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Face recognition based on machine learning algorithms
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UDC: 681.3.01
Publication Language: Ukrainian
Stuc. intelekt. 2017; 22(3-4):84-93
Abstract: This paper explores machine learning algorithms for face recognition, there pro and cons and investigate methods of their improvement. In paper is proposed usage of histogram of oriented gradients(HOG), L2-norm and face landmarks estimation for achieving most accurate result of face recognition.
Keywords: face recognition, machine learning, Histogram of oriented gradients, face landmarks estimation, Python, dblib
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