CN109658396A - A kind of casting x-ray image defect identification method based on selective search and CNN - Google Patents

A kind of casting x-ray image defect identification method based on selective search and CNN Download PDF

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CN109658396A
CN109658396A CN201811487693.6A CN201811487693A CN109658396A CN 109658396 A CN109658396 A CN 109658396A CN 201811487693 A CN201811487693 A CN 201811487693A CN 109658396 A CN109658396 A CN 109658396A
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casting
defect
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identification method
ray image
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计效园
颜秋余
周建新
殷亚军
沈旭
武博
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Huazhong University of Science and Technology
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/0002Inspection of images, e.g. flaw detection
    • G06T7/0004Industrial image inspection
    • G06T7/0008Industrial image inspection checking presence/absence
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
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    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T5/00Image enhancement or restoration
    • G06T5/70Denoising; Smoothing
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/10Image acquisition modality
    • G06T2207/10116X-ray image
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/30Subject of image; Context of image processing
    • G06T2207/30108Industrial image inspection
    • G06T2207/30116Casting

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Abstract

The invention belongs to casting to manufacture process matched therewith correlative technology field, and disclose a kind of casting x-ray image defect identification method based on selective search and CNN comprising: radioscopic image is shot for each casting of pending quality testing and carries out image preprocessing;All suspected defects whole frames in image are elected using selective search algorithm;Model image database is established, constructs defect classification model based on convolutional neural networks, and training is until meet precision of prediction requirement;Defect classification model based on above-mentioned building is predicted each defect classification and is marked, while calculating defect relative size and position according to image pixel information, obtains the report of casting radioscopic image defects detection.Through the invention, all kinds of defects in casting radioscopic image can more accurate, be easily detected automatically, and determine defect classification automatically, reduce labor workload, and partial detection can directly be connected with production, to provide data feedback for optimization casting technique.

