A Novel Gender Classification Model based on Convolutional Neural Network through Handwritten Text and Numeral
Pakize ERDOĞMUŞ,
Abdullah Talha KABAKUŞ,
Enver KÜÇÜKKÜLAHLI
et al.
Abstract:Human handwriting is used to investigate human characteristics in various applications, including but not limited to biometric authentication, personality profiling, historical document analysis, and forensic investigations. Gender is one of the most distinguishing characteristics of human beings. From this point forth, we propose a novel end-to-end model based on Convolutional Neural Network (CNN) that automatically extracts features from a given handwritten sample, which contains both handwritten text and nu… Show more
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