WO2012077271A1 - 荷電粒子線装置 - Google Patents
荷電粒子線装置 Download PDFInfo
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- WO2012077271A1 WO2012077271A1 PCT/JP2011/005915 JP2011005915W WO2012077271A1 WO 2012077271 A1 WO2012077271 A1 WO 2012077271A1 JP 2011005915 W JP2011005915 W JP 2011005915W WO 2012077271 A1 WO2012077271 A1 WO 2012077271A1
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T7/00—Image analysis
- G06T7/0002—Inspection of images, e.g. flaw detection
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01N—INVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
- G01N23/00—Investigating or analysing materials by the use of wave or particle radiation, e.g. X-rays or neutrons, not covered by groups G01N3/00 – G01N17/00, G01N21/00 or G01N22/00
- G01N23/22—Investigating or analysing materials by the use of wave or particle radiation, e.g. X-rays or neutrons, not covered by groups G01N3/00 – G01N17/00, G01N21/00 or G01N22/00 by measuring secondary emission from the material
- G01N23/225—Investigating or analysing materials by the use of wave or particle radiation, e.g. X-rays or neutrons, not covered by groups G01N3/00 – G01N17/00, G01N21/00 or G01N22/00 by measuring secondary emission from the material using electron or ion
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T1/00—General purpose image data processing
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T7/00—Image analysis
- G06T7/0002—Inspection of images, e.g. flaw detection
- G06T7/0004—Industrial image inspection
- G06T7/001—Industrial image inspection using an image reference approach
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01J—ELECTRIC DISCHARGE TUBES OR DISCHARGE LAMPS
- H01J37/00—Discharge tubes with provision for introducing objects or material to be exposed to the discharge, e.g. for the purpose of examination or processing thereof
- H01J37/02—Details
- H01J37/22—Optical or photographic arrangements associated with the tube
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01J—ELECTRIC DISCHARGE TUBES OR DISCHARGE LAMPS
- H01J37/00—Discharge tubes with provision for introducing objects or material to be exposed to the discharge, e.g. for the purpose of examination or processing thereof
- H01J37/02—Details
- H01J37/22—Optical or photographic arrangements associated with the tube
- H01J37/222—Image processing arrangements associated with the tube
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01J—ELECTRIC DISCHARGE TUBES OR DISCHARGE LAMPS
- H01J37/00—Discharge tubes with provision for introducing objects or material to be exposed to the discharge, e.g. for the purpose of examination or processing thereof
- H01J37/26—Electron or ion microscopes; Electron or ion diffraction tubes
- H01J37/28—Electron or ion microscopes; Electron or ion diffraction tubes with scanning beams
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01L—SEMICONDUCTOR DEVICES NOT COVERED BY CLASS H10
- H01L22/00—Testing or measuring during manufacture or treatment; Reliability measurements, i.e. testing of parts without further processing to modify the parts as such; Structural arrangements therefor
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T2200/00—Indexing scheme for image data processing or generation, in general
- G06T2200/24—Indexing scheme for image data processing or generation, in general involving graphical user interfaces [GUIs]
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T2207/00—Indexing scheme for image analysis or image enhancement
- G06T2207/30—Subject of image; Context of image processing
- G06T2207/30108—Industrial image inspection
- G06T2207/30148—Semiconductor; IC; Wafer
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01J—ELECTRIC DISCHARGE TUBES OR DISCHARGE LAMPS
- H01J2237/00—Discharge tubes exposing object to beam, e.g. for analysis treatment, etching, imaging
- H01J2237/22—Treatment of data
- H01J2237/221—Image processing
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01J—ELECTRIC DISCHARGE TUBES OR DISCHARGE LAMPS
- H01J2237/00—Discharge tubes exposing object to beam, e.g. for analysis treatment, etching, imaging
- H01J2237/245—Detection characterised by the variable being measured
- H01J2237/24571—Measurements of non-electric or non-magnetic variables
- H01J2237/24578—Spatial variables, e.g. position, distance
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01J—ELECTRIC DISCHARGE TUBES OR DISCHARGE LAMPS
- H01J2237/00—Discharge tubes exposing object to beam, e.g. for analysis treatment, etching, imaging
- H01J2237/245—Detection characterised by the variable being measured
- H01J2237/24592—Inspection and quality control of devices
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- H—ELECTRICITY
- H01—ELECTRIC ELEMENTS
- H01J—ELECTRIC DISCHARGE TUBES OR DISCHARGE LAMPS
- H01J2237/00—Discharge tubes exposing object to beam, e.g. for analysis treatment, etching, imaging
- H01J2237/26—Electron or ion microscopes
- H01J2237/28—Scanning microscopes
- H01J2237/2813—Scanning microscopes characterised by the application
- H01J2237/2817—Pattern inspection
Definitions
- the present invention relates to a charged particle beam apparatus provided with defect inspection means, and more particularly to a defect inspection apparatus and a review apparatus using an electron beam.
- a semiconductor device such as a memory or a microcomputer used for a computer or the like is manufactured by repeating a process of transferring a pattern such as a circuit formed on a photomask by an exposure process, a lithography process, an etching process, or the like.
- the presence or absence of defects such as the quality of lithography processing, etching processing, other processing results, and generation of foreign matter greatly affects the yield of semiconductor devices. Therefore, in order to improve the yield, the pattern on the semiconductor wafer is inspected at the end of each manufacturing process, and the occurrence of abnormality or defect is detected early or in advance.
- the inspection apparatus used in the process as described above is required to perform high-throughput and high-precision inspection following the increase in wafer diameter and circuit pattern miniaturization.
- a region on a wafer designated in advance is designated in advance, and a plurality of locations can be obtained by performing inspection once.
- Patent Document 1 A technique for detecting a defect in a circuit pattern formed on a semiconductor wafer is described in, for example, Japanese Patent Laid-Open No. 2000-30652 (Patent Document 1).
- Patent Document 1 an image of a wafer to be inspected is imaged to obtain an image of a pattern to be inspected including a defect and an image of a reference pattern not including a defect, and there is a difference between both images. Extract the part as a defect.
