NP-PHOG: An Automated Gender Classification Model based on Nested Patch-based Prymadial Histogram-Oriented Gradients Feature Extraction using Shadow Images
Abstract:Gender classification is a fundamental area of research in machine learning, and numerous types of data, such as gaits, faces, and speeches, have been utilized for gender classification. In this research, we introduce a novel data type, namely shadow images, for detecting gender. We collected a shadow image dataset comprising two classes, namely (1) female and ( 2) male. To propose an automated shadow gender classification model, we developed a pyramidal histogram-oriented gradient (PHOG) based model. Our mode… Show more
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