Description

A kind of casting x-ray image defect identification method based on selective search and CNN
Technical field
The invention belongs to casting to manufacture process matched therewith correlative technology field, be searched more particularly, to one kind based on selectivity The casting x-ray image defect identification method of rope and CNN (convolutional neural networks).
Background technique
Casting is one of fundamental technology of Modern Manufacturing Industry.The safety that all kinds of defects of casting seriously affect cast article makes With, therefore realize that casting defect detection is to control the important link of casting quality.With the high speed development of non-destructive testing technology, respectively Class detection technique is applied widely in field of industry detection, such as ultrasound detection, infrared detection and ray detection, these inspections Result is surveyed to promote the quality safety of product and providing data support;Wherein x-ray imaging detection, can by transmiting inside test specimen The information such as internal defects quantity, each defect form and position distribution are efficiently obtained, therefore obtain this field more and more Attention and concern.
However, further investigations have shown that, existing casting radioscopic image detection scheme still has defect below or not Foot: firstly, way conventional at present is, when casting is after X-ray real time scan and imaging, corresponding egative film physical printed is gone out Come, professional carries out artificial detection to imaging film again, therefore, it is determined that the type of defect, quantization size and record position information Deng;This kind of manual inspection method there are personnel's subjectivity dependences strong, defect the problems such as there are erroneous detection missing inspections, and process steps are more Cumbersome, defects detection is inefficient, and information preservation and inquiry are extremely inconvenient, is unable to the quality condition that Real-time Feedback is detected casting. Secondly, the link and data information being related to are more for the whole production line of moulding casting, quality testing link is made For one of the key link for examining casting process achievement, keep the timely relevance of testing result and whole production procedure information outstanding To be important, so as to provide accurate data feedback in time for process optimization.Correspondingly, this field needs to find and targetedly solve Certainly scheme, preferably to meet the above technical need faced in actual production practice.
Summary of the invention
For the above insufficient or Improvement requirement of the prior art, the present invention provides one kind to be based on selective search and CNN Casting x-ray image defect identification method, wherein the related data feature and technique that pass through moulding by casting production line of combining closely Demand analysis, selection introduces specific picture search and defect class prediction model from many algorithms, accordingly not only can be more For accurate, feedback casting quality testing result information, tracking retrospect obtain the root and crucial mistake of casting quality defect in time Journey, and then the regularity that entire pouring technology procedure quality problem generates can be quickly grasped, therefore be particularly suitable for modernizing Need to execute casting quality the application of high efficiency, high quality on-line monitoring in manufacturing process.
To achieve the above object, it is proposed, according to the invention, provide a kind of casting x-ray image based on selective search and CNN Defect identification method, which is characterized in that this method includes the following steps:
(S1) radioscopic image is shot for each casting of pending quality testing, and image filtering and increasing is executed to it Strength reason;
(S2) all suspected defects whole frames in image are elected candidate and given using selective search algorithm and compile Number, wherein the suspected defects had not only included real defect region but also had included gray scale sudden change region caused by casting structure design;
(S3) by casting quality defect be divided into high density is mingled with, low-density is mingled with, stomata, shrinkage cavity, incomplete fusion, crackle, Shrinkage defect and casting structure background totally 8 classifications, then handle defect area in image, under giving defective labels and shearing Come, establish image data set, data set is further divided into training set according to special ratios and verifying collects;Then, it is based on convolution Neural network constructs defect classification prediction model, then training set of images is sent into model and is trained and optimizes, and then tests Card collection verifying model accuracy is until meet the requirements;
(S4) pre- after the candidate region that above-mentioned steps (S2) frame is elected to be input to (S3) optimization through the above steps Model is surveyed, the generic of casting quality defect is accordingly obtained and gives location position, thus complete whole casting x-ray image Defect recognition process.
As it is further preferred that in step (S1), the enhancing processing preferably include brightness enhancing, coloration enhancing, The operation such as contrast enhancing and acutance enhancing.
As it is further preferred that it is also preferable to include obtain casting quality defect relative size size in step (S4) Operation, the Process Design is as follows: after determining the defect classification of the candidate region, preferably being marked lacking in image Side is fallen into, while printing the coordinate value of two reference points on each defect circumscribed area box lower-left and upper right diagonal line, thus Position of the defect in candidate region is given and is positioned;Then the coordinate value of the two reference points is made the difference to calculate external box Width it is high, thus the size to defect in candidate region, which is given, characterizes.
As it is further preferred that it is also preferable to include be single with a complete casting radioscopic image in step (S4) Position, the corresponding operation for generating casting defect examining report, and this report storage is spare in the database.
In general, through the invention it is contemplated above technical scheme is compared with the prior art, mainly have below Technological merit:
1, this method scans for and classifies automatically according to target object feature in image, departing from artificial subjectivity, subtracts Missing inspection and erroneous detection situation are lacked;Furthermore entire detection process is not necessarily to printing egative film into independent testing and management, saves manpower Material resources cost, while manual labor amount is reduced, shorten detection time, improves detection efficiency;
2, the present invention has also further been carried out by the particular model respective algorithms to casting defect class prediction process excellent Change design, more actual test shows that its phase should be able to significantly improve the prediction accuracy and defective bit of casting defect type Set the data precision with size;
3, the detection method real-time detection casting goes out electronic defects detection report, report storage and filing inquiry and casting Part information is directly corresponding, and partial detection can be extracted individually to be associated with castings production manufacture, timely for optimization casting technique Accurate data feedback is provided.
Detailed description of the invention
Fig. 1 is the integrated artistic according to casting x-ray image defect identification method constructed by the preferred embodiment for the present invention Flow diagram;
Fig. 2 is more specifically to show the treatment process for constructing disaggregated model and prediction using CNN according to the present invention Schematic diagram.
Specific embodiment
