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Motion from image and inertial measurements (additional slides) Dennis Strelow Carnegie Mellon University.

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Presentation on theme: "Motion from image and inertial measurements (additional slides) Dennis Strelow Carnegie Mellon University."— Presentation transcript:

1 Motion from image and inertial measurements (additional slides) Dennis Strelow Carnegie Mellon University

2 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 2 Outline Robust image feature tracking (in detail) Lucas-Kanade and real sequences The “smalls” tracker Motion from omnidirectional images

3 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 3 Robust image feature tracking: Lucas- Kanade and real sequences (1) Combining image and inertial measurements improves our situation, but… we still need accurate feature tracking tracking some sequences do not come with inertial measurements

4 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 4 Robust image feature tracking: Lucas- Kanade and real sequences (2) better feature tracking for improved 6 DOF motion estimation remaining results will be image-only

5 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 5 Robust image feature tracking: Lucas- Kanade and real sequences (3) Lucas-Kanade has been the go-to feature tracker for shape-from-motion minimizes a correlation-like matching error using general minimization evaluates the matching error at only a few locations subpixel resolution

6 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 6 Robust image feature tracking: Lucas- Kanade and real sequences (4) Additional heuristics used to apply Lucas- Kanade to shape-from-motion: task:heuristic: choose features to trackhigh image texture identify mistracked, occluded, no-longer-visible convergence, matching error handle large motionsimage pyramid

7 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 7 Robust image feature tracking: Lucas- Kanade and real sequences (5) But Lucas-Kanade performs poorly on many real sequences…

8 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 8 Robust image feature tracking: the “smalls” tracker (1) smalls is a new feature tracker targeted at 6 DOF motion estimation exploits the rigid scene assumption eliminates the heuristics normally used with Lucas-Kanade SIFT is an enabling technology here

9 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 9 Robust image feature tracking: the “smalls” tracker (2) First step: epipolar geometry estimation use SIFT to establish matches between the two images get the 6 DOF camera motion between the two images get the epipolar geometry relating the two images

10 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 10 Robust image feature tracking: the “smalls” tracker (3)

11 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 11 Robust image feature tracking: the “smalls” tracker (4)

12 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 12 Robust image feature tracking: the “smalls” tracker (5) Second step: track along epipolar lines use nearby SIFT matches to get initial position on epipolar line exploits the rigid scene assumption eliminates heuristic: pyramid

13 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 13 Robust image feature tracking: the “smalls” tracker (6) Third step: prune features geometrically inconsistent features are marked as mistracked and removed clumped features are pruned eliminates heuristic: detecting mistracked features based on convergence, error

14 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 14 Robust image feature tracking: the “smalls” tracker (7) Fourth step: extract new features spatial image coverage is the main criterion required texture is minimal when tracking is restricted to the epipolar lines eliminates heuristic: extracting only textured features

15 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 15 Robust image feature tracking: the “smalls” tracker (8)

16 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 16 Robust image feature tracking: the “smalls” tracker (9) left: odometry onlyright: images only average error: 1.74 m maximum error: 5.14 m total distance: 230 m

17 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 17 Robust image feature tracking: the “smalls” tracker (10) Recap: exploits the rigid scene and eliminates heuristics allows hands-free tracking for real sequences can still be defeated by textureless areas or repetitive texture

18 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 18 Outline Robust image feature tracking (in detail) Motion from omnidirectional images

19 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 19 Motion from omnidirectional images (1)

20 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 20 Motion from omnidirectional images (2)

21 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 21 Motion from omnidirectional images (3)

22 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 22 Motion from omnidirectional images (4)

23 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 23 Motion from omnidirectional images (5) left: non-rigid cameraright: rigid camera squares: ground truth points solid: image-only estimates dash-dotted: image-and-inertial estimates

24 Dennis Strelow -- Motion estimation from image and inertial measurements – January 6, 2005 24 Motion from omnidirectional images (6) In this experiment: omni images conventional images + inertial have roughly the same advantages But in general: inertial has some advantages that omni images alone can’t produce omni images can be harder to use


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