LNCS, volume 6835We present a novel way of performing pose estimation of known objects in 2D images. We follow a probabilistic approach for modeling objects and representing the observations. These object models are suited to various types of observable visual features, and are demonstrated here with edge segments. Even imperfect models, learned from single stereo views of objects, can be used to infer the maximumlikelihood pose of the object in a novel scene, using a Metropolis-Hastings MCMC algorithm, given a single, calibrated 2D view of the scene. The probabilistic approach does not require explicit model-to-scene correspondences, allowing the system to handle objects without individuallyidentifiable features. We demonstrate the suitabi...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
This work addresses various probabilistic ap-proaches which are suitable for classication and locali...
Abstract—This paper addresses the problem of full pose esti-mation of objects in 2D images, using re...
Abstract. We present a novel way of performing pose estimation of known objects in 2D images. We fol...
The topic of object recognition is a central challenge of computer vision. In addition to being stud...
We present a general method for tackling the related problems of pose estimation of known object ins...
Abstract—This paper presents a probabilistic representation for 3D objects, and details the mechanis...
LNCS, volume 7887We propose a multiview model of appearance of objects that explicitly represents th...
This paper presents a probabilistic representation for 3D objects, and details the mechanism of infe...
This paper addresses the problem of full pose estimation of objects in 2D images, using registered 2...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
Abstract—We present a general method for tackling the related problems of pose estimation of known o...
Abstract. We propose a multiview model of appearance of objects that explicitly represents their var...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
This work addresses various probabilistic ap-proaches which are suitable for classication and locali...
Abstract—This paper addresses the problem of full pose esti-mation of objects in 2D images, using re...
Abstract. We present a novel way of performing pose estimation of known objects in 2D images. We fol...
The topic of object recognition is a central challenge of computer vision. In addition to being stud...
We present a general method for tackling the related problems of pose estimation of known object ins...
Abstract—This paper presents a probabilistic representation for 3D objects, and details the mechanis...
LNCS, volume 7887We propose a multiview model of appearance of objects that explicitly represents th...
This paper presents a probabilistic representation for 3D objects, and details the mechanism of infe...
This paper addresses the problem of full pose estimation of objects in 2D images, using registered 2...
Abstract. We present a 3D, probabilistic object-surface model, along with mechanisms for probabilist...
Abstract—We present a general method for tackling the related problems of pose estimation of known o...
Abstract. We propose a multiview model of appearance of objects that explicitly represents their var...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
A model of human appearance is presented for efficient pose estimation from real-world images. In co...
This work addresses various probabilistic ap-proaches which are suitable for classication and locali...
Abstract—This paper addresses the problem of full pose esti-mation of objects in 2D images, using re...