Publication | Closed Access
On-line recognition of handwritten Arabic characters using a Kohonen neural network
54
Citations
9
References
2003
Year
Unknown Venue
EngineeringMachine LearningOn-line RecognitionBiometricsNeural NetworkArabic CharactersArabic OrthographySpeech RecognitionArabicPattern RecognitionText RecognitionKohonen Neural NetworkLanguage StudiesCharacter RecognitionOptical Character RecognitionComputer ScienceNeural NetworksStatistical Pattern RecognitionDeep LearningHandwritten Arabic CharactersDocument ProcessingPattern Recognition Application
Neural networks have been applied to various pattern classification and recognition problems for their learning ability, discrimination power and generalization ability The neural network most referenced in the pattern recognition literature are the multi-layer perceptron, the Kohonen associative memory and the Capenter-Grossberg ART network. The Kohonen memory runs an unsupervised clustering algorithm. It is easily trained and has attractive properties such as topological ordering and good generalization. In this study an on-line system for the recognition of handwriting Arabic characters using a Kohonen network is investigated. The input of the neural network is a feature vector of elliptic Fourier coefficients extracted from the handwritten dynamic representation. Experimental results show that the network successfully recognizes both clearly and roughly written characters with good performance.
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