In this paper, we describe a classification framework for binary shapes that have scale, rotation and strong viewpoint variations. To this end, we develop several novel techniques. First, we employ the spectral magnitude of log-polar transform as a local feature in the bag-of-words model. Second, we incorporate contextual information in the bag-of-words model using a novel method to extract bi-grams from the spatial co-occurrence matrix. Third, a novel metric termed ‘weighted gain ratio’ is proposed to select a suitable codebook size in the bag-of-words model. The proposed metric is generic, and hence it can be used for any clustering quality evaluation task. Fourth, a joint learning framework is proposed to learn features in a data-driven ...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Statistical analysis of anatomical shape differences between two different populations can be reduce...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
We present an approach that combines bag-of-words and spatialmodels to perform semantic and syntacti...
In this paper, we present a new method for 3D-shape catego-rization using Bag-of-Feature techniques ...
In the past decade, Bags-of-Words (BOW) models have become popular for the task of object recognitio...
We present a method for supervised learning of shape descriptors for shape retrieval applications. M...
International audienceIn this paper, we present a new method for 3D-shape categorization using Bag-o...
International audienceThis paper presents an extension to category classification with bag-of-featur...
International audienceWe present a novel method for 3D-shape matching using Bag-of-Feature technique...
We present an approach that combines bag-of-words and spatialmodels to perform semantic and syntacti...
Salient points are very important for image description because they are related to the visually mos...
This dataset is used in the paper Semi-supervised Multimodal Representation Learning through a Globa...
Shape classification in computer vision is a vibrant field of study with wide ranging applications i...
The classification of forms is a process used in various areas, to perform a classification based on...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Statistical analysis of anatomical shape differences between two different populations can be reduce...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
We present an approach that combines bag-of-words and spatialmodels to perform semantic and syntacti...
In this paper, we present a new method for 3D-shape catego-rization using Bag-of-Feature techniques ...
In the past decade, Bags-of-Words (BOW) models have become popular for the task of object recognitio...
We present a method for supervised learning of shape descriptors for shape retrieval applications. M...
International audienceIn this paper, we present a new method for 3D-shape categorization using Bag-o...
International audienceThis paper presents an extension to category classification with bag-of-featur...
International audienceWe present a novel method for 3D-shape matching using Bag-of-Feature technique...
We present an approach that combines bag-of-words and spatialmodels to perform semantic and syntacti...
Salient points are very important for image description because they are related to the visually mos...
This dataset is used in the paper Semi-supervised Multimodal Representation Learning through a Globa...
Shape classification in computer vision is a vibrant field of study with wide ranging applications i...
The classification of forms is a process used in various areas, to perform a classification based on...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Statistical analysis of anatomical shape differences between two different populations can be reduce...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...