This paper presents a parts-based method for classifying scenes of 3D objects into a set of pre-determined object classes. Working at the part level, as opposed to the whole object level, enables a more flexible class representation and allows scenes in which the query object is significantly occluded to be classified. In our approach, parts are extracted from training objects and grouped into part classes using a hierarchical clustering algorithm. Each part class is represented as a collection of semi-local shape features and can be used to perform pan class recognition. A mapping from part classes to object classes is derived from the learned part classes and known object classes. At run-time, a 3D query scene is sampled, local shape feat...
Abstract—Recognition of three dimensional (3D) objects is a challenging problem, especially in clutt...
In this paper, we describe how to build an incremental structured part model for object recognition....
Most research on 3-D object classification and recognition focuses on recognition of objects in 3-D ...
Abstract—Unprecedented amounts of 3D data can be ac-quired in urban environments, but their use for ...
Abstract—Unprecedented amounts of 3D data can be ac-quired in urban environments, but their use for ...
Improvement in acquisition systems, has resulted in the ability to capture more realistic 3D models ...
This thesis presents part-based approaches to object class detection in single 2D images, relying on...
This thesis presents part-based approaches to object class detection in single 2D images, relying on...
This thesis addresses the problem of learning object classification using multi-view range data. Cla...
3D object detection and recognition is increasingly used for manipulation and navigation tasks in se...
In this paper we propose a novel framework for 3D object categorization. The object is modeled it in...
There have been important recent advances in object recognition through the matching of invariant lo...
International audienceWe introduce a novel method for constructing and selecting scale-invariant obj...
Modeling 3D object classes requires accounting for intra-class variations in an object's appearance ...
International audienceGrouping 3D-objects into (semantically) meaningful categories is a challenging...
Abstract—Recognition of three dimensional (3D) objects is a challenging problem, especially in clutt...
In this paper, we describe how to build an incremental structured part model for object recognition....
Most research on 3-D object classification and recognition focuses on recognition of objects in 3-D ...
Abstract—Unprecedented amounts of 3D data can be ac-quired in urban environments, but their use for ...
Abstract—Unprecedented amounts of 3D data can be ac-quired in urban environments, but their use for ...
Improvement in acquisition systems, has resulted in the ability to capture more realistic 3D models ...
This thesis presents part-based approaches to object class detection in single 2D images, relying on...
This thesis presents part-based approaches to object class detection in single 2D images, relying on...
This thesis addresses the problem of learning object classification using multi-view range data. Cla...
3D object detection and recognition is increasingly used for manipulation and navigation tasks in se...
In this paper we propose a novel framework for 3D object categorization. The object is modeled it in...
There have been important recent advances in object recognition through the matching of invariant lo...
International audienceWe introduce a novel method for constructing and selecting scale-invariant obj...
Modeling 3D object classes requires accounting for intra-class variations in an object's appearance ...
International audienceGrouping 3D-objects into (semantically) meaningful categories is a challenging...
Abstract—Recognition of three dimensional (3D) objects is a challenging problem, especially in clutt...
In this paper, we describe how to build an incremental structured part model for object recognition....
Most research on 3-D object classification and recognition focuses on recognition of objects in 3-D ...