throbber
JP,2012-026982,A
`
`
`
`
`Primary document PA}
`* NOTICE *
`3°O and INPIT are not responsible for any darnages caused by the use of this
`transiation.
`1. This docurnent has been translated by cornputer. So the translation may not reflect the origina!
`precisely.
`2. 7% shows a word which cannot be translated.
`3. In the drawings, any words are not translated.
`
`
`
`3
`
`(19) [Publication country] JP
`{12} [Kind of official gazette] A
`(11) [Publication nurnber] 2012026982
`(43) [Date of publication of application] 20120209
`(54) [Title of the invention] INSPECTION DEVICE
`(S51) [International Patent Classification]
`GOIN 21/88
`(2006.01)
`GO6ET 1/00
`(2006.01)
`[FI]
`GOIN 21/88
`300
`GO6T 1/00
`(21) [Application number] 2010168656
`(22) [Filing date] 20100727
`(71) [Applicant]
`[Name] PANASONIC ELECTRIC WORKS SUNX CO LTD
`(72) [Inventor]
`[Full name] NISHIHARA TOSHIMASA
`[Full name] HASHIMOTO YOSHIHITO
`[Full name] IKEDA KAZUTAKA
`[Theme code (reference) ]
`26051
`SBOS?
`[F~term (reference) |
`2G051CA04
`2GOS5TEA12
`2G051TEAL4
`Z2GO5LEA21
`
`

`

`2GO5LECOL
`2GO051ED01
`2G051ED1L1
`2G051£D21
`2GO5iFAOL
`5B057AA02
`5BO57DA03
`5SBO57DAL2
`5B057DB02
`5B057DB09
`5BOS7DCi4
`5SBO57DC22
`5B057DC40
`
`
`
`(57) [Overview]
`PROBLEM TO BE SOLVED: To provide an inspection device which is capable of not only de
`termining the presence or absence of abnormality but also classifying abnormality types
`and is capable of reducing an information amount required for learning for abnormality ci
`assification in comparison with conventional configurations.
`SOLUTION: A first processing unit 1 is provided with a first learnt neural network 101, to
`classify inspection object signals into normal signals and the other signals. A second prac
`assing unit 2 is provided with a second learnt neural network 201, and extracts partial si
`gnals including regions other than normal regions, from inspection object signals classifie
`d to signals other than normal signals and classifies types of abnormality of the partial si
`gnais. An output part 3 outputs classification results of the first processing unit 1 and the
`second processing unit 2. The first neural network 101 is learnt by using only inspection
`object siqnals being normal signals, and the second neural network 201 is learnt so that
`types of abnormality are classified by using inspection object signals including known ab
`normalities.
`
`

`

`
`
`
`
`a3
`
`20——eea
`
`BSsae
`
`
`a2Sh
`
`
`
`|POMSTANNEROTANRROOIRNROIOTROSREYROYREYROYRDNNORTEPEO.
`
`
`
`
`
`£2
`
`TETA
`
`[Patent Claims]
`aim 1]
`A 1 processing part provided with a learned 1 neural network for classifying the signal to
`be inspected into normal and non-normal; A 2 processing part for extracting a partial si
`gnal including an area other than norrnal from an inspection tarqet signal classified by th
`
`

