We present an application of Machine Learning and Statistics to the problem of distinguishing between defective and non-defective industrial workpieces, where the defect takes the form of a long and thin crack on the surface of the piece. The images of the pieces are described by means of a set of visual primitives, including the Hough transform and the Correlated Hough transform. We have compared an attribute-value learner, C4.5, a backpropagation neural network, NeuralWare Predict, and the statistical techniques linear, logistic and quadratic discriminant for the classification of pieces. Moreover, two feature sets are considered, one containing only the Hough transform and the other one containing also the Correlated Hough Tra...
The detection of product defects are crucial in internal control in manufacturing. This study survey...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
The progress in computer vision technology has significantly improved the reliability, effectiveness...
We present an application of machine learning and statistics to the problem of distinguishing betwee...
We present an application of machine learning and statistics to the problem of distinguishing betwee...
In industrial processes, products are often visually inspected for defects inorder to verify their q...
Correctly determining the onset of fracture is crucial when performing mechanical experiments. Commo...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
Fantastic progress has been made within the field of machine learning and deep neural networks in th...
AbstractDetecting surface defects is a challenging visual recognition problem arising in many proces...
This paper reviews automated visual-based defect detection approaches applicable to various material...
Fluorescent Penetrant Inspection (FPI) is a well-established NDT method used widely in the aerospace...
Over the last few decades, detecting surface defects has attracted significant attention as a challe...
In this competitive era, manufacturing companies have to focus on the quality of the produced produc...
646-652Steel has played an indispensable role in numerous industries, particularly in architecture, ...
The detection of product defects are crucial in internal control in manufacturing. This study survey...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
The progress in computer vision technology has significantly improved the reliability, effectiveness...
We present an application of machine learning and statistics to the problem of distinguishing betwee...
We present an application of machine learning and statistics to the problem of distinguishing betwee...
In industrial processes, products are often visually inspected for defects inorder to verify their q...
Correctly determining the onset of fracture is crucial when performing mechanical experiments. Commo...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
Fantastic progress has been made within the field of machine learning and deep neural networks in th...
AbstractDetecting surface defects is a challenging visual recognition problem arising in many proces...
This paper reviews automated visual-based defect detection approaches applicable to various material...
Fluorescent Penetrant Inspection (FPI) is a well-established NDT method used widely in the aerospace...
Over the last few decades, detecting surface defects has attracted significant attention as a challe...
In this competitive era, manufacturing companies have to focus on the quality of the produced produc...
646-652Steel has played an indispensable role in numerous industries, particularly in architecture, ...
The detection of product defects are crucial in internal control in manufacturing. This study survey...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
The progress in computer vision technology has significantly improved the reliability, effectiveness...