In many scenarios in computer vision, machine learning, and computer graphics, there is a requirement to learn the mapping from an image of one domain to an image of another domain, called Image-to-image translation. For example, style transfer, object transfiguration, visually altering the appearance of weather conditions in an image, changing the appearance of a day image into a night image or vice versa, photo enhancement, to name a few. In this paper, we propose two machine learning techniques to solve the embroidery image-to-image translation. Our goal is to generate a preview image which looks similar to an embroidered image, from a user-uploaded image. Our techniques are modifications of two existing techniques, neural style transfe...
Thesis (Master of Science in Informatics)--University of Tsukuba, no. 41265, 2019.3.2
Image synthesis aims to generate realistic and high-fidelity images automatically. It has attracted ...
Deep learning applications on computer vision involve the use of large-volume and representative dat...
We introduce an automatic texture synthesis-based framework to convert an arbitrary input image into...
Embroidery is a traditional non-photorealistic art form in which threads of different colours stitch...
In this burgeoning age and society where people are tending towards learning the benefits adversaria...
Image-to-Image translation is a collection of computer vision problems that aim to learn a mapping b...
In the last decades, embroidery getting much attention in industries and academics. Although the tec...
Generative Adversarial Networks (GANs) in recent years has certainly become one of the biggest trend...
The first algorithm for neural style transfer was proposed by Gatys et al (2015), since then, Style ...
The diversity of painting styles provides rich visual information for constructing artistic images. ...
The dataset and pre-trained model for IJCAI 2019 paper "Scribble-to-Painting Transformation with Mul...
Convolutional Neural Networks and Graphics Processing Units have been at the core of a paradigm shif...
The rise of digitalisation in every sector brought on by the Fourth Industrial Revolution has prompt...
Texture transfer of images, or transferring the style of one image to another, has remained one of t...
Thesis (Master of Science in Informatics)--University of Tsukuba, no. 41265, 2019.3.2
Image synthesis aims to generate realistic and high-fidelity images automatically. It has attracted ...
Deep learning applications on computer vision involve the use of large-volume and representative dat...
We introduce an automatic texture synthesis-based framework to convert an arbitrary input image into...
Embroidery is a traditional non-photorealistic art form in which threads of different colours stitch...
In this burgeoning age and society where people are tending towards learning the benefits adversaria...
Image-to-Image translation is a collection of computer vision problems that aim to learn a mapping b...
In the last decades, embroidery getting much attention in industries and academics. Although the tec...
Generative Adversarial Networks (GANs) in recent years has certainly become one of the biggest trend...
The first algorithm for neural style transfer was proposed by Gatys et al (2015), since then, Style ...
The diversity of painting styles provides rich visual information for constructing artistic images. ...
The dataset and pre-trained model for IJCAI 2019 paper "Scribble-to-Painting Transformation with Mul...
Convolutional Neural Networks and Graphics Processing Units have been at the core of a paradigm shif...
The rise of digitalisation in every sector brought on by the Fourth Industrial Revolution has prompt...
Texture transfer of images, or transferring the style of one image to another, has remained one of t...
Thesis (Master of Science in Informatics)--University of Tsukuba, no. 41265, 2019.3.2
Image synthesis aims to generate realistic and high-fidelity images automatically. It has attracted ...
Deep learning applications on computer vision involve the use of large-volume and representative dat...