![]() MEASUREMENT METHOD OF ENRASE AND SEPARATION OF PARTS OF A VEHICLE AND MEASURING TUNNEL (Machine-tran
专利摘要:
Measurement method of flush and separation of parts of a vehicle and measurement tunnel. A method is disclosed which is capable of measuring flush and separation of parts of a vehicle by means of a measuring tunnel. The method is capable of determining the 3D coordinates of the ends or edges of two adjacent parts of a vehicle. The measuring tunnel (1) comprises several video cameras (2), LED lights (22), a conveyor (8), a position encoder (9) that measures the displacement of the vehicle (7); a total station (11) that measures fixed points of the structure of the measurement tunnel (12), a calibration board (3) and a calibration standard (4); processing and storage means (10) that store images taken by video cameras, computer aided design files of the vehicles and an endpoint recognition algorithm. (Machine-translation by Google Translate, not legally binding) 公开号:ES2821104A1 申请号:ES201930936 申请日:2019-10-23 公开日:2021-04-23 发明作者:Pla Jesús Belda;Ruiz Jorge Broto;Lozano José Arribas;Cubel María José Esteve 申请人:Eines Systems S L; IPC主号:
专利说明:
[0002] MEASUREMENT METHOD OF ENRASE AND SEPARATION OF PARTS OF A VEHICLE AND MEASURING TUNNEL [0003] Object of the invention [0004] The object of the invention is a method for measuring the leveling and the separation of parts of a vehicle and a measuring tunnel equipped with the necessary means to carry out the measurement of the leveling and the separation of parts of a vehicle. [0006] By the method of the present invention, the aim is to automate the process of measuring the leveling and the separation that the different parts of a vehicle present with respect to those that surround them. For example, a vehicle door has a perimeter edge that has to be flush with the parts of the vehicle that surround the door, such as other doors, wings, etc. In addition, the door has to have a specific separation within very narrow margins so that the opening and closing movement of the door is correct. [0008] Technical Field of the Invention [0010] The technical field to which the present invention belongs is the field of measurement devices and methods applied to the surfaces of a vehicle without contact with it. [0012] Background of the Invention [0014] Currently, the "Flush and Gap" measurement systems known in English as "Flush & Gap" are automatic systems that usually use Robots with an on-board 3D sensor to perform measurements (especially in final assembly). There are systems with fixed sensors, but they are not accurate enough. There are also manual systems where an operator with a portable device is positioning the meter on the points of the body of the vehicle to be measured, performing oscillatory movements to measure the flush. [0016] The systems where operators intervene are slow since the same operator must move to one and the other side of the vehicle and also positioning the measuring device on the bodywork can affect the painting of the vehicle. [0017] As for robot-based measurement systems, these systems have drawbacks such as: they are expensive to install due to the high cost of robots, security, etc .; difficult to configure for non-robot expert users such as final assembly operators; high maintenance cost; not very flexible to changes, since when adding or eliminating new points, the robots have to be reprogrammed; bounded number of sections to be measured, that is, there is a maximum number of possible sections, since there is a strong dependence on the speed of the robots, which have a physical limit. [0019] It would therefore be desirable to find a completely automated solution to the problem of calculating the distance and the leveling of the parts that make up a vehicle. [0021] Description of the Invention [0023] The present invention discloses a method of measuring flush and separation of vehicle parts and a tunnel for measuring flush and separation of vehicle parts. [0025] In a first aspect of the invention, the measurement tunnel for leveling and separation of vehicle parts is disclosed. The measurement tunnel comprises: video cameras to take images of a vehicle; a conveyor that linearly moves the vehicle and longitudinally traverses the measuring tunnel; a position encoder that measures the displacement of the vehicle; a total station that measures fixed points of the structure of the measurement tunnel in 3D with precision; a calibration board on which a calibration standard is placed; at least two lights synchronized with the video cameras; and, processing and storage means that store at least some images taken by the video cameras, some Computer Aided Design - CAD - files of the vehicles and an endpoint recognition algorithm. In addition, the processing and storage means are connected to the lights, the video cameras, the conveyor and the position encoder. Finally, the processing and storage means are adapted to carry out the steps of the method of measurement of leveling and separation of parts of a vehicle that are