Abstract: Deep learning (DL) has certainly improved industrial inspection, while significant progress has also been achieved in metrology with impressive results reached through their combination. However, it is not easy to deploy metrology sensors in a factory, as they are expensive, and require special acquisition conditions. In this article, we propose a methodology to replace a high-end sensor with a low-cost one introducing a data-driven soft sensor (SS) model. Concretely, a residual architecture (R 2 esNet) is proposed for quality inspection, along with an error-correction scheme to lessen noise impact. Our method is validated in printed circuit board (PCB) manufacturing, through the identification of defects related to glue dispensi...
Automatic optical inspection for manufacturing traditionally was based on computer vision. However, ...
We propose an approach for the inspection of machined parts that is based on knowledge of the actua...
Abstract We report a complete deep-learning framework using a single-step object detection model in ...
Inspection of defects in the printed circuit boards (PCBs) has both safety and economic significance...
As technology evolves, more components are integrated into printed circuit boards (PCBs) and the PCB...
Printed circuit board (PCB) defect detection plays a crucial role in PCB production, and the popular...
Machine Learning (ML) based technologies, like Virtual Metrology (VM)/Soft Sensing, Predictive Maint...
Rapid and accurate industrial inspection to ensure the highest quality standards at a competitive pr...
Optical inspection of 1191 silicon micro-strip sensors was performed using a custom made optical ins...
To increase the reliability of the printed circuit board (PCB) manufacturing process, automated opti...
This research aims to propose an effective model for the detection of defective Printed Circuit Boar...
[[abstract]]With the large variations in appearance for different kinds of defects in Printed Circui...
Normally functioning and complete printed circuit board (PCB) can ensure the safety and reliability ...
This paper proposes an integrated detection framework of solder joint defects in the context of Auto...
© 2020 by the authors. In this study, a deep learning algorithm based on the you-only-look-once (YOL...
Automatic optical inspection for manufacturing traditionally was based on computer vision. However, ...
We propose an approach for the inspection of machined parts that is based on knowledge of the actua...
Abstract We report a complete deep-learning framework using a single-step object detection model in ...
Inspection of defects in the printed circuit boards (PCBs) has both safety and economic significance...
As technology evolves, more components are integrated into printed circuit boards (PCBs) and the PCB...
Printed circuit board (PCB) defect detection plays a crucial role in PCB production, and the popular...
Machine Learning (ML) based technologies, like Virtual Metrology (VM)/Soft Sensing, Predictive Maint...
Rapid and accurate industrial inspection to ensure the highest quality standards at a competitive pr...
Optical inspection of 1191 silicon micro-strip sensors was performed using a custom made optical ins...
To increase the reliability of the printed circuit board (PCB) manufacturing process, automated opti...
This research aims to propose an effective model for the detection of defective Printed Circuit Boar...
[[abstract]]With the large variations in appearance for different kinds of defects in Printed Circui...
Normally functioning and complete printed circuit board (PCB) can ensure the safety and reliability ...
This paper proposes an integrated detection framework of solder joint defects in the context of Auto...
© 2020 by the authors. In this study, a deep learning algorithm based on the you-only-look-once (YOL...
Automatic optical inspection for manufacturing traditionally was based on computer vision. However, ...
We propose an approach for the inspection of machined parts that is based on knowledge of the actua...
Abstract We report a complete deep-learning framework using a single-step object detection model in ...