recognition research. This survey divides various approaches to handwriting recognition in nine different categories. Authors explore resent trends in Handwriting recognition and describe the areas of challenges and some possible solutions.
Year
DOI
Venue
2010
10.1109/ICETET.2010.92
Emerging Trends in Engineering and Technology
Keywords
Field
DocType
decision making,handwriting recognition,statistical distributions,anomalous statistical outliers,data integration,data-per-dimension,decentralized decision making,distributed data collection,handwriting recognition,high-dimensional pattern space,signal-to-noise ratio,statistical distributions,Document analysis,document understanding,numeral recognition,on-line handwriting recognition,segmentation,stroke and shape of characters
Data integration,Data collection,Computer science,Handwriting recognition,Outlier,Feature extraction,Artificial intelligence,Artificial neural network,Hidden Markov model,Machine learning,Decentralized decision-making
Conference
ISSN
ISBN
Citations 
2157-0477 E-ISBN : 978-0-7695-4246-1
978-0-7695-4246-1
3
PageRank 
References 
Authors
0.51
0
2
Name
Order
Citations
PageRank
Jayashree R. Prasad130.51
Kulkarni, U.V.281.32