defined later in the second aspect of the invention. [0026] Note that the position encoder or "encoder" is a pulse generator, which is connected to the shaft of a motor that moves the conveyor and generates pulses while the motor is turning. In the present invention, the position encoder serves to measure the advancement of the vehicle along the transport as the pulses are translated into a measure of length. [0028] In one embodiment of the measurement tunnel, the calibration standard is made up of squares arranged in a staggered fashion. Additionally, the calibration standard comprises a data matrix code and a fiducial mark. The data matrix code and the fiducial mark contain information related to the calibration pattern such as number of rows and columns, location of the central square, size of the squares, colors of the squares, etc. Preferably, the squares are black and white because they have better contrast when you have to determine their junction points. [0030] In another embodiment of the measurement tunnel, the measurement tunnel additionally comprises an inverted "U" shaped support structure and a front support structure to support the lights, the vision cameras inside the measurement tunnel. These light and video camera mounts have the advantage of positioning the video cameras in such a way that a full scan of the vehicle within the measurement tunnel can be performed. [0032] In another embodiment of the measuring tunnel, the lights have a minimum length of 400mm. Additionally or optionally, the lights have LED technology. [0034] In a second aspect of the invention, the method of measuring the leveling and separation of parts of a vehicle associated with the measuring tunnel of the first aspect of the invention is disclosed. The method of measuring the leveling and separation of vehicle parts comprises the following steps: [0035] • calibrate the video cameras included in the measurement tunnel by calculating the intrinsic parameters and the extrinsic parameters of the video cameras; [0036] • build a common reference system -SCE- for the measurement tunnel and reference the video cameras to the common reference system -SCE-; [0037] • calculate 3D coordinates by stereovision of at least four reference points of the vehicle based on the common reference system -SCE- obtaining the X, Y, Z coordinates of each reference point; [0038] • calculate the X, Y, Z coordinates of each reference point based on a vehicle reference system -SCV- from a Computer Aided Design - CAD file - with 3-dimensional vehicle measurements; • launch a few shots, synchronized with the video cameras, of at least two lights that generate reflection of light in some parts of the vehicle and absence of reflection of light in a separation between the parts of the vehicle in such a way that the absence of reflection of light is confined between extremes that do generate light reflection; [0039] • take at least two 2D synchronized images of the parts of the vehicle with absence of reflection through the video cameras, where an identifier -ID- of each 2D synchronized image is associated with the spatial position of the vehicle with respect to the measurement tunnel, and apply an endpoint recognition algorithm that calculates the X, Y coordinates of each end as well as the identifier -ID- based on the common reference system -SCE-; [0040] • combine the 2D synchronized images into 3D images where the ends in the 3D images have X, Y, Z coordinates referenced to the common reference system-SCE-; [0041] • calculate the X, Y, Z coordinates of the extremes in the 3D images referenced to the vehicle reference system -SCV- using the relationship: [0042] SCV = Inverse (MR) x SCE [0043] where SCV is a matrix that defines the X, Y, Z coordinates referenced to the vehicle reference system -SCV-; SCE is a matrix that defines the X, Y, Z coordinates referenced to the common reference system -SCE- and MR is the relationship matrix between both reference systems and that defines the translation, rotation and scale necessary to go from a system to another reference; [0044] • calculate a flush and a separation of the vehicle parts as the separation distance between the extremes in X, Y, Z coordinates referenced to the vehicle reference system -SCV-. [0046] As an example of the above, if you want to measure the distance from the front door of a vehicle to the corresponding wing of the vehicle, there is a "section" (straight) determined by the last point of the door that generates light reflection when illuminated. by the lights, which will be one end of the section, and by the last point of the fin that generates light reflection when illuminated by the lights, which will be the other end of the section. The part between the ends does not generate light reflection and represents the 3-dimensional distance (flush and separation) between the parts (door and wing) of the vehicle. [0048] The video camera calibration process described in the video camera calibration step involves calculating the intrinsic and extrinsic parameters. To