Computer vision has made significant strides in the area of artistic style transfer, and a few attempts have been made to extract and define the style signature of various artists. However, most of these endeavors have been limited by treating a creative task such as painting and critiquing style as a traditional machine learning problem. In this study, we try to shift the viewpoint from machine learning trying to solve an art problem, to one where the art world is using computer vision techniques to fit its purpose. This subtle difference is extremely important because it allows us to build notions of style in a bottom up fashion, rooted in the domain knowledge pertaining to artistic style. This work aims to take first steps towards build...
The identity of subjects in many portraits has been a matter of debate for art historians that relie...
Neural Style Transfer (NST) has been a widely researched topic as of late enabling new forms of imag...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...
How does the machine classify styles in art? And how does it relate to art historians' methods for a...
From entertainment to medicine and engineering, artificial intelligence (AI) is now being used in a ...
Artificial intelligence has emerged as a powerful computational tool to create artworks. One applica...
Amongst the methods available for machine learning and artificial intelligence, neural networks are ...
International audienceA tremendous number of techniques have been proposed to transfer artistic styl...
Visual stylometry is a new interdisciplinary research field that sits at the junction of digital hum...
With the increase in massive digitized datasets of cultural artefacts, social and cultural scientist...
With the ongoing expansion of digitized artworks, the automated analysis and categorization of fine ...
Classifying artists and their work as distinct art styles has been an important task of scholars in ...
The identity of subjects in many portraits has been a matter of debate for art historians that relie...
The computer science approaches to the classification of painting concentrate on problems of attribu...
Abstract — This paper aims to evaluate the aesthetic visual quality of a special type of visual medi...
The identity of subjects in many portraits has been a matter of debate for art historians that relie...
Neural Style Transfer (NST) has been a widely researched topic as of late enabling new forms of imag...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...
How does the machine classify styles in art? And how does it relate to art historians' methods for a...
From entertainment to medicine and engineering, artificial intelligence (AI) is now being used in a ...
Artificial intelligence has emerged as a powerful computational tool to create artworks. One applica...
Amongst the methods available for machine learning and artificial intelligence, neural networks are ...
International audienceA tremendous number of techniques have been proposed to transfer artistic styl...
Visual stylometry is a new interdisciplinary research field that sits at the junction of digital hum...
With the increase in massive digitized datasets of cultural artefacts, social and cultural scientist...
With the ongoing expansion of digitized artworks, the automated analysis and categorization of fine ...
Classifying artists and their work as distinct art styles has been an important task of scholars in ...
The identity of subjects in many portraits has been a matter of debate for art historians that relie...
The computer science approaches to the classification of painting concentrate on problems of attribu...
Abstract — This paper aims to evaluate the aesthetic visual quality of a special type of visual medi...
The identity of subjects in many portraits has been a matter of debate for art historians that relie...
Neural Style Transfer (NST) has been a widely researched topic as of late enabling new forms of imag...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...