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Method of detecting glass defects based on phase image processing

A glass defect and phase image technology, applied in measuring devices, material analysis through optical means, instruments, etc., can solve problems such as poor anti-interference ability, slow unfolding speed, and low accuracy of unfolding results, and achieve accurate detection and elimination The effect of background noise

Inactive Publication Date: 2013-10-09
ZHONGBEI UNIV
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Problems solved by technology

The path-correlation algorithm has a fast unfolding speed, but its anti-interference ability is poor, and the accuracy of the unfolding result is low, so that the unfolded real phase image still contains discontinuous points; while the path-uncorrelated phase unwrapping algorithm has strong anti-interference ability, but the unfolding result is low. Slow speed, not suitable for glass defect detection with high real-time requirements
[0004] In addition, because the real phase difference between the moiré phase at the defect and the reference moiré phase changes smoothly, and there is a zero-crossing point in the center of the defect, the defect area cannot be completely segmented using the currently commonly used edge and threshold segmentation algorithms. Instead, a complete defect is divided into multiple isolated areas, resulting in misjudgment of defects

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  • Method of detecting glass defects based on phase image processing
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  • Method of detecting glass defects based on phase image processing

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Embodiment Construction

[0028] The detailed technical scheme of the present invention is described below in conjunction with the drawings:

[0029] Such as figure 1 As shown, a glass defect detection system based on phase image processing includes light source 1, transmission grating 2, high-speed linear camera 4 (CCD), image capture card 6, industrial computer 7, control cabinet 5, roller 9 and defect detection processing software , The light source 1 is a bar-shaped LED light source, located under the glass to be inspected 3, the transmission grating 2 is located between the glass to be inspected 3 and the light source 1, and is close to the lower surface of the glass to be inspected 3; the high-speed linear CCD camera 4 is placed on the glass to be inspected Above the glass 3, the scan line of the high-speed linear camera 4, the transmission grating 2 and the center line of the light source 1 are on the same vertical plane; the glass 3 to be inspected is placed on a roller 9, and the glass 3 to be ins...

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Abstract

The invention relates to a method of detecting glass defects based on a phase image processing. The method utilizes a glass defect detection system based on the phase image processing; and comprises that light emitted from a light source passes through a raster and forms moire showing a cosine distribution of light intensity on surfaces of to-be-detected glasses, a high-speed linear-array camera collects the moire patterns on the surfaces of the glasses which are then transmitted to an industrial control computer through an image acquisition card, and a defect detection and processing software installed on the industrial control computer timely processes the moire patterns to obtain binary defect images. The method is characterized by firstly subtracting corresponding points of main value images of reference phases respectively containing glass defects and being free of defects, eliminating hopping in the subtraction results by using a hopping error correction algorithm, segmenting into binary images for the glass defects through a mathematical morphology and a segmentation algorithm of combined high and low thresholds, and finally determining the glass defects according to data of the binary images. The method can greatly reduce influences of system noises, improve an operation speed and realize rapid and accurate detection for the glass defects.

Description

Technical field [0001] The invention belongs to the technical field of defect detection, and specifically relates to a glass defect detection method based on phase image processing. Background technique [0002] The machine vision trap detection method based on the projection grid is an effective method to achieve glass defect detection. The projection grid method is used to detect defects in the glass, which is to project a cosine grating with equal grating pitch on the glass surface, forming a light and dark moiré on the glass surface. Compared with a defect-free moiré image, the existence of glass defects will cause defects The moiré at the position is deformed, and the phase of the deformed moiré contains information about glass defects. Under ideal conditions, when the moiré image contains defects, the phase difference with the non-defect moiré image is not zero, otherwise it is zero. Therefore, a defect-free reference moiré image can be pre-stored before inspection, and T...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01N21/958
Inventor 金永王召巴赵霞陈友兴
Owner ZHONGBEI UNIV
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