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Outline

Stefan Hinterstoisser , Stefan Holzer , Cedric Cagniart , Slobodan Ilic,Kurt Konolige , Nassir Navab , Vincent Lepetit Department of Computer Science, CAMP, Technische Universit¨at M¨unchen (TUM), Germany WillowGarage , Menlo Park, CA, USA

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Outline

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  1. Stefan Hinterstoisser, Stefan Holzer, Cedric Cagniart, Slobodan Ilic,KurtKonolige, Nassir Navab, Vincent Lepetit Department of Computer Science, CAMP, TechnischeUniversit¨atM¨unchen (TUM), Germany WillowGarage, Menlo Park, CA, USA IEEE International Conference on Computer Vision (ICCV) 2011 Multimodal Templates for Real-Time Detection of Texture-less Objects in Heavily Cluttered Scenes

  2. Outline • Goal &Challenges • Related Work • Modality Extraction • Image Cue • Depth Cue • Similarity Measure • Efficient Computation • Experiments

  3. Goal

  4. Challenges • Objects under different poses over heavily cluttered background • Online learning • Real-time object learning and detection

  5. Related Work • Solving the problem of multi-view 3D object detection has two main categories: • Learning Based Methods • Template Matching • Learning Based Methods: • Require a large amount of training data • Require long offline training phase • Expensive learning for new object

  6. Related Work • Template Matching: • Better adapted to low textured objects than feature point approaches • Easily update template for new object • Direct matching is inappropriate for real-time. • Others: • Matching in Range Data : • Construct full 3D CAD model of the object

  7. Outline • Goal &Challenges • Related Work • Modality Extraction • Image Cue • Depth Cue • Similarity Measure • Efficient Computation • Experiments

  8. Modality Extraction-Image Cue • Image Cue: • Image gradientsare proved to be discriminant and robustto illumination change and noise. • Normalized gradients and not their magnitudes makes the measure robust to contrast changes. • We compute the normalized gradients on each color channel for input RGB color image. • Input image , gradient map at location x:

  9. Modality Extraction-Image Cue • Keep only the gradients whose norms are larger than a threshold. • Assign to the gradient whose quantizedorientationoccurs most in a 3 × 3 neighborhood. • The similarity measurement function fg: Og(r): the normalized gradient map of thereference image at location r Ig(t): the normalized gradient map of the input image at location t

  10. Modality Extraction-Image Cue Quantizing the gradient orientations Input color image Gradient image computed on gray image Gradient image computed with our approach

  11. Modality Extraction-Depth Cue • Depth Cue • We use a standard camera and a aligned depth sensor to obtain depth map. • Use quantized surface normal computed on a dense depth field forour template representation. • Consider the first order Taylor expansion of the depth function D(x): • Within a patch defined around x, each pixel offset dx yields an equation.

  12. Modality Extraction-Depth Cue • Estimate an optimal gradient in least-square. • Depth gradient corresponds to a tangent plane going through three points X, X1 and X2: vector along the line of sight that goes through pixel x (obtain from parameters of depth sensor)

  13. Modality Extraction-Depth Cue • The normal to the surface can be estimated as the normalized cross-product of X1 − X and X2 − X. • Within a patch defined around x,this would not be robust around occluding contours. • Inspired by bilateral filtering, we ignore the pixels whose depth difference with the central pixel (X) is above a threshold. +Z X Tangent plane D(x) Depth sensor Normal of X

  14. Modality Extraction-Depth Cue • Quantizethe normal directions into n0 bins. • Assign to each location the quantized value that occurs most often in a 5 × 5 neighborhood. • The similarity measurement function fD: OD(r): the normalized surface normal of thereference image at location r ID(t): the normalized surface normal of the input image at location t

  15. Modality Extraction-Depth Cue Quantizing the surface normals Input image The corresponding depth image Surface normalscomputed with our approach. Details are clearly visible and depth discontinuities are well handled.

  16. Outline • Goal &Challenges • Related Work • Modality Extraction • Image Cue • Depth Cue • Similarity Measure • Efficient Computation • Experiments

  17. Similarity Measure • We define a template as T = ({Om} m∈M, P ). P: a list of pairs (r,m) made of the locations rof a discriminant feature in modality m. • Each template is createdby extractingfor each “m” a set of its most discriminant features (P). P:(rk, surface normals) r: record the feature location with respect to object center (C). C P:(ri, gradients)

  18. Similarity Measure • The object measurement energy function : T: ({Om} m∈M, P ) c: the detected location (could be object center) R(c+r):[c+r- , c+r+][c+r- , c+r+] , N∈ const. (neighborhood of size Ncentered on (c+r) in Im) fm(Om (r), Im(t)): computes the similarity score for modality m

  19. Efficient Computation • We first quantize the input data for each modality into a small number of n0. • Use a lookup table тi,m for energy response: i: the index of the quantized value of modality m. (also use i to represent the corresponding value) Lm: list of values of a special modality m appearing in a local neighborhood of a value i from input I. C C’ Lm’ Lm

  20. Efficient Computation • “Spread” [11] the data aroundneighborhood to obtain a robust representation Jminstead of Lm. • For each quantized value of one modality m with index i we can now compute the response at each location c: тi,m: the precomputedlookup table, Jmas the index [11] S. Hinterstoisser, C. Cagniart, S. Ilic, P. Sturm, P. Fua, N. Navab, and V. Lepetit. Gradient response maps for realtime detection of texture-less objects. under revision PAMI.

  21. Efficient Computation • Finally, the similarity measure can be: • Since the maps Si,m are shared between the templates, matching several templates against the input image can be done very fast once they are computed.

  22. Experiments • LINE-MOD: our approach (intensity & depth) • LINE-2D: introduced in [11] (use only intensity) • LINE-3D: use only the depth map • Hardware: • Performed on one processor of a standard notebook with an Intel Centrino Processor Core2Duo with 2.4 GHz and 3 GB of RAM. • Test data: • Six object sequences made of 2000 real images each. • Each sequence presents illumination and large viewpoint changesover heavy cluttered background.

  23. Experiments • Robustness: • A threshold (about 80) separates almost all true positives for LINE-MOD.

  24. Experiments • Speed: • Learning new templates only requires extracting and storing features, which is almost instantaneous. • Templates include: 360 degree tilt rotation, 90 degree inclination rotation and in-plane rotations of ± 80 degrees, scale changes from 1.0 to 2.0. • Parse a 640×480 image with over 3000 templateswith 126 features at about 10 fps(real-time). • The runtime of LINE-MOD is only dependent on the number of features and independent of the object/template size.

  25. Experiments • Speed:

  26. Experiments • Occlusion: • Right: Average recognition score for the six objects with respect to occlusion. • With over 30% occlusion our method is still able to recognize objects.

  27. Experiments Cup Toy-Car Hole punch

  28. Experiments Toy-Monkey Toy-Duck Camera

  29. Experiments True positive rates = False positive rates =

  30. Experiments

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