In the rolling process of the magnesium alloy sheet, due to improper control parameters or inaccurate production equipment and other reasons, the surface of the magnesium alloy sheet is prone to appearance of edge crack, fold, inclusion, ripple, scratch and other defects. In order to improve the surface quality of the magnesium alloy sheet, a surface defect detection method based on deformable convolution neural network is proposed in the paper, which presents a higher detection accuracy than those traditional methods on the convolutional neural network (CNN), support vector machine (SVM) and Bayes. The experiment result shows the final detecting accuracy is greater than 95 %
Aluminum profile surface defects can greatly affect the performance, safety, and reliability of prod...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
In large scale productions of metal sheets, it is important to maintain an effective way to continuo...
In the rolling process of magnesium alloy sheet, defects such as edge crack, fold and ripple are eas...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
At present, the steel plate surface defect detection technology based on machine vision and convolut...
In this paper a new method for the automatic visual inspection of metallic surfaces is proposed by u...
The accurate and rapid identification of surface defects is an important element of product appearan...
Surface defect automatic detection has great significance for copper strip production. The tradition...
The authors investigated deep residual neural networks, which are used to detect and classify defect...
Steel strip plays a vital role in many industrial fields. Its defects will impact the manifestation ...
Automatic metallic surface defect inspection has received increased attention in relation to the qua...
Automatic metal surface defect detection is an important part of quality control in industrial produ...
A new system for detecting surface defects of automobile stamping parts is designed. Set up a defect...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
Aluminum profile surface defects can greatly affect the performance, safety, and reliability of prod...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
In large scale productions of metal sheets, it is important to maintain an effective way to continuo...
In the rolling process of magnesium alloy sheet, defects such as edge crack, fold and ripple are eas...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
At present, the steel plate surface defect detection technology based on machine vision and convolut...
In this paper a new method for the automatic visual inspection of metallic surfaces is proposed by u...
The accurate and rapid identification of surface defects is an important element of product appearan...
Surface defect automatic detection has great significance for copper strip production. The tradition...
The authors investigated deep residual neural networks, which are used to detect and classify defect...
Steel strip plays a vital role in many industrial fields. Its defects will impact the manifestation ...
Automatic metallic surface defect inspection has received increased attention in relation to the qua...
Automatic metal surface defect detection is an important part of quality control in industrial produ...
A new system for detecting surface defects of automobile stamping parts is designed. Set up a defect...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
Aluminum profile surface defects can greatly affect the performance, safety, and reliability of prod...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
In large scale productions of metal sheets, it is important to maintain an effective way to continuo...