Publication | Open Access
A novel feature extraction technique for the recognition of segmented handwritten characters
128
Citations
11
References
2004
Year
Unknown Venue
Image AnalysisEngineeringOptical Character RecognitionPattern RecognitionText RecognitionBiometricsCharacter Feature ExtractionText SegmentationFeature ExtractionSegmented Handwritten CharactersSegmented Character RecognitionCharacter RecognitionCedar Benchmark DatabaseDocument ProcessingComputer VisionSpeech Recognition
High accuracy character recognition techniques can provide useful information for segmentation-based handwritten word recognition systems. This research describes neural network-based techniques for segmented character recognition that may be applied to the segmentation and recognition components of an off-line handwritten word recognition system. Two neural architectures along with two different feature extraction techniques were investigated. A novel technique for character feature extraction is discussed and compared with others in the literature. Recognition results above 80% are reported using characters automatically segmented from the CEDAR benchmark database as well as standard CEDAR alphanumerics.
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