GAN-based algorithm for efficient image inpainting

Zheng Han, Zehao Jiang, Yuan Ju
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Abstract

Global pandemic due to the spread of COVID-19 has post challenges in a new dimension on facial recognition, where people start to wear masks. Under such condition, the authors consider utilizing machine learning in image inpainting to tackle the problem, by complete the possible face that is originally covered in mask. In particular, autoencoder has great potential on retaining important, general features of the image as well as the generative power of the Generative Adversarial Network (GAN). The authors implement a combination of the two models, context encoders and explain how it combines the power of the two models and train the model with 50,000 images of influencers faces and yields a solid result that still contains space for improvements. Furthermore, the authors discuss some shortcomings with the model, their possible improvements, as well as some area of study for future investigation for applicative perspective, as well as directions to further enhance and refine the model.
基于gan的高效图像绘制算法
新型冠状病毒感染症(COVID-19)的全球大流行给面部识别带来了新的挑战,人们开始戴口罩。在这种情况下,作者考虑利用机器学习在图像绘制中解决问题,通过完成最初被掩模覆盖的可能面部。特别是,自编码器在保留图像的重要、一般特征以及生成对抗网络(GAN)的生成能力方面具有很大的潜力。作者实现了两个模型的组合,上下文编码器,并解释了它如何结合两个模型的力量,并使用50,000张影响者面部图像训练模型,并产生一个仍然包含改进空间的可靠结果。此外,作者还讨论了该模型的不足之处和可能的改进之处,以及未来研究的应用前景,以及进一步加强和完善该模型的方向。
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