This paper deals with the realization of a visual monitoring system for the real time detection of spatters in laser beam welding (LBW). Spatters deteriorate the corrosion resistance and the aesthetics of the welding result. Therefore, the real time detection of spatters allows providing on-line quality information about the process, thus reducing material waste in production chains. The proposed Cellular Neural Network (CNN) based algorithm has been implemented in the Eye-RIS vision system (VS). Monitoring rates up to 15 kHz have been reached, allowing the integration of the spatter detection with the evaluation of additional image features, e.g. the full penetration hole (FPH)
Today, image processing using coaxial camera setups is used to monitor the quality of laser material...
This paper proposed an image feature extraction method for laser welding molten pool inspection base...
In this paper new CNN based visual algorithms for the control of welding processes are proposed. The...
In this paper, a novel visual multi-feature detecting algorithm for the real time monitoring and con...
Laser beam welding (LBW) has been largely used in manufacturing processes ranging from automobile pr...
Cellular Neural Networks (CNN) are more and more attractive for closed loop control systems based on...
In the last decades the laser beam welding (LBW) has outclassed older welding techniques in the indu...
Former investigations showed that many errors in laser welding processes are detectable by analyzing...
Laser welding, semantic segmentation, u-net, quality assurance, spatter detectio
Today, image processing using coaxial camera setups is used to monitor the quality of laser material...
Today, image processing using coaxial camera setups is used to monitor the quality of laser material...
Real time monitoring of laser welding has a more and more importance in several manufacturing proces...
The high dynamics of laser beam welding (LBW) in several manufacturing processes ranging from automo...
In this paper the results obtained by the use of new CNN based visual algorithms for the control of ...
Laser beam welding manufacturing (LBW), being a promising joining technology with superior capabilit...
Today, image processing using coaxial camera setups is used to monitor the quality of laser material...
This paper proposed an image feature extraction method for laser welding molten pool inspection base...
In this paper new CNN based visual algorithms for the control of welding processes are proposed. The...
In this paper, a novel visual multi-feature detecting algorithm for the real time monitoring and con...
Laser beam welding (LBW) has been largely used in manufacturing processes ranging from automobile pr...
Cellular Neural Networks (CNN) are more and more attractive for closed loop control systems based on...
In the last decades the laser beam welding (LBW) has outclassed older welding techniques in the indu...
Former investigations showed that many errors in laser welding processes are detectable by analyzing...
Laser welding, semantic segmentation, u-net, quality assurance, spatter detectio
Today, image processing using coaxial camera setups is used to monitor the quality of laser material...
Today, image processing using coaxial camera setups is used to monitor the quality of laser material...
Real time monitoring of laser welding has a more and more importance in several manufacturing proces...
The high dynamics of laser beam welding (LBW) in several manufacturing processes ranging from automo...
In this paper the results obtained by the use of new CNN based visual algorithms for the control of ...
Laser beam welding manufacturing (LBW), being a promising joining technology with superior capabilit...
Today, image processing using coaxial camera setups is used to monitor the quality of laser material...
This paper proposed an image feature extraction method for laser welding molten pool inspection base...
In this paper new CNN based visual algorithms for the control of welding processes are proposed. The...