Designing cutting tools for the turning industry, providing optimal cutting parameters is of importance for both the client, and for the company's own research. By examining the metal chips that form in the turning process, operators can recommend optimal cutting parameters. Instead of doing manual classification of metal chips that come from the turning process, an automated approach of detecting chips and classification is preferred. This thesis aims to evaluate if such an approach is possible using either a Convolutional Neural Network (CNN) or a CNN feature extraction coupled with machine learning (ML). The thesis started with a research phase where we reviewed existing state of the art CNNs, image processing and ML algorithms. From the...
Mechanical fasteners are widely used in manufacturing of hardware and mechanical components such as ...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
Abstract − Today’s complex manufacturing systems operate in a changing environment rife with uncerta...
Designing cutting tools for the turning industry, providing optimal cutting parameters is of importa...
In the growing Industry 4.0 market, there is strong need to implement automatic inspection methods t...
Fantastic progress has been made within the field of machine learning and deep neural networks in th...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
The digital industrial revolution calls for smart manufacturing plants, i.e. plants that include sen...
Advanced digital solutions are increasingly introduced into manufacturing systems to make them more ...
Machine learning, a subset of artificial intelligence is an emerging technology that enabled the c...
In this paper a new method for the automatic visual inspection of metallic surfaces is proposed by u...
The multiclass prediction approach to the problem of recognizing the state of the drill by classifyi...
Metal workpieces are an indispensable and important part of the manufacturing industry. Surface flaw...
This work aims at investigating the use of Deep Learning techniques to automatically detect and clas...
This paper develops a new machine vision framework for efficient detection and classification of man...
Mechanical fasteners are widely used in manufacturing of hardware and mechanical components such as ...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
Abstract − Today’s complex manufacturing systems operate in a changing environment rife with uncerta...
Designing cutting tools for the turning industry, providing optimal cutting parameters is of importa...
In the growing Industry 4.0 market, there is strong need to implement automatic inspection methods t...
Fantastic progress has been made within the field of machine learning and deep neural networks in th...
In the paper, it is proposed to develop a machine learning based intelligent defect detection system...
The digital industrial revolution calls for smart manufacturing plants, i.e. plants that include sen...
Advanced digital solutions are increasingly introduced into manufacturing systems to make them more ...
Machine learning, a subset of artificial intelligence is an emerging technology that enabled the c...
In this paper a new method for the automatic visual inspection of metallic surfaces is proposed by u...
The multiclass prediction approach to the problem of recognizing the state of the drill by classifyi...
Metal workpieces are an indispensable and important part of the manufacturing industry. Surface flaw...
This work aims at investigating the use of Deep Learning techniques to automatically detect and clas...
This paper develops a new machine vision framework for efficient detection and classification of man...
Mechanical fasteners are widely used in manufacturing of hardware and mechanical components such as ...
This paper proposes a deep convolutional neural network (CNN) -based technique for the detection of ...
Abstract − Today’s complex manufacturing systems operate in a changing environment rife with uncerta...