Abstract — We present a novel method for classifying and estimating the categories and poses of deformable objects, such as clothing, from a set of depth images. The framework presented here represents the recognition part of the entire pipeline of dexterous manipulation of deformable objects, which contains grasping, recognition, regrasping, placing flat, and folding. We first create an off-line simulation of the deformable objects and capture depth images from different view points as training data. Then by extracting features and applying sparse coding and dictionary learning, we build up a codebook for a set of different poses of a particular deformable object category. The whole framework contains two layers which yield a robust system...
This paper describes a vision-based system that is able to automatically recognize deformable object...
We describe some techniques that can be used to represent and detect deformable shapes in images. Th...
This thesis tackles the challenge of learning the abstract structure of object categories without ma...
We present a robot vision approach to deformable object classification, with direct application to a...
Deformable Part Models (DPMs) as introduced by Felzenszwalb et al. have shown remarkably good result...
Modeling the behavior of deformable virtual objects has important applications in computer graphics....
The human\u27s innate ability to process information garnered from a visual scene has no parallel in...
Several popular and effective object detectors separately model intra-class variations arising from ...
This thesis focuses on the task of dexterous manipulation of deformable objects, and in particular, ...
Object recognition and pose estimation is a fundamental problem in computer vision and of utmost imp...
— We consider the problem of recognizing the configuration of clothing articles when crudely spread ...
Abstract — Pose estimation of deformable objects is a funda-mental and challenging problem in roboti...
Cloth manipulation remains a challenging problem for the robotic community. Recently, there has been...
Abstract During the past few years we have witnessed the development of many methodologies for buil...
This paper describes a method for registration and tracking of deformable objects from points clouds...
This paper describes a vision-based system that is able to automatically recognize deformable object...
We describe some techniques that can be used to represent and detect deformable shapes in images. Th...
This thesis tackles the challenge of learning the abstract structure of object categories without ma...
We present a robot vision approach to deformable object classification, with direct application to a...
Deformable Part Models (DPMs) as introduced by Felzenszwalb et al. have shown remarkably good result...
Modeling the behavior of deformable virtual objects has important applications in computer graphics....
The human\u27s innate ability to process information garnered from a visual scene has no parallel in...
Several popular and effective object detectors separately model intra-class variations arising from ...
This thesis focuses on the task of dexterous manipulation of deformable objects, and in particular, ...
Object recognition and pose estimation is a fundamental problem in computer vision and of utmost imp...
— We consider the problem of recognizing the configuration of clothing articles when crudely spread ...
Abstract — Pose estimation of deformable objects is a funda-mental and challenging problem in roboti...
Cloth manipulation remains a challenging problem for the robotic community. Recently, there has been...
Abstract During the past few years we have witnessed the development of many methodologies for buil...
This paper describes a method for registration and tracking of deformable objects from points clouds...
This paper describes a vision-based system that is able to automatically recognize deformable object...
We describe some techniques that can be used to represent and detect deformable shapes in images. Th...
This thesis tackles the challenge of learning the abstract structure of object categories without ma...