`

`e 1 processing part and classified by the 2 processing part, and classifying the type of ab
`normality for the partial signal ; An inspection apparatus comprising : an output unit that
`outputs a classification result by a 1 processing unit and a 2 processing unit ; a 1 neural
`network that is learned using only an inspection target signal that is normal; and a2 ne
`ural network that learns the type of an abnormality using an inspection target signal inci
`uding a known abnormality.
`[Claim 2]
`The inspection apparatus according to claim 1, wherein the inspection target signal is an
`image signal of an image obtained by imaging an inspection target by an image input uni
`
`t [
`
`Claim 3]
`This device is provided with an abnormal image storage part for storing an image includi
`ng an abnormality, an image superposition part for displaying the image selected from th
`@ abnormal image storage part on a normal image on the screen of the monitor device, a
`nd an adjustment part for adjusting the parameter of the image selected from the abnor
`mal image storage part by an instruction from the input device. The inspection apparatus
`according to claim 2, wherein conditions for classifying the 2 neural network by the para
`meter adjusted by the adjusting unit are adjusted.
`[Claim 4]
`An inspection area dividing part for dividing the image into partial areas based on the re
`quiarity of the image is provided. An inspection apparatus according to claim 2 or 3, whe
`rein, for each partial region divided by said inspection region dividing section, the 1 neur
`al network and the 2 neural network are classified by using the first neural network, and
`the type of abnormality is classified by using the second neural network.
`faim 5]
`The 1 neural network performs an operation of performing learning using the inspection t
`argel signal which is normal, The inspection apparatus according te any one of claims if
`o 4, wherein an operation of classifying the inspection target signal inte a normal state a
`nd a normai state is selected after the learning, and an operation of performing learning
`using the normal inspection target signal is performed after an operation of classifying th
`é inspection target signal,
`[Claim 6]
`The 2 neural network performs learning using the partial signal including a known abnor
`mality. An inspection apparatus according to any one of claims L to 5, wherein an operati
`on of classifying the type of abnormality for the partial signal is selected after learning, a
`nd an operation of performing learning using the partial signal including a known abnorm
`ality is performed again after an operation of classifying the type of abnormality for the p
`artial signal.
`
`
`
`[Detailed description of the invention]
`[Technical field]
`fOOO1)
`The present invention relates to an inspection apparatus for determining the presence or
`absence of an abnormality in a signal to be inspected and classifying the type of abnorm
`ality.
`[Background of the Invention]
`(O002}
`Conventionally, a technique for classifying an inspection target signal using a neural netw
`ork has been proposed. For example, Patent Document 1 describes a technique for deter
`mining whether an inspection target is normal or abnormal by classifying information on
`a color to be Inspected using a neural network. In Patent Document 1, it is described tha
`fikis not necessary to use only a normal sample image and an abnormal sample image |
`
`

`

`s used, so that it is possible to easily realize appearance inspection with high inspection
`accuracy. In addition, deterrnination of whether or not to be norrnal or abnormal by a ne
`ural network (or determination of acceptability) is applied not only to color information b
`ul also to a vibration waveform (for example, refer to Patent Document 2).
`[Prior art reference]
`[Patent document]
`
`(O003]
`{Patent document 1]JP 2010-81594
`[Patent document 2]JP 2006-38478A4
`[Suramary of the invention]
`[Problem to be solved by the invention]
`fO004]
`The technique described in Patent Documents 1 and 2 has a cammon point in that an inp
`ut signal to be inspected (a signal corresponding to an image and 4 signal representing a
`vibration waveform} is classified by a neural network, and each of the configurations is u
`sed for classification between normal and abnormal. Therefore, it is possible te determin
`e whether or not there is an abnormality in the inspection target signal, but it is not poss
`ible to classify the abnormality type when the inspection target signal is present.
`fOoos]
`On the other hand, as in the conventional configuration of Patent Decument 1, an abnor
`mal sarnple image is handled in the same manner as a normal sampie image, and a neur
`al network is learned using a normal sample image and an abnormal sample image. Int
`his case, since learning using an abnormal sample image is performed, it is considered p
`ossible to classify types of abnormalities. However, only by learning using an abnormal s
`ample image having a small number of samples, it is difficult to clearly determine the bo
`undary of each abnormality, and further interference due to a normal sample image larg
`er in number than an abnormal sample image occurs, and it is difficult to clearly determi
`ne the boundary of the type of abnormality.
`fO006]
`AS a result, in the techniques described in Patent Documents 1 and 2, the type of abnor
`mality cannot be classified, and when learning including an abnormal sample image is pe
`rformed, there arises a problem that determination accuracy is lowered due to interferen
`ce of a normal sample image. This occurs in the same way even when not only an image
`bub aiso other signals are used as the signal to be inspected.
`(OOo?)
`To provide an inspection device capable of discriminating not only the presence or absen
`ce of an abnormality but also classification of an abnormality, and reducing an amount of
`information required for learning for classifying an abnormality than a conventional const
`tution.
`[Means for solving the problem]
`[O00]
`To achieve the above object, according to the present invention, there is provided a i pr
`ocessing section which includes a 1 neural network which has been learned and classifies
`a Signal to be inspected into a normal state and a non-normal state. A 2 processing unit i
`Ss provided with a 1 processing unit which extracts a partial signal including an area other
`than normal from an inspection target signal which has been classified by a 1 processing
`unit and has been classified by a 2 processing unit, and classifies the type of abnormality
`for a partial signal, and an output unit which outputs a classification result by the 1 proc
`essing unit and the 2 processing unit, and a second neural network is provided. The 2 ne
`ural network is learned using a signal to be inspected including a known abnormality, an
`d is learned by using only the signal to be inspected which is normal.
`[0009]
`It is preferable that the inspection target signal is an image signal of an image obtained
`by imading an inspection object by an image input unit.
`fOOLO]
`In this case, an abnormal image storage part storing an image containing a defect and a
`n image superposition part displaying an image selected frorn an abnormal image storag
`e part on a normal image on a screen of a monitor device are displayed. It is preferable t
`hat the apparatus includes an adjustment unit that adjusts parameters of an image selec
`ted from an abnormal image storage unit according te an instruction from an input devic
`
`

