The style of an image plays a significant role in how it is viewed, but style has re-ceived little attention in computer vision research. We describe an approach to predicting style of images, and perform a thorough evaluation of different image features for these tasks. We find that features learned in a multi-layer network generally perform best – even when trained with object class (not style) labels. Our large-scale learning methods results in the best published performance on an existing dataset of aesthetic ratings and photographic style annotations. We present two novel datasets: 80K Flickr photographs annotated with 20 curated style labels, and 85K paintings annotated with 25 style/genre labels. Our approach shows excellent classifi...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...
Through the extensive study of transformers, attention mechanisms have emerged as potentially more p...
Humans can see through the complexity of scenes, faces, and objects by quickly extracting their redu...
The notion of style in photographs is one that is highly subjective, and often difficult to characte...
Recent advancements in Convolutional Neural Networks (CNN) has been highly successful in more trick...
Computer vision has made significant strides in the area of artistic style transfer, and a few attem...
We present StyleBabel, a unique open access dataset of natural language captions and free-form tags ...
We present StyleBabel, a unique open access dataset of natural language captions and free-form tags ...
Recent advances in imaging and multimedia technologies have paved the way for automatic analysis of ...
Style classification (e.g., architectural, music, fashion) attracts an increasing attention in both ...
The computer science approaches to the classification of painting concentrate on problems of attribu...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Abstract. Visual object classification and detection are major prob-lems in contemporary computer vi...
With the growing availability of storage space for data, such as images, comes the need for research...
How does the machine classify styles in art? And how does it relate to art historians' methods for a...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...
Through the extensive study of transformers, attention mechanisms have emerged as potentially more p...
Humans can see through the complexity of scenes, faces, and objects by quickly extracting their redu...
The notion of style in photographs is one that is highly subjective, and often difficult to characte...
Recent advancements in Convolutional Neural Networks (CNN) has been highly successful in more trick...
Computer vision has made significant strides in the area of artistic style transfer, and a few attem...
We present StyleBabel, a unique open access dataset of natural language captions and free-form tags ...
We present StyleBabel, a unique open access dataset of natural language captions and free-form tags ...
Recent advances in imaging and multimedia technologies have paved the way for automatic analysis of ...
Style classification (e.g., architectural, music, fashion) attracts an increasing attention in both ...
The computer science approaches to the classification of painting concentrate on problems of attribu...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Abstract. Visual object classification and detection are major prob-lems in contemporary computer vi...
With the growing availability of storage space for data, such as images, comes the need for research...
How does the machine classify styles in art? And how does it relate to art historians' methods for a...
This thesis proposes a convolutional neural network-based approach for labeling art paintings by the...
Through the extensive study of transformers, attention mechanisms have emerged as potentially more p...
Humans can see through the complexity of scenes, faces, and objects by quickly extracting their redu...