- Patent Document 2 describes a method of automatically recognizing a region having a pattern having a desired repetition period from the variance and standard deviation of a difference image between a repetitive pattern image and an image obtained by shifting the repetitive pattern. Yes.
- Patent Document 3 describes a technique for extracting a contour line from a pattern image and measuring the pattern width and comparing it with design data or another actual pattern. Yes.
- the number of defect candidates detected with the miniaturization of semiconductor circuits has increased, but this includes defects that are irrelevant to the product yield and are not important to the user. Therefore, in order to improve the inspection throughput, it is desired that the user selects and detects a defect to be detected. Furthermore, separately detecting the occurrence location of the defect is useful for estimating the cause of the occurrence of the defect and greatly assists in improving the manufacturing yield.
- an object of the present invention is to provide a charged particle beam apparatus capable of setting a region to be inspected according to a pattern shape on a sample.
- the present invention extracts a pattern outline on a sample using a template image obtained based on the sample image, sets an inspection target area based on the pattern outline, A defect candidate is detected by comparing an inspection image with an image of a portion corresponding to the image to be inspected, and a sample is inspected using a positional relationship between the inspection target region and the defect candidate included in the inspection target region. It is characterized by that.
- the functional block diagram of an image process part. 2 is a flowchart of the first embodiment.
- FIG. 6 is a diagram for explaining defect determination processing according to the first embodiment.
- the example of GUI which displays a test result. 9 is a flowchart according to the second embodiment.
- An example in which the inspection target area is set by enlarging or reducing the pattern.
- FIG. 10 is a functional block diagram of an image processing unit in Embodiment 3.
- 9 is a flowchart according to the third embodiment. The figure explaining the pattern classification
- the defect inspection apparatus referred to here widely refers to a device that acquires an image and determines the presence or absence of a defect from the image.
- Some charged particle beam devices such as review devices are equipped with defect inspection means such as means for inspecting a predetermined position on a sample for fixed-point observation and process monitoring.
- the present invention can also be applied to a line apparatus, and the defect inspection apparatus described below includes these.
- a defect inspection apparatus that extracts defect candidates from a comparative image corresponding to an image to be inspected and displays the defect candidates included in a designated area as a defect will be described.
- FIG. 1 is a schematic diagram showing an example of the overall configuration of a defect inspection apparatus.
- the defect inspection apparatus places an electron gun 101 that emits an electron beam 107, a lens 102 that converges the electron beam 107, a deflector 103 that controls deflection of the electron beam 107, an objective lens 104 that converges the electron beam 107, and a sample 105.
- a scanning electron microscope (SEM) composed of the like.
- the backscattered electron detector 123 is installed at a position facing each other on a straight line in order to capture a dual shadow image. These are then placed in a column (not shown) and can be maintained in a vacuum by a vacuum pump (not shown).
- the electron beam 107 emitted from the electron gun 101 is converged by the lens 102, scanned and deflected two-dimensionally by the deflector 103, converged by the objective lens 104, and irradiated onto the sample 105.
- the sample 105 is irradiated with the electron beam 107, secondary electrons 108 and reflected electrons 109 corresponding to the shape and material of the sample 105 are generated.
- the secondary electrons 108 and the reflected electrons 109 are detected by the secondary electron detector 122 or the reflected electron detector 123, amplified by an amplifier (not shown), and then an analog / digital (A / D) converter 113. Is converted to a digital value.
- the signal from the backscattered electron detector 123 is used to form an L image and an R image that are backscattered electron images
- the signal from the secondary electron detector 122 is used to form an S image that is a secondary electron image.
- signals obtained from samples such as secondary electrons and reflected electrons are collectively referred to as secondary charged particles.
- image processing may be performed using an L image, an R image, an S image, or a composite image thereof, and these are collectively referred to as an image in this specification.
- the data converted into the digital value is stored in the image memory 115.
- the address control circuit 114 generates an address synchronized with the scanning signal of the electron beam 107 as the address of the image data stored in the image memory 115. Further, the image memory 115 transfers the stored image data to the image processing unit 119 as needed.
- the image processing unit 119 sends the transmitted image data to the display unit 117 such as a display via the control unit 118, and performs arithmetic processing based on the image data to perform processing such as defect extraction.
- the defect extraction (detection) process here is performed by comparing and calculating the sent image data and other image data obtained from the pattern corresponding to the image data.
- the image processing unit 119 will be described later.
- the lens 102, the deflector 103, and the objective lens 104 are controlled by control signals from the lens control circuit 110, the deflection control circuit 111, and the objective lens control circuit 112, respectively, and the focal position and the deflection amount of the electron beam 107 are controlled. Thereby, it can adjust so that the electron beam 107 may be irradiated to an appropriate position with respect to the sample 105.
- the moving stage 124 on which the sample stage 106 is placed can be translated in two dimensions by a control signal from the mechanism control circuit 116. For this reason, the sample 105 held by the sample stage 106 can also be translated in two dimensions, whereby the position at which the electron beam 107 is scanned with respect to the sample 105 can be controlled.
- the lens control circuit 110, the deflection control circuit 111, the objective lens control circuit 112, and the mechanism control circuit 116 are all controlled by signals from the control unit 118.
- the input unit 120 including a keyboard and a mouse is used for GUI (Graphical User Interface) operations displayed on the display unit 117 such as device operation and parameter setting.
- GUI Graphic User Interface
- FIG. 2 is a diagram for explaining the image processing unit 119 in detail.
- the image processing unit 119 includes a template image generation unit 201, a contour extraction unit 202, an inspection target area setting unit 203, a defect candidate detection unit 204, and a defect determination unit 205.
- Each of these functional blocks may be configured (so-called hardware implementation) by combining arithmetic processing circuits that execute processing of each unit, or a memory that stores a program corresponding to the processing of each unit is provided in the image processing unit 119.
- the function blocks shown in FIG. 2 may be virtually realized by executing a program by a processor provided in the image processing unit 119.
