We propose a method for room layout estimation that does not rely on the typical box approximation or Manhattan world assumption. Instead, we reformulate the geometry inference problem as an instance detection task, which we solve by directly regressing 3D planes using an R-CNN. We then use a variant of probabilistic clustering to combine the 3D planes regressed at each frame in a video sequence, with their respective camera poses, into a single global 3D room layout estimate. Finally, we showcase results which make no assumptions about perpendicular alignment, so can deal effectively with walls in any alignment
There has been a recent push in extraction of 3D spatial layout of scenes. However, none of these ap...
Junctions are strong cues for understanding the geometry of a scene. In this paper, we consider the ...
In this paper, we propose a framework to recover a 3D cuboidal indoor scene with a novel detector-ba...
Abstract. In this paper we propose the first exact solution to the prob-lem of estimating the 3D roo...
Significant geometric structures can be compactly described by global wireframes in the estimation o...
The goal of this paper is to enable a 3D “virtual-tour ” of an apartment given a small set of monocu...
People can understand the content of an image without effort. We can easily identify the objects in ...
AbstractWe present a robust approach for reconstructing the main architectural structure of complex ...
The challenge considered in this thesis is that of domesticating deep learning-based vision. Firstly...
An image is nothing but a projection of the physical world around us, where objects do not occur ran...
In this paper we propose an approach to jointly infer the room layout as well as the objects present...
In this paper we propose a pipeline for estimating 3D room layout with object and material attribute...
A new generation of practical, low-cost indoor robots is now using wide-angle cameras to aid navigat...
In this paper we propose a pipeline for estimating 3D room layout with object and material attribute...
Reconstruction of indoor surfaces with limited texture information or with repeated textures, a situ...
There has been a recent push in extraction of 3D spatial layout of scenes. However, none of these ap...
Junctions are strong cues for understanding the geometry of a scene. In this paper, we consider the ...
In this paper, we propose a framework to recover a 3D cuboidal indoor scene with a novel detector-ba...
Abstract. In this paper we propose the first exact solution to the prob-lem of estimating the 3D roo...
Significant geometric structures can be compactly described by global wireframes in the estimation o...
The goal of this paper is to enable a 3D “virtual-tour ” of an apartment given a small set of monocu...
People can understand the content of an image without effort. We can easily identify the objects in ...
AbstractWe present a robust approach for reconstructing the main architectural structure of complex ...
The challenge considered in this thesis is that of domesticating deep learning-based vision. Firstly...
An image is nothing but a projection of the physical world around us, where objects do not occur ran...
In this paper we propose an approach to jointly infer the room layout as well as the objects present...
In this paper we propose a pipeline for estimating 3D room layout with object and material attribute...
A new generation of practical, low-cost indoor robots is now using wide-angle cameras to aid navigat...
In this paper we propose a pipeline for estimating 3D room layout with object and material attribute...
Reconstruction of indoor surfaces with limited texture information or with repeated textures, a situ...
There has been a recent push in extraction of 3D spatial layout of scenes. However, none of these ap...
Junctions are strong cues for understanding the geometry of a scene. In this paper, we consider the ...
In this paper, we propose a framework to recover a 3D cuboidal indoor scene with a novel detector-ba...