CN116343115A - PCB welding defect detection method - Google Patents
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Abstract
The invention discloses a PCB welding defect detection method, which comprises the following steps of: collecting PCB welding defect images and normal welding images, analyzing welding defect information of the PCB defect images, and storing the information obtained by analysis and the corresponding PCB welding defect images in a database after the information is corresponding to the PCB welding defect images; the invention acquires images of defects with different problems and analyzes the images to obtain specific welding spot size and shape information, acquires the specific welding spot size and shape of the detected PCB welding, acquires similar defect images through information in the comparison process, performs depth comparison by combining the welding spot size and shape with image information, and finally compares the corresponding defect images with the welding spot size and shape, and displays the defect images and the welding spot size and shape through a display screen.
Description
Technical Field
The invention relates to the technical field of circuit board processing, in particular to a PCB welding defect detection method.
Background
The PCB, called a printed circuit board, is an important electronic component, is a support for electronic components, and is a carrier for electrical interconnection of electronic components. It is called a "printed" circuit board because it is made using electronic printing.
In order to ensure that the quality of the PCB needs to be detected for welding defects in the production link, the traditional detection mode is carried out through direct image comparison, and the defect of the welding of the PCB can be identified in the comparison process, but the specific situation of the defect of the PCB cannot be obtained, so that the circuit boards with the defects detected are inspected one by one, and the subsequent reworking efficiency is very influenced.
Therefore, a PCB welding defect detection method is provided to solve the problem.
Disclosure of Invention
The invention aims to provide a PCB welding defect detection method, which solves the problem that the existing PCB defect detection method cannot obtain the specific situation of defects of a PCB.
In order to achieve the above purpose, the present invention provides the following technical solutions: a PCB welding defect detection method comprises the following steps:
step 1: defect image acquisition: collecting PCB welding defect images and normal welding images, analyzing welding defect information of the PCB defect images, and storing the information obtained by analysis and the corresponding PCB welding defect images in a database after the information is corresponding to the PCB welding defect images;
step 2: and (3) collecting detected PCB images: collecting all welding position images of the detected PCB, wherein the collection of the welding images of the detected PCB comprises welding points of all welding positions, and the collection of single welding points is that the shape of four sides of the detected PCB, the area of the welding points and the color of the periphery of the welding points;
step 3: identifying a welding image: the method comprises the steps that an image recognition device is used for recognizing a collected image of a welding point of a detected PCB, the four side surfaces of the welding point are recognized, the welding area of the welding point and the peripheral welding color of the welding point are recognized, and specific welding information of the welding point of the detected PCB is obtained after the recognition is completed;
step 4: matching defects: inputting the obtained specific information of the welding of the detected PCB into a database, screening similar defect images in the database according to the obtained identification information of the welding point of the detected PCB, extracting the screened images, analyzing the corresponding information of the welding defect of the stored PCB defect images in advance, and matching the acquired PCB welding point images, and simultaneously extracting normal welding point welding images to wait for matching.
Preferably, in step 1, the welding defect information of the PCB defect image is analyzed, specifically, displayed in text form, specifically, the size and color of each image defect.
Preferably, in step 2, the PCB solder defect image includes dummy solder, solder build-up, solder overmuch, solder overlittle, rosin solder, and solder over heat.
Preferably, in step 2, the specific information of the PCB welding defect image includes the following steps that the virtual welding is that the solder and the lead of the component or the copper foil have obvious black boundary lines, the solder is sunken towards the boundary lines, defects exist in different colors, the solder is piled up, the welding spot structure is loose, white and matt, defects exist in different colors, and the solder is too many: the welding flux is convex, the side surface shape is different and has defects, the welding area is less than 80% of the welding pad, the welding flux does not form a smooth transition surface, the welding area is different and has defects, rosin residues are clamped in the welding seam, the welding color is different and has defects, and the welding spot is white, has no metallic luster and has defects in different colors.
Preferably, in step 3, the specific information of the identification device for identifying the collected detected PCB welding point image is that the specific size and color of the shape, area and color of the detected PCB welding point are displayed in the form of character shapes.
Preferably, in step 4, the screening of the database may be performed by searching for the size and shape of the welding spot given by the inspected image and the size and shape of the specific welding spot analyzed by the defect image in the database, which are similar.
Preferably, in step 4, the database may be screened by comparing the similarity between the soldering image of the PCB to be inspected and the defect image one by one and then extracting.