- some functional blocks may be realized by a dedicated processing circuit, and the remaining functional blocks may be realized by software using a program and a processor.
- the template image generation unit 201 automatically sets one of the images as a template image based on a user instruction.
- the template image may be selected by the user from a plurality of images acquired for selecting the template image, or may be generated by performing arithmetic processing such as addition processing on the plurality of images.
- the image to be inspected 206 may be generated by performing arithmetic processing.
- the template image is an ideal image that is considered to have no defect by image processing such as image addition, and is an image that is used to extract a pattern contour.
- the image processing used for generating the template image may be any method that can generate an image that can be regarded as having no defect. Note that the template image may be referred to as a model image.
- the template image 211 is sent to the contour extracting unit 202, and the contour of the pattern is extracted from the template image 211.
- This contour can be regarded as a contour of a pattern to be created on a sample when manufactured by an ideal process in which no defect occurs.
- the contour information is displayed on the display unit 117 like a GUI described later, and is output to the inspection target region setting unit 203.
- the user selects an area to be inspected, such as the inside or outside of the pattern contour, through the input unit 120 based on the contour information displayed on the display unit 117.
- the user selection result is input to the inspection target area setting unit 203 as the area instruction input 208.
- the inspection target area setting unit 203 outputs the defect detection area information 209 to the defect determination unit 205 with the area selected by the user as the inspection target area.
- the comparison image 210 that is an image corresponding to the image to be inspected, that is, the image to be compared with the pattern to be inspected, is also detected from the image memory 115 together with the image to be inspected 206 Input to the detection unit 204.
- the comparison image 210 may be called a reference image.
- the defect candidate detection unit 204 calculates a difference image between the image to be inspected 206 and the comparison image 210 and sets a portion having a difference equal to or greater than a predetermined threshold as a defect candidate.
- the defect candidates are output to the defect determination unit 205.
- the defect determination unit 205 determines a defect candidate included in the designated inspection target area as a defect from the defect candidate and the inspection target area information 209 and outputs the defect candidate to the display unit 117.
- the defect candidates not included in the inspection target area may be deleted from the data by the defect determination unit, or may be displayed on the display unit 117 in a format that can be distinguished from the defects included in the inspection target area.
- FIG. 3 is a flowchart of defect detection in this embodiment.
- the present embodiment will be described in detail with reference to FIGS. 4 to 9 together with FIG.
- an image acquisition condition is set in step 301, and an image is acquired in step 302.
- Acquisition conditions include the location on the wafer and the die, the contrast of the image, the brightness, the number of integrated images, and the like. By specifying these, it is possible to acquire an image of a necessary location.
- FIG. 4 shows a GUI 401 for setting an image capturing area.
- the coordinates on the wafer are determined from the coordinates that designate the die and the relative coordinates that designate the position in the die based on the origin in the die.
- a GUI 401 shows an example in which a plurality of dies are inspected at the same relative coordinates.
- a die represented in gray on the wafer map 402 indicates a die to be inspected. Thus, it is not necessary to inspect all the dies, and a desired die can be selected and inspected.
- the point (coordinate) to be inspected is different. May be.
- a die on the wafer map 402 can be selected by clicking with the mouse, and coordinates inside the die can be specified by directly clicking inside the die 403. Further, the coordinates of the imaging location may be input directly from the keyboard.
- the acquired images are displayed as a list like GUI 404, and the user can check the images using a keyboard, a mouse, or the like.
- the list of acquired images is displayed at a time in the area 406, the user can easily confirm the images.
- An image is arranged in each of the 406 squares. It is convenient if the die on the wafer map 405 is associated with each image, and the cursor is linked to the die image by designating the die.
- a template image is selected from the acquired images.
- a target image is clicked and selected from the GUI 404 in FIG. 4 and a “Register” button 407 is clicked, the image can be registered as a template image.
- an image to be registered in addition to an image acquired in advance, an image subjected to image processing such as contrast correction or composition processing can also be registered.
- image processing such as contrast correction or composition processing
- a selected image may be synthesized from acquired images and a template image may be automatically set. In this case, since it is automatically set even if the user does not select, the burden on the user is reduced.
- An “automatic” button 408 in FIG. 4 is a button for performing this operation.
- the template image generation unit 201 performs processing for generating or registering the template image described above.
- the user picks up an image for selecting a template image and selects the user has been described.
- the user selects or automatically generates a template image using the comparison image 210.
- the template image may be automatically generated by combining or calculating a plurality of images to be inspected. If an image that can be regarded as having no defect is generated, other generation methods and selection methods may be used. The method may be used.
- step 304 pattern outline extraction is performed from the template image.
- Contour extraction is generally performed by discriminating the boundary of the brightness difference from the histogram and taking the contour, but of course other methods may be used.
- FIG. 5 shows an example of performing contour extraction from the template image 501.
- the contour extraction unit 202 performs contour extraction.
- the template image 501 is binarized using appropriate brightness as a threshold value, a binarized image 502 is obtained.
- a pattern (white portion of 502) is discriminated from the binarized image 502, and information on the contour line (dotted line portion of 503) is output to the display unit as contour information 503.
- the above-described process of extracting the contour line is naturally not limited to the type of pattern, and can be applied to other patterns such as line and space. Is possible.
- the inspection target area refers to an area specified by the user as a defect inspection target in the sample pattern, and a defect candidate included in the inspection target area is determined as a defect and presented to the user.
- the inspection target area is specified by the user selecting which part of the pattern extracted as the contour information is used for defect detection and whether the outside or inside of the pattern is the selection range. Is called.
- Fig. 6 shows the screen for selecting the inspection target area.
- the selection can be performed by selecting an extracted pattern with the GUI 601.
- the selected pattern is easy to understand when it is displayed by meshing or coloring as in 602. Further, when all patterns are selected, it is easy to operate if buttons that can be selected and released at once, such as “select all” (603) and “cancel all” (604), are prepared on the GUI 601.
