Objects’ spatial layout estimation and clutter identification are two important tasks to understand indoor scenes. We propose to solve both of these problems in a joint framework using RGBD images of indoor scenes. In contrast to recent approaches which focus on either one of these two problems, we perform ‘fine grained structure categorization’ by predicting all the major objects and simultaneously labeling the cluttered regions. A conditional random field model is proposed to incorporate a rich set of local appearance, geometric features and interactions between the scene elements. We take a structural learning approach with a loss of 3D localisation to estimate the model parameters from a large annotated RGBD dataset, and a mixed integer...
We present a robust approach for reconstructing the architectural structure of complex indoor enviro...
Automated identification of high-level structures in unorganized point cloud of indoor spaces Indoor...
We present a method to automatically segment indoor scenes by detecting repeated objects. Our algori...
In this paper we propose an approach to jointly estimate the layout of rooms as well as the clutter ...
We address the problem of understanding an indoor scene from a single image in terms of recovering t...
An image is nothing but a projection of the physical world around us, where objects do not occur ran...
Inexpensive structured light sensors can capture rich information from indoor scenes, and scene labe...
Abstract. Inferring 3D objects and the layout of indoor scenes from a single RGB-D image captured wi...
AbstractWe present a robust approach for reconstructing the main architectural structure of complex ...
We present a discriminative graphical model which integrates geometrical information from RGBD image...
International audienceUnderstanding indoor scene structure from a single RGB image is useful for a w...
In this paper, we propose a framework to recover a 3D cuboidal indoor scene with a novel detector-ba...
This thesis presents an approach to predict the occupied area on the floor in an image of an indoor ...
We propose a method for room layout estimation that does not rely on the typical box approximation o...
This paper presents a novel 3D modeling framework that reconstructs an indoor scene as a structured ...
We present a robust approach for reconstructing the architectural structure of complex indoor enviro...
Automated identification of high-level structures in unorganized point cloud of indoor spaces Indoor...
We present a method to automatically segment indoor scenes by detecting repeated objects. Our algori...
In this paper we propose an approach to jointly estimate the layout of rooms as well as the clutter ...
We address the problem of understanding an indoor scene from a single image in terms of recovering t...
An image is nothing but a projection of the physical world around us, where objects do not occur ran...
Inexpensive structured light sensors can capture rich information from indoor scenes, and scene labe...
Abstract. Inferring 3D objects and the layout of indoor scenes from a single RGB-D image captured wi...
AbstractWe present a robust approach for reconstructing the main architectural structure of complex ...
We present a discriminative graphical model which integrates geometrical information from RGBD image...
International audienceUnderstanding indoor scene structure from a single RGB image is useful for a w...
In this paper, we propose a framework to recover a 3D cuboidal indoor scene with a novel detector-ba...
This thesis presents an approach to predict the occupied area on the floor in an image of an indoor ...
We propose a method for room layout estimation that does not rely on the typical box approximation o...
This paper presents a novel 3D modeling framework that reconstructs an indoor scene as a structured ...
We present a robust approach for reconstructing the architectural structure of complex indoor enviro...
Automated identification of high-level structures in unorganized point cloud of indoor spaces Indoor...
We present a method to automatically segment indoor scenes by detecting repeated objects. Our algori...