首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Facial Landmark Detection Using Generative Adversarial Network Combined with Autoencoder for Occlusion
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Facial Landmark Detection Using Generative Adversarial Network Combined with Autoencoder for Occlusion

机译:Facial Landmark Detection Using Generative Adversarial Network Combined with Autoencoder for Occlusion

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摘要

The performance of the facial landmark detection model will be in trouble when it is under occlusion condition. In this paper, we present an effective framework with the objective of addressing the occlusion problem for facial landmark detection, which includes a generative adversarial network with improved autoencoders (GAN-IAs) and deep regression networks. In this model, GAN-IA can restore the occluded face region by utilizing skip concatenation among feature maps to keep more details. Meanwhile, self-attention mechanism that is effective in modeling long-range dependencies is employed to recover harmonious images for occluded faces. Deep regression networks are used to learn a nonlinear mapping from facial appearance to facial shape. Benefited from the mutual cooperation of GAN-IA and deep regression networks, a robust facial landmark detection model is achieved for the occlusion problem and the performance of the model achieves obviously improvement on challenging datasets.

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