The objective of this work is to recognize object categories in paintings, such as cars, cows and cathedrals. We achieve this by training classifiers from natural images of the objects. We make the following contributions: (i) we measure the extent of the domain shift problem for image-level classifiers trained on natural images vs paintings, for a variety of CNN architectures; (ii) we demonstrate that classificationby-detection (i.e. learning classifiers for regions rather than the entire image) recognizes (and locates) a wide range of small objects in paintings that are not picked up by image-level classifiers, and combining these two methods improves performance; and (iii) we develop a system that learns a region-level classifier on-the-...
This paper proposes a novel approach to object detection for the Cultural Heritage domain, which rel...
Given a set of images containing multiple object categories,we seek to discover those categories and...
The rise of multi-million-item dataset initiatives has enabled data-hungry machine learning algorith...
The objective of this work is to recognize object categories in paintings, such as cars, cows and ca...
This thesis is concerned with the problem of visual recognition in art – such as finding the object...
This thesis is concerned with the problem of visual recognition in art â such as finding the objects...
Object Detection requires many precise annotations, which are available for natural images but not f...
Object Detection requires many precise annotations, which are available for natural images but not f...
Object Detection requires many precise annotations, which are available for natural images but not f...
Object Detection requires many precise annotations, which are available for natural images but not f...
The objective of this work is to recognize object categories (such as animals and vehicles) in paint...
We address various issues in learning and representation of visual object categories. A key componen...
We approach the task of detecting the illicit movement of cultural heritage from a machine learning ...
Accepted at ECCV 2018 Workshop Computer Vision for Art Analysis - VISART 2018 14 pages, 5 figuresInt...
Accepted at ECCV 2018 Workshop Computer Vision for Art Analysis - VISART 2018 14 pages, 5 figuresInt...
This paper proposes a novel approach to object detection for the Cultural Heritage domain, which rel...
Given a set of images containing multiple object categories,we seek to discover those categories and...
The rise of multi-million-item dataset initiatives has enabled data-hungry machine learning algorith...
The objective of this work is to recognize object categories in paintings, such as cars, cows and ca...
This thesis is concerned with the problem of visual recognition in art – such as finding the object...
This thesis is concerned with the problem of visual recognition in art â such as finding the objects...
Object Detection requires many precise annotations, which are available for natural images but not f...
Object Detection requires many precise annotations, which are available for natural images but not f...
Object Detection requires many precise annotations, which are available for natural images but not f...
Object Detection requires many precise annotations, which are available for natural images but not f...
The objective of this work is to recognize object categories (such as animals and vehicles) in paint...
We address various issues in learning and representation of visual object categories. A key componen...
We approach the task of detecting the illicit movement of cultural heritage from a machine learning ...
Accepted at ECCV 2018 Workshop Computer Vision for Art Analysis - VISART 2018 14 pages, 5 figuresInt...
Accepted at ECCV 2018 Workshop Computer Vision for Art Analysis - VISART 2018 14 pages, 5 figuresInt...
This paper proposes a novel approach to object detection for the Cultural Heritage domain, which rel...
Given a set of images containing multiple object categories,we seek to discover those categories and...
The rise of multi-million-item dataset initiatives has enabled data-hungry machine learning algorith...