Preferably, in step 4, when the shape of the four welding sides of the welding point of the detected PCB is matched with the shape of the defective welding image, an image overlapping algorithm is adopted to perform overlapping comparison, so as to obtain a welding height difference between the welding point of the detected PCB and the welding height difference between the defective image, and then the welding point sizes and shapes of the two images are compared, so that the similarity ratio of the two images is finally obtained.
Preferably, in step 4, the image area of the defective solder joint includes an image smaller than the normal solder area and an image larger than the normal solder area, and under the solder joint size and shape given by the normal solder image, the solder area of the inspected PCB solder joint is determined to be over-solder and less than 20% is determined to be under-solder.
Preferably, in step 4, when detecting the welding area of the detected PCB welding point, it is not necessary to perform image comparison, it can be determined whether there is a defect in the welding area of the detected PCB welding point directly through text comparison, and finally when matching the welding peripheral color of the detected PCB welding point, the color matching also adopts the size and shape comparison of the welding point, the peripheral color text of the detected PCB welding point and the welding peripheral color of the normal PCB welding point cannot be overlapped to directly determine as the defect welding, and then the comparison is performed on the analysis text of the corresponding image of the defect, thereby determining what kind of defect is specifically, and if the overlapping is qualified.
Compared with the prior art, the invention has the beneficial effects that:
the invention acquires images of defects with different problems and analyzes the images to obtain specific character size and color information, acquires specific welding spot size and shape of the detected PCB welding, acquires similar defect images through character or image information in the comparison process, performs depth comparison by combining the welding spot size and shape with the image information and the defect images, and finally compares the corresponding defect images with the welding spot size and shape to display through a display screen.
Detailed Description
The invention will now be described in more detail by way of examples which are illustrative only and are not intended to limit the scope of the invention in any way.
The invention provides a technical scheme that: a PCB welding defect detection method comprises the following steps:
step 1: defect image acquisition: collecting PCB welding defect images and normal welding images, analyzing welding defect information of the PCB defect images, and storing the information obtained by analysis and the corresponding PCB welding defect images in a database after the information is corresponding to the PCB welding defect images;
step 2: and (3) collecting detected PCB images: collecting all welding position images of the detected PCB, wherein the collection of the welding images of the detected PCB comprises welding points of all welding positions, and the collection of single welding points is that the shape of four sides of the detected PCB, the area of the welding points and the color of the periphery of the welding points;
step 3: identifying a welding image: the method comprises the steps that an image recognition device is used for recognizing a collected image of a welding point of a detected PCB, the four side surfaces of the welding point are recognized, the welding area of the welding point and the peripheral welding color of the welding point are recognized, and specific welding information of the welding point of the detected PCB is obtained after the recognition is completed;
step 4: matching defects: inputting the obtained specific information of the welding of the detected PCB into a database, screening similar defect images in the database according to the obtained identification information of the welding point of the detected PCB, extracting the screened images, analyzing the corresponding information of the welding defect of the stored PCB defect images in advance, and matching the acquired PCB welding point images, and simultaneously extracting normal welding point welding images to wait for matching.
Embodiment one:
defect image acquisition: collecting PCB welding defect images and normal welding images, analyzing welding defect information of the PCB defect images, correspondingly storing the information obtained by analysis and the corresponding PCB welding defect images in a database, and collecting detected PCB images: collecting all welding position images of the detected PCB, wherein the collection of the welding images of the detected PCB comprises welding points of all welding positions, and the collection of single welding points is that the welding images are identified by four side shapes of the detected PCB, the area of the welding points and the color of the periphery of the welding points: the method comprises the steps of identifying acquired detected PCB welding point images through an image identification device, identifying four side shapes, welding areas and peripheral welding colors of welding points, wherein the four side shapes, the welding areas and the peripheral welding colors of the welding points are formed by single welding point welding, obtaining specific welding information of the detected PCB welding points after the identification is completed, and matching defects: inputting the obtained specific information of the welding of the detected PCB into a database, screening similar defect images in the database according to the obtained identification information of the welding point of the detected PCB, extracting the screened images, analyzing the corresponding information of the welding defect of the stored PCB defect images in advance, and matching the acquired PCB welding point images, and simultaneously extracting normal welding point welding images to wait for matching.
Embodiment two:
in the first embodiment, the following steps are added:
in step 1, the welding defect information of the PCB defect image is analyzed, specifically, the welding defect information is displayed in a text form, specifically, the size and the color of each image defect.