`

`@, and a condition that the 2 neural network classifies the type of the abnormality is adju
`sted by the adjustment unit.
`fOOLL]
`in this case, an inspection region dividing section for dividing an image into partial regio
`ms based on the regularity of an image is provided, and a 1 neural network is used for ea
`ch partial region divided by the inspection region dividing section.
`
`it is preferable to classify a normal and a normal and a non-normal, and classify the type
`of abnorrnality using a 2 neural network.
`(0042)
`In the 1 neural network, it is preferable that an operation of performing Jearning using a
`n inspection target signal and an operation of classifying an inspection target signal into
`a normal state and @ non-normal state after learning are selected, and then, a learning o
`peration is performed by using a nermal inspection target signal after an operation of cla
`ssifying the inspection target signal.
`fOOL3]
`In addition, it is preferable that the 2 neural network performs an operation for performi
`ng learning using a partial signal including a known abnormality and an operation fer cla
`ssifying the type of abnormality for a partial signal after learning, and performs an opera
`tion for performing learning using a partial signal including a known abnormality after an
`operation for classifying the type of abnorrnality for the partial signal.
`fEffect of the Invention]
`fOO14]
`According to the configuration of the present invention, a partial signal including a non-n
`ormal region is extracted from an inspection target signal classified in the 1 precessing s
`ection other than normal, and a type of abnormality is classified in a partial siqna!l of the
`inspection target signal classified in the 2 processing section. Thus, the type of abnormal
`ity is classified inte a range other than normal, and the classification of the type of abnor
`mality is performed locally using the partial signal. As a result, not only is it possible to d
`etermine whether or not there is an abnormality, but also classification of the type of abn
`ormality becomes possible, and moreover, it is possible to reduce an amount of informati
`on necessary for learning for classifying an abnormality.
`[Brief Description of the Drawings]
`[OO15]
`[Fig. LIFIG. 4 is a block diagram illustrating Embodiment 1 :.
`[Fig. ZTE is the figure showing the example of an image same as the above.
`[Fig, SHE is the figure showing the example of a block same as the above,
`[Fig. 4IFiG. 4 is a diagram showing an example of a normal block in the above.
`[Fig. 5IFIG, 4 is a diagram showing an example of a block including a defect in the ahov
`
`Fig. GIFIG. 4 is a Block diagram illustrating Embodiment 2 5.
`[Fig. 7IFIG. 4 is a diagram illustrating the operation of the first ernbodiment ;.
`[Fig. SIFIG, 9 is a diagramillustrating an example of an image to which Embodiment 3 is
`applied ;.
`(Fig. GIFIG. 4 is a diagram showing an example of another image to be applied.
`[Fig. LO]FIG. 4 is a block diagram showing the sarne.
`[Mode for carrying out the invention]
`fOOL6]
`In the embodiment described below, an inspection apparatus in which an image signal re
`lated to an inspection object output by an image input unit is used as an inspection targe
`{ signal and a defect in an appearance of an inspection object is inspected as an abnorm
`ality is exernplified. For example, the Inspection object is a sheet-shaped member, and a
`defect, a flaw, a stain, a color unevenness, or the like is assumed as a defect. However t
`hese defects are merely exarnples, and the technique of the present embodiment is not
`prevented from being applied to the extraction of items which are treated as defects ina
`ppearance inspection such as chipping, cracking, and cracking.
`fOOL?}
`An irnage input unit is assumed to be an imaging unit such as a TV camera, but an imag
`e scanner, a 3 dimensional scanner, or the like may be used. Further, while an example i
`nwhich @ stil image is used is described, a moving image may be used. As an image sig
`nal, a monochrome grayscale image is assumed, bul a color image can be used, Even wh
`
`@ [
`
`

