A significant problem of using deep learning techniques is the limited amount of data available for training. There are some datasets available for the popular problems like item recognition and classification or self-driving cars, however, it is very limited for the industrial robotics field. In previous work, we have trained a multi-objective Convolutional Neural Network (CNN) to identify the robot body in the image and estimate 3D positions of the joints by using just a 2D image, but it was limited to a range of robots produced by Universal Robots (UR). In this work, we extend our method to work with a new robot arm - Kuka LBR iiwa, which has a significantly different appearance and an additional joint. However, instead of collecting lar...
As production workspaces become more mobile and dynamic it becomes increasingly important to reliabl...
[[abstract]]In recent years, deep learning-based object recognition algorithms become emerging in ro...
In this abstract, we present a novel method using the deep convolutional neural network combined wit...
Collaborative robots are becoming more common on factory floors as well as regular environments, how...
Intelligent mobile robots are foreseen as one of the possible solutions to efficiently performing t...
The field of collaborative robotics and humanrobot interaction often focuses on the prediction of hu...
Collaborative robots must operate safely and efficiently in ever-changing unstructured environments,...
Many works in collaborative robotics and human-robot interaction focuses on identifying and predicti...
In the development of assistive robots, a major challenge is to improve the spatial perception of ro...
Style transfer techniques have seen wide adoption in recent years, with the CUT and CycleGAN network...
Accurate robot grasp detection for model free objects plays an important role in robotics. With the ...
Accurate robot grasp detection for model free objects plays an important role in robotics. With the ...
A vision-based intelligent robotic grasping system is essential for realizing unmanned operations in...
Grasping is one of the oldest problems in robotics and is still considered challenging, especially w...
Nowadays, robots are heavily used in factories for different tasks, most of them including grasping ...
As production workspaces become more mobile and dynamic it becomes increasingly important to reliabl...
[[abstract]]In recent years, deep learning-based object recognition algorithms become emerging in ro...
In this abstract, we present a novel method using the deep convolutional neural network combined wit...
Collaborative robots are becoming more common on factory floors as well as regular environments, how...
Intelligent mobile robots are foreseen as one of the possible solutions to efficiently performing t...
The field of collaborative robotics and humanrobot interaction often focuses on the prediction of hu...
Collaborative robots must operate safely and efficiently in ever-changing unstructured environments,...
Many works in collaborative robotics and human-robot interaction focuses on identifying and predicti...
In the development of assistive robots, a major challenge is to improve the spatial perception of ro...
Style transfer techniques have seen wide adoption in recent years, with the CUT and CycleGAN network...
Accurate robot grasp detection for model free objects plays an important role in robotics. With the ...
Accurate robot grasp detection for model free objects plays an important role in robotics. With the ...
A vision-based intelligent robotic grasping system is essential for realizing unmanned operations in...
Grasping is one of the oldest problems in robotics and is still considered challenging, especially w...
Nowadays, robots are heavily used in factories for different tasks, most of them including grasping ...
As production workspaces become more mobile and dynamic it becomes increasingly important to reliabl...
[[abstract]]In recent years, deep learning-based object recognition algorithms become emerging in ro...
In this abstract, we present a novel method using the deep convolutional neural network combined wit...