calculate the intrinsic parameters, the following sub-steps are carried out: [0049] • take at least two images of the calibration board that includes at least the data matrix code and the fiducial mark; [0050] • decode the datamatrix code to obtain the size of the square, the number of rows and the number of columns of the calibration board; [0051] • determine the central square of the calibration board based on the data matrix code; [0052] • calculate all the unions of the squares starting from the central square; • calculate the Optical Center, the focal length, at least six Radial distortion parameters (K1-K6) and at least two tangential distortion parameters (P1, P2) based on the unions of the squares, the size of the optics included on video cameras and the cell size of the video camera's CCD. [0054] On the other hand, to calculate the extrinsic parameters, the measurement method for leveling and separation of vehicle parts comprises the following sub-steps: [0055] • place the calibration board inside the measuring tunnel in a position where it is visible by at least one video camera; [0056] • perform a calibration board measurement using the total station, for which: [0057] o measure four fixed points on the structure of the measuring tunnel by means of the total station; [0058] or iteratively park the total station obtaining the common reference system - SCE - with respect to a vehicle transporter inside the inspection tunnel; [0059] or measure with the total station in the common reference system - SCE - at least twelve auxiliary points located on the calibration board; [0060] • calculate the relationship between the common reference system - SCE - and the calibration board using transformation and estimation of rigid; [0061] • save at least one image of the calibration board for each video camera; [0062] • calculate a local coordinate system for each video camera and calculate the transformation from the local coordinate system to the common reference system -SCE-. [0064] Once the video cameras have been calibrated and the common reference system -SCE- built, referencing the video cameras to the common reference system -SCE-, the next step is to calculate the 3D coordinates by stereovision of four reference points. of a vehicle based on the common reference system -SCE- obtaining the X, Y, Z coordinates of each reference point. To calculate the 3D coordinates by stereo vision of the four reference points of a vehicle, the following steps are carried out: [0065] • choose two video cameras per side of the vehicle that have visual access to the four reference points to be measured; [0066] • choose the reference points to be calculated on the vehicle taking into account the synchronized movement of the vehicle on the conveyor with respect to the measuring tunnel. [0068] Optionally and in addition to the two previous steps, recognition patterns can be generated for the recognition of subsequent identical vehicles by means of a vector search algorithm by contrast. [0070] Brief description of the Figures [0072] Figure 1 shows the measurement tunnel for leveling and separation of parts of a vehicle and a vehicle inside. [0073] Figure 2 shows the measurement tunnel of the present invention where the calibration board has been located internally. [0074] Figure 3 shows the calibration standard on the calibration board. [0075] Figure 4 shows the total station taking 3D coordinates of four fixed points of the measurement tunnel. [0076] Figure 5 shows the calculation of four vehicle reference points using video cameras. [0077] Figure 6 shows a vehicle in perspective where four reference points are indicated. [0078] Figure 7 shows the common reference system SCE and the vehicle reference system SCV. [0079] Figure 8 shows a vehicle on which it is desired to measure the flush and the distance between two parts of it. [0080] Figure 9 schematizes a sweep of the surface of two parts of a vehicle and a discontinuity in said surface defined between two extremes. [0081] Figure 10 shows a 2D image of a discontinuity between two parts of a vehicle and the position of the ends in 2D by X, Y coordinates of the ends. [0082] Figure 11 shows a 3D image of a discontinuity between two parts of a vehicle and the position of the ends in 3D by X, Y, Z coordinates of the ends. [0084] Description of an embodiment [0086] List of references [0088] 1. Measurement tunnel; [0089] 2. Video cameras; [0090] 3. Calibration board; [0091] 4. Calibration standard: 4a - data matrix code; 4b - fiducial brand; 4c -square; 4d - central square; [0092] 5. Inverted “U” support structure for video cameras; [0093] 6. Front support structure; [0094] 7. Vehicle; [0095] 8. Vehicle transporter; [0096] 9. Position encoder or "encoder"; [0097] 10. Processing and storage facilities; [0098] 11. Total station; [0099] 12. Fixed points of the metering tunnel structure; [0100] 13. Intrinsic parameters; [0101] 14. Extrinsic parameters; [0102] 15. Vehicle reference points; [0103] 16. Common reference system -SCE-; [0104] 17. Vehicle reference system -SCV-; [0105] 18. 