In step 2, the PCB welding defect image comprises false soldering, solder accumulation, excessive solder, insufficient solder, rosin soldering and overheating, and in step 2, the specific information of the PCB welding defect image comprises that the false soldering comprises obvious black boundary lines between soldering tin and component leads or copper foil, the soldering tin is sunken towards the boundary lines, the colors are different, the solder accumulation comprises loose, white and matt solder joint structures, the colors are different, the defects are different, and the solder is excessive: the welding flux is convex, the side surface shape is different and has defects, the welding area is less than 80% of the welding pad, the welding flux does not form a smooth transition surface, the welding area is different and has defects, rosin residues are clamped in the welding seam, the welding color is different and has defects, and the welding spot is white, has no metallic luster and has defects in different colors.
Defect image acquisition: collecting PCB welding defect images and normal welding images, analyzing welding defect information of the PCB defect images, correspondingly storing the information obtained by analysis and the corresponding PCB welding defect images in a database, displaying the welding defect information of the analyzed PCB defect images in a text form, specifically, the size and the color of each image defect, and collecting detected PCB images: collecting all welding position images of a detected PCB, wherein the collection of the welding images of the detected PCB comprises welding points of all welding positions, the collection of single welding points comprises four side surfaces of the detected PCB, the area of the welding points and the color of the periphery of the welding points, the welding defect images of the PCB comprise virtual welding, welding flux accumulation, excessive welding flux, too little welding flux, rosin welding and overheating welding, in the step 2, the specific information of the welding defect images of the PCB comprises the virtual welding that the welding flux has obvious black boundary lines with component leads or copper foils, the welding flux is sunken towards the boundary lines, the color difference has defects, the welding flux accumulation comprises loose welding point structures, white color, no luster, the color difference has defects, and the welding flux is too much: the welding flux is convex, the side surface shape is different and has defects, the welding area is less than 80% of the welding pad, the welding flux does not form a smooth transition surface, the welding area is different and has defects, rosin slag is clamped in the welding seam, the welding color is different and has defects, the welding spot is whitened, the metal luster is not generated, the color is different and has defects, and the welding image is identified: the method comprises the steps of identifying acquired detected PCB welding point images through an image identification device, identifying four side shapes, welding areas and peripheral welding colors of welding points, wherein the four side shapes, the welding areas and the peripheral welding colors of the welding points are formed by single welding point welding, obtaining specific welding information of the detected PCB welding points after the identification is completed, and matching defects: inputting the obtained specific information of the welding of the detected PCB into a database, screening similar defect images in the database according to the obtained identification information of the welding point of the detected PCB, extracting the screened images, analyzing the corresponding information of the welding defect of the stored PCB defect images in advance, and matching the acquired PCB welding point images, and simultaneously extracting normal welding point welding images to wait for matching.
Embodiment III:
in the second embodiment, the following steps are added:
in step 3, the specific letter welding information of the recognition device for recognizing the collected detected PCB welding point image is that the specific size and color of the shape, the area and the color of the detected PCB welding point are displayed in a character form.
In step 4, the screening of the database may be performed by searching for the size and shape of the welding spot given by the checked image and the size and shape of the specific welding spot analyzed by the defect image in the database, or the screening of the database may be performed by performing similarity comparison between the welding image of the checked PCB and the defect image one by one, performing overlap comparison by using an image overlapping algorithm when the four welding side shapes of the checked PCB welding spot are matched with the defect welding image, thereby obtaining the difference between the welding height of the checked PCB welding spot and the welding height of the defect image, then performing comparison between the welding spot size and the shape of the two images, finally obtaining the similarity ratio of the two images, wherein the image area of the defect welding spot comprises an image smaller than the normal welding area and an image larger than the normal welding area, under the welding spot size and shape given by the normal welding image, the welding area of the checked PCB welding spot is judged to be more than 20% of the normal welding area, the welding spot is not less than 20% of welding material, performing image comparison when the welding of the checked welding spot is detected, and the welding of the detected welding spot can be directly detected, and the welding edge of the detected welding spot is not be coincident with the corresponding welding spot is determined, and the corresponding color of the corresponding welding spot is detected, and the corresponding color of the welding spot is not detected, and the corresponding color of the welding edge is detected.
