A new Bayesian framework for 3--D object classification and localization is introduced. Objects are represented as probability density functions, and observed features are treated as random variables. These probability density functions turn out a non geometric nature of models and characterize the statistical behavior of local object features like points or lines. The parameterization of model densities covers several terms of object recognition: locations and instabilities of features, rotation and translation, projection, the assignment of image and model features, as well as relations. This paper treats especially the probabilistic modeling of relational dependencies between single features. The mathematical framework, the training algo...
Central problems in the eld of computer vision are learning object models from examples, classicatio...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
The scenario used focuses on object recognition in an office environment scene with the goal of clas...
We describe how to model the appearance of a 3-D object using multiple views, learn such a model fro...
We describe a model-based object recognition system that uses a probabilistic model for recognizing ...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
In this paper, we introduce a new and general framework for active statistical object recognition. M...
This work addresses various probabilistic ap-proaches which are suitable for classication and locali...
This contribution treats the problem of learning and recognizing 3D objects using 2D views. We prese...
We describe a Bayesian architecture to estimate the position and pose of a 3D object. The system sta...
The ability to accurately localize objects in an observed scene is regarded as an important precond...
The ability to accurately localize objects in an observed scene is regarded as an important precondi...
Abstract—This paper presents a new volumetric representation for categorizing objects in large-scale...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
Central problems in the eld of computer vision are learning object models from examples, classicatio...
Central problems in the eld of computer vision are learning object models from examples, classicatio...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
The scenario used focuses on object recognition in an office environment scene with the goal of clas...
We describe how to model the appearance of a 3-D object using multiple views, learn such a model fro...
We describe a model-based object recognition system that uses a probabilistic model for recognizing ...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
In this paper, we introduce a new and general framework for active statistical object recognition. M...
This work addresses various probabilistic ap-proaches which are suitable for classication and locali...
This contribution treats the problem of learning and recognizing 3D objects using 2D views. We prese...
We describe a Bayesian architecture to estimate the position and pose of a 3D object. The system sta...
The ability to accurately localize objects in an observed scene is regarded as an important precond...
The ability to accurately localize objects in an observed scene is regarded as an important precondi...
Abstract—This paper presents a new volumetric representation for categorizing objects in large-scale...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
Central problems in the eld of computer vision are learning object models from examples, classicatio...
Central problems in the eld of computer vision are learning object models from examples, classicatio...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
The scenario used focuses on object recognition in an office environment scene with the goal of clas...