Many “Industry 4.0” applications rely on data-driven methodologies such as Machine Learning and Deep Learning to enable automatic tasks and implement smart factories. Among these applications, the automatic quality control of manufacturing materials is of utmost importance to achieve precision and standardization in production. In this regard, most of the related literature focused on combining Deep Learning with Nondestructive Testing techniques, such as Infrared Thermography, requiring dedicated settings to detect and classify defects in composite materials. Instead, the research described in this paper aims at understanding whether deep neural networks and transfer learning can be applied to plain images to classify surface defects in ca...
The introduction of robots and automation in industrial processes brought many benefits to manufactu...
In industrial processes, products are often visually inspected for defects inorder to verify their q...
Over the last few decades, detecting surface defects has attracted significant attention as a challe...
Many “Industry 4.0” applications rely on data-driven methodologies such as Machine Learning and Deep...
Machine and Deep Learning are two hot topics these days. Their performance levels have matched at so...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
This thesis focuses on the development of a machine learning-based vision system for quality control...
Metal workpieces are an indispensable and important part of the manufacturing industry. Surface flaw...
Most common types of defects for composite are debond and delamination. It is difficult to detect th...
Automated fibre layup techniques are commonly used composite manufacturing processes in the aviation...
Infrared thermography is used for evaluating composite materials due to the properties of low cost,...
The accurate and rapid identification of surface defects is an important element of product appearan...
Currently, along with growth in industrial production, the requirements for product quality testing ...
Automated fibre layup techniques are commonly used composite manufacturing processes in the aviation...
Nondestructive thermography is a high-speed, low-cost, and safe solution for subsurface defects dete...
The introduction of robots and automation in industrial processes brought many benefits to manufactu...
In industrial processes, products are often visually inspected for defects inorder to verify their q...
Over the last few decades, detecting surface defects has attracted significant attention as a challe...
Many “Industry 4.0” applications rely on data-driven methodologies such as Machine Learning and Deep...
Machine and Deep Learning are two hot topics these days. Their performance levels have matched at so...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
This thesis focuses on the development of a machine learning-based vision system for quality control...
Metal workpieces are an indispensable and important part of the manufacturing industry. Surface flaw...
Most common types of defects for composite are debond and delamination. It is difficult to detect th...
Automated fibre layup techniques are commonly used composite manufacturing processes in the aviation...
Infrared thermography is used for evaluating composite materials due to the properties of low cost,...
The accurate and rapid identification of surface defects is an important element of product appearan...
Currently, along with growth in industrial production, the requirements for product quality testing ...
Automated fibre layup techniques are commonly used composite manufacturing processes in the aviation...
Nondestructive thermography is a high-speed, low-cost, and safe solution for subsurface defects dete...
The introduction of robots and automation in industrial processes brought many benefits to manufactu...
In industrial processes, products are often visually inspected for defects inorder to verify their q...
Over the last few decades, detecting surface defects has attracted significant attention as a challe...