Current vision-based roughness measurement methods are classified into two main types: index design and deep learning. Among them, the computation procedure for constructing a roughness correlation index based on image data is relatively difficult, and the imaging environment criteria are stringent and not universally applicable. The roughness measurement method based on deep learning takes a long time to train the model, which is not conducive to achieving rapid online roughness measurement. To tackle with the problems mentioned above, a visual measurement method for surface roughness of milling workpieces based on broad learning system was proposed in this paper. The process began by capturing photos of the milling workpiece using a CCD c...
A surface roughness measurement technique, based on an area measurement method using a computer visi...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
To address the problem that a deep neural network needs a sufficient number of training samples to h...
Measurement of surface roughness after completion of a machining process is a common procedure unde...
The digital industrial revolution calls for smart manufacturing plants, i.e. plants that include sen...
To enable fully automated robotic grinding of random shape metal surfaces, it is helpful if surface ...
Artificial Neural Network is a powerful tool for prediction of parameter values, which presents a se...
This paper pioneers the use of the extreme learning machine (ELM) approach for surface roughness pre...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
In this study, a milling system based on the in-line surface roughness measurement during machining ...
In this paper, a comparative experimental surface roughness measurement method based on the speckle ...
In this paper, a comparative experimental surface roughness measurement method based on the speckle ...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
A surface roughness measurement technique, based on an area measurement method using a computer visi...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
To address the problem that a deep neural network needs a sufficient number of training samples to h...
Measurement of surface roughness after completion of a machining process is a common procedure unde...
The digital industrial revolution calls for smart manufacturing plants, i.e. plants that include sen...
To enable fully automated robotic grinding of random shape metal surfaces, it is helpful if surface ...
Artificial Neural Network is a powerful tool for prediction of parameter values, which presents a se...
This paper pioneers the use of the extreme learning machine (ELM) approach for surface roughness pre...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
In this study, a milling system based on the in-line surface roughness measurement during machining ...
In this paper, a comparative experimental surface roughness measurement method based on the speckle ...
In this paper, a comparative experimental surface roughness measurement method based on the speckle ...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
Surface roughness and machining accuracy are essential indicators of the quality of parts in milling...
A surface roughness measurement technique, based on an area measurement method using a computer visi...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This study introduces the improvement of mathematical and predictive models of surface roughness par...