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Distinctive Image Features from Scale-Invariant Keypoints Presenter :JIA-HONG,DONG Advisor : Yen- Ting, Chen 1 David G. Lowe International Journal of Computer.

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Presentation on theme: "Distinctive Image Features from Scale-Invariant Keypoints Presenter :JIA-HONG,DONG Advisor : Yen- Ting, Chen 1 David G. Lowe International Journal of Computer."— Presentation transcript:

1 Distinctive Image Features from Scale-Invariant Keypoints Presenter :JIA-HONG,DONG Advisor : Yen- Ting, Chen 1 David G. Lowe International Journal of Computer Vision,Volume 60 Issue 2, Pages 91 – 110, 2004.

2 Outline  Introduction  Methodology  Recognition examples  Simulation and testing  Conclusion 2

3 Introduction  Scale Invariant Feature Transform(SIFT) Object and scene recognition Video Tracking Robotic mapping and navigation Image stitching 3D modeling Gesture recognition Match moving 3

4 Introduction  Advantage The features are invariant:  Image scaling  Image rotation  Illumination  Noise  Camera viewpoint High performance:  High accuracy  Near real-time 4

5 Introduction  Major stages of computation: Scale-space extrema detection Keypoint localization Orientation assignment Keypoint descriptor Matching features(nearest neighbor) 5

6 Methodology  Detection of scale-space extrema Convolution image subtraction 6.....(1).....(2).....(3)

7 Methodology 7

8 (К-1) is a constant factor σ 2 is scale invariant as studied by Lindeberg (1994) σ 2 Δ 2 G is maxima and minima image features as studied by Mikolajczyk(2002) 8.....(4).....(5).....(6)

9 Methodology 9

10  Database 32 real images:  Outdoor scenes  Human faces  Aerial photographs  Industrial images 10

11 Methodology  Database Transformations:  Rotation  Scaling  Brightness  Contrast  Noise 11

12 Methodology  Local extrema detection 12

13 Methodology  Local extrema detection 13

14 Methodology  Frequency of sampling in scale 14

15 Methodology  Accurate keypoint localization Using Taylor expansion x=(x, y, σ ) T is the offset from this point 15.....(3).....(8).....(9)

16 Methodology 16.....(10)

17 Methodology 17

18 Methodology 18

19 Methodology  Orientation assignment L(x,y) is the sample image. Θ(x,y) is orientation m(x,y) is the gradient magnitude 19...(11).....(12)

20 Methodology  Orientation histogram A region around the keypoint 36 bins covering the 360 degree range of orientations  Added weighted A Gaussian window σ=1.5 20

21 Methodology  The local image descriptor 21

22 Methodology  Descriptor testing 22

23 Methodology  Descriptor representation 4x4 array of histograms 8 orientation bins 4x4x8 = 128 element feature vector 23

24 Methodology  Keypoint matching Minimum Euclidean distance 24

25 Methodology  Keypoint matching 25

26 Methodology  Application to object recognition Need 3 features at least  Higher probability 26

27 Recognition examples  Descriptor testing 27

28 Recognition examples  Sensitivity to affine change 28

29 Recognition examples  Matching to large databases 29

30 Recognition examples 30

31 Recognition examples 31

32 Simulation and testing 32

33 Simulation and testing 33

34 Conclusion  SIFT keypoints described are particularly useful.  A high-dimensional vector represents the image gradients within a local region of the image.  Near real-time performance on standard PC hardware. 34

35 Conclusion  Systematic testing is needed on data sets with full 3D viewpoint.  Feature sets are likely to contain both prior and learned features. 35

36 36 Thank you for your attention


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