This paper addresses the problem of using deep learning for makeup style transfer. For solving this problem, we propose a new supervised method. Additionally, we present a technique for creating a synthetic dataset for makeup transfer used to train our model. The obtained results were compared with six popular methods for makeup transfer using three metrics. The tests were carried out on four available data sets. The proposed method, in many respects, is competitive with the methods used in the literature. Thanks to images of faces with generated synthetic makeup, the proposed method learns to better transfer details, and the learning process is significantly accelerated
This paper introduces an automatic method for editing a portrait photo so that the subject appears t...
The challenge of developing facial recognition systems has been the focus of many research efforts i...
In this thesis we will use deep learning tools to tackle an interesting and complex problem of imag...
Makeup transfer is one of the applications of image style transfer, which refers to transfer the ref...
In the modern age, the world is like a village day by day as the technology is being developed as a ...
Today, cosmetic style transfer algorithm is a kind of popular technology. Its main function is to tr...
Makeup can disguise facial features, which results in degradation in the performance of many facial-...
Deep learning applications on computer vision involve the use of large-volume and representative dat...
We study the problem of deep representation learning for photorealistic content creation. This is a ...
The diversity of painting styles provides rich visual information for constructing artistic images. ...
Facial makeup style transfer is an extremely challenging sub-field of image-to-image-translation. Du...
With the explosive development of social media, people are more willing to sharing their portrait ph...
The applications of style transfer on real time photographs are very trending now. This is used in v...
When standard neural style transfer approaches are used in portrait style transfer, they often inapp...
Facial makeup style transfer is an extremely challenging sub-field of image-to-image-translation. Du...
This paper introduces an automatic method for editing a portrait photo so that the subject appears t...
The challenge of developing facial recognition systems has been the focus of many research efforts i...
In this thesis we will use deep learning tools to tackle an interesting and complex problem of imag...
Makeup transfer is one of the applications of image style transfer, which refers to transfer the ref...
In the modern age, the world is like a village day by day as the technology is being developed as a ...
Today, cosmetic style transfer algorithm is a kind of popular technology. Its main function is to tr...
Makeup can disguise facial features, which results in degradation in the performance of many facial-...
Deep learning applications on computer vision involve the use of large-volume and representative dat...
We study the problem of deep representation learning for photorealistic content creation. This is a ...
The diversity of painting styles provides rich visual information for constructing artistic images. ...
Facial makeup style transfer is an extremely challenging sub-field of image-to-image-translation. Du...
With the explosive development of social media, people are more willing to sharing their portrait ph...
The applications of style transfer on real time photographs are very trending now. This is used in v...
When standard neural style transfer approaches are used in portrait style transfer, they often inapp...
Facial makeup style transfer is an extremely challenging sub-field of image-to-image-translation. Du...
This paper introduces an automatic method for editing a portrait photo so that the subject appears t...
The challenge of developing facial recognition systems has been the focus of many research efforts i...
In this thesis we will use deep learning tools to tackle an interesting and complex problem of imag...