- the selection is made from 605 to select the outside or inside of the pattern as the selection range. Thereby, the inside or the outside of the outline of the pattern can be designated as a range in which the defect candidate is detected as a defect.
- FIG. 6 shows an example in which the inside of the middle row is selected from the three rows of patterns.
- the wafer is scanned with an electron beam to acquire an image (inspected image) at a location designated by the user (steps 306 and 307). Since this procedure is almost the same as steps 301 and 302, the details are omitted. However, as long as the image is an area corresponding to the image acquired in steps 301 and 302, a die different from the die used for selecting the template image is inspected. You can select it as a target. If image acquisition is performed under the same conditions as in step 301, it is not necessary to set conditions again in step 306, and step 306 may be skipped and the process may proceed to step 307. Also, when the image to be inspected has already been acquired in step 302, such as when the template image is generated by adding all the images of the die to be inspected, it is not necessary to acquire an image again. Can be skipped.
- defect candidates are detected in steps 308 and 309.
- the defect candidate detection unit 204 performs image processing on the inspection image and a comparison image corresponding to the inspection image, and detects a portion having a difference in brightness or shape.
- the defect candidate detection unit 204 performs calculation in the order of alignment of the image to be inspected and the comparison image, calculation of a difference value of each pixel of the image, extraction of a portion where the difference value is larger than a predetermined threshold value, Detect defect candidates.
- each pixel is regarded as a defect candidate as it is, a pixel adjacent to each pixel is detected as one defect candidate.
- a defect candidate image 703 is obtained as a calculation result of the comparison image 701 and the inspection image 702.
- the defect candidate image 703 includes defect candidates 704 to 708, each displaying a group of detected pixels as one defect.
- a method of calculating a normalized correlation value is generally used, but in any method, the shift amount for alignment between the image to be inspected and the comparison image is used in the next step 311.
- the defect candidate detection method described above is merely an example, and other methods may be used.
- step 311 for one defect candidate included in the defect candidate image 703, it is determined whether the detected defect candidate is included in the inspection target area.
- the previously detected defect candidates 704 to 708 are overlapped with the inspection target area 709, and determination is made based on whether or not the defect candidate is included in the inspection target area. Since the coordinates of the defect candidate and the selection range are known, the determination can be made by comparing them with the amount of deviation taken into consideration. 710 is a normal internal process and may not be displayed to the user.
- all parts of one defect candidate may not be included in the inspection target area. For example, only defect candidates included in the inspection target area of a certain percentage or more are detected as defects. If conditions can be determined, more flexible inspection can be performed.
- FIG. 8 shows an example of the setting GUI.
- it is shown as one of the conditions whether a defect candidate of a certain percentage or more is included in the inspection target area, or whether the center of the defect candidate is included in the inspection target area.
- the ratio of the defect included in the inspection target area (“90%” in FIG. 8) and the feature point of the defect candidate used for the determination (“center” in FIG. 8) can be changed by the user through the input unit.
- the two conditions shown in FIG. 8 are examples, and other conditions can be applied as necessary.
- the defect candidates determined not to be included in the inspection target area in step 311 are deleted in step 312. Or, even when a defect candidate that is not included in the inspection target area is displayed, the process proceeds to the next step while leaving the data as the defect candidate.
- the defect candidates determined to be included in the inspection target area in step 311 are determined as defects in step 313 and are labeled separately from the defect candidates not included in the inspection target area.
- steps 311, 312, and 313 are repeated for all defect candidates included in the inspection target image, and the loop is terminated (step 314).
- defect candidates determined to be included in the inspection target area are distinguished, superimposed on the inspection image or the comparison image, and displayed as an image 711 after the defect determination (step 315). ).
- the defect candidates 704 to 706 are displayed as defects, and the defect candidates 707 and 708 are displayed separately from the defect candidates 704 to 706 determined as defects.
- nothing may be displayed for defect candidates that are not determined to be defects. Note that it is only necessary to distinguish and display defect candidates included in the inspection target region, and the display method does not depend on this example.
- defect candidates detected in an area of interest to the user from among many defect candidates can be output separately from other defect candidates.
- many defect candidates are usually detected in regions other than the pattern in which the user is interested, which is effective in selecting them.
- the number of defect candidates included in the inspection target area can be displayed.
- an image in which defect candidates included in the inspection target area are distinguished is displayed on the right side of the screen, and the number of defects included in the image is displayed for each image as indicated by 902.
- the wafer map on the left side of the screen the number of defects included in each die is displayed separately for each die so that the number of defects can be seen at a glance.
- the detection results are displayed in different colors based on a color bar that associates the darkness of the color and the magnitude of the value at the bottom of 903. Thereby, the tendency of the entire wafer can be confirmed.
- the defect determination process described above is performed on all or part of the inspection target image, and each result is displayed as a list like a GUI 901.
- the template image including the pattern on the wafer to be inspected in order to set the inspection target area has been acquired once, and the image to be inspected is acquired and inspected later.
- the image acquisition can be performed simultaneously with the template image acquisition.
- an image of an ideal pattern obtained by combining the images to be inspected is used as a template image.
- the image acquisition time can be shortened and an improvement in throughput can be expected.
- an image for comparison (comparison image) acquired together with the image to be inspected may be used as a template image.
- a comparison image is acquired, a pattern contour is extracted from the comparison image, and a process for setting the inspection target region is performed. Then, defect candidate extraction and defect determination processing are performed on the comparison image corresponding to the inspection image.
- the comparative image is usually a different die and is often an image of an area where the relative coordinates inside the die are the same.
- the defect candidate in the inspection target area is selectively determined as the defect, so that the user can inspect the defect to be inspected. Further, since defect candidates other than the inspection target area can be removed, there is an effect of removing unnecessary noise from the detection result.
- Example 2 describes a defect inspection apparatus that sets an inspection target region by enlarging or reducing an extracted pattern outline.
- Images 1101 and 1102 shown in the upper part of FIG. 11 are schematic diagrams of a hole pattern imaged, and show a secondary electron image 1101 and a reflected electron image 1102 when the same place is imaged.
