In many segmentation scenarios, labeled images contain rich structural information about spatial arrangement and shapes of the objects. Integrating this rich information into supervised learning techniques is promising as it generates models which go beyond learning class association, only. This paper proposes a new supervised forest model for joint classification-regression which exploits both class and structural information. Training our model is achieved by optimizing a joint objective function of pixel classification and shape regression. Shapes are represented implicitly via signed distance maps obtained directly from ground truth label maps. Thus, we can associate each image point not only with its class label, but also with its dist...
We propose a novel method for weakly supervised se-mantic segmentation. Training images are labeled ...
We propose a method for simultaneous shape-constrained segmentation and parameter recovery. The para...
Both image segmentation and dense 3D modeling from images represent an intrinsically ill-posed probl...
International audienceUnderstanding visual scenes relies more and more on dense pixel-wise classific...
Conventional decision forest based methods for image labelling tasks like object segmentation make p...
We present a new method for inferring dense data to model correspondences, fo-cusing on the applicat...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
This paper addresses the problem of semantic segmentation of 3D indoor scenes reconstructed from RGB...
The paper first traces the image-based modeling back to feature tracking and factorization that have...
This paper addresses the problem of semantic segmentation of 3D indoor scenes reconstructed from RGB...
Visual attributes expose human-defined semantics to object recognition models, but existing work lar...
We present Alternating Regression Forests (ARFs), a novel regression algorithm that learns a Random ...
In this paper, we present a novel object detection ap-proach that is capable of regressing the aspec...
This paper proposes a novel theoretical framework to model and analyze the statistical characteristi...
Despite of having no explicit shape model, multi-atlas approaches to image segmentation have proved ...
We propose a novel method for weakly supervised se-mantic segmentation. Training images are labeled ...
We propose a method for simultaneous shape-constrained segmentation and parameter recovery. The para...
Both image segmentation and dense 3D modeling from images represent an intrinsically ill-posed probl...
International audienceUnderstanding visual scenes relies more and more on dense pixel-wise classific...
Conventional decision forest based methods for image labelling tasks like object segmentation make p...
We present a new method for inferring dense data to model correspondences, fo-cusing on the applicat...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
This paper addresses the problem of semantic segmentation of 3D indoor scenes reconstructed from RGB...
The paper first traces the image-based modeling back to feature tracking and factorization that have...
This paper addresses the problem of semantic segmentation of 3D indoor scenes reconstructed from RGB...
Visual attributes expose human-defined semantics to object recognition models, but existing work lar...
We present Alternating Regression Forests (ARFs), a novel regression algorithm that learns a Random ...
In this paper, we present a novel object detection ap-proach that is capable of regressing the aspec...
This paper proposes a novel theoretical framework to model and analyze the statistical characteristi...
Despite of having no explicit shape model, multi-atlas approaches to image segmentation have proved ...
We propose a novel method for weakly supervised se-mantic segmentation. Training images are labeled ...
We propose a method for simultaneous shape-constrained segmentation and parameter recovery. The para...
Both image segmentation and dense 3D modeling from images represent an intrinsically ill-posed probl...