1 / 26

Correspondence-Free Determination of the Affine Fundamental Matrix

2007. 2. 6 (Tue) Young Ki Baik, Computer Vision Lab. . Correspondence-Free Determination of the Affine Fundamental Matrix. Correspondence-Free Determination of the Affine fundamental Matrix. References Correspondence-Free Determination of the Affine Fundamental Matrix

purity
Télécharger la présentation

Correspondence-Free Determination of the Affine Fundamental Matrix

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. 2007. 2. 6 (Tue) Young Ki Baik, Computer Vision Lab. Correspondence-Free Determinationof the Affine Fundamental Matrix

  2. Correspondence-Free Determination of the Affine fundamental Matrix • References • Correspondence-Free Determination of the Affine Fundamental Matrix • Stefan Lehmann et. al. PAMI 2007 • Radon-based Structure from Motion Without Correspondences • Ameesh Makadia et. al. CVPR 2005 • Robust Fundamental Matrix Determination without Correspondences • Stefan Lehmann et. al. APRS 2005

  3. Correspondence-Free Determination of the Affine fundamental Matrix • Contents • The conventional method of SfM • Features of the proposed method • Theory of the proposed algorithm • Experimental results • Discussion

  4. Correspondence-Free Determination of the Affine fundamental Matrix • Conventional SfM Image Sequence Feature Extraction/ Matching Relating Image Projective Reconstruction Auto-Calibration Dense Matching 3D Model Building

  5. Correspondence-Free Determination of the Affine fundamental Matrix • The Problem of conventional SfM • The high sensitivity of fundamental matrix • Noise and outlier correspondences in feature data severely affect the precision of the fundamental matrix • Incomplete 3D reconstruction

  6. Correspondence-Free Determination of the Affine fundamental Matrix • The Key Feature • Correspondence-free • Finding Correspondence (X) • Illumination changes-free (?) • Intensity value (X) • Position of features (O) • Limitation • Occlusion ? (X) • Affine camera only!!

  7. Correspondence-Free Determination of the Affine fundamental Matrix • Parallel projection • Orthographic projection

  8. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Assumption • We have 3-dimensional N features. • The 3D feature space is represented by,

  9. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Assumption • Parallel projection model determines the 2D feature projections along the lines that are running parallel to the view axis (z-axis) of the camera. • The model considers a continuous projection plane with infinite extent. • The corresponding 2D projection data is…

  10. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Fourier spectra • The Fourier spectra of and can be denoted as

  11. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • 2-view case • The 3D correspondence feature point • Relation between images • The 3D frequency vector

  12. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • 2-view case • Relation between 3D spectrums The equation shows that rotation R also establishes the transformation between corresponding frequency indices in the 3D Fourier spaces of the original and the transformed spectrum or scene.

  13. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Matching line • The magnitudes of two spectra along these lines will be identical, while the phases will show a linear offset dependent upon the translational component of transformation. • The proposed method is to detect these matching lines.

  14. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Matching line angle pair • Angle pair of the matching lines with respect to the axes of the frequency spectra F and F’, respectively.

  15. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Analysis of the transformation parameters • as the corresponding frequency locations along the matching lines of the spectrum F of the first and the spectrum F’ of the second set of 2D features, respectively. • It follows that,

  16. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Analysis of the transformation parameters

  17. Correspondence-Free Determination of the Affine fundamental Matrix • Mathematical Model • Derivation of a 3D rotation matrix

  18. Correspondence-Free Determination of the Affine fundamental Matrix • Estimation of the fundamental matrix • By using 3D rotation matrix, we can obtain the relation between 2D projection point (x’,y’) of a 3D feature (x,y,z) with translation.

  19. Correspondence-Free Determination of the Affine fundamental Matrix • Estimation of the fundamental matrix • In the orthographic projection case, all epipolar lines are parallel. • Then we can denote the epipolar line of 2D feature point (x,y) as

  20. Correspondence-Free Determination of the Affine fundamental Matrix • Estimation of the fundamental matrix

  21. Correspondence-Free Determination of the Affine fundamental Matrix • Estimation of the fundamental matrix

  22. Correspondence-Free Determination of the Affine fundamental Matrix • Estimation of matching line angle • For the practical purpose, corresponding discrete spectra should be defined as follows.

  23. Correspondence-Free Determination of the Affine fundamental Matrix • Estimation of matching line angle • The final object function • Discrete Fourier-Mellin transformation method • To find out the matching line (According to the well known shift theorem of the FT, a shift in the space domain corresponds to a phase shift in the frequency domain.)

  24. Correspondence-Free Determination of the Affine fundamental Matrix • Overall flow

  25. Correspondence-Free Determination of the Affine fundamental Matrix • Experimental result • test images : telephoto lens • Feature points : Harris corner detection method • Ideal epipolar lines are the horizontal lines. • The proposed method shows us good result relative to conventional methods.

  26. Camera Calibration Methods for Wide Angle view • Discussion • Key feature • Correspondence-free method for obtaining the fundamental matrix is presented. • Matching line exists between the Fourier transformed data. • Limitation • Proposed method • Considers only affine projection model • Does not treat occlusion problem • Future work • Applying projective projection model

More Related