- the edge portion of the hole pattern is blurred. It is difficult to selectively extract by the method.
- the way the edge part of the hole is reflected depends on how the electron beam is irradiated, and it is difficult to specify the exact edge part of the hole pattern.
- the shape of the hole is clearly captured and can be easily extracted, but the hole bottom is not shown at all, and the hole bottom cannot be detected.
- the outline of the hole is extracted by the reflected electron image 1102, and the area is reduced to the size of the hole bottom reflected in the secondary electron image 1101, thereby obtaining an approximate portion of the hole bottom. It is possible to detect the brightness of the bottom of the hole from the value of the pixel in this portion. In this manner, by enlarging or reducing the pattern outline extracted from the image and specifying the inspection target area described in the first embodiment, a more flexible semiconductor pattern inspection can be performed. An example of this is shown below.
- FIG. 10 shows a flowchart of processing described in this embodiment.
- the procedure for generating a template image is the same as the portions 301 to 304 described in FIG. 3 of the first embodiment, and steps 1001 to 1004 in FIG. 10 correspond to this.
- the template image is selected in step 1003
- the secondary electron image and the reflected electron image are displayed separately, which region of the image is used as the template image, and which of the secondary electron image and the reflected electron image is used.
- the user may specify whether to use. Alternatively, it may be set in advance in a recipe or the like which of the secondary electron image and the reflected electron image is used as the template image according to the type of the sample.
- each of the die areas is representatively displayed as a secondary electron image, a backscattered electron image, or a composite image thereof, and the user selects which area image is used as a template image
- a secondary electron image or a reflected electron image may be used as a template image.
- the user can designate or automatically set which of the secondary electron image and the reflected electron image is used as the inspection image. In this way, it is possible to set which detector is used as the template image or the image to be inspected.
- step 1005 the pattern outline extracted in step 1004 is used to designate which pattern is used for designating the inspection target area.
- the inside or outside of the contour line is designated.
- step 1006 the contour line of the pattern selected in step 1005 is enlarged or reduced, and adjusted to a size desired by the user.
- the information specified in steps 1005 and 1006 is combined to be an inspection target area in step 1007. That is, the inspection target area is set using the enlarged or reduced pattern as a new template image. Note that the order of step 1005 and step 1006 may be interchanged.
- Processing after setting the inspection target area is the same as that in the first embodiment. That is, an inspection image is acquired, and it is determined whether each defect candidate included in the inspection image is included in the inspection target area specified above.
- a template image including a pattern on a wafer to be inspected in order to set an inspection target area is determined once and an image to be inspected is acquired and inspected later
- the image to be inspected may be acquired simultaneously with the acquisition of the template image.
- an image of an ideal pattern obtained by combining the images to be inspected can be used as a template image.
- the image to be inspected is captured to generate the template image, if the image to be inspected is stored in the memory, it is not necessary to acquire the image to be inspected again after selecting the inspection target region. Absent. Therefore, the image acquisition time can be shortened and an improvement in throughput can be expected.
- an image for comparison (comparison image) acquired together with the image to be inspected may be used as a template image.
- a comparison image is acquired, a pattern contour is extracted from the comparison image, and a process for setting the inspection target region is performed. Then, defect candidate extraction and defect determination processing are performed on the comparison image corresponding to the inspection image.
- the comparative image is usually an image of different dies and in an area having the same relative coordinates inside the die.
- Reference numerals 1101 and 1102 denote a secondary electron image and a reflected electron image, respectively.
- the secondary electron image 1101 is used as an inspection image
- the reflected electron image 1102 is used as a template image.
- a contour like 1103 is obtained.
- a contour such as 1104 is obtained.
- Reference numeral 1104 denotes an example in which the pattern contour 1103 is reduced.
- the contour 1104 and the secondary electron image 1101 that is the image to be inspected By superimposing the contour 1104 and the secondary electron image 1101 that is the image to be inspected, only a part of the inspection target area (1 to 4 of 1302) can be selected and inspected. In the case of this example, the brightness of the hole bottom can be accurately detected. Note that all or part of the images 1101 to 1105 may be displayed on the display unit or may not be displayed.
- the above enlargement or reduction ratio settings are adjusted on the screen as shown in FIG.
- the pattern By inputting the enlargement ratio in the input field 1203 on the GUI 1201, the pattern can be enlarged or reduced based on the numerical value.
- the user can check the enlarged / reduced pattern in real time using the slide bar 1204.
- an image 1202 in which the pattern contour is enlarged or reduced in accordance with the currently specified magnification is displayed.
- the setting means is an example and does not depend on this example.
- the operation of the pattern contour can be moved in addition to enlargement / reduction.
- a pattern to be operated can be designated on the GUI 1201, and operations such as enlargement / reduction or movement can be performed on some patterns in the image 1202.
- the example obtained by reducing the pattern obtained from the template image to be the inspection target area has been shown.
- the pattern obtained from the template image to be the inspection target area It can be inspected including abnormalities.
- the inspection including the contour portion of the actual pattern 1301 can be performed by setting the inspection target region 1302 (dotted line) obtained by enlarging the actual pattern 1301.
- the inspection target area can be designated using the area obtained by calculating the area obtained based on the contour line of the pattern.
- the area specified by the reduced pattern 1403 is subtracted from the area specified by the enlarged pattern 1804 with respect to the outline 1402 of the pattern 1401, and the generated area 1405 just surrounds the periphery of the outline 1402 of the pattern 1401. It becomes an area.
- a region 1405 generated by this calculation is set as a new template image.
- the second embodiment has been described as an example of deforming the template image, that is, an example of enlarging or reducing the pattern contour generated from the template image.
- the secondary electron image and the reflected electron image are matched with the designation of the inspection target region.
- This is also a feature. That is, it is possible to use different detector images for the template image and the image to be inspected.
- either a secondary electron image or a reflected electron image may be used for the template image and the image to be inspected, and should be appropriately selected.
- it is preferable to select an image from which the contour of the pattern can be extracted more accurately as the template image and it is preferable to select an image in which the portion that the user wants to inspect is clearly shown as the image to be inspected.