Defect image acquisition: collecting PCB welding defect images and normal welding images, analyzing welding defect information of the PCB defect images, correspondingly storing the information obtained by analysis and the corresponding PCB welding defect images in a database, displaying the welding defect information of the analyzed PCB defect images in a text form, specifically, the size and the color of each image defect, and collecting detected PCB images: collecting all welding position images of a detected PCB, wherein the collection of the welding images of the detected PCB comprises welding points of all welding positions, the collection of single welding points comprises four side surfaces of the detected PCB, the area of the welding points and the color of the periphery of the welding points, the welding defect images of the PCB comprise virtual welding, welding flux accumulation, excessive welding flux, too little welding flux, rosin welding and overheating welding, in the step 2, the specific information of the welding defect images of the PCB comprises the virtual welding that the welding flux has obvious black boundary lines with component leads or copper foils, the welding flux is sunken towards the boundary lines, the color difference has defects, the welding flux accumulation comprises loose welding point structures, white color, no luster, the color difference has defects, and the welding flux is too much: the welding flux is convex, the side surface shape is different and has defects, the welding area is less than 80% of the welding pad, the welding flux does not form a smooth transition surface, the welding area is different and has defects, rosin slag is clamped in the welding seam, the welding color is different and has defects, the welding spot is whitened, the metal luster is not generated, the color is different and has defects, and the welding image is identified: the method comprises the steps that an image recognition device is used for recognizing an acquired image of a welding point of a detected PCB, the recognition comprises four side shapes of single welding point welding, the welding area of the welding point and the peripheral welding color of the welding point, specific welding information of the welding point of the detected PCB is obtained after the recognition is finished, the recognition device is used for recognizing the acquired image of the welding point of the detected PCB, the specific size and the specific color of the shape, the area and the color of the welding point of the detected PCB are displayed in a character form, and the defects are matched: inputting the obtained specific information of the welding of the detected PCB into a database, screening similar defect images in the database according to the obtained identification information of the welding point of the detected PCB, extracting the screened images, analyzing the corresponding information of the welding defect of the stored PCB defect images in advance, matching the acquired PCB welding point images, extracting normal welding point welding images, waiting for matching, wherein the matching process comprises the steps of firstly matching four welding side shapes of a single welding point of the detected PCB with the defect welding images, secondly detecting the welding area of the welding point of the detected PCB, finally matching the welding peripheral colors of the welding point of the detected PCB, directly displaying the matched defect images and information through a display screen, and entering the next step if the matched defect images and information are not matched, the screening of the database can be carried out by searching and similar welding spot sizes and shapes given by the checked images and specific welding spot sizes and shapes analyzed by the defect images in the database, the screening of the database can be carried out by carrying out the extraction after comparing the welding images of the checked PCB with the defect images one by one, when the shapes of four welding sides of the welding points of the checked PCB are matched with the defect welding images, the overlapping comparison is carried out by adopting an image overlapping algorithm, thereby obtaining the welding height difference between the welding height of the welding points of the checked PCB and the welding height difference between the defect images, then the welding spot sizes and the shapes of the two images are compared, finally, the similarity proportion of the welding spot sizes and the shapes of the two images is obtained, the image area of the defect welding spot welding comprises an image smaller than the normal welding area and an image larger than the normal welding area, under the welding spot sizes and the shapes given by the normal welding images, the method comprises the steps that the welding area of a detected PCB welding point is 20% larger than the normal welding area, the welding area of the detected PCB welding point is too much, the welding area of the detected PCB welding point is less than 20% and is detected, image comparison is not needed, whether the welding area of the detected PCB welding point is defective or not can be determined directly through character comparison, finally, when the welding peripheral colors of the detected PCB welding point are matched, the welding point size and shape comparison is adopted in color matching, the welding peripheral color characters of the detected PCB welding point and the welding peripheral colors of the normal PCB welding point cannot be overlapped to be directly judged to be defective welding, then, the comparison is carried out on the welding area of the detected PCB welding point and the analysis characters of the corresponding images of the defects, and therefore the specific defect is determined, and the overlapping is qualified.
Although embodiments of the present invention have been shown and described, it will be understood by those skilled in the art that various changes, modifications, substitutions and alterations can be made therein without departing from the principles and spirit of the invention, the scope of which is defined in the appended claims and their equivalents.
