Volume 2, Issue 3 (8-2020)                   sjis 2020, 2(3): 1-5 | Back to browse issues page

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Yaghmaee F, Khammari R. Facial gender recognition، deferent approaches. sjis. 2020; 2 (3) :1-5
URL: http://sjis.srpub.org/article-5-60-en.html
Faculty of Electerical and Computer Engineering, Semnan, Iran
Abstract:   (466 Views)
Gender recognition is one of the most interesting problems in face processing. Gender recognition can be used as a preprocessing phase in many applications. In this work we compare different approaches for gender recognition task, in accuracy and generalizing. First we use principle component analysis (PCA) and discrete cosine transformation (DCT), for feature extraction and dimension reduction. Additionally we used Bayesian approach and support vector machine (SVM) too. Finally, we compare these approaches in accuracy and generalizing.
Full-Text [PDF 446 kb]   (140 Downloads)    
Type of Study: Research | Subject: Computer Vision and Pattern Recognition
Received: 2020/05/28 | Accepted: 2020/07/25 | Published: 2020/08/1

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