In the last years, multiple quality control tasks consist in classifying some items based on their aesthetic characteristics (aesthetic quality control, AQC), where usually the aspect of the material is not measurable and is based on expert observation. Given the increasing amount of images in this domain, deep learning (DL) models can be used to extract and classify the most discriminative patterns. Frequently, when trying to evaluate the quality of a manufactured product, the categories are naturally ordered, resulting in an ordinal classification problem. However, the ordinal categories assigned by an expert can be arranged in different levels that somehow model a hierarchy of the AQC task. In this work, we propose a DL approach to impro...
Maintaining quality outcomes is an essential task for any manufacturing organization. Visual inspect...
In this study, we present a framework for product quality inspection based on deep learning techniqu...
Additive manufacturing (AM) has gained high research interests in the past but comes with some drawb...
Nowadays, decision support systems (DSSs) are widely used in several application domains, from indus...
Ordinal problems are those where the label to be predicted from the input data is selected from a gr...
The final stage of the production process in the industry is quality control. Quality control answer...
The traditional data quality control (QC) process was usually limited by the high time consuming and...
Our paper focuses on the classification of surface defects in flat rolled strips in steel industry. ...
Aesthetic image analysis has attracted much attention in recent years. However, assessing the aesthe...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
A new hierarchically organised dataset for artificial intelligence and machine learning research is ...
Currently, evaluations of products from aesthetics are mostly carried out with knowledge expressions...
Fine-grained information extraction from fashion imagery is a challenging task due to the inherent d...
Maintaining quality outcomes is an essential task for any manufacturing organization. Visual inspect...
In this study, we present a framework for product quality inspection based on deep learning techniqu...
Additive manufacturing (AM) has gained high research interests in the past but comes with some drawb...
Nowadays, decision support systems (DSSs) are widely used in several application domains, from indus...
Ordinal problems are those where the label to be predicted from the input data is selected from a gr...
The final stage of the production process in the industry is quality control. Quality control answer...
The traditional data quality control (QC) process was usually limited by the high time consuming and...
Our paper focuses on the classification of surface defects in flat rolled strips in steel industry. ...
Aesthetic image analysis has attracted much attention in recent years. However, assessing the aesthe...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
A new hierarchically organised dataset for artificial intelligence and machine learning research is ...
Currently, evaluations of products from aesthetics are mostly carried out with knowledge expressions...
Fine-grained information extraction from fashion imagery is a challenging task due to the inherent d...
Maintaining quality outcomes is an essential task for any manufacturing organization. Visual inspect...
In this study, we present a framework for product quality inspection based on deep learning techniqu...
Additive manufacturing (AM) has gained high research interests in the past but comes with some drawb...