`

`en an image signal is processed, an inspection is performed on a digital image, and there
`fore, when an irnage input unit outputs an analog image, the image signal is converted |
`nto a digital image by performing analog-to-digital conversion,
`fOOL8]
`In the following embodiments, a competitive learning type (self-organizing map = SOM)
`is exemplified as a neural network far classifying a signal to be inspected ; however, othe
`r principles are eR
`
`It is also possible to use work. A neural network is implernented by executing a program
`ona Neurnann type computer. However, it may be realized by using a non-Neumann typ
`e computer having a configuration specialized for a neural network. In the following emb
`odiments, a “neural network" is abbreviated as a "neural network".
`fOOL9]
`(Embodiment 1)
`In this embodiment, as shown in FIG. 1, an image signal of a still image output from ani
`mage input unit 4 that captures an image of an inspection target 5 is used as an inspecti
`on target signal. The signal te be Inspected output from the image input unit 4 is input in
`to the 1 processing unit 1 and the 2 processing unit 2, and the presence or absence of a
`n abnormal defect is determined. The determination result of the I processing unit 1 and
`the 2 processing unit 2 is integrated and output in the output unit 3.
`(0020)
`The 1 processing unit 1 includes a 1 neural network 1O1, and the 2 processing unit 2 incl
`udes a 2 neural network 201. A self-organizing map is used for the 1 neural network 101
`and the 2 neural network 201, and at least an input layer and an output layer are provid
`ed, and a plurality of neurons (modes) are connected to the input layer and the output la
`yer respectively. That is, each neuron of the input layer is coupled to all neurons of an ou
`tout layer, and each neuron of the output layer is coupled to all neurons of the input laye
`mn Also, the strength of the binding is represented by a weighting factor.
`fO021]
`A i neural net 1061 provided in the 1 processing part i classifies the signal to be inspecte
`d into normal and non-normal. On the other hand, the 2 processing unit 2 includes a par
`tial signal extracting unit 22 which extracts 4 partial signal including an area other than n
`ormal from an inspection target signal classified as not normal by the 1 neural net 101, a
`nd classifies the type of the abnormality (defect) in the partial signal extracted in the par
`tlal signal extracting unit 22.
`fO0022]
`The 1 processing unit 1 and the 2 precessing unit 2 include a microcomputer, a DSP (Deg
`ital Signal Processor}, an FPGA (Field Programmable Gate Array}, and a memory as
`main components. In addition to temporarily storing the input image signal, the memory
`is used for storing learning data, which will be described later, and storing the determina
`tion conditions of the 1 neural network TO4 and the 2 neural network 201. In addition, th
`@ 1 processing unit 1 and the 2 processing unit 2 include an interface (not shown) for inp
`utting an image signal, outpuiting a determination result, and inputting a determination
`condition, That is, the interface is provided for connection such as an image input unit 4
`consisting of a TV camera, a monitor device 6 for outputting a determination resull, an in
`put device (e.g. a keyboard and a mouse, a touch panel} 7 for inputting a determination
`condition, and the like. Further, an interface may be provided for communicating with ot
`ner devices.
`(0023)
`The 1 processing unit 1 includes a feature extraction unit 13 that extracts a feature amo
`unt of an image signal output from the image input unit 4. As for the feature quantity, th
`@é density can be used if the image represented by the image signal is a grayscale image,
`and the hue, the saturation, the brightness, and the like can be used if the image is a col
`orimage. Itis also possible to use distributions such as density, hue, saturation, and bri
`ghtness as they are, and also use these frequency distributions as feature quantities.
`fo024]
`Further, by performing DCT (Discrete Cosine Transform) or DFT (Discrete Fourier Tran
`sform)} on Ll images, cornponents of spatial frequencies may be extracted as feature qua
`ntities.
`fo025]
`Although the feature amount may be obtained for an entire image, it is desirable to divid
`
`

