Research on Subpixel Algorithm of Fixed-Point Tool Path Measurement

Tool safety is an important part of machining and machine tool safety, and machine tool path image detection can effectively obtain the in-machine condition of a tool. To obtain an accurate image edge and improve image processing accuracy, a novel subpixel edge detection method is proposed in this s...

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Main Authors: Xi Zhang, Zixie Guo, Xiangwei Liu, Longjia Zhang
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2021/7270908
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spelling doaj-f9756fc19eac48e680d689e3da388ba32021-09-13T01:24:21ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52732021-01-01202110.1155/2021/7270908Research on Subpixel Algorithm of Fixed-Point Tool Path MeasurementXi Zhang0Zixie Guo1Xiangwei Liu2Longjia Zhang3School of Mechanical and AutomationSchool of Mechanical and AutomationSchool of Mechanical and AutomationSchool of Mechanical and AutomationTool safety is an important part of machining and machine tool safety, and machine tool path image detection can effectively obtain the in-machine condition of a tool. To obtain an accurate image edge and improve image processing accuracy, a novel subpixel edge detection method is proposed in this study. The precontour is segmented by binarization, the second derivative in the neighborhood of the demand point is calculated, and the obtained value is sampled according to the specified rules for curve fitting. The point whose curve ordinate is 0 is the subpixel position. The experiment proves that an improved subpixel edge can be obtained. Results show that the proposed method can extract a satisfactory subpixel contour, which is more accurate and reliable than the edge results obtained by several current pixel-level operators, such as the Canny operator, and can be used in edge detection with high-accuracy requirements, such as the contour detection of online tools.http://dx.doi.org/10.1155/2021/7270908
collection DOAJ
language English
format Article
sources DOAJ
author Xi Zhang
Zixie Guo
Xiangwei Liu
Longjia Zhang
spellingShingle Xi Zhang
Zixie Guo
Xiangwei Liu
Longjia Zhang
Research on Subpixel Algorithm of Fixed-Point Tool Path Measurement
Computational Intelligence and Neuroscience
author_facet Xi Zhang
Zixie Guo
Xiangwei Liu
Longjia Zhang
author_sort Xi Zhang
title Research on Subpixel Algorithm of Fixed-Point Tool Path Measurement
title_short Research on Subpixel Algorithm of Fixed-Point Tool Path Measurement
title_full Research on Subpixel Algorithm of Fixed-Point Tool Path Measurement
title_fullStr Research on Subpixel Algorithm of Fixed-Point Tool Path Measurement
title_full_unstemmed Research on Subpixel Algorithm of Fixed-Point Tool Path Measurement
title_sort research on subpixel algorithm of fixed-point tool path measurement
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5273
publishDate 2021-01-01
description Tool safety is an important part of machining and machine tool safety, and machine tool path image detection can effectively obtain the in-machine condition of a tool. To obtain an accurate image edge and improve image processing accuracy, a novel subpixel edge detection method is proposed in this study. The precontour is segmented by binarization, the second derivative in the neighborhood of the demand point is calculated, and the obtained value is sampled according to the specified rules for curve fitting. The point whose curve ordinate is 0 is the subpixel position. The experiment proves that an improved subpixel edge can be obtained. Results show that the proposed method can extract a satisfactory subpixel contour, which is more accurate and reliable than the edge results obtained by several current pixel-level operators, such as the Canny operator, and can be used in edge detection with high-accuracy requirements, such as the contour detection of online tools.
url http://dx.doi.org/10.1155/2021/7270908
work_keys_str_mv AT xizhang researchonsubpixelalgorithmoffixedpointtoolpathmeasurement
AT zixieguo researchonsubpixelalgorithmoffixedpointtoolpathmeasurement
AT xiangweiliu researchonsubpixelalgorithmoffixedpointtoolpathmeasurement
AT longjiazhang researchonsubpixelalgorithmoffixedpointtoolpathmeasurement
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