In order to make the objectives, technical solutions, and advantages of the present invention clearer, with reference to the accompanying drawings and embodiments, right The present invention is further elaborated.It should be appreciated that the specific embodiments described herein are merely illustrative of the present invention, and It is not used in the restriction present invention.As long as in addition, technical characteristic involved in the various embodiments of the present invention described below Not constituting a conflict with each other can be combined with each other.
Fig. 1 is the integrated artistic according to casting x-ray image defect identification method constructed by the preferred embodiment for the present invention Flow diagram.As shown in fig. 1, which mainly includes following scheme step:
Firstly, each casting for pending quality testing shoots radioscopic image, and image filtering and increasing are executed to it The pretreatments such as strength reason.
More specifically, it can choose suitable image filtering according to casting radioscopic image target signature and be combined with enhancing, To improve the picture quality of subsequent processing.In view of there are the lesser defects of size for casting when filtering, so in selection filter Or pay attention to retaining image detail when window size.It is gray level image for casting radioscopic image, it is bright can suitably enhances image Degree, coloration, contrast and acutance improve subsequent detection effect to improve the comparison of image object and background.
Then, selective search algorithm preferably can be used, all suspected defects whole frames in image is elected into candidate simultaneously It gives and numbers, wherein the suspected defects had not only included real defect region but also dashed forward comprising gray scale caused by casting structure design Become region;
More specifically, casting radioscopic image after treatment, can detecte the similarity of target in image, including line Similarity, scale similarity and overlapping similarity etc. are managed, is selected suspicious region whole frame in image based on selective search algorithm It out, and for example can be according to image from left to right serial number from top to bottom.Target herein both includes real defect, it is also possible to Including gray scale sudden change region caused by casting structure design, all candidate regions remain subsequent exhaustive division.
Then, the step of being building and training the defect class prediction model based on CNN.
If Fig. 2 is more particularly shown in, in the present invention by casting quality defect be divided into high density is mingled with, low-density is mingled with, Then stomata, shrinkage cavity, incomplete fusion, crackle, shrinkage defect and casting structure background totally 8 classifications handle defect area in image, Given defective labels are simultaneously shear off, and establish image data set, further according to special ratios by data set be divided into training set and Test set;Then, constructed based on convolutional neural networks defect classification prediction model, then by training set of images be sent into model in into Row training and optimization, then verifying collection verifying model accuracy is until meet the requirements;Model structure mainly includes input layer, 5 layers of volume Product pond layer, 3 layers of full articulamentum and output layer, this building principle is known in the art, therefore details are not described herein.
More specifically, before carrying out model training, first prepare image data set.The candidate that image inside casing is elected Region gives label, specific category be high density is mingled with, low-density is mingled with, stomata, shrinkage cavity, incomplete fusion, crackle, shrinkage defect and 8 classifications such as casting structure background, classification foundation are the gray scale difference of target of all categories, boundary rule degree, edge shape and interior Portion's textural characteristics etc., above-mentioned data preferably in proportion 4:1 points are training set and verifying collection.
In addition, constructing defect classification model based on convolutional neural networks (CNN), model mainly includes input layer, convolution pond Change layer, full articulamentum and output layer.It with target image is X when training, label is that Y carries out model training.After model training is good Again by verifying collection image input, precision of prediction is verified, improves model structure or regularized learning algorithm rate if precision is unsatisfactory for requiring Etc. parameters optimize, until reach demand precision.
Finally, being input to the candidate region that above-mentioned frame is elected by the prediction model after optimization, casting is accordingly obtained The generic of part mass defect simultaneously gives location position, thus completes whole casting x-ray image defect recognition process.
More specifically, the image that will have been subjected to pretreatment and region detection is sent into trained above-mentioned model, exports and is Above-mentioned 8 classifications, category label print the external box lower-left of each defect and upper right diagonal line two in image by defect side Point coordinate value, to the positioning of defect on the image.And this two o'clock coordinate value work is poor, the width for calculating external box is high, with this The size of value characterization defect.In summary defect information obtained, as unit of a complete casting radioscopic image, Corresponding to generate a casting defect examining report, report name and present image title are of the same name, and report content is remembered by defect classification Number, relative position and the size of each defect are recorded, and carries out summarizing rear statistical magnitude.
Another preferred embodiment according to the invention can also increase after the prediction for completing casting quality defect The trace back step of mass defect.The step is more particularly to as follows: by information such as the mass defects comprising defective classification and position It is mapped in the database, and makes this mass defect information associated with the data in production system and process system, Design parameter of the casting in system is specified, and then casting quality is traced come online based on the existing recommended parameter range of casting The concrete reason and relevant information of defect.
More specifically, by quality information map to casting current life cycle historical record by the problem casting with Similar casting such as casting process card information in process of production and monitoring of tools information compare, and explore multiple casting The regularity that defect problem generates, the root that analysis quality problems generate.
Such as, it is desirable to it checks the relevant information of specific casting number casting, corresponding number can be inputted in precise search column, It can check that all information of the casting of typing in resource management system, such as technological design scheme and history production are being made Monitoring information checks numerical difference away from exceeded parameter, to trace back to by comparing process design parameter and actual production information The possibility root of casting generation defect.
To sum up, recognition methods according to the invention, by the particular model to casting defect class prediction process and accordingly The optimization design of algorithm accordingly can be improved the prediction accuracy of casting defect type and the data essence of defective locations and size Degree, while being collectively formed quality analysis system with other records of production process, so efficiently, explore convenient for manipulation and wherein advise Rule property problem.In addition, whole operation process can carry out automatically, mitigate manual labor amount, promotes detection accuracy and detection efficiency, and Qualitative data feedback is provided for castings production process modification to support.
As it will be easily appreciated by one skilled in the art that the foregoing is merely illustrative of the preferred embodiments of the present invention, not to The limitation present invention, any modifications, equivalent substitutions and improvements made within the spirit and principles of the present invention should all include Within protection scope of the present invention.