`

`e 1 images into a pluraity of blocks which are rectangular regions of n x m pixels, andt
`o obtain a feature arnount for each block. This place
`
`By associating the position of each block with the feature quantity, it is possible to deter
`mine the feature quantity for each location in the image, and thus if is possible to deter
`mine the presence or absence and the type of the defect for each location. Further, by fi
`miting the feature amount to a small region of a block unit, itis easy to extract the featu
`re of each defect.
`(0026)
`In the following, a density normalized for each block in the feature extraction unit 13 is u
`sed as &@ feature amount in the monochrome grayscale image. That is, the average value
`of the densities of the blocks is obtained using the density of each pixel in the block, the
`difference between the density of each pixel and the average value is defined as the ner
`malized density, and the distribution of the normalized density in the block is used as the
`feature value, Here, each block is given a label (which may be a number} so that the pos
`ition in the image can be identified.
`(0027)
`The 1 processing unit 1 includes a learning data storage unit 14 that stores the feature a
`mount extracted by the feature extraction unit 13 fromm an image obtained by capturing a
`n image of the normal inspection target 5 as learning data. The learning data includes th
`e position of the Block. In other words, the feature amount per location in the image is e
`xtracted. Further, whether or not the object 5 is a normal inspection object is determined
`visually by a person. In this case, it is desirable that not only the inspection object 5 but
`also the captured image be confirmed on the screen of the monitor device 6.
`(0028)
`Further, as described above, the 1 processing unit 1 includes the 1 neural network 101, a
`nd the 1 neural network 101 performs learning using the learning data stored in the lear
`ning data storage unit 14. Since the 1 neural net 101 performs learning based on learnin
`q data, the state of the output layer is converged when the inspection target 5 is normal,
`and therefore, a determination criterion for determining normal is determined based ont
`his state.
`fo029]
`In the 1 processing unit 1, when an SOM is used as the 1 neural network 101, a clusterin
`g map in which « rm (, mis a natural number} neurons are arranged in a matrix (2 dime
`nsional lattice pattern) as an output layer of the 1 neural network 101 is used.
`,O030]
`When an appropriate data is inputted Into the 1 neural network 104 which has been lear
`ned Qvhen data is given to the input layer}, if a neuron which is not a boundary region a
`mong the clustering maps (neurons adjacent in all directions} is ignited, the data is judg
`ed as normal.
`fO031}
`In addition, when the neurons in the boundary range fire, the Euclidian distances betwee
`n the set of weighting factors (weighted vectors) obtained by learning by the ignited neu
`rons and the weighted vectors of the adjacent neurons are respectively calculated. Furth
`er, the maximum value of the Euclidean distance between the ignited neurons and each
`of the adjacent neurons is set as a threshold value. Here, when the distance between the
`data given toe the 1 neural network 101 and the weighted vector of the ignited neuron ex
`ceeds the threshold value described above, it is deterrnined that the data is norrnal.
`[O032}
`As described above, the I neural net 101 can be selected from an operation (learning op
`eration) of performing learning based on learning data and an operation (inspection oper
`ation} of determining presence or absence and type of a defect in an actual inspection ta
`rget 5 after compistion of learning. The criteria determined by the learning operation are
`used in the inspection operation.
`[0033]
`The i processing unit 1 includes a determination storage unit 15 that stores the determi
`ned criteria, and includes a determination unit 102 that determines an output result of th
`@ 1 neural network 101 using the determination criteria stored in the determination stora
`ge unit 15, Since the criterion for the output of the 1 neural network 1O4 is determined u
`sing only the learning data generated from the normal inspection object 5, the determina
`tion unit £02 is configured to determine the output of the first neural network 10.
`
`

