2023
DOI: 10.1177/15280837231152878
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A defect detection system of glass tube yarn based on machine vision

Abstract: Tube yarn is also called glass fiber spun yarn. Due to the excellent properties of glass fiber, various industrial products based on glass fiber are used in a variety of industries. As the most obvious factor affecting the quality of products, quality detection of glass fiber yarns is very important for companies. Due to traditional defect detection relies on the experience and subjective factors of workers, which makes many different views on the same defect. Some traditional methods limit the solution to spe… Show more

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Cited by 9 publications
(5 citation statements)
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References 32 publications
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“…Ling et al [46] proposed an adaptive multi scale feature fusion algorithm to address the problem of significant scale variation in track sleeper crack targets. Bao et al [47] proposed an improved YOLOx algorithm with multi scale feature fusion. It effectively improves the detection accuracy of glass fiber tube sand by parallelly using three different kernels to perform convolution, followed by global average pooling and max pooling on each feature.…”
Section: Multi Scale Feature Fusionmentioning
confidence: 99%
“…Ling et al [46] proposed an adaptive multi scale feature fusion algorithm to address the problem of significant scale variation in track sleeper crack targets. Bao et al [47] proposed an improved YOLOx algorithm with multi scale feature fusion. It effectively improves the detection accuracy of glass fiber tube sand by parallelly using three different kernels to perform convolution, followed by global average pooling and max pooling on each feature.…”
Section: Multi Scale Feature Fusionmentioning
confidence: 99%
“…In order to meet the requirements of practical industrial production, researchers have started to focus on more efficient and lightweight network models. Ma et al [16] proposed a lightweight aluminum strip defect detector based on YOLOV4, which could effectively simplify the parameters of the model and achieve accurate detection of aluminum strip defects. Zhao et al [17] utilized embedded Ghost module instead of standard convolution and Transformer module was used to extract multi-head attention features, which realized the detection of digital ray images and further facilitated the industrial implementation of the model.…”
Section: Lightweight Networkmentioning
confidence: 99%
“…These objective values well reflect the strand integrity and feature of the belt-forming of yarn, and are consistent with the subjective evaluation. Bao et al 21 proposed a comprehensive defect detection system of tube yarn by combining machine vision and deep learning methods. In the whole system, we inspect the weight through a weight sensor first.…”
mentioning
confidence: 99%
“…Bao et al. 21 proposed a comprehensive defect detection system of tube yarn by combining machine vision and deep learning methods. In the whole system, we inspect the weight through a weight sensor first.…”
mentioning
confidence: 99%