A segmentation scheme to detect surface defects is proposed. An unsupervised neural network, the Self-Organizing Map, is used to estimate the distribution of faulty-free samples. An unknown sample is classified as a defect if it differs enough from this estimated distribution. A new scheme for determining this difference is suggested. The scheme makes use of the Voronoi set of each map unit and defines a new rule for finding the best-matching map unit. The proposed scheme is general in the sense that it can be applied to fault detection of different types of surfaces
The paper presents a vision based approach and neural network techniques in surface defects inspecti...
A fast classifier based on a neural network is described, which is the central part of an optical in...
A new approach for the segmentation of local textile defects using feed-forward neural network is pr...
This paper addresses the problem of defect segmentation in semiconductor manufacturing. The input of...
AbstractDetecting surface defects is a challenging visual recognition problem arising in many proces...
Surface level defect detection, such as detecting missing components, misalignments and physical dam...
Recent years have witnessed the widespread research of the surface defect detection technology based...
This paper investigates two methods for the detection of defects on textured surfaces using neural n...
Accurate and efficient image segmentation can contribute to improving the recognition rate of surfac...
In this new era, advances computer engineering in robotic vision to inspect the surface defect autom...
This study aims to develop a novel automated computer vision algorithm for quality inspection of sur...
Abstract: This paper discusses the design of a Pattern Recognition System for the detection of surfa...
Abstract As is well-known, defects precisely affect the lives and functions of the machines in whic...
This thesis is concerned with the development of a novel learning algorithm based method for detecti...
Quality control in Tiles Industry is of great importance. Therefore, it is effective to improve an a...
The paper presents a vision based approach and neural network techniques in surface defects inspecti...
A fast classifier based on a neural network is described, which is the central part of an optical in...
A new approach for the segmentation of local textile defects using feed-forward neural network is pr...
This paper addresses the problem of defect segmentation in semiconductor manufacturing. The input of...
AbstractDetecting surface defects is a challenging visual recognition problem arising in many proces...
Surface level defect detection, such as detecting missing components, misalignments and physical dam...
Recent years have witnessed the widespread research of the surface defect detection technology based...
This paper investigates two methods for the detection of defects on textured surfaces using neural n...
Accurate and efficient image segmentation can contribute to improving the recognition rate of surfac...
In this new era, advances computer engineering in robotic vision to inspect the surface defect autom...
This study aims to develop a novel automated computer vision algorithm for quality inspection of sur...
Abstract: This paper discusses the design of a Pattern Recognition System for the detection of surfa...
Abstract As is well-known, defects precisely affect the lives and functions of the machines in whic...
This thesis is concerned with the development of a novel learning algorithm based method for detecti...
Quality control in Tiles Industry is of great importance. Therefore, it is effective to improve an a...
The paper presents a vision based approach and neural network techniques in surface defects inspecti...
A fast classifier based on a neural network is described, which is the central part of an optical in...
A new approach for the segmentation of local textile defects using feed-forward neural network is pr...