- a reflected electron image is used as a template image for a secondary electron image.
- a secondary electron image it is naturally possible to use a secondary electron image as a template image for a reflected electron image.
- the pattern can be selectively detected by using the secondary electron image as a template image with respect to the reflected electron image which is the inspection image.
- Example 3 describes a defect inspection apparatus that evaluates the quality of a pattern based on the positional relationship of defect candidates with respect to the extracted pattern and classifies the pattern for each quality.
- the completion is the degree of completeness of the actually formed pattern with respect to the ideal pattern. More specifically, the completion is not only a judgment of good / bad, but also a quantitative index that evaluates how much the evaluation items of the wiring pattern such as pattern interval and corner rounding are from the ideal value.
- the ideal value generally refers to a value determined by a circuit designer, such as a simulation value of lithography.
- the template image pattern is regarded as an ideal value, and the divergence of the actually captured pattern with respect to this is determined. evaluate. Therefore, it can be paraphrased as an evaluation value of the amount of deviation from the ideal pattern (template image).
- a pattern classification unit 1501 is provided in addition to FIG. 2 or instead of the defect candidate detection unit and the defect determination unit of FIG.
- the defect candidate detection unit and the defect determination unit are omitted for the sake of simplicity.
- each functional block shown in FIG. 15 may be realized by any method of hardware implementation, software implementation, or a combination of hardware implementation and software implementation, as in the first embodiment. .
- the pattern classification unit 1501 performs processing for classifying the pattern of the image to be inspected corresponding to the inspection target area, as will be described later. Therefore, it is necessary to input information on the inspection target area and the image to be inspected to the pattern classification unit 1501.
- FIG. 16 shows a flowchart of processing described in the present embodiment.
- the procedure for determining the template image and determining the inspection target area is the same as that in the first embodiment, and steps 1601 to 1605 are the same as those in steps 301 to 305 in FIG.
- Image acquisition (steps 1606 and 1607) after setting the inspection target region is the same as that in the first embodiment, and a description thereof will be omitted.
- step 1608 an image of the inspection target area is extracted from the image to be inspected. Since the pattern included in the inspected image includes foreign matter or lack of pattern, it is not always an ideal pattern. Therefore, a portion corresponding to the inspection target area extracted from the template image is extracted from the inspection image.
- step 1609 the images of the inspection target area extracted in step 1608 are classified. Details of the processing related to classification will be described later.
- step 1610 the classified result is displayed on the screen.
- the classification result may be statistically processed and displayed. This process will also be described later.
- a pattern is extracted by performing arithmetic processing such as binarization processing on the template image 1701 as in the first embodiment.
- the resulting pattern is 1702.
- the inspection target area 1703 is determined using the pattern 1702.
- a dotted line portion 1703 is an outline of a pattern included in 1702, and in this example, the inside of the outline is an inspection target area.
- an image of a part corresponding to the inspection target area 1703 is extracted from the inspected image 1704, and a number is attached to each of the extracted parts as in 1705.
- the inspection object region 1703 is overlaid on the inspected image 1704 and aligned, and numbers are sequentially assigned to the individual patterns.
- Reference numeral 1705 shows an example in which numbers 1 to 18 are assigned to the respective patterns surrounded by dotted lines.
- An image 1706 in which the images of the extracted regions are arranged in order using this number is shown.
- the patterns are classified by evaluating the shape difference and the positional relationship between the portion corresponding to the inspection target area of the image to be inspected and the inspection target area.
- the actual pattern here refers to the pattern of the image to be inspected, and includes patterns recognized as normal in addition to defect candidates due to pattern abnormalities.
- a deviation from the ideal pattern may be regarded as a normal pattern because it can be regarded as within an error range.
- the 1706 extracted patterns are binarized to obtain 1707. These images are classified according to the occupied area ratio of the white pattern portion 1707 and the position of the center of gravity. For example, when the white portion is included 95% or more, the white portion is 95% or less and the center of gravity is above half of the extraction region, the white portion is 95% or less and the center of gravity is below half of the extraction region. If the white portion is classified by 5% or less, these extracted images are classified as 1708. If classified in this way, for example, the number and ratio of normal patterns can be obtained, or the number of places where there is no pattern can be obtained.
- FIG. 18 shows a GUI 1801 for displaying the classification result.
- 1802 is an image obtained by superimposing an inspection target region (dotted line portion) on the inspection target image
- 1803 is a normal pattern ratio
- 1804 is an example showing details of other patterns and the ratio.
- These classifications may depend on manufacturing causes independently, and are important information for determining the cause of yield reduction. Thus, the ratio in the whole may be shown, or the number of patterns that match the classification condition may be displayed. If the classification result is displayed in a graph, it becomes easier to grasp the result.
- the above classification criteria, classification method, and result display method are merely examples for explaining the classification, and other classification criteria, classification methods, and result display methods may be used. If the user can set or change the classification standard, a more flexible classification process can be performed. As described above, it is easy to understand the inspection result by performing statistical processing to classify the patterns.
- the pattern enlargement / reduction described in the second embodiment can be applied to this embodiment.
- the template image obtained based on the image is used to extract the pattern contour of the sample, and the inside or outside of this pattern can be designated as the inspection target region.
- the user can distinguish the area of the pattern that the user is interested in from other areas, so that the defect that occurs in the pattern that the user is interested in can be distinguished from the defect that occurs in the other area to recognize the inspection result. It becomes possible. In addition, it is possible to easily evaluate the quality of the pattern specified in the inspection target area.
