We describe how to model the appearance of a 3-D object using multiple views, learn such a model from training images, and use the model for object recognition. The model uses probability distributions to describe the range of possible variation in the object’s appearance. These distributions are organized on two levels. Large variations are handled by partitioning training images into clusters corresponding to distinctly different views of the object. Within each cluster, smaller variations are represented by distributions characterizing uncertainty in the presence, position, and measurements of various discrete features of appearance. Many types of features are used, ranging in abstraction from edge segments to perceptual groupings and re...
Abstract—This paper presents a probabilistic representation for 3D objects, and details the mechanis...
Abstract. We present a probabilistic framework for recognizing objects in images of cluttered scenes...
Abstract. In an object recognition task where an image is represented as a constellation of image pa...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
We describe a model-based object recognition system that uses a probabilistic model for recognizing ...
A new Bayesian framework for 3--D object classification and localization is introduced. Objects are ...
This work addresses various probabilistic ap-proaches which are suitable for classication and locali...
We propose a novel probabilistic framework for learning visual models of 3D object categories by com...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
We propose a novel probabilistic framework for learning visual models of 3D object categories by com...
A generative probabilistic model for objects in images is presented. An object is composed of a cons...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
The ability to accurately localize objects in an observed scene is regarded as an important precondi...
The ability to accurately localize objects in an observed scene is regarded as an important precond...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
Abstract—This paper presents a probabilistic representation for 3D objects, and details the mechanis...
Abstract. We present a probabilistic framework for recognizing objects in images of cluttered scenes...
Abstract. In an object recognition task where an image is represented as a constellation of image pa...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
We describe a model-based object recognition system that uses a probabilistic model for recognizing ...
A new Bayesian framework for 3--D object classification and localization is introduced. Objects are ...
This work addresses various probabilistic ap-proaches which are suitable for classication and locali...
We propose a novel probabilistic framework for learning visual models of 3D object categories by com...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
We propose a novel probabilistic framework for learning visual models of 3D object categories by com...
A generative probabilistic model for objects in images is presented. An object is composed of a cons...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
The ability to accurately localize objects in an observed scene is regarded as an important precondi...
The ability to accurately localize objects in an observed scene is regarded as an important precond...
In this paper, we describe an algorithm for object recognition that explicitly models and estimates ...
Abstract—This paper presents a probabilistic representation for 3D objects, and details the mechanis...
Abstract. We present a probabilistic framework for recognizing objects in images of cluttered scenes...
Abstract. In an object recognition task where an image is represented as a constellation of image pa...