2D XY coordinates of one end; [0106] 19. 3D XYZ coordinates of one end; [0107] 20. 2D synchronized images for the extremes; [0108] 21. 3D images for the extremes; [0109] 22. LED lights; [0110] 23. Section to be measured; [0111] 24. Ends of a discontinuity in a section; [0112] 25. Scanning the vehicle surface; [0114] An embodiment of the invention is described below with reference to the figures. [0116] In figure 1 the measurement tunnel 1 of the present invention is shown to perform a measurement of the flush and the separation between any two parts of the body of a vehicle. Figure 1 shows the measuring tunnel 1 and, inside it, the chassis of the vehicle 7 on the conveyor 8. The purpose of the conveyor 8 is to move the vehicle 7 through the interior of the measuring tunnel 1. The measuring tunnel 1 is mainly composed of video cameras 2 and close to them, LED lights 22, all of them (2,22) are supported by the support structure 5 in the shape of an inverted "U" and also by the structure front support 6. Additionally, the measuring tunnel 1 has the vehicle conveyor 8, the position encoder 9 and the processing and storage means 10. The processing and storage means 10 are processors and memories configured to execute the steps of the method. described in the present invention as well as being interconnected with the rest of the elements that make up the measurement tunnel. For its part, the position encoder 9 serves so that the measurement tunnel 1 can know the position of the vehicle at all times. This allows synchronized images to be taken as will be described later. [0118] Before starting the process of measuring the 3D distance between parts of a vehicle, it is necessary to calibrate the video cameras 2. The calibration of the video cameras 2 consists of calculating the intrinsic and extrinsic parameters of the video cameras. [0120] To calculate the intrinsic parameters, a calibration board 3 is placed inside the measurement tunnel 1 as shown in figure 2. On the surface of the calibration board 3 is placed the calibration standard 4, the shape of which is shown. in Figure 3. Calibration pattern 4 is made up of black and white squares 4c that alternate in a staggered fashion, similar to a checkerboard. The pattern of Calibration 4 comprises the data matrix code 4a and the fiducial mark 4b arranged in different white squares. The processing and storage means 10 carry out the following steps to calculate the intrinsic parameters: they take at least two images of the calibration board 3 with the calibration standard 4 by the video cameras 2; decode the data matrix code 4a to obtain the size of the square 4c, the central square 4d, the number of rows and the number of columns of the calibration board 3. With the above information, the processing and storage means 10 calculate all the unions of the squares from the central square, and with the unions of the squares, the size of the optics included in the video cameras and the cell size of the camera's CCD, calculate the intrinsic parameters 13 which are: the optical center, the focal length, at least six Radial distortion parameters (K1-K6) and at least two tangential distortion parameters (P1, P2). [0122] Regarding the extrinsic parameters, in addition to using the calibration board 3, the total station 11 is used as shown in figure 4. First, the calibration board 3 is placed inside the measuring tunnel 1 in a position where is visible by at least one video camera 2. Next, a measurement of the calibration board 3 is made by the total station 11. This involves creating the common reference system - SCE-15, for which, iterative measurements are made of four points of the structure of the measurement tunnel 1 and twelve points located on the calibration table 3 by means of the total station 11. That is, the same four points of the measurement tunnel 1 and twelve points located on the calibration table 3 are They measure from different positions of the total station 11 with respect to the measurement tunnel 1. The different positions are, preferably, the positions that a vehicle would travel on the conveyor 8. Said of otherwise, the relationship between the measurements taken from the four fixed points 12 of the measurement tunnel 1 and the twelve points located on the calibration board 3 allows creating the common reference system - SCE-15. Once the reference system has been defined common - SCE-15, each video camera 2 must be referenced with respect to the common reference system - SCE-15 in order to subsequently be able to determine the 3D coordinates of one end of a part of the vehicle. To do this, first the relationship between the common reference system -SCE- and the calibration board is calculated by transformation and estimation of rigid ones. Subsequently, at least one image of the calibration board 3 is saved for each video camera 2, the local coordinate system of each video camera 2 is calculated, and finally the transformation from the local coordinate system to the common reference system -SCE-. [0124] Once