To control industry robots and make sure they are working in a correct status, an efficient way to judge the motion of the robot is important. In this article, an industry robotic motion and pose recognition method based on camera pose estimation and neural network are proposed. Firstly, industry robotic motion recognition based on the neural network has been developed to estimate and optimize motion of the robotics only by a monoscope camera. Secondly, the motion recognition including key flames recording and pose adjustment has been proposed and analyzed to restore the pose of the robotics more accurately. Finally, a KUKA industry robot has been used to test the proposed method, and the test results have demonstrated that the motion and p...
Importance of robots in industrial applications is a well-known fact. Generally, robots are placed a...
Modeless industrial robot calibration plays an impor-tant role in the increasing employment of robot...
The paper presents a preliminary study on the feasibility of a Neural Networks based methodology fo...
The conventional tracking algorithm lacks the capability to learn. Approaches like the use of neural...
This paper deals with the development of a machine vision based pose estimation system for industria...
As production workspaces become more mobile and dynamic it becomes increasingly important to reliabl...
In this work, an eye to hand camera based pose estimation system is developed for robotic machining ...
This work focus on the job of palletising and depalletising using robotic manipulators in the contex...
The real-time pose measurement of parallel robot helps to achieve the closed loop pose control and i...
A vision-based intelligent robotic grasping system is essential for realizing unmanned operations in...
Industrial robots are expected to undertake ever more advanced tasks in the modern manufacturing ind...
Using standard industrial robots in aerospace automated manufacturing requires a high level of accur...
In modern collaborative production environments where industrial robots and humans are supposed to w...
In recent years, deep learning-based object recognition algorithms become emerging in robotic vision...
Automated robotic manufacturing systems require accurate robot positioning. Visual servoing is an in...
Importance of robots in industrial applications is a well-known fact. Generally, robots are placed a...
Modeless industrial robot calibration plays an impor-tant role in the increasing employment of robot...
The paper presents a preliminary study on the feasibility of a Neural Networks based methodology fo...
The conventional tracking algorithm lacks the capability to learn. Approaches like the use of neural...
This paper deals with the development of a machine vision based pose estimation system for industria...
As production workspaces become more mobile and dynamic it becomes increasingly important to reliabl...
In this work, an eye to hand camera based pose estimation system is developed for robotic machining ...
This work focus on the job of palletising and depalletising using robotic manipulators in the contex...
The real-time pose measurement of parallel robot helps to achieve the closed loop pose control and i...
A vision-based intelligent robotic grasping system is essential for realizing unmanned operations in...
Industrial robots are expected to undertake ever more advanced tasks in the modern manufacturing ind...
Using standard industrial robots in aerospace automated manufacturing requires a high level of accur...
In modern collaborative production environments where industrial robots and humans are supposed to w...
In recent years, deep learning-based object recognition algorithms become emerging in robotic vision...
Automated robotic manufacturing systems require accurate robot positioning. Visual servoing is an in...
Importance of robots in industrial applications is a well-known fact. Generally, robots are placed a...
Modeless industrial robot calibration plays an impor-tant role in the increasing employment of robot...
The paper presents a preliminary study on the feasibility of a Neural Networks based methodology fo...