We focus on painting retrieval problem, and our motivation is to find out similar paintings and assist painting plagiarism identification. Similar painting retrieval is much more challenging than natural image retrieval, since different paintings have different styles and the similarity of paintings is difficult to measure. In this paper, we define the similarity of paintings from the perspectives of both semantics and structure rather than pixel level color, texture and shape. Specifically, we use the pooling activations of Convolutional Neural Network (CNN) to represent painting features, which preserves both semantic information and structure information. We propose an adaptive weighted matching approach to measure the similarity of pain...
Visual arts are of inestimable importance for the cultural, historic and economic growth of our soci...
We propose a novel measure of visual similarity for image retrieval that incorporates both structura...
This paper investigates the application of a Convolutional Neural Network (CNN), AlexNet, on the aut...
International audienceAs digitized paintings continue to grow in popularity and become more prevalen...
We study the problem of matching photos of a person to paintings of that person, in order to retriev...
The purpose of this thesis is the development of a Web Application to categorize paintings and searc...
This thesis is concerned with the problem of visual recognition in art – such as finding the object...
The increasing availability of large digitized fine art collections opens new research perspectives ...
Computer vision has made significant strides in the area of artistic style transfer, and a few attem...
With the ongoing expansion of digitized artworks, the automated analysis and categorization of fine ...
The identity of subjects in many portraits has been a matter of debate for art historians that relie...
We approach the challenging problem of discovering in-fluences between painters based on their fine-...
In this thesis, we apply deep convolutional neural networks to ne-grained artwork classification on...
Visual arts are of paramount importance for the cultural, historic and economic growth of our societ...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...
Visual arts are of inestimable importance for the cultural, historic and economic growth of our soci...
We propose a novel measure of visual similarity for image retrieval that incorporates both structura...
This paper investigates the application of a Convolutional Neural Network (CNN), AlexNet, on the aut...
International audienceAs digitized paintings continue to grow in popularity and become more prevalen...
We study the problem of matching photos of a person to paintings of that person, in order to retriev...
The purpose of this thesis is the development of a Web Application to categorize paintings and searc...
This thesis is concerned with the problem of visual recognition in art – such as finding the object...
The increasing availability of large digitized fine art collections opens new research perspectives ...
Computer vision has made significant strides in the area of artistic style transfer, and a few attem...
With the ongoing expansion of digitized artworks, the automated analysis and categorization of fine ...
The identity of subjects in many portraits has been a matter of debate for art historians that relie...
We approach the challenging problem of discovering in-fluences between painters based on their fine-...
In this thesis, we apply deep convolutional neural networks to ne-grained artwork classification on...
Visual arts are of paramount importance for the cultural, historic and economic growth of our societ...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...
Visual arts are of inestimable importance for the cultural, historic and economic growth of our soci...
We propose a novel measure of visual similarity for image retrieval that incorporates both structura...
This paper investigates the application of a Convolutional Neural Network (CNN), AlexNet, on the aut...