The visual automatic detection method based on artificial intelligence has attracted more and more attention. In order to improve the performance of weld nondestructive defect detection, we propose DRepDet (Dilated RepPoints Detector). First, we analyze the weld defect dataset in detail and summarize the distribution characteristics of weld defect data, that is, the defect scale is very different and the aspect ratio distribution range is large. Second, according to the distribution characteristics of defect data, we design DResBlock module, and introduce dilated convolution with different dilated rates in the process of feature extraction to expand the receptive field and improve the detection performance of large-scale defects. Based on D...
Deep learning networks are applied for defect detection, among which Cascade R-CNN is a multi-stage ...
In modern production environments, advanced and intelligent process monitoring strategies are requir...
Fantastic progress has been made within the field of machine learning and deep neural networks in th...
In the scheme of Non Destructive Testing (NDT), defect detection is an important process. Traditiona...
Weld defects detection using X-ray images is an effective method of nondestructive testing. Conventi...
Traditional Image Processing Techniques (IPT), used for automating the detection and classification ...
Publisher Copyright: © 2022, The Author(s).Aerospace welds are non-destructively evaluated (NDE) dur...
Abstract Weld defect recognition plays an important role in the manufacturing process...
The traditional defect detection algorithms based on image registration, image contrast and other im...
In this paper, we describe an automatic detection system to recognise welding defects in radiographi...
Automatic metal surface defect detection is an important part of quality control in industrial produ...
Nowadays, the welding process is essential in various manufacturing industrial fields, such as aeros...
A complete defect detection task aims to achieve the specific class and precise location of each def...
Quality control of welded joints is an important step before commissioning of various types of metal...
Additive manufacturing (AM) allows building complex shapes with high accuracy. The X-ray Computed To...
Deep learning networks are applied for defect detection, among which Cascade R-CNN is a multi-stage ...
In modern production environments, advanced and intelligent process monitoring strategies are requir...
Fantastic progress has been made within the field of machine learning and deep neural networks in th...
In the scheme of Non Destructive Testing (NDT), defect detection is an important process. Traditiona...
Weld defects detection using X-ray images is an effective method of nondestructive testing. Conventi...
Traditional Image Processing Techniques (IPT), used for automating the detection and classification ...
Publisher Copyright: © 2022, The Author(s).Aerospace welds are non-destructively evaluated (NDE) dur...
Abstract Weld defect recognition plays an important role in the manufacturing process...
The traditional defect detection algorithms based on image registration, image contrast and other im...
In this paper, we describe an automatic detection system to recognise welding defects in radiographi...
Automatic metal surface defect detection is an important part of quality control in industrial produ...
Nowadays, the welding process is essential in various manufacturing industrial fields, such as aeros...
A complete defect detection task aims to achieve the specific class and precise location of each def...
Quality control of welded joints is an important step before commissioning of various types of metal...
Additive manufacturing (AM) allows building complex shapes with high accuracy. The X-ray Computed To...
Deep learning networks are applied for defect detection, among which Cascade R-CNN is a multi-stage ...
In modern production environments, advanced and intelligent process monitoring strategies are requir...
Fantastic progress has been made within the field of machine learning and deep neural networks in th...