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Abstract
Description
102 レンズ
103 偏向器
104 対物レンズ
105 試料
106 試料台
107 電子線
108 二次電子
109 反射電子
110 レンズ制御回路
111 偏向制御回路
112 対物レンズ制御回路
113 アナログ/デジタル変換器
114 アドレス制御回路
115 画像メモリ
116 機構制御回路
117 表示部
118 制御部
119 画像処理部
120 入力部
122 二次電子検出器
123 反射電子検出器
124 移動ステージ
Claims (14)
- 電子線を照射して試料のパターンの欠陥を検査する荷電粒子線装置であって、
前記試料に前記電子線を照射して二次荷電粒子を検出する電子光学系と、
前記二次荷電粒子から得られた被検査画像に対して演算処理することで欠陥を検出する画像処理部と、
前記欠陥の画像を表示する表示部とを有し、
前記画像処理部は、
前記試料の画像に基づいて得られるテンプレート画像を用いて前記パターンの輪郭を抽出する輪郭抽出部と、
前記パターンの輪郭に基づいて検査対象領域を設定する検査対象領域設定部と、
前記被検査画像を前記被検査画像に対応する部分の画像と比較して欠陥候補を検出する比較演算部と、
前記欠陥候補が前記検査対象領域に含まれるか否かを判定し、前記検査対象領域に含まれる場合に前記欠陥候補を欠陥と判定する欠陥判定部とを有することを特徴とする荷電粒子線装置。 - 請求項1に記載の荷電粒子線装置において、
前記テンプレート画像は、複数の前記試料の画像を加算した画像であることを特徴とする荷電粒子線装置。 - 請求項1に記載の荷電粒子線装置において、
前記電子光学系は前記二次荷電粒子を検出する検出器を複数備え、
前記テンプレート画像と前記被検査画像は異なる検出器から得られた像であることを特徴とする荷電粒子線装置。 - 請求項1に記載の荷電粒子線装置において、
前記テンプレート画像は、前記被検査画像を用いて生成されることを特徴とする荷電粒子線装置。 - 請求項1に記載の荷電粒子線装置において、
前記被検査画像に対応する部分の画像として、前記テンプレート画像を用いることを特徴とする荷電粒子線装置。 - 請求項1に記載の荷電粒子線装置において、さらに、
検査対象領域を指示する入力手段を有し、
前記検査対象領域設定部は前記入力手段を通して行われたユーザの指示に基づいて前記検査対象領域を設定することを特徴とする荷電粒子線装置。 - 請求項1に記載の荷電粒子線装置において、
前記検査対象領域は前記パターンの内側または外側であることを特徴とする荷電粒子線装置。 - 請求項1に記載の荷電粒子線装置において、
前記検査対象領域設定部は、前記パターンの輪郭の全部または一部を、拡大または縮小して検査対象領域とすることを特徴とする荷電粒子線装置。 - 請求項8に記載の荷電粒子線装置において、
前記検査対象領域設定部は、前記拡大および縮小されたパターンの輪郭に基づいて得られる領域の差分を検査対象領域とすることを特徴とする荷電粒子線装置。 - 電子線を照射して試料のパターンの欠陥を検査する荷電粒子線装置であって、
前記試料に前記電子線を照射して二次荷電粒子を検出する電子光学系と、
前記二次荷電粒子から得られた被検査画像に対して演算処理することで欠陥を検出する画像処理部と、
前記欠陥の画像を表示する表示部とを有し、
前記画像処理部は、
前記試料の画像に基づいて得られるテンプレート画像を用いて前記パターンの輪郭を抽出する輪郭抽出部と、
前記パターンの輪郭に基づいて検査対象領域を設定する検査対象領域設定部と、
前記被検査画像における前記検査対象領域のパターンの出来ばえに応じて、当該パターンを分類するパターン分類部とを有することを特徴とする荷電粒子線装置。 - 請求項10に記載の荷電粒子線装置において、
前記出来ばえは、前記被検査画像における前記検査対象領域と前記検査対象領域との形状の差を用いて評価されることを特徴とする荷電粒子線装置。 - 請求項10に記載の荷電粒子線装置において、
前記表示部は、前記検査対象領域の分類結果を統計処理して表示することを特徴とする荷電粒子線装置。 - 荷電粒子線装置に接続されたコンピュータにおいて実行されるプログラムであって、
試料の画像に基づいて得られるテンプレート画像を用いて前記試料上のパターンの輪郭を抽出する輪郭抽出処理と、
前記パターンの輪郭に基づいて検査対象領域を設定する検査対象領域設定処理と、
前記試料の被検査画像を前記被検査画像に対応する部分の画像と比較して欠陥候補を検出する比較演算処理と、
前記欠陥候補が前記検査対象領域に含まれるか否かを判定し、前記検査対象領域に含まれる場合に前記欠陥候補を欠陥と判定する欠陥判定処理とを実行するプログラムを記録した記録媒体。 - 荷電粒子線装置に接続されたコンピュータにおいて実行されるプログラムであって、
試料の画像に基づいて得られるテンプレート画像を用いて前記試料上のパターンの輪郭を抽出する輪郭抽出処理と、
前記パターンの輪郭に基づいて検査対象領域を設定する検査対象領域設定処理と、
前記被検査画像における前記検査対象領域のパターンの出来ばえに応じて、当該パターンを分類するパターン分類処理とを実行するプログラムを記録した記録媒体。
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Cited By (1)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
WO2019038841A1 (ja) * | 2017-08-23 | 2019-02-28 | 株式会社日立ハイテクノロジーズ | 画像処理装置、方法、及び荷電粒子顕微鏡 |
Families Citing this family (15)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
JP5542478B2 (ja) * | 2010-03-02 | 2014-07-09 | 株式会社日立ハイテクノロジーズ | 荷電粒子線顕微鏡 |
JP6078234B2 (ja) * | 2012-04-13 | 2017-02-08 | 株式会社日立ハイテクノロジーズ | 荷電粒子線装置 |
JP6138460B2 (ja) * | 2012-11-16 | 2017-05-31 | 株式会社日立ハイテクノロジーズ | 荷電粒子線装置 |
TW201430336A (zh) * | 2013-01-23 | 2014-08-01 | Huang Tian Xing | 缺陷檢測方法、裝置及系統 |
US9483819B2 (en) * | 2013-01-29 | 2016-11-01 | Kla-Tencor Corporation | Contour-based array inspection of patterned defects |
JP6144584B2 (ja) * | 2013-09-18 | 2017-06-07 | 株式会社イシダ | 破損検査装置 |
JP2017027651A (ja) * | 2013-10-31 | 2017-02-02 | 株式会社日立ハイテクノロジーズ | 荷電粒子線装置およびプログラム記憶媒体 |
KR101955268B1 (ko) * | 2014-12-10 | 2019-03-08 | 가부시키가이샤 히다치 하이테크놀로지즈 | 결함 관찰 장치 및 결함 관찰 방법 |
JP6333871B2 (ja) | 2016-02-25 | 2018-05-30 | ファナック株式会社 | 入力画像から検出した対象物を表示する画像処理装置 |
US10339262B2 (en) * | 2016-03-29 | 2019-07-02 | Kla-Tencor Corporation | System and method for defining care areas in repeating structures of design data |