`

`it is determined whether or not the output of the L neural network 101 indicates normal.
`In other words, the 1 neural network 101 and the determination unit 102 constitute an a
`bnormality detection unit 10 that determines whether or not the vehicle is normal or nor
`mal.
`(0034)
`The determination result of the abnormality detection unit 10 is output from the 1 proces
`sing unit 1 through the result deterrnination unit 16. The result determination unit 16 rec
`eives a determination result of whether the determination result is normal or normal by ¢
`he determination unit 102, and cutouts a normal determination result and a position of a
`block other than normal.
`fO035]
`On the other hand, as described above, the 2 processing unit 2 includes the partial signal
`extracting unit 22. The partial signal extraction unit 22 extracts a block determined to be
`net normal by the 1 processing unit 1 from an image represented by an image signal inp
`ul from the image input unit 4. In other words, a partial signal which is a part of an imag
`e signal is extracted.
`(0036)
`Similarly to the 2 processing unit 1, the T processing unit 2 includes a feature extraction
`unit 23 and a learning data storage unit 24. A feature extraction unit 23 extracts a featur
`e amount for a block extracted by the partial signal extraction unit 22. Here, since the bi
`ock extracted by the feature extraction unit 23 is a block determined to be not normal in
`the 1 processing unit 1, there is a high possibility that the block includes a defect (abnor
`maliby}. Therefore, if a defect (abnormality) included in a block extracted by the partial si
`gnal extraction unit 22 is known, a known defect is associated with the learning data stor
`ed in the learning data storage unit 24 as a category.
`fO037]
`in the 2 neural network 201 provided in the 2 processing unit 2, learning is performed us
`ing learning data in which known defects are associated. Similar toe the 2 neural network
`161, the 1 neural network 201 can select a learning operation and an examination opera
`tion, and learning is performed in the learning operation to determine a criterion for the
`Known defect,
`[0038]
`Here, in the case where an SOM is used as the 2 neural network 201, a clustering map in
`which I x 7 (1, } is a natural number} neurons are arranged in a matrix form is used as a
`nm output layer of the 2 neural network 201. In the 2 neural network 201, the category as
`signed to the neuron that has ignited on the clustering map is defined as the category of
`the input data.
`[0039]
`When learning of the 2 neural network 201 Is performed, learning is performed using a p
`ortion determined to be abnormal by a person in advance by visual inspection and a clas
`sification result of a category of a defect of an abnorrnal portion. Alternatively, an actual j
`nspection is performed, and a portion determined to be non-normal in the 1 neural netbw
`ork IO1 Is learned by visually using the classification result of the category of the defect.
`
`[0040]
`When the 2 neural network 201 performs learning based on learning data whose cateqor
`y is a known defect, a state represented by a neuron of an output layer converges for ea
`ch category. Since neurons of an output layer form clusters corresponding to categories
`of learning data, categories can be classified by assigning categories to each cluster.
`[OO44]
`The 2 processing unit 2 includes a determination storage unit 25 that stores a determina
`tion criterion and a cluster classification unit 202 that associates a cluster of neurons in a
`n output layer of the 2 neural network 201 with a categary. Since the state of the output
`of the 2 neural network 201 is classified into the category of the known defect by the clu
`ster classification unit 202, the abnorrnality classification unit 20 is constituted by the Zn
`éeural network 201 and the cluster classification unit 202. The 2 processing unit 2 include
`S a map storage unlit 26 that stores the types of defects classified by the cluster classifica
`tion unit 202. Therefore, by registering the type of defect in the map storage unit 26, if i
`Ss possible to output the type of defect classified in the cluster classification unit 202.
`
`

