Gender Classification on Video Using FaceNet Algorithm and Supervised Machine Learning

Gender classification using human face data becomes a trending topic for researchers in the field of image processing and computer vision. The human face is biometric information that can be used to differentiate gender using a computer-aided system. Previous research utilised a local feature algori...

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Vydáno v:International Journal of Computing and Digital System (Jāmiʻat al-Baḥrayn. Markaz al-Nashr al-ʻIlmī) Ročník 11; číslo 1; s. 199 - 208
Hlavní autoři: Adhinata, Faisal Dharma, Junaidi, Apri
Médium: Journal Article
Jazyk:angličtina
Vydáno: University of Bahrain, Deanship of Graduate Studies and Scientific Research 2022
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ISSN:2210-142X
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Shrnutí:Gender classification using human face data becomes a trending topic for researchers in the field of image processing and computer vision. The human face is biometric information that can be used to differentiate gender using a computer-aided system. Previous research utilised a local feature algorithm for extracting features on the face. However, the processing speed for one image was more than 2 seconds, making it unsuitable for real-time processing using video data. Processing video data requires a fast feature extraction algorithm because video data collects sequential images (frames). Moreover, the gender classification system's success is also measured by its accuracy, consequently it is necessary to choose the correct classification method to divide the two classes of men and women. In this research, we propose the FaceNet algorithm for feature extraction and explore several supervised machine learning methods (KNN, SVM, and Decision tree) appropriate for gender classification on video data. This study used 23,000 training data on each gender. From the experiment, combination of the FaceNet algorithm and KNN method resulted in the best accuracy of 95.75% with a processing speed of 0.059 seconds on each frame. Keywords: Gender Classification; Real-time Processing; FaceNet Algorithm; Supervised Machine Learning
ISSN:2210-142X
DOI:10.12785/ijcds/110116