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Image Based Measurement

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Photogrammetry ... Long Range Photogrammetry: Measurements based on aerial ... Close Range Photogrammetry: Industrial 2D- and 3D-measurements, Measurements at ... – PowerPoint PPT presentation

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Title: Image Based Measurement


1
Image Based Measurement
  • Heimo Ihalainen

2
Image Based Measurement Definition
  • Using images ( 2D-data) and computational
    methods to produce measurement results
  • Measurement uncertainty and measurement
    information are important issues as in all
    measurement
  • Using simple or demanding methods depending on
    measurement task at hand
  • Moving or still images

3
Contents
  • Areas Close to Image Based Measurement
  • Important Technical Development
  • Developing Application Fields
  • Applications Development at TUT/MIT
  • Conclusion

4
Areas Close to Image Based Measurement
image processing
image based measurement
photogrammetry
image analysis
machine vision
  • Strong new areas developing medical imaging,
    tomography, image noise analysis/processing,
    laser lighting etc

5
Areas Close to Image Based Measurement
  • Image Processing
  • Basic image operations, Advanced operations
    often high speed demand
  • Moving and still images used everywhere where
    digital images are used
  • Special Application Areas Image compression,
    Television and video, Games, Presentation
    graphics
  • Special Skills Vast store of methods, Fast
    on-line operation

6
Areas Close to Image Based Measurement
  • Image Analysis
  • Analysis and feature extraction from images
  • Statistical procedures for complex tasks
  • High intensity computation
  • Mostly still images not limited to camera
    images
  • Special Skills New computational methods, stereo
    image analysis, Tomography analysis, Multivariate
    images
  • Application Areas Medical image analysis,
    Criminology, Scientific applications Astronomy,
    Application of aerial and satellite images,
    Technical diagnostics

7
Areas Close to Image Based Measurement
  • Machine Vision
  • Measurements and on-line control based on moving
    image cameras
  • Special lighting arrangements often color,
    sometimes laser, lightning effects
  • Robot Vision Copying human vision, Artificial
    (machine) intelligence
  • Special Skills Fast operation, Intelligent ways
    to arrange light, Stereo vision, Process control,
    Stand-alone application platforms
  • Drawbacks Mostly analog cameras, Simple
    processing because of limited time

8
Areas Close to Image Based Measurement
  • Photogrammetry
  • Spatial measurements based on camera images,
    sometimes with laser lighting and special targets
  • Long Range Photogrammetry Measurements based on
    aerial and satellite photographs, Cartography
  • Close Range Photogrammetry Industrial 2D- and
    3D-measurements, Measurements at arceological
    excavations, Quality assurance
  • Special Skills Stereo and multi camera imaging,
    Image registration, 3D Stereo vision, Measurement
    accuracy analysis, Laser lighting, Camera
    calibration

9
Important Technical Development
  • Imaging Technology
  • CCD-, CMOS- and layered image sensors
  • covering area from infrared to ultraviolet
  • matrix- and line-sensors
  • color camera technology BAYER-matrix,
    microlenses
  • Digital moving image
  • fast, low noise sometimes needs special cooling
  • still limited by information flow speeds, some
    new buses under development IEEE 1394 (B)
  • Digital still cameras
  • now market leaders, less noisy than film cameras
  • Other electronic imaging
  • electronically readable film for electromagnetic-
    and beta-radiation applications
  • Computational optics

10
Important Technical Development
  • Computers
  • Nice speed development
  • image based applications are sometimes quite
    demanding for computer speed and memory
  • Compact size, Low power usage
  • enabling mobile usage
  • imaging mobile devices
  • Developing 64 bit processors
  • memory limit moving from 4 GB

11
Important Technical Development
  • Communications
  • Internet reaching useful speed for image
    applications
  • Computer connections are getting simpler to use
    and faster
  • Wireless connections allow mobile operation and
    are useful also in difficult environments

12
Important Technical Development
  • Computational Methods (fast development)
  • Pattern classification and clustering
  • Digital filtering linear and non-linear methods
  • Image registration and alignment
  • Multivariate image analysis
  • Standard computer packages for machine vision
  • Tomography, multi image stereology, level set
    methods, transforms, texture analysis
  • Computational optics wavefront coding, confocal
    image processing (tomography)

13
Fast Developing Application Fields
  • Machine vision
  • Computer imaging
  • Digital TV and video
  • Digital still cameras
  • Cameras in mobile phones
  • Computational imaging
  • Computer Tomography
  • Security Applications

14
Developing Application Fields
  • Automation of former human tasks in image
    applications
  • ex. quality assurance and classification,
    cartography, human activity monitoring
  • Totally new application areas
  • mobile cameras and GSM/GPRS/3G (digital still
    cameras, video clips) in inspection and
    trouble-shooting

15
Development at TUT/MIT
  • Measurement of paper quality
  • formation (distribution of basis weight),
  • surface form and profile
  • printability and print quality
  • Flow measurement
  • Measurement of wood
  • spatial measures
  • measurement of quality
  • Analysis of camera sensors
  • imaging and noise properties

16
Measurement of Paper Quality
  • 2D-spectral analysis has been our main method to
    texture analysis

17
Measurement of Paper Quality
  • Rings around origo contain variation on different
    scales
  • Sectors contain variation in different directions
  • 1D-spectrum can be computed by cumulating the
    variation on some axis of 2D-spectrum
  • some scale parameters computed from 1D-spectrum
    correlate better with human visual experience

18
Several 2D Measurements
  • Example
  • board 200 g/m2
  • uncoated
  • flexo printed
  • Measurements (basis weight, pressure load,
    optical scan) made so that they cover partially
    the same area
  • Analysis of the variation in formation scale

19
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20
Analysis
  • The dependencies between different measured
    quantities can be displayed
  • xy-plot (upper)
  • probability density and linearity fit (lower)
  • High statistic reliability is achieved because
    there degree of freedom is high

21
Measurement Bubble Size Distribution
  • Back light measurement
  • Segmentation, size, direction and form analysis
    on a series of images

22
Development of Wood Quality Measurement
23
Using 2D-spectrum
  • Cartesian and polar coordinates

24
Thickness field of annual rings
25
Using Annual Ring Texture
  • Detecting flaws in texture field

26
Using Images from Side
27
To Detect Quality and Kind
  • Textural and color parameters can be used
  • This example textural parameters
  • horizontal average wavelength
  • vertical average wavelength

28
Image Sensor Noise
  • Computing photon transfer curve from sample
    images
  • On right side Canon D30 (CMOS), Nikon D70 (CCD),
    Sigma SD10 (Foveon)

29
Conclusion
  • Image based measurement is in fast development
    phase
  • In future large percentage of all measurements
    will be based on images
  • non-touching
  • good statistical accuracy achievable
  • Much development is going on and is still needed
  • Connection between sensor technology and image
    applications (TUT/MIT)
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