Accurate and robust registration of multiple three dimensional (3D) views is crucial for creating digital 3D models of real-world scenes. In this paper, we present a framework for evaluating the quality of model hypotheses during the registration phase. We use maximum likelihood estimation to learn a probabilistic model of registration success. This method provides a principled way to combine multiple measures of registration accuracy. Also, we describe a stochastic algorithm for robustly searching the large space of possible models for the best model hypothesis. This new approach can detect situations in which no solution exists, outputting a set of model parts if a single model using all the views cannot be found. We show results for a la...
at 25 fps, offering great potential for developing fast object modeling algorithms. Surprisingly, th...
It is well established that acquiring large amounts of range data with vision sensors can quickly le...
In this paper, we report on recent extensions to a surface matching algorithm based on local 3-D sig...
Many computer vision and robotics applications call for accurate three-dimensional (3D) models of re...
I n this paper, we present a method for automati-cally creating a 30 model of a scene f r o m a set ...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
We describe a model-based object recognition system that uses a probabilistic model for recognizing ...
The contribution of the paper is two-fold: Firstly, a review of the point set registration literatur...
Abstract In this article we present a method for automat-ically recovering complete and dense depth ...
This paper presents a probabilistic representation for 3D objects, and details the mechanism of infe...
Abstract—This paper presents a probabilistic representation for 3D objects, and details the mechanis...
This paper presents a method for automatically registering multiple rigid three dimensional (3D) dat...
One approach to model based computer vision as used for recognition is to store a database of wirefr...
This paper describes a new approach to automatic modeling of 3-D free-form objects from multi-view r...
In computer vision, the aim is to model and extract high-level information from visual sensor measur...
at 25 fps, offering great potential for developing fast object modeling algorithms. Surprisingly, th...
It is well established that acquiring large amounts of range data with vision sensors can quickly le...
In this paper, we report on recent extensions to a surface matching algorithm based on local 3-D sig...
Many computer vision and robotics applications call for accurate three-dimensional (3D) models of re...
I n this paper, we present a method for automati-cally creating a 30 model of a scene f r o m a set ...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
We describe a model-based object recognition system that uses a probabilistic model for recognizing ...
The contribution of the paper is two-fold: Firstly, a review of the point set registration literatur...
Abstract In this article we present a method for automat-ically recovering complete and dense depth ...
This paper presents a probabilistic representation for 3D objects, and details the mechanism of infe...
Abstract—This paper presents a probabilistic representation for 3D objects, and details the mechanis...
This paper presents a method for automatically registering multiple rigid three dimensional (3D) dat...
One approach to model based computer vision as used for recognition is to store a database of wirefr...
This paper describes a new approach to automatic modeling of 3-D free-form objects from multi-view r...
In computer vision, the aim is to model and extract high-level information from visual sensor measur...
at 25 fps, offering great potential for developing fast object modeling algorithms. Surprisingly, th...
It is well established that acquiring large amounts of range data with vision sensors can quickly le...
In this paper, we report on recent extensions to a surface matching algorithm based on local 3-D sig...