The Neural Network Technologies Effectiveness for Face Detection

The paper is devoted to estimation of the effectiveness of the use of modern convolutional neural networks for face detection. On standard open datasets, learning of neural networks and comparison of the effectiveness of their functioning are carried out. Conclusions are drawn regarding the practical application of the neural networks for detecting faces on digital photographs.

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