`

`fO042]
`As described above, the 1 processing unit 1 classifies normal and non-normal, and the 2
`processing unit 2 extracts a partial signal (block) which is an area corresponding to a def
`act for an image signal that is determined to be not normal in the 1 processing unit 1, an
`d classifies the type of defect for this block. As a result, it is possible to improve the accu
`racy of classifying the normal and the defect as compared with the case of classifying the
`normal and the defect by one neural net.
`[0043]
`In other words, since the learning data for performing the normal classification can be co
`lected sufficiently more than the learning data for classifying the defects, the 1 process
`ng unit 1 can accurately classify the learning data as normal and normal. Next, in the 2 p
`recessing unlt 2, the types of defects are classified only within a range other than normal
`by excluding the normal inspection target signal, so that even when the learning data is
`relatively small, the boundaries become clear and consequently, the accuracy of classific
`ation is increased. Further, since attention is paid to a block which is not normally deter
`mined as a signal to be inspected other than normal, the type of the defect is classified |
`na jocal area rather than an entire image, and thus, the accuracy of classification can be
`improved by reducing an amount of information of information which is not necessary for
`classification.
`fO044]
`In the above example, in the 1 processing unit 1 and the 2 processing unit 2, the learnin
`g operation is performed only 1 times before the inspection operation.
`(0045)
`For the 1 processing unit 1, learning data may be newly generated from an inspection ta
`rqet signal obtained from a normal inspection target 5, and the number of learning data
`may be increased to perform additional learning of the 1 neural network 101. If the dete
`rmination criterion stored in the determination storage unit 15 is updated by performing
`the additional learning of the 1 neural network 101, the accuracy of separating the norm
`al and the normal is improved, and consequently, the accuracy of separating the iInspecti
`on target 5 including the defect is improved.
`fO046]
`Further, for the 2 processing uri 2, it is possible to newly generate the learning data fro
`m the inspection target signal obtained fromthe defective inspection target 5, increase t
`he number of the learning data of each category, and qenerate the learning data of the n
`ew category. If the additional learning of the 2 neural network 201 is performed by such
`learning data, fh is possible to update the determination criteria stored in the determinati
`on storage unit 25 and the category registered in the map storage unit 26. In other word
`s, it is possible to Increase the accuracy of classifying the types of defects, or to classify
`new types of defects.
`fO047]
`FIG. 2 shows an operation example of the above-described configuration, Each of FIGS.
`2 {a} to 1 (d) shows an image (an image output from the image input unit 4) including a
`block determined to be not normal in the first processing unit 1. In addition, each of FIG
`S. 3 (a) - (d) corresponds to each of FIGS. 2 (a} - (d}, and shows an exarnple of blocks
`Bi-8 6 determined to be non-normal. That is, when an image as shown in FIG. 2 (a) -
`{d} is input to the 1 processing unit 1, the partial signal extracting unit 22 of the 2 proce
`ssing unit 2 extracts an area corresponding to blocks B 1 - B 6 shown in FIGS. 3 {a} -
`{d}. In the extracted blocks B 2 to B 6, the types of defects are classified in the first proc
`essing unit 2.
`[0048]
`Here, a learning data as shown in FIG. 4 may be stored in the learning data storage unit
`14 of the 1 processing unit 1 with respect to a block in which the inspection target 5 is n
`ormal, as shown in FIG. 4. In addition, in the learning data storage unit 24 of the 2 proc
`essing unit 2, the learning data as shown in FIG. 5 ray be stored in the block in the cas
`e where there is a defect in the inspection target 5 (each of the partial diagrams in FIG,
`5 represents an image of a block including a defect).
`(0049)
`In this embodiment, since only the learning data of the defect shown in FIG. 5 is stored ij
`n the learning data storage unit 24 of the 2 processing unit 2, it is possible te extract bio
`cks B5 and 8 6 as shown in FIGS. 3 cand 5d. FIG. 4 shows, on the contrary, normal lea
`rning data as shown in PIG, 5,
`
`

