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Camera/Vision for Geo-Location & Geo-Identification John S. Zelek Intelligent Human Machine Interface Lab Dept. of Systems Design Engineering University.

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Presentation on theme: "Camera/Vision for Geo-Location & Geo-Identification John S. Zelek Intelligent Human Machine Interface Lab Dept. of Systems Design Engineering University."— Presentation transcript:

1 Camera/Vision for Geo-Location & Geo-Identification John S. Zelek Intelligent Human Machine Interface Lab Dept. of Systems Design Engineering University of Waterloo

2 Why can’t we use GPS everywhere? Urban canyons Indoor navigation 1. Introduction - 2/20

3 What we are trying to do Camera Inertial Altimeter, Compass +/- GPS = Accuracy + Location + Maps + 1. Introduction – 3/20

4 Applications 1. Introduction – 4/20

5 SLAM Given: Dead-reck. Ext. sensor Waypoints Not Known: Map GPS 2. SLAM – 5/20

6 Trees as landmarks for triangulation 2. SLAM - 6/20

7 Daniel Asmar Slide 7 Differentiating different trees 2. SLAM – 7/20

8 2. SLAM – 8/20

9 Object Category Recognition 3. Object Detection & Recognition – 9/20

10 Classes of Objects vs. Instances 2 instances of an individual object (space shuttle) 2 instances of an object face class 2 instances of an object motorcycle class 3. Object Detection & Recognition – 10/20

11 Visual vs. Functional classes There is a wide variation in the appearance of objects that are categorized by function. We focus only on categories related by some visual consistency only! 3. Object Detection & Recognition – 11/20

12 Challenges changes of viewpoint transformation (translation, rotation, scaling, affine), out-of-plane (foreshortening) illumination differences background clutter occlusion intra-class variation 3. Object Detection & Recognition – 12/20

13 Ours Others Repeatability of our detector appears to be better! 3. Object Detection & Recognition – 13/20

14 Object Graphs 3. Object Detection & Recognition – 14/20

15 3. Object Detection & Recognition – 15/20

16 3. Object Detection & Recognition – 16/20

17 4. Structure from Stereo – 17/20 Structure from stereo

18 Structure from motion 4. Structure From Motion – 18/20

19 5. Context Recognition – 19/20

20 6. Closing – 20/20

21 Extra. Features for Recognition & Structure – 21/20

22 Extra. Features for Recognition & Structure – 22/20


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