Claims (4)

1. a kind of casting x-ray image defect identification method based on selective search and CNN, which is characterized in that this method includes The following steps:
(S1) radioscopic image is shot for each casting of pending quality testing, and it is executed at image filtering and enhancing Reason;
(S2) all suspected defects whole frames in image are elected candidate and given using selective search algorithm and number, Described in suspected defects not only included real defect region but also comprising casting structure design caused by gray scale sudden change region;
(S3) casting quality defect is divided into high density is mingled with, low-density is mingled with, stomata, shrinkage cavity, incomplete fusion, crackle, shrinkage porosite Defect and casting structure background totally 8 classifications, then handle defect area in image, given defective labels simultaneously shear off, build Data set is further divided into training set according to special ratios and verifying collects by vertical image data set;Then, it is based on convolutional Neural net Network constructs defect classification prediction model, then training set of images is sent into model and is trained and optimizes, and then verifying collection is tested Model of a syndrome precision is until meet the requirements;
(S4) candidate region that above-mentioned steps (S2) frame is elected is input to the prediction mould after (S3) optimization through the above steps Type, accordingly obtains the generic of casting quality defect, and gives location position, thus completes whole casting x-ray image and lacks Fall into identification process.
2. casting x-ray image defect identification method as described in claim 1, which is characterized in that in step (S1), the increasing Strength reason preferably includes the operations such as brightness enhancing, coloration enhancing, contrast enhancing and acutance enhancing.
3. casting x-ray image defect identification method as claimed in claim 1 or 2, which is characterized in that excellent in step (S4) Choosing further includes obtaining the operation of casting quality defect relative size size, and the Process Design is as follows: when determining the candidate region Defect classification after, preferably marked in the defects of image side, at the same print each defect circumscribed area box lower-left and The coordinate value of two reference points on upper right diagonal line, thus the position to defect in candidate region, which is given, positions;Then will The coordinate value of the two reference points makes the difference to calculate the width height of external box, thus the size to defect in candidate region It gives and characterizes.
4. casting x-ray image defect identification method as claimed in any one of claims 1-3, which is characterized in that in step (S4) in, it is also preferable to include as unit of a complete casting radioscopic image, the behaviour for generating casting defect examining report is corresponded to Make, and this report storage is spare in the database.
CN201811487693.6A 2018-12-06 2018-12-06 A kind of casting x-ray image defect identification method based on selective search and CNN Pending CN109658396A (en)

