Publication | Closed Access
Gender Classification from Offline Handwriting Images Using Textural Features
42
Citations
29
References
2016
Year
Unknown Venue
EngineeringMachine LearningHandwritingBiometricsWriter IdentificationSpeech RecognitionImage AnalysisData SciencePattern RecognitionText RecognitionCharacter RecognitionCognitive ScienceMachine VisionOptical Character RecognitionDeep LearningFourier TransformQuwi DatabaseOther Demographic AttributesGender Classification
Prediction of gender and other demographic attributes of individuals from handwriting samples offers an interesting basic, as well as applied research problem. The correlation between gender and the visual appearance of handwriting has been validated by a number of studies and the present study is based on the same idea. We exploit the textural measurements as the discriminating attribute between male and female writings. The textural information in a writing is captured by applying a bank of Gabor filters to the image of handwriting. The mean and standard deviation values of the filter responses are collected in matrix and the Fourier transform of the matrix is used as a feature. Classification is carried out using a feed forward neural network. The proposed technique evaluated on a subset of the QUWI database realized promising results under different experimental settings.
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