`

`When learning data of a defect defect is used together with learning data, it becornes po
`ssible only to extract blocks B I te B 4 in which defects are blurred as shown in FIGS. 3
`a and 4 b. In other words, it is difficult to extract blocks B 5 and B 6 in which defects suc
`fas shown in FIGS. 3 c and 3 d are blurred.
`fO050]
`In other words, in the present embodiment, classification of normal and non-normal is p
`arformed in the 1 processing unit 1, so that the boundary between normal and normal ca
`n be clearly separated, and extraction of blocks including defects can be accurately perfo
`rmed. In addition, since the 2 processing unit 2 determines the type of defect only for th
`@ block determined to be not normal, the boundary for the type of defect is clarified even
`when the learning data concerning the defect is small beacause the normal range is exclu
`ded from the information to be classified. In other words, it is easy to classify the types
`of defects.
`fOO51]
`in this embodiment, a case in which the inspection tarqet signal is an image signal has b
`een described, but the inspection target signal may be an electric signal including other i
`nformation. For exampie, when the test object 5 generates sound or

This document is available on Docket Alarm but you must sign up to view it.


Or .

Accessing this document will incur an additional charge of $.

After purchase, you can access this document again without charge.

Accept $ Charge
throbber

Still Working On It

This document is taking longer than usual to download. This can happen if we need to contact the court directly to obtain the document and their servers are running slowly.

Give it another minute or two to complete, and then try the refresh button.

throbber

A few More Minutes ... Still Working

It can take up to 5 minutes for us to download a document if the court servers are running slowly.

Thank you for your continued patience.

This document could not be displayed.

We could not find this document within its docket. Please go back to the docket page and check the link. If that does not work, go back to the docket and refresh it to pull the newest information.

Your account does not support viewing this document.

You need a Paid Account to view this document. Click here to change your account type.

Your account does not support viewing this document.

Set your membership status to view this document.

With a Docket Alarm membership, you'll get a whole lot more, including:

  • Up-to-date information for this case.
  • Email alerts whenever there is an update.
  • Full text search for other cases.
  • Get email alerts whenever a new case matches your search.

Become a Member

One Moment Please

The filing “” is large (MB) and is being downloaded.

Please refresh this page in a few minutes to see if the filing has been downloaded. The filing will also be emailed to you when the download completes.

Your document is on its way!

If you do not receive the document in five minutes, contact support at support@docketalarm.com.

Sealed Document

We are unable to display this document, it may be under a court ordered seal.

If you have proper credentials to access the file, you may proceed directly to the court's system using your government issued username and password.


Access Government Site

We are redirecting you
to a mobile optimized page.





Document Unreadable or Corrupt

Refresh this Document
Go to the Docket

We are unable to display this document.

Refresh this Document
Go to the Docket