the video cameras 2 have been calibrated and the common reference system -SCE- 16 has been built, referencing the video cameras to the common reference system -SCE- 16, the next step is applied consisting of calculating the 3D coordinates by stereovision of four reference points 15 of a vehicle based on the common reference system -SCE- obtaining the X, Y, Z coordinates of each reference point as shown in figures 5 and 6. As shown in figure 5, on each side of the vehicle 7, two video cameras 2 take images of the reference point 15 and obtain the 3D coordinates of the reference point 15 with respect to the common reference system - SCE - 16. Therefore, the 3D coordinates of two reference points are obtained. reference 15, one for each side of the vehicle. Simultaneously or sequentially, the 3D coordinates of two other reference points 15 are also calculated on both sides of the vehicle. It can be done simultaneously if there are video cameras 2 that can take images of the other two reference points 15 or sequentially moving the vehicle 7 through the conveyor 8 until the two video cameras 2 can have access to the others. two reference points 15. The 3D coordinates of the reference points 15 have a correction factor to eliminate the offset, for the sequential form, which is known from the position encoder or "encoder" 9 located on the conveyor 8. To Not having to repeat the steps described for Figures 5 and 6 for subsequent equal vehicles to be inspected through the measurement tunnel 1, the processing and storage means 10 can generate recognition patterns by means of a contrast vector search algorithm. [0126] Once the 3D coordinates of four reference points 16 of the vehicle 7 have been calculated with respect to the common reference system - SCE-16, it is possible to establish a correspondence between the 3D coordinates of the four reference points 15 of the vehicle with respect to the common reference system - SCE-16 and the 3D coordinates of those same four reference points 15 of the vehicle with respect to the vehicle reference system - SCV - 17 (figure 7), locating the four reference points in a Computer Aided Design - CAD - file that It contains the measurements / coordinates of the vehicle in 3D. That is, a correspondence is established between each of the reference points 15 calculated by the video cameras and the same reference points 15 extracted from the CAD file. [0127] The surface of the vehicle 7 is then analyzed by scanning the surface 25 (FIG. 9) to detect the separation zones (or sections) 23 to be measured (FIG. 8). Specifically, the method of the present invention calculates the 3D coordinates of the ends 24 (figure 9) of the discontinuity that is generated between the different adjacent parts of the vehicle. For this, light shots are fired through lights 22, which are synchronized with the video cameras 2. The light shots generate light reflection in the parts that make up the vehicle and darkness (absence of light reflection - see detail enlarged figure 10) in the separation (space between the ends 24 in figures 9 and 10) between said parts of the vehicle. [0129] For this, several 2D synchronized images 20 of the vehicle 7 are taken by the video cameras (figure 10). 2D images are said to be "synchronized" because for each "synchronized" image, there is a direct relationship between the identifier -ID- of the image, the spatial position of the video camera and the spatial position of the vehicle, since the The vehicle is on the conveyor 8 whose spatial relationship with the measuring tunnel 1 is known through the position encoder 9. As shown in Figure 10, each 2D synchronized image 20 is applied an end recognition algorithm with which the processing and storage means can calculate the X, Y coordinates 18 of each end 24 based on the common reference system -SCE-, associate it with the identifier -ID- and store it for later treatment. [0131] Once several (at least two) 2D synchronized images 20 of the ends 18 are taken, the 2D synchronized images are combined into 3D images 21 to obtain 3D images where the ends in the 3D images have X, Y, Z coordinates 19 referenced to the common reference system -SCE-. As it is about calculating the distance between two parts of the vehicle, that is, the distance between the extremes 24 on the vehicle itself, a transformation of the X, Y, Z coordinates of the extremes in the 3D images of the reference system is calculated common -SCE- to the vehicle reference system -SCV- by the relation equation: [0132] SCV = Inverse (MR) x SCE [0133] where SCV is a matrix that defines the X, Y, Z coordinates referenced to the vehicle reference system -SCV-, SCE is a matrix that defines the X, Y, Z coordinates referenced to the common reference system -SCE-, MR is the Relationship matrix that defines the translation, rotation and scale necessary to go from the -SCV- to -SCE- reference system. With this we obtain the 3D coordinates (X, Y, Z) of the end 19 in the vehicle paint 7 in a 3D image referenced to the vehicle reference system -SCV-.
