We propose a method for simultaneous shape-constrained segmentation and parameter recovery. The parameters can describe anything from 3D shape to 3D pose and we place no restriction on the topology of the shapes, i.e. they can have holes or be made of multiple parts. We use Shared Gaussian Process Latent Variable Models to learn multimodal shape-parameter spaces. These allow non-linear embeddings of the high-dimensional shape and parameter spaces in low dimensional spaces in a fully probabilistic manner. We propose a method for exploring the multimodality in the joint space in an efficient manner, by learning a mapping from the latent space to a space that encodes the similarity between shapes. We further extend the SGP-LVM to a model that ...
This paper presents the integration of 3D shape knowledge into a variational model for level set bas...
In this paper, we aim to reconstruct free-from 3D models from a single view by learning the prior kn...
In this paper, we propose a highly efficient metric learning approach to non-rigid 3D shape analysis...
We propose a novel framework for joint 2D segmentation and 3D pose and 3D shape recovery, for images...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
The aim of this thesis is to provide methods for 2D segmentation and 2D/3D tracking, that are both f...
International audienceIn this paper, we propose a level set method for shape-driven object extractio...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
We present a data-driven method for building dense 3D reconstructions using a combination of recogni...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
We present a data-driven method for building dense 3D reconstructions using a combination of recogni...
<p>In this thesis, we investigate many aspects to extract shape proxies to enable perceptually sound...
We describe a generative approach to recover 3D human pose from image silhouettes. Our method is bas...
Figure 1: The co-segmentation result of the Candelabra set by our algorithm. Starting from the over-...
Abstract. A novel method for the segmentation of multiple objects from 3D medical images using inter...
This paper presents the integration of 3D shape knowledge into a variational model for level set bas...
In this paper, we aim to reconstruct free-from 3D models from a single view by learning the prior kn...
In this paper, we propose a highly efficient metric learning approach to non-rigid 3D shape analysis...
We propose a novel framework for joint 2D segmentation and 3D pose and 3D shape recovery, for images...
We propose a novel nonlinear, probabilistic and variational method for adding shape information to l...
The aim of this thesis is to provide methods for 2D segmentation and 2D/3D tracking, that are both f...
International audienceIn this paper, we propose a level set method for shape-driven object extractio...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
We present a data-driven method for building dense 3D reconstructions using a combination of recogni...
Prior knowledge can highly improve the accuracy of segmentation algorithms for 3D medical images. A ...
We present a data-driven method for building dense 3D reconstructions using a combination of recogni...
<p>In this thesis, we investigate many aspects to extract shape proxies to enable perceptually sound...
We describe a generative approach to recover 3D human pose from image silhouettes. Our method is bas...
Figure 1: The co-segmentation result of the Candelabra set by our algorithm. Starting from the over-...
Abstract. A novel method for the segmentation of multiple objects from 3D medical images using inter...
This paper presents the integration of 3D shape knowledge into a variational model for level set bas...
In this paper, we aim to reconstruct free-from 3D models from a single view by learning the prior kn...
In this paper, we propose a highly efficient metric learning approach to non-rigid 3D shape analysis...