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CN110490862A (en) * 2019-08-22 2019-11-22 联峰钢铁(张家港)有限公司 A kind of method and device improving continuous casting flaw detection qualification rate
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CN110211112A (en) * 2019-05-31 2019-09-06 华中科技大学 A kind of casting defect inspection method based on filtering selective search
CN110222681A (en) * 2019-05-31 2019-09-10 华中科技大学 A kind of casting defect recognition methods based on convolutional neural networks
CN110174413A (en) * 2019-06-13 2019-08-27 中新红外科技(武汉)有限公司 A kind of blade defect inspection method and maintaining method
CN110533083A (en) * 2019-08-09 2019-12-03 西安电子科技大学 The casting defect recognition methods of Adaboost model based on SVM
CN110533083B (en) * 2019-08-09 2021-11-23 西安电子科技大学 Casting defect recognition method based on Adaboost model of SVM
CN110490862B (en) * 2019-08-22 2022-08-09 联峰钢铁(张家港)有限公司 Method and device for improving continuous casting flaw detection qualification rate
CN110490862A (en) * 2019-08-22 2019-11-22 联峰钢铁(张家港)有限公司 A kind of method and device improving continuous casting flaw detection qualification rate
CN111242268A (en) * 2019-09-05 2020-06-05 中国科学院计算技术研究所 Method for searching convolutional neural network
CN110779937A (en) * 2019-10-11 2020-02-11 上海航天精密机械研究所 Casting product internal defect intelligent detection device
CN110726724A (en) * 2019-10-22 2020-01-24 北京百度网讯科技有限公司 Defect detection method, system and device
CN112785452A (en) * 2019-11-08 2021-05-11 丰田自动车株式会社 Manufacturing history management system and manufacturing history management method
CN111191714A (en) * 2019-12-28 2020-05-22 浙江大学 Intelligent identification method for bridge appearance damage diseases
EP3958209A1 (en) 2020-08-19 2022-02-23 Volkswagen Ag Computer-implemented methods, computing devices and computer programs for processing volumetric scanning data and analyzing a performance of structural elements
CN112666189A (en) * 2020-12-15 2021-04-16 河南九域恩湃电力技术有限公司 Strain clamp detection device and method based on DR detection
CN113160121A (en) * 2021-02-07 2021-07-23 广东省特种设备检测研究院(广东省特种设备事故调查中心) Equipment inspection system based on enhanced display
CN113160121B (en) * 2021-02-07 2023-09-22 广东省特种设备检测研究院(广东省特种设备事故调查中心) Equipment inspection system based on enhanced display
CN113312964A (en) * 2021-04-15 2021-08-27 浙江理工大学 Training method, detection method, device and medium for impurity detection model
CN113418940A (en) * 2021-06-24 2021-09-21 电子科技大学 Detection method and detection device based on X-ray tracing particles
CN115329554A (en) * 2022-07-28 2022-11-11 北京科技大学 Intelligent optimization method and system for process for preparing hollow nano structure by emulsion soft template method
CN115329554B (en) * 2022-07-28 2023-03-10 北京科技大学 Intelligent optimization method and system for process for preparing hollow nanostructure by emulsion soft template method
CN115825118A (en) * 2022-11-18 2023-03-21 华中科技大学 Automatic film evaluation integration system and method for casting X-ray flaw detection equipment
CN115825118B (en) * 2022-11-18 2023-09-12 华中科技大学 Automatic film evaluation integrated system and method for X-ray flaw detection equipment of castings
CN116205922A (en) * 2023-05-05 2023-06-02 张家港广大特材股份有限公司 Smelting control method and system based on steel internal defect data mining
CN116205922B (en) * 2023-05-05 2023-10-13 张家港广大特材股份有限公司 Smelting control method and system based on steel internal defect data mining

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