权利要求:
Claims (7) [1] 1.- Measurement method of flush and separation of parts of a vehicle by means of a measurement tunnel, characterized in that it comprises the following steps: • calibrate video cameras included in a measurement tunnel by calculating intrinsic parameters and extrinsic parameters of video cameras; • build a common reference system -SCE- for the measurement tunnel and reference the video cameras to the common reference system -SCE-; • calculate 3D coordinates by stereovision of at least four reference points of a vehicle based on the common reference system -SCE- obtaining the X, Y, Z coordinates of each reference point; • calculate the X, Y, Z coordinates of each reference point based on a vehicle reference system -SCV- from a Computer Aided Design file -CAD- with the measurements of the vehicle in 3-dimensions; • launch a few shots, synchronized with the video cameras, of at least two lights that generate reflection of light in some parts of the vehicle and absence of reflection of light in a separation between the parts of the vehicle in such a way that the absence of reflection of light is confined between extremes that do generate light reflection; • take at least two 2D synchronized images of the parts of the vehicle with absence of reflection through the video cameras, where an identifier -ID- of each 2D synchronized image is associated with the spatial position of the vehicle with respect to the measurement tunnel, and apply an endpoint recognition algorithm that calculates the X, Y coordinates of each end as well as the identifier -ID- based on the common reference system -SCE-; • combine the 2D synchronized images into 3D images where the ends in the 3D images have X, Y, Z coordinates referenced to the common reference system-SCE-; • calculate the X, Y, Z coordinates of the extremes in the 3D images referenced to the vehicle reference system -SCV- using the relationship: SCV = Inverse (MR) x SCE where SCV is a matrix that defines the X, Y, Z coordinates referenced to the vehicle reference system -SCV-; MR is the relationship matrix and SCE is a matrix that defines the X, Y, Z coordinates referenced to the common reference system -SCE-; • calculate a flush and a separation of the vehicle parts as the separation distance between the extremes in X, Y, Z coordinates referenced to the vehicle reference system -SCV-. [2] 2. - Measurement method of flush and separation of parts of a vehicle by means of a measurement tunnel, according to claim 1, characterized in that the step of calibrating the video cameras additionally comprises the following sub-steps to calculate the intrinsic parameters: • take at least two images of a calibration board comprising at least one data matrix code and one fiducial mark; • decode the datamatrix code to obtain a size of the square, a number of rows and a number of columns of the calibration board; • determine a central square of the calibration board based on the datamatrix code; • calculate all the unions of the squares starting from the central square; • calculate an Optical Center, a focal length, at least six Radial distortion parameters (K1-K6) and at least two tangential distortion parameters (P1, P2) based on the unions of the squares, the size of the optics included on video cameras and the cell size of the camera's CCD. [3] 3. - Measurement method of flush and separation of parts of a vehicle by means of a measurement tunnel, according to claim 1, characterized in that the step of calibrating the video cameras additionally comprises the following sub-steps to calculate the extrinsic parameters: • place a calibration board inside the measuring tunnel in a position where it is visible by at least one video camera; • perform a calibration board measurement using a total station, for which: o measure four fixed points on the structure of the measuring tunnel by means of the total station; or iteratively park the total station obtaining a common reference system -SCE- with respect to a vehicle transporter inside the inspection tunnel; or measure with the total station in the common reference system -SCE- at least twelve auxiliary points located on the calibration board; • calculate the relationship between the common reference system -SCE- and the calibration board using transformation and estimation of rigid; • save at least one image of the calibration board for each video camera; • calculate a local coordinate system for each video camera and calculate the transformation from the local coordinate system to the common reference system -SCE-. [4] 4. - Measurement method of flush and separation of parts of a vehicle by means of a measurement tunnel, according to claim 1, characterized in that the step of calculating the 3D coordinates by stereovision additionally comprises the following sub-steps: • choose two video cameras per side of the vehicle that have visual access to the four reference points to be measured; • choose the reference points to be calculated on the vehicle taking into account the synchronized movement of the vehicle on a conveyor with respect to the measuring tunnel; • generate recognition patterns for the recognition of subsequent equal vehicles by means of a vector search algorithm by contrast. [5] 5. - Measurement tunnel for leveling and separation of parts of a vehicle, where the measurement tunnel (1) is characterized by comprising: • video cameras (2) to take images of a vehicle (7); • a conveyor (8) that linearly moves the vehicle (7) and runs longitudinally through the measuring tunnel (1); • a position encoder (9) that measures the displacement of the vehicle (7); • a total station (11) that measures fixed points of the structure of the measurement tunnel (12); • a calibration table (3) on which a calibration standard (4) is placed; • at least two lights (22) synchronized with the video cameras (2); • processing and storage means (10) that store at least some images taken by the video cameras, some Computer Aided Design - CAD - files of the vehicles and an endpoint recognition algorithm; being connected to lights (22), video cameras (2), conveyor (8) and position encoder (9); and where the means of Processing and storage are adapted to execute the steps of the method of any one of claims 1 to 4. [6] 6. Measurement tunnel for leveling and separation of vehicle parts according to claim 5, characterized in that the calibration standard (4) is made up of squares (4c) arranged in a staggered fashion; and where it additionally comprises a data matrix code (4a) and a fiducial mark (4b). [7] 7. Measurement tunnel for leveling and separation of vehicle parts according to claim 5, characterized in that the measurement tunnel (1) additionally comprises a support structure (5) in the shape of an inverted “U” and a front support structure ( 6) to support the vision cameras (2) and the lights (22) inside the measurement tunnel (1).
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同族专利:
公开号 | 公开日 ES2821104B2|2021-08-23| TW202134098A|2021-09-16| WO2021079018A1|2021-04-29|
引用文献:
公开号 | 申请日 | 公开日 | 申请人 | 专利标题 US5313695A|1989-03-28|1994-05-24|Renault Automation|Process and device for body assembly with lateral tools that can be interpositioned| GB2375741A|1999-12-28|2002-11-27|Honda Motor Co Ltd|Production line construction method body assembly method and body assembly line| US20040221438A1|2003-05-05|2004-11-11|Savoy Mark A.|Assembly line and method for vehicle body manufacturing| US20190017847A1|2017-07-12|2019-01-17|Hyundai Motor Company|Vehicle body tracking system and method|
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申请号 | 申请日 | 专利标题 ES201930936A|ES2821104B2|2019-10-23|2019-10-23|MEASUREMENT METHOD OF ENRASE AND SEPARATION OF PARTS OF A VEHICLE AND MEASURING TUNNEL|ES201930936A| ES2821104B2|2019-10-23|2019-10-23|MEASUREMENT METHOD OF ENRASE AND SEPARATION OF PARTS OF A VEHICLE AND MEASURING TUNNEL| PCT/ES2020/070488| WO2021079018A1|2019-10-23|2020-07-28|Method for measuring levelness and separation of parts of a vehicle and measuring tunnel| TW109128023A| TW202134098A|2019-10-23|2020-08-18|Method for measuring gap and flush of vehicle parts and measuring tunnel| 相关专利
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