International audienceMost of the bag of visual words models are used to resorting to clustering techniques such as the K-means algorithm, to construct visual dictionaries. In order to improve their efficiency in the context of multi-class image classification tasks, we present in this paper a new incremental weighted average and gradient descent-based clustering algorithm which optimizes the visual word detection by the use of the class label of training examples. We show that this new supervised vector quantization allows us to better reveal concept or category-specific local feature distributions over the feature space. A large comparison with the standard K-means algorithm on the PASCAL VOC-2007 dataset is carried out. The results show ...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
Abstract. The Bag-of-Visual-Words (BoVW) model is a popular approach for visual recognition. Used su...
Object recognition systems need effective image descriptors to obtain good performance levels. Curre...
International audienceMost of the bag of visual words models are used to resorting to clustering tec...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
Recent works in object recognition often use visual words, i.e. vector quantized local descriptors e...
International audienceSome of the most effective recent methods for content-based image classificati...
We present a novel method for constructing a visual vocabulary that takes into account the class lab...
International audienceThe creation of semantically relevant clusters is vital in bag-of-visual words...
Vocabulary generation is the essential step in the bag-of-words image representation for visual conc...
International audienceWhen building traditional Bag of Visual Words (BOW) for image classification, ...
International audienceThe idea of representing images using a bag of visual words is currently popul...
In the problem where there is not enough data to use Deep Learning, Bag-of-Visual-Words (BoVW) is st...
The creation of semantically relevant clusters is vital in bag-of-visual words mod-els which are kno...
The quality of visual vocabularies is crucial for the performance of bag-of-words image classificati...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
Abstract. The Bag-of-Visual-Words (BoVW) model is a popular approach for visual recognition. Used su...
Object recognition systems need effective image descriptors to obtain good performance levels. Curre...
International audienceMost of the bag of visual words models are used to resorting to clustering tec...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
Recent works in object recognition often use visual words, i.e. vector quantized local descriptors e...
International audienceSome of the most effective recent methods for content-based image classificati...
We present a novel method for constructing a visual vocabulary that takes into account the class lab...
International audienceThe creation of semantically relevant clusters is vital in bag-of-visual words...
Vocabulary generation is the essential step in the bag-of-words image representation for visual conc...
International audienceWhen building traditional Bag of Visual Words (BOW) for image classification, ...
International audienceThe idea of representing images using a bag of visual words is currently popul...
In the problem where there is not enough data to use Deep Learning, Bag-of-Visual-Words (BoVW) is st...
The creation of semantically relevant clusters is vital in bag-of-visual words mod-els which are kno...
The quality of visual vocabularies is crucial for the performance of bag-of-words image classificati...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
Abstract. The Bag-of-Visual-Words (BoVW) model is a popular approach for visual recognition. Used su...
Object recognition systems need effective image descriptors to obtain good performance levels. Curre...