Weld surface defect feature extraction method based on image gray scale B sweeping curve

A technology of welding seam surface and image grayscale, which is used in the detection of welding seam surface defects, and the field of welding seam defect identification based on image processing technology, which can solve the problems of little research on image detection and identification technology, and achieve effective extraction and accurate positioning. Effect

Active Publication Date: 2016-09-07
BEIJING UNIV OF TECH
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Problems solved by technology

[0005] At present, the technology of welding seam inspection based on X-ray is mostly for the detection of internal defects of

Method used

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  • Weld surface defect feature extraction method based on image gray scale B sweeping curve
  • Weld surface defect feature extraction method based on image gray scale B sweeping curve
  • Weld surface defect feature extraction method based on image gray scale B sweeping curve

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Embodiment Construction

[0045] Below in conjunction with concrete experiment the present invention will be further described:

[0046] In this experiment, the sample image with misalignment and partial welding on the surface of the weld is selected as the experimental sample.

[0047] Step 1: Image acquisition.

[0048] An industrial CCD camera is used to collect defect images such as welding deviation and misalignment on the surface of the internal weld of the transducer. The collected image is a true-color RGB image with an image size of 480*360, hue 4, saturation 100, contrast -4, and each value stable.

[0049] Step 2: Image preprocessing.

[0050] According to the formula (1), the true color RGB image is converted into a grayscale image. Such as Figure 1-2 shown. Median filtering is performed on the grayscale image to realize the noise reduction and restoration of the image in the case of edge fidelity. As shown in Figure 3. Step 3: Canny operator edge line extraction.

[0051] The Cann...

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Abstract

The invention discloses a weld surface defect feature extraction method based on an image gray scale B sweeping curve, and the method comprises the steps: setting photographing parameters of a miniature CCD camera according to an image collection standard; converting a collected true color image into a gray scale map, and carrying out the median filtering of the gray scale map; carrying out the preliminary extraction of the edge lines between a weld region and a background and between a non-welding region and the background in the gray scale map through employing a Canny operator edge line extraction algorithm based on a threshold value; judging the welding surface defects according to the number and shapes of edge lines, such as non-centered welding and weld bead distortion; reconstructing a continuous edge line of the weld region through Hough transformation, and achieving the accurate positioning of the weld region; drawing a section gray scale B sweeping curve perpendicular to the weld edge, wherein the difference of gray scale values of the B sweeping curve at two ends of the weld changes remarkably when there is misalignment on the weld surface, so as to judge the misalignment phenomenon of the weld surface. The method achieves the accurate positioning of the weld edge and the accurate recognition of defects of non-centered welding, weld bead distortion and misalignment.

Description

technical field [0001] The invention relates to a detection method for weld surface defects, in particular to a weld defect recognition method based on image processing technology. The method is suitable for the detection and identification of weld surface defects in automatic welding processes, and belongs to the field of non-destructive testing. Background technique [0002] Welding technology is widely used in industrial production. At present, large workpieces such as boilers and pipelines are mostly completed by automatic welding technology. In the production line automatic welding process, it is inevitable that there will be defects such as misalignment, partial welding and broken welding that affect product quality. The existence of weld surface defects will greatly reduce the safety of welded products during the service period, ranging from product failure to leakage, to serious causes of brittle fracture of the product, causing serious casualties. Therefore, the d...

Claims

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Application Information

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IPC IPC(8): G06T7/00
CPCG06T7/0008G06T2207/10024G06T2207/20032G06T2207/20061G06T2207/30152
Inventor 焦敬品常予李思源何存富吴斌
Owner BEIJING UNIV OF TECH
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