Wood board surface processing quality control method based on machine vision

A technology of surface processing quality and machine vision, applied in instruments, image data processing, computing, etc., can solve the problems of different degrees of peeling, complexity, high cost of data acquisition and labeling

Inactive Publication Date: 2022-03-15
沭阳县旭东木业制品厂
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0004] The external manifestations of the above two defects are complex fine textures, and the formation process is similar, both are the process of peeling wood fibers from the surface, only the degree of peeling is different
In the existing technology, manual detection is prone to fatigue, and it is prone to false detection and missed detection in the rapid production of modern industry
The artificial neural network algorithm requires a large amount of training data, and the cost of data acquisition and labeling is high. It is difficult for existing machine vision technology to accurately distinguish the two types of defects in the case of complex textures. Therefore, a detection method that can distinguish the above two types of defects is needed. To provide adjustment basis for subsequent quality control measures

Method used

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  • Wood board surface processing quality control method based on machine vision
  • Wood board surface processing quality control method based on machine vision
  • Wood board surface processing quality control method based on machine vision

Examples

Experimental program
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Embodiment 1

[0055] like figure 1 As shown, a kind of machine vision-based wood panel surface processing quality control method structure schematic diagram of the embodiment of the present invention is provided, including:

[0056] 101. Obtain the surface image of the board, and perform grayscale processing to obtain a grayscale image of the board.

[0057] In this embodiment, a camera is used to obtain an RGB image of the cutting surface of the chord-cut plate substrate product, and convert it into a grayscale image.

[0058] 102. Sliding the grayscale image with a set window, obtaining the gradient direction feature and the direction inertial distance feature of all point pairs in each window, and dividing the gradient direction feature and the direction inertial distance feature into A certain level.

[0059] For the texture existing on the surface of the chord-cut plate, after analyzing it, it can be seen that the texture has surface texture extensibility and anisotropy, that is, the...

Embodiment 2

[0089] like figure 2 As shown, another kind of machine vision-based wood panel surface processing quality control method structure schematic diagram of the embodiment of the present invention is provided, including:

[0090] 201. Obtain the surface image of the board, and perform grayscale processing to obtain a grayscale image of the board.

[0091] The application process of this embodiment is to set the camera to collect the surface image of the particleboard base material before the material inlet of the veneer assembly line, and process the collected image.

[0092]202. Perform a sliding window on the grayscale image with a set window, obtain the gradient direction feature and the direction inertial distance feature of all point pairs in each window, and divide the gradient direction feature and the direction inertial distance feature into A certain level.

[0093] Calculate the gradient of the grayscale image, and use the sobel operator to calculate the gradient g in ...

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Abstract

The invention discloses a wood board surface processing quality control method based on machine vision, relates to the field of machine vision, and is mainly used for furniture production defect detection. Comprising the steps of obtaining a board gray image; performing window sliding on the grayscale image, acquiring gradient direction features and direction inertia distance features of each window, dividing the gradient direction features and the direction inertia distance features into certain grades, and constructing a texture feature matrix of the corresponding window; calculating the filling degree of each window texture feature matrix; calculating a texture feature matrix filling degree mean value of the windows of different sizes, and obtaining the window of the optimal size; obtaining a defect texture noise reduction matrix of the window with the optimal size; fitting two dimensions of the defect texture noise reduction matrix, and calculating a wood grain stripping residue ratio; and plate surface machining defects are judged, and corresponding machining control is conducted according to the corresponding defects. According to the technical means provided by the invention, two defects of template processing can be accurately distinguished, and the detection efficiency and accuracy are improved.

Description

technical field [0001] The invention relates to the field of machine vision, in particular to a method for controlling the surface processing quality of wood boards based on machine vision. Background technique [0002] In the current wood products industry, wood panels are the basic product of the furniture production industry, and string-cut wood panels have become an important substrate type for furniture production due to their unique landscape and wood grain on the surface. This makes its surface quality directly affect the quality of finished furniture based on it. In addition to the defects of the original wood itself, the surface defects of string-cut wood are mostly surface processing defects caused by inaccurate setting of processing parameters during processing or hardware damage such as cutting tool wear. Therefore, it is necessary to control the surface quality of string-cut wood after cutting to ensure the quality of subsequent furniture products. [0003] Am...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00G06T7/41G06T5/00
CPCG06T7/0004G06T7/41G06T2207/30161G06T5/70
Inventor 宋广花
Owner 沭阳县旭东木业制品厂
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