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3D reconstruction from uncalibrated images

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Presentation on theme: "3D reconstruction from uncalibrated images"— Presentation transcript:

1 3D reconstruction from uncalibrated images
Young Ki Baik CV Lab

2 Contents Introduce Conditions for 3D reconstruction and Solution
Basic geometrical theory Overview – 3D reconstruction Conditions for 3D reconstruction and Solution Correspondence Camera parameters and motion Results Experimental results and demonstration Future Works

3 Camera system for obtaining images
Introduction(1) Mapping to images 3D point 3D object mapping Image plane Camera Camera Camera system for obtaining images

4 3D reconstruction system to make 3D object
Introduction(2) 3D reconstruction from images Point correspondence Camera parameter and motion 3D point 3D object Camera Camera 3D reconstruction system to make 3D object

5 3D reconstruction from uncalibrated images
Overview Image Sequence Feature Extraction/ Matching Relating Image Projective Reconstruction Auto-Calibration Dense Matching 3D Model Building

6 Conditions for 3D reconstruction
Correspondence Feature extraction Harris corner method SIFT method Scale Invariant Feature Transform Initial feature matching Template matching (Image base descriptor) Descriptor (SIFT-d, PCA-d, SIFT-d+PCA-d, …) Feature matching RANdom SAmple Consensus To eliminate outlier

7 Conditions for 3D reconstruction
Correspondence Guide matching To get more correspondence Using previous features and Geometry information About 2 times more correspondence Geometry based distance value using fundamental matrix Correlation based cost value

8 Conditions for 3D reconstruction
Camera parameter and motion (Using Self-calibration) Dual Absolute Conic Hartley ’94 / Hartley ’99, David Nistér IJCV 2004 ( + cheirality solution ) Dual Absolute Quadric Triggs’97 M.Pollefeys et al. PAMI’98, ECCV 2002, IJCV 2004 Dual Absolute Quadric M. Pollefeys

9 Conditions for 3D reconstruction
Constraints for self-calibration Constant internal parameter Fixed camera K1 = K2 = … Known internal parameter Rectangular pixel : s = 0 Square pixel : s = 0, fx = fy Principle point known : ( ux , uy ) = image center

10 Experiments and results
Result using rig Rig Calibration using vanishing point DAQ (using weighted linear equation) Using the calibration rig information Using the manual vanishing points input Self-calibration result using rig correspondence only Self-calibration result is similar to the method using calibration rig.

11 Experiments and results
Real scene test Assuming that self-calibration works well

12 Experiments and results
Manual input to check self-calibration results Points : Correspondence information Line : Connection information

13 Experiments and results
Test 1 (Pinball machine : 3 images) Key points Match Fig.1 Fig.2 Fig.3 5476 5609 8530 Fig.1-2 Fig.2-3 Fig.1-2-3 Initial match 146 196 41 RANSAC 104 124 Guide 230 160 67 281 202

14 Experiments and results
Test 2 (Mask : 3 images) Key points Match Fig.1 Fig.2 Fig.3 1837 1420 1888 Fig.1-2 Fig.2-3 Fig.1-2-3 Initial match 102 158 4 RANSAC 35 100 Guide 150 258 23 78 186

15 Experiments and results
Test 3 (Building : 6 images) Key points Match Fig.1 Fig.2 Fig.6 959 1064 1177 Fig.1-2 Fig.2-3 Fig.1~6 Initial match 386 377 30 RANSAC 227 254 Guide 465 484 35 308 309

16 Experiments and results
Test 4 (House : 5 images) Key points Match Fig.1 Fig.2 Fig.5 3013 3084 2873 Fig.1-2 Fig.2-3 Fig.1~5 Initial match 1023 973 15 RANSAC 656 716 Guide 1186 1216 54 911 909

17 Future works Quasi-Dense matching technique and reconstruction
To get more reliable results Full side 3D reconstruction Using attaching algorithm Bundle adjustment algorithm To reduce error Full 3D reconstruction system Dense matching and 3D modeling


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