In this paper we present a framework for accumulating on-line a model of a moving object (e.g., when manipulated by a robot). The proposed scheme is based on Bayesian filtering of local features, filtering jointly position, orientation and appearance information. The work presented here is novel in two aspects: first, we use an estimation mechanism that updates iteratively not only geometrical information, but also appearance information. Second, we propose a probabilistic version of the classical n-scan criterion that allows us to select which features are preserved and which are discarded, while making use of the available uncertainty model. The accumulated representations have been used in three different contexts: pose estimation, ro...
Abstract—Accurate detection of moving objects is an important precursor to stable tracking or recogn...
We introduce one module in a cognitive system that learns the shape of objects by active exploration...
Detecting moving objects using stationary cameras is an important precursor to many activity recogni...
We present a method for learning a set of generative models which are suitable for representing sele...
This extended abstract describes a probabilistic approach for improving the object pose estimation a...
Abstract. We introduce one module in a cognitive system that learns the shape of objects by active e...
This work presents a visual information fusion approach for robust probability-oriented feature matc...
This work considers robot localization with an action-associated sparse appearance-based map, under ...
The topic of object recognition is a central challenge of computer vision. In addition to being stud...
This paper presents a framework for perform- ing real-time recursive estimation of landmarks’ visual...
The information about the accurate position and orientation of an object relative to a robot plays ...
Appearance-based localization compares the current image taken from a robot’s camera to a set of pre...
This paper presents a probabilistic Bayesian framework for object tracking using the combination of ...
Accurate detection of moving objects is n imp ant precursor to stable tracking or recognition. In th...
Accurate detection of moving objects is n imp ant precursor to stable tracking or recognition. In th...
Abstract—Accurate detection of moving objects is an important precursor to stable tracking or recogn...
We introduce one module in a cognitive system that learns the shape of objects by active exploration...
Detecting moving objects using stationary cameras is an important precursor to many activity recogni...
We present a method for learning a set of generative models which are suitable for representing sele...
This extended abstract describes a probabilistic approach for improving the object pose estimation a...
Abstract. We introduce one module in a cognitive system that learns the shape of objects by active e...
This work presents a visual information fusion approach for robust probability-oriented feature matc...
This work considers robot localization with an action-associated sparse appearance-based map, under ...
The topic of object recognition is a central challenge of computer vision. In addition to being stud...
This paper presents a framework for perform- ing real-time recursive estimation of landmarks’ visual...
The information about the accurate position and orientation of an object relative to a robot plays ...
Appearance-based localization compares the current image taken from a robot’s camera to a set of pre...
This paper presents a probabilistic Bayesian framework for object tracking using the combination of ...
Accurate detection of moving objects is n imp ant precursor to stable tracking or recognition. In th...
Accurate detection of moving objects is n imp ant precursor to stable tracking or recognition. In th...
Abstract—Accurate detection of moving objects is an important precursor to stable tracking or recogn...
We introduce one module in a cognitive system that learns the shape of objects by active exploration...
Detecting moving objects using stationary cameras is an important precursor to many activity recogni...