Affiliation:
1. School of Mechanical and Automotive Engineering, Shanghai University of Engineering Science, Shanghai ,201600
P.R. China
2. School of Mechanical and Automotive Engineering, Shanghai University of Engineering Science, Shanghai 201600,
P.R. China
Abstract
Background:
In the industrial manufacturing process, manually labeling enough datasets is
time-consuming, which hinders the training and deployment of defect detection models. Therefore, automatic
defect detection and its classification is the premise of industrial production quality.
Objectives:
The study mainly discusses about the detection of the Hemispherical Surface of the valve
core by machine vision method.
Methods:
The paper put forward a novel semi-supervised algorithm to detect the Hemispherical Surface
of the Valve Core. Under the condition of the lack of labeled datasets, the paper used labeled and unlabeled
samples for model training. This thesis proposed, for the first time, using the Mean Teacher semisupervised
learning framework and then making changes to the model; firstly, this paper proposed to
use the Stochastic Weight Average (SWA) algorithm to update the weight of the teaching model to enhance
this model’s generalization ability. Furthermore, in order to select reliable datasets and calculate
the consistency loss, this study also proposed an Uncertainty Filter (UF) method. Thirdly, the selection
of hard-ware equipment, since the hemispherical surface is anisotropic, ring light source is used, which
can lit the surface from top to bottom.
Results:
Experimental results show that in two different conditions, the classification accuracy can
raise. On one hand, under the condition of training with a small amount of labeled datasets, the proposed
semi-supervised learning model can achieve a classification accuracy of 90.51%; whereas, under
the condition of the semi-supervised learning mechanism and a large amount of unlabeled datasets, the
accuracy increases from 93.7% to 98.1%.
Conclusion:
This paper uses hemispherical metal surface as the dataset for the first time, and also innovatively
optimizes the semi-supervised model. On the other hand, experimental comparative analysis
indicates that the model proposed in this paper is significantly better than the comparison model, which
lays the basic position for the defect detection of the hemispherical surface’s metal. At the same time,
the novel semi-supervised algorithm can also be used to detect other metal part’s hemispherical surfaces.
Publisher
Bentham Science Publishers Ltd.
Subject
General Materials Science
Cited by
1 articles.
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