The subtleness of human facial expressions and a large degree of variation in the level of intensity to which a human expresses them is what makes it challenging to robustly classify and generate images of facial expressions. Lack of good quality data can hinder the performance of a deep learning model. In this article, we have proposed a Facial Expression Generation method for Meta-Humans (FExGAN-Meta) that works robustly with the images of Meta-Humans. We have prepared a large dataset of facial expressions exhibited by ten Meta-Humans when placed in a studio environment and then we have evaluated FExGAN-Meta on the collected images. The results show that FExGAN-Meta robustly generates and classifies the images of Meta-Humans for the simple as well as the complex facial expressions.
FExGAN-Meta: Facial Expression Generation with Meta Humans
FExGAN-Meta is a robust deep learning model for generating and classifying facial expressions of Meta-Humans using a large dataset.
- Year
- 2022
- Venue
- arXiv 2022
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- 1
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- arxiv.org/abs/2203.05975ARXIV-DEFAULT
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