Under CopyrightNicolosi, L.L.NicolosiTetzlaff, R.R.TetzlaffAbt, F.F.AbtHöfler, H.H.HöflerBlug, A.A.BlugCarl, D.D.Carl2022-03-118.7.20102009https://publica.fraunhofer.de/handle/publica/36429310.24406/publica-r-36429310.1109/IJCNN.2009.5178648In this paper the results obtained by the use of new CNN based visual algorithms for the control of welding proces ses are described. The growing number of laser welding applications from automobile production to micro mechanics requires fast systems to create closed loop control for error prevention and correction. Nowadays the image processing frame rates of conventional architectures [1] are not sufficient to control high speed laser welding processes due to the fast fluctuation of the full penetration hole [3]. This paper focuses the attention on new strategies obtained by the use of the Eye-RIS system v1.2 which includes a pixel parallel Cellular Neural Network (CNN) based architecture called Q-Eye [2]. In particular, new algorithms for the full penetration hole detection with frame r ates up to 24 kHz will be presented. Finally, the results obtained performing real time control of welding processes by the use of these algorithms will be discussed.encellular neural network (CNN)laser weldingproduction engineeringmanufacturing processproduction engineering621New CNN based algorithms for the full penetration hole extraction in laser welding processes: Experimental resultsconference paper