In this work a visual object detection and localization workflow is presented for the 6D pose estimation of objects with challenging characteristics in terms of weak texture, surface properties and symmetries. The objects of interest aim to support robot grasping in the context of human-robot collaboration during a car door assembly process in industrial manufacturing environments, inherently characterised by cluttered background and unfavorable illumination conditions. For the purpose of this specific application two different datasets were collected and annotated for training a learning based method that extracts the object pose from a single frame. The first dataset was acquired in controlled laboratory conditions and the other in the ac...
Object recognition and 6D pose estimation are imperative for robots to relate to the real world. How...
In this paper, we introduce a new public dataset for 6D object pose estimation and instance segmenta...
Deep learning-based object detection and pose estimation methods need a large number of synthetic da...
This thesis studies computer vision and its applications in robotics. In particular, the thesis cont...
3D object recognition and 6D pose estimation are crucial and fundamental endeavours for industrial a...
Estimating object’s 6D pose is an important aspect of automating even complicated processes, especia...
AbstractIntelligent grasping is still a hard problem for home service robots. There are two major is...
Vision-based 6D object pose estimation focuses on estimating the 3D translation and 3D orientation o...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
Six-dimensional object detection of rigid objects is a problem especially relevant for quality contr...
For the three-dimensional (3D) pose estimation of metal blank casts estimate in industrial productio...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
In order to safely and effectively operate in real-world unstructured environments where a priori kn...
The objective of this thesis is to develop a model-based object recognition system for 6 DoF localiz...
For visual assistance systems deployed in an industrial setting, precise object pose estimation is a...
Object recognition and 6D pose estimation are imperative for robots to relate to the real world. How...
In this paper, we introduce a new public dataset for 6D object pose estimation and instance segmenta...
Deep learning-based object detection and pose estimation methods need a large number of synthetic da...
This thesis studies computer vision and its applications in robotics. In particular, the thesis cont...
3D object recognition and 6D pose estimation are crucial and fundamental endeavours for industrial a...
Estimating object’s 6D pose is an important aspect of automating even complicated processes, especia...
AbstractIntelligent grasping is still a hard problem for home service robots. There are two major is...
Vision-based 6D object pose estimation focuses on estimating the 3D translation and 3D orientation o...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
Six-dimensional object detection of rigid objects is a problem especially relevant for quality contr...
For the three-dimensional (3D) pose estimation of metal blank casts estimate in industrial productio...
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of freedom) pose assum...
In order to safely and effectively operate in real-world unstructured environments where a priori kn...
The objective of this thesis is to develop a model-based object recognition system for 6 DoF localiz...
For visual assistance systems deployed in an industrial setting, precise object pose estimation is a...
Object recognition and 6D pose estimation are imperative for robots to relate to the real world. How...
In this paper, we introduce a new public dataset for 6D object pose estimation and instance segmenta...
Deep learning-based object detection and pose estimation methods need a large number of synthetic da...