Deep learning and image processing methods have taken place in many parts of our lives, as well as in the quality control stages of production lines. The aim of this study is to train and use a deep learning model to improve quality management using limited data and computing power. To achieve that, deep learning for quality control models were trained by classifying six different steel surface defect images in the NEU-DET dataset. Xception, ResNetV2 152, VGG19 and InceptionV3 architectures were used to train the model. High accuracy was obtained with both Xception and ResNetV2 152. © 2022 IEEE.2-s2.0-8514188110
Quality control of steel sheet production using human visual perception frequently results in errors...
Hot-rolled strip steel is widely used in automotive manufacturing, chemical and home appliance indus...
Recent progress has been made in defect detection using methods based on deep learning, but there ar...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
The paper presents a methodology for training neural networks for vision tasks on synthesized data o...
Automatic visual recognition of steel surface defects provides critical functionality to facilitate ...
Quality inspection is inevitable in the steel industry so there are already benchmark datasets for t...
Machine and Deep Learning are two hot topics these days. Their performance levels have matched at so...
Steel strip plays a vital role in many industrial fields. Its defects will impact the manifestation ...
The accurate and rapid identification of surface defects is an important element of product appearan...
A complete defect detection task aims to achieve the specific class and precise location of each def...
Steel is one of the most widely building materials of modern times. Automatic detection of manufactu...
A dual attention deep learning network is developed to classify three types of steel defects, locate...
Quality control of steel sheet production using human visual perception frequently results in errors...
Quality control of steel sheet production using human visual perception frequently results in errors...
Hot-rolled strip steel is widely used in automotive manufacturing, chemical and home appliance indus...
Recent progress has been made in defect detection using methods based on deep learning, but there ar...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
Deep learning and image processing methods have taken place in many parts of our lives, as well as i...
The paper presents a methodology for training neural networks for vision tasks on synthesized data o...
Automatic visual recognition of steel surface defects provides critical functionality to facilitate ...
Quality inspection is inevitable in the steel industry so there are already benchmark datasets for t...
Machine and Deep Learning are two hot topics these days. Their performance levels have matched at so...
Steel strip plays a vital role in many industrial fields. Its defects will impact the manifestation ...
The accurate and rapid identification of surface defects is an important element of product appearan...
A complete defect detection task aims to achieve the specific class and precise location of each def...
Steel is one of the most widely building materials of modern times. Automatic detection of manufactu...
A dual attention deep learning network is developed to classify three types of steel defects, locate...
Quality control of steel sheet production using human visual perception frequently results in errors...
Quality control of steel sheet production using human visual perception frequently results in errors...
Hot-rolled strip steel is widely used in automotive manufacturing, chemical and home appliance indus...
Recent progress has been made in defect detection using methods based on deep learning, but there ar...