JP6694362B2 (ja) * | 2016-09-30 | 2020-05-13 | 富士フイルム株式会社 | 画像検査方法及び装置、プログラム並びに画像記録システム |
JP2019020292A (ja) * | 2017-07-19 | 2019-02-07 | 株式会社ニューフレアテクノロジー | パターン検査装置及びパターン検査方法 |
CN109064441B (zh) * | 2018-06-19 | 2020-07-28 | 深圳市华星光电半导体显示技术有限公司 | 基于独立成分自适应选择的Mura侦测方法 |
CN112102293B (zh) * | 2020-09-16 | 2021-03-02 | 哈尔滨市科佳通用机电股份有限公司 | 铁路货车三角孔异物快速检测方法 |
JPWO2022080109A1 (ja) * | 2020-10-15 | 2022-04-21 |
Citations (6)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
JP2005142552A (ja) * | 2003-10-15 | 2005-06-02 | Matsushita Electric Ind Co Ltd | 多層配線構造の不良解析方法および不良解析装置 |
JP2006098163A (ja) * | 2004-09-29 | 2006-04-13 | Dainippon Screen Mfg Co Ltd | 欠陥検出装置および欠陥検出方法 |
WO2006112466A1 (ja) * | 2005-04-19 | 2006-10-26 | Matsushita Electric Industrial Co., Ltd. | 鏡面基板の異物検査方法 |
JP2009037939A (ja) * | 2007-08-03 | 2009-02-19 | Hitachi High-Technologies Corp | 走査型電子顕微鏡 |
JP2009194051A (ja) * | 2008-02-13 | 2009-08-27 | Hitachi High-Technologies Corp | パターン生成装置およびパターン形状評価装置 |
JP2010164333A (ja) * | 2009-01-13 | 2010-07-29 | Toshiba Corp | 欠陥検査装置および欠陥検査方法 |
Family Cites Families (8)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
JPS61140804A (ja) | 1984-12-14 | 1986-06-27 | Hitachi Ltd | パタ−ン検査装置 |
JPH05142153A (ja) * | 1991-11-25 | 1993-06-08 | Mazda Motor Corp | 照射を用いた表面状態検査方法及びその装置 |
US6107637A (en) * | 1997-08-11 | 2000-08-22 | Hitachi, Ltd. | Electron beam exposure or system inspection or measurement apparatus and its method and height detection apparatus |
US20060060781A1 (en) * | 1997-08-11 | 2006-03-23 | Masahiro Watanabe | Charged-particle beam apparatus and method for automatically correcting astigmatism and for height detection |
JP2000030652A (ja) | 1998-07-10 | 2000-01-28 | Hitachi Ltd | 試料の観察方法およびその装置 |
US6252412B1 (en) * | 1999-01-08 | 2001-06-26 | Schlumberger Technologies, Inc. | Method of detecting defects in patterned substrates |
WO2007074770A1 (ja) * | 2005-12-26 | 2007-07-05 | Nikon Corporation | 画像解析によって欠陥検査を行う欠陥検査装置 |
JP2009186328A (ja) | 2008-02-06 | 2009-08-20 | Tokyo Seimitsu Co Ltd | 検査領域設定方法、パターン検査方法及びパターン検査装置 |
-
2010
- 2010-12-06 JP JP2010271016A patent/JP5568456B2/ja active Active
-
2011
- 2011-10-24 KR KR1020137014573A patent/KR101479889B1/ko active IP Right Grant
- 2011-10-24 WO PCT/JP2011/005915 patent/WO2012077271A1/ja active Application Filing
- 2011-10-24 US US13/991,948 patent/US9342878B2/en active Active
Patent Citations (6)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
JP2005142552A (ja) * | 2003-10-15 | 2005-06-02 | Matsushita Electric Ind Co Ltd | 多層配線構造の不良解析方法および不良解析装置 |
JP2006098163A (ja) * | 2004-09-29 | 2006-04-13 | Dainippon Screen Mfg Co Ltd | 欠陥検出装置および欠陥検出方法 |
WO2006112466A1 (ja) * | 2005-04-19 | 2006-10-26 | Matsushita Electric Industrial Co., Ltd. | 鏡面基板の異物検査方法 |
JP2009037939A (ja) * | 2007-08-03 | 2009-02-19 | Hitachi High-Technologies Corp | 走査型電子顕微鏡 |
JP2009194051A (ja) * | 2008-02-13 | 2009-08-27 | Hitachi High-Technologies Corp | パターン生成装置およびパターン形状評価装置 |
JP2010164333A (ja) * | 2009-01-13 | 2010-07-29 | Toshiba Corp | 欠陥検査装置および欠陥検査方法 |
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Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
WO2019038841A1 (ja) * | 2017-08-23 | 2019-02-28 | 株式会社日立ハイテクノロジーズ | 画像処理装置、方法、及び荷電粒子顕微鏡 |
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US9342878B2 (en) | 2016-05-17 |
KR101479889B1 (ko) | 2015-01-06 |
KR20130108413A (ko) | 2013-10-02 |
JP5568456B2 (ja) | 2014-08-06 |
JP2012122730A (ja) | 2012-06-28 |
US20130265408A1 (en) | 2013-10-10 |
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