Artistic style transfer, a captivating application of generative artificial intelligence, involves fusing the content of one image with the artistic style of another to create unique visual compositions. This paper presents a comprehensive overview of a novel technique for style transfer using Convolutional Neural Networks (CNNs). By leveraging deep image representations learned by CNNs, we demonstrate how to separate and manipulate image content and style, enabling the synthesis of high-quality images that combine content and style in a harmonious manner. We describe the methodology, including content and style representations, loss computation, and optimization, and showcase experimental results highlighting the effectiveness and versatil...
Neural style transfer (NST) is a technique based on the deep learning of a convolutional neural netw...
Neural Style Transfer (NST) has been a widely researched topic as of late enabling new forms of imag...
Neural style transfer, which has attracted great attention in both academic research and industrial ...
Artistic style transfer, a captivating application of generative artificial intelligence, involves f...
Rendering the semantic content of an image in different styles is a difficult image processing task....
The diversity of painting styles provides rich visual information for constructing artistic images. ...
Amongst the methods available for machine learning and artificial intelligence, neural networks are ...
In this thesis we will use deep learning tools to tackle an interesting and complex problem of imag...
International audienceIn this meta paper we discuss image-based artistic rendering (IB-AR) based on ...
Convolutional Neural Networks and Graphics Processing Units have been at the core of a paradigm shif...
The first algorithm for neural style transfer was proposed by Gatys et al (2015), since then, Style ...
For hundred years, artists engage into art creation to present their understanding of subjective and...
[[abstract]]Recently, deep convolutional neural networks have resulted in noticeable improvements in...
[[abstract]]Recently, deep convolutional neural networks have resulted in noticeable improvements in...
In this article we present the way to transfer style from one image to the content of another with c...
Neural style transfer (NST) is a technique based on the deep learning of a convolutional neural netw...
Neural Style Transfer (NST) has been a widely researched topic as of late enabling new forms of imag...
Neural style transfer, which has attracted great attention in both academic research and industrial ...
Artistic style transfer, a captivating application of generative artificial intelligence, involves f...
Rendering the semantic content of an image in different styles is a difficult image processing task....
The diversity of painting styles provides rich visual information for constructing artistic images. ...
Amongst the methods available for machine learning and artificial intelligence, neural networks are ...
In this thesis we will use deep learning tools to tackle an interesting and complex problem of imag...
International audienceIn this meta paper we discuss image-based artistic rendering (IB-AR) based on ...
Convolutional Neural Networks and Graphics Processing Units have been at the core of a paradigm shif...
The first algorithm for neural style transfer was proposed by Gatys et al (2015), since then, Style ...
For hundred years, artists engage into art creation to present their understanding of subjective and...
[[abstract]]Recently, deep convolutional neural networks have resulted in noticeable improvements in...
[[abstract]]Recently, deep convolutional neural networks have resulted in noticeable improvements in...
In this article we present the way to transfer style from one image to the content of another with c...
Neural style transfer (NST) is a technique based on the deep learning of a convolutional neural netw...
Neural Style Transfer (NST) has been a widely researched topic as of late enabling new forms of imag...
Neural style transfer, which has attracted great attention in both academic research and industrial ...