We propose a real-time RGB-based pipeline for object detection and 6D pose estimation. Our novel 3D orientation estimation is based on a variant of the Denoising Autoencoder that is trained on simulated views of a 3D model using Domain Randomization. This so-called Augmented Autoencoder has several advantages over existing methods: It does not require real, pose-annotated training data, generalizes to various test sensors and inherently handles object and view symmetries. Instead of learning an explicit mapping from input images to object poses, it provides an implicit representation of object orientations defined by samples in a latent space. Experiments on the T-LESS and LineMOD datasets show that our method outperforms similar model-base...
We present the first learning-based framework for category-level 3D object detection and implicit sh...
While showing promising results, recent RGB-D camera-based category-level object pose estimation met...
This paper presents an efficient symmetry-agnostic and correspondence-free framework, referred to as...
We propose a real-time RGB-based pipeline for object detection and 6D pose estimation. Our novel 3D ...
We propose a real-time RGB-based pipeline for object detection and 6D pose estimation. Our novel 3D ...
Fast and accurate object pose estimation algorithms are crucial for robotic tasks. Despite intensive...
This thesis presents a learning based approach for fast orientation estimation from RGB-D images. Fo...
Object pose estimation is a necessary prerequisite for autonomous robotic manipulation, but the pres...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
6D object pose estimation plays a crucial role in robotic manipulation and grasping tasks. The aim t...
With the rise of robotic and camera systems and the success of deep learning in computer vision, th...
We propose a single-shot approach for simultaneously detecting an object in an RGB image and predict...
6D object pose estimation has been a research topic in the field of computer vision and robotics. Ma...
In this paper, we propose a novel 3D graph convolution based pipeline for category-level 6D pose and...
We present the first learning-based framework for category-level 3D object detection and implicit sh...
While showing promising results, recent RGB-D camera-based category-level object pose estimation met...
This paper presents an efficient symmetry-agnostic and correspondence-free framework, referred to as...
We propose a real-time RGB-based pipeline for object detection and 6D pose estimation. Our novel 3D ...
We propose a real-time RGB-based pipeline for object detection and 6D pose estimation. Our novel 3D ...
Fast and accurate object pose estimation algorithms are crucial for robotic tasks. Despite intensive...
This thesis presents a learning based approach for fast orientation estimation from RGB-D images. Fo...
Object pose estimation is a necessary prerequisite for autonomous robotic manipulation, but the pres...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
6D object pose estimation plays a crucial role in robotic manipulation and grasping tasks. The aim t...
With the rise of robotic and camera systems and the success of deep learning in computer vision, th...
We propose a single-shot approach for simultaneously detecting an object in an RGB image and predict...
6D object pose estimation has been a research topic in the field of computer vision and robotics. Ma...
In this paper, we propose a novel 3D graph convolution based pipeline for category-level 6D pose and...
We present the first learning-based framework for category-level 3D object detection and implicit sh...
While showing promising results, recent RGB-D camera-based category-level object pose estimation met...
This paper presents an efficient symmetry-agnostic and correspondence-free framework, referred to as...