This paper addresses the problem of semantic segmentation of 3D indoor scenes reconstructed from RGB-D images. Traditionally label prediction for 3D points is tackled by employing graphical models that capture scene features and complex relations between different class labels. However, the existing work is restricted to pairwise conditional random fields, which are insufficient when encoding rich scene context. In this work we propose models with higher-order potentials to describe complex relational information from the 3D scenes. Specifically, we relax the labelling problem to a regression, and generalize the higher-order associative P n Potts model to a new family of arbitrary higher-order models based on regression forests. We show tha...
A typical scene category, e.g., street and beach, contains an enormous number (e.g., in the order of...
In this paper, we address the problem of semantic scene segmentation of RGB-D images of indoor scene...
This work focuses on semantic segmentation over indoor 3D data, that is, to assign labels to every p...
This paper addresses the problem of semantic segmentation of 3D indoor scenes reconstructed from RGB...
In this work we propose a hierarchical approach for labeling semantic objects and regions in scenes....
Inexpensive structured light sensors can capture rich information from indoor scenes, and scene labe...
We present a discriminative graphical model which integrates geometrical information from RGBD image...
We focus on the problem of semantic segmentation based on RGB-D data, with emphasis on analyzing clu...
Over the years, indoor scene parsing has attracted a growing interest in the computer vision communi...
Abstract—We present a structured learning approach to semantic annotation of RGB-D images. Our metho...
The task of semantic scene interpretation is to label the regions of an image and their relations in...
Abstract — This paper presents an approach for labeling objects in 3D scenes. We introduce HMP3D, a ...
We introduce a novel Maximum Entropy (MaxEnt) framework that can generate 3D scenes by incorporating...
In many segmentation scenarios, labeled images contain rich structural information about spatial arr...
Perceiving 3D structure and recognizing objects and their properties around us is central to our und...
A typical scene category, e.g., street and beach, contains an enormous number (e.g., in the order of...
In this paper, we address the problem of semantic scene segmentation of RGB-D images of indoor scene...
This work focuses on semantic segmentation over indoor 3D data, that is, to assign labels to every p...
This paper addresses the problem of semantic segmentation of 3D indoor scenes reconstructed from RGB...
In this work we propose a hierarchical approach for labeling semantic objects and regions in scenes....
Inexpensive structured light sensors can capture rich information from indoor scenes, and scene labe...
We present a discriminative graphical model which integrates geometrical information from RGBD image...
We focus on the problem of semantic segmentation based on RGB-D data, with emphasis on analyzing clu...
Over the years, indoor scene parsing has attracted a growing interest in the computer vision communi...
Abstract—We present a structured learning approach to semantic annotation of RGB-D images. Our metho...
The task of semantic scene interpretation is to label the regions of an image and their relations in...
Abstract — This paper presents an approach for labeling objects in 3D scenes. We introduce HMP3D, a ...
We introduce a novel Maximum Entropy (MaxEnt) framework that can generate 3D scenes by incorporating...
In many segmentation scenarios, labeled images contain rich structural information about spatial arr...
Perceiving 3D structure and recognizing objects and their properties around us is central to our und...
A typical scene category, e.g., street and beach, contains an enormous number (e.g., in the order of...
In this paper, we address the problem of semantic scene segmentation of RGB-D images of indoor scene...
This work focuses on semantic segmentation over indoor 3D data, that is, to assign labels to every p...