Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences on the appearance and quality of industrial products. Therefore, it is significant to timely recognize the surface defects for hot-rolled steel strip. In order to improve the efficiency and accuracy of surface defects, a deep neural network, namely, deep attention residual convolutional neural network (DARCNN), is proposed to automatically distinguish 6 kinds of hot-rolled steep strip surface defects. In this network, a channel attention mechanism is combined with residual blocks so that the network can focus on the significant feature channels without information loss. The experimental results show that the accuracy, precision and area unde...
A dual attention deep learning network is developed to classify three types of steel defects, locate...
The steel strip is one of the essential raw materials in the machinery industry. Besides, the defect...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
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...
Hot-rolled strip steel is widely used in automotive manufacturing, chemical and home appliance indus...
Steel strip plays a vital role in many industrial fields. Its defects will impact the manifestation ...
Automatic visual recognition of steel surface defects provides critical functionality to facilitate ...
Automatic metal surface defect detection is an important part of quality control in industrial produ...
The authors investigated deep residual neural networks, which are used to detect and classify defect...
A dual attention deep learning network is developed to classify three types of steel defects, locate...
The steel strip is one of the essential raw materials in the machinery industry. Besides, the defect...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
Generally, the existence of surface defects in hot-rolled steel strip can lead to adverse influences...
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...
Hot-rolled strip steel is widely used in automotive manufacturing, chemical and home appliance indus...
Steel strip plays a vital role in many industrial fields. Its defects will impact the manifestation ...
Automatic visual recognition of steel surface defects provides critical functionality to facilitate ...
Automatic metal surface defect detection is an important part of quality control in industrial produ...
The authors investigated deep residual neural networks, which are used to detect and classify defect...
A dual attention deep learning network is developed to classify three types of steel defects, locate...
The steel strip is one of the essential raw materials in the machinery industry. Besides, the defect...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...