Claims (10)
1. A PCB welding defect detection method is characterized in that: the method comprises the following steps:
step 1: defect image acquisition: collecting PCB welding defect images and normal welding images, analyzing welding defect information of the PCB defect images, and storing the information obtained by analysis and the corresponding PCB welding defect images in a database after the information is corresponding to the PCB welding defect images;
step 2: and (3) collecting detected PCB images: collecting all welding position images of the detected PCB, wherein the collection of the welding images of the detected PCB comprises welding points of all welding positions, and the collection of single welding points is that the shape of four sides of the detected PCB, the area of the welding points and the color of the periphery of the welding points;
step 3: identifying a welding image: the method comprises the steps that an image recognition device is used for recognizing a collected image of a welding point of a detected PCB, the four side surfaces of the welding point are recognized, the welding area of the welding point and the peripheral welding color of the welding point are recognized, and specific welding information of the welding point of the detected PCB is obtained after the recognition is completed;
step 4: matching defects: inputting the obtained specific information of the welding of the detected PCB into a database, screening similar defect images in the database according to the obtained identification information of the welding point of the detected PCB, extracting the screened images, analyzing the corresponding information of the welding defect of the stored PCB defect images in advance, and matching the acquired PCB welding point images, and simultaneously extracting normal welding point welding images to wait for matching.
2. The method for detecting a soldering defect of a PCB according to claim 1, wherein: in step 1, the welding defect information of the PCB defect image is analyzed, specifically, the welding defect information is displayed in a text form, specifically, the size and the color of each image defect.
3. The method for detecting a soldering defect of a PCB according to claim 1, wherein: in step 2, the PCB solder defect image includes cold solder joint, solder build-up, solder overmuch, solder overlittle, rosin joint, and solder overheating.
4. The method for detecting the welding defect of the PCB according to claim 1, wherein the method comprises the following steps: in the step 2, the specific information of the PCB welding defect image comprises that the virtual welding tin and the lead of the component or the copper foil are provided with obvious black boundary lines, the tin is sunken towards the boundary lines, defects exist in different colors, the welding spots are piled up, the welding spots are loose in structure, white and matt, defects exist in different colors, and the welding flux is too much: the welding flux is convex, the side surface shape is different and has defects, the welding area is less than 80% of the welding pad, the welding flux does not form a smooth transition surface, the welding area is different and has defects, rosin residues are clamped in the welding seam, the welding color is different and has defects, and the welding spot is white, has no metallic luster and has defects in different colors.
5. The method for detecting the welding defect of the PCB according to claim 1, wherein the method comprises the following steps: in step 3, the specific letter welding information of the recognition device for recognizing the collected detected PCB welding point image is that the specific size and color of the shape, the area and the color of the detected PCB welding point are displayed in a character form.
6. The method for detecting the welding defect of the PCB according to claim 1, wherein the method comprises the following steps: in step 4, the screening of the database may be performed by searching for the size and shape of the welding spot given by the inspected image and the size and shape of the specific welding spot analyzed by the defect image in the database, and extracting the similar welding spot.
7. The method for detecting the welding defect of the PCB according to claim 1, wherein the method comprises the following steps: in step 4, the database may be screened by comparing the similarity between the PCB solder images and the defect images one by one and then extracting.
8. The method for detecting the welding defect of the PCB according to claim 1, wherein the method comprises the following steps: in step 4, when the shapes of four welding side surfaces of the welding point of the detected PCB and the defect welding image are matched, an image overlapping algorithm is adopted for overlapping comparison, so that the welding height difference between the welding point of the detected PCB and the welding height difference between the defect image are obtained, then the welding point sizes and the shapes of the two images are compared, and finally the similar proportion of the two images is obtained.
9. The method for detecting the welding defect of the PCB according to claim 1, wherein the method comprises the following steps: in step 4, the image area of the defective solder joint includes an image smaller than the normal solder area and an image larger than the normal solder area, and under the size and shape of the solder joint given by the normal solder image, the solder area of the inspected PCB solder joint is determined to be larger than 20% of the normal solder area, and the solder is determined to be too much and less than 20%.
10. The method for detecting the welding defect of the PCB according to claim 1, wherein the method comprises the following steps: in step 4, when the welding area of the detected PCB welding point is detected, it is not necessary to perform image comparison, whether the welding area of the detected PCB welding point has defects can be determined directly by text comparison, and finally, when the welding peripheral colors of the detected PCB welding point are matched, the color matching also adopts the size and shape comparison of the welding point, the peripheral color text of the detected PCB welding point and the welding peripheral color of the normal PCB welding point cannot be overlapped to directly determine as defect welding, and then, the defect is determined specifically by comparing with the analysis text of the corresponding image of the defect, and the overlapping is qualified.
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