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Occluded Face Restoration Based on Generative Adversarial Networks

机译:基于生成对抗网络的面部遮挡修复

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In recent years, the combination of Convolutional Neural Networks and Generative Adversarial Networks has played a huge potential in the field of face restoration. In order to effectively repair the large area of random occlusion face, this paper constructs an improved Generative Adversarial Networks model based on the Context Encoder, and proposes a self-localization occlusion face image restoration algorithm. Firstly, the occluded part of the face is marked by occlusion locator, and then the marked face image is sent to the generator of Generative Adversarial Networks for restoration. The model generator uses the Convolutional Neural Networks of the Variational Autoencoder structure, and adds the Batch Normalization layer in the model to enhance the information prediction ability of the generator. At the same time, the discriminator is constructed by combining with VGG19, and the discriminator is trained against the generator. Through the experiment on CelebA face data set, this algorithm is significantly better than other methods in the aspect of random large area occlusion face image restoration.
机译:近年来,卷积神经网络和生成对抗网络的结合在面部修复领域发挥了巨大的潜力。为了有效地修复大面积的随机遮挡人脸,本文在上下文编码器的基础上构造了改进的Generative Adversarial Networks模型,并提出了一种自定位遮挡人脸图像恢复算法。首先,通过遮挡定位器标记脸部的遮挡部分,然后将标记的脸部图像发送到Generative Adversarial Networks的生成器中进行还原。模型生成器使用变分自编码器结构的卷积神经网络,并在模型中添加批处理归一化层,以增强生成器的信息预测能力。同时,通过与VGG19组合构造鉴别器,并针对生成器训练鉴别器。通过对CelebA人脸数据集的实验,该算法在随机大面积遮挡人脸图像恢复方面明显优于其他方法。

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