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Multiscale Representations for Point Cloud Data Andrew Waters Manjari Narayan Richard Baraniuk Luke Owens Ron DeVore.

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Presentation on theme: "Multiscale Representations for Point Cloud Data Andrew Waters Manjari Narayan Richard Baraniuk Luke Owens Ron DeVore."— Presentation transcript:

1 Multiscale Representations for Point Cloud Data Andrew Waters Manjari Narayan Richard Baraniuk Luke Owens Ron DeVore

2 3D Surface Scanning Explosion in data and applications Terrain visualization Mobile robot navigation

3 Data Deluge The Challenge: Massive data sets – Millions of points – Costly to store/transmit/manipulate Goal: Find efficient algorithms for representation and compression

4 Selected Related Work Point Cloud Compression [Schnabel, Klein 2006] Geometric Mesh Compression [Huang, Peng, Kuo, Gopi 2006] Surflets [Chandrasekaran, Wakin, Baron, Baraniuk 2004] – Multiscale tiling of piecewise surface polynomials

5 Optimality Properties Surflet encoding for L 2 error metric for piecewise constant/smooth functions – Polynomial order determined by smoothness of the image – Optimal asymptotic approximation rate for this function class – Optimal rate-distortion performance for this function class Our innovation: – More physically relevant error metric – Extension to point cloud data Smoothness Rate Dimension

6 Error Metric From L 2 error – Computationally simple – Suppress thin structures To Hausdorff error – Measures maximum deviation

7 Our Approach 1.Octree decomposition of point cloud – Fit a surflet at each node – Polynomial order determined by the image smoothness 2.Encode polynomial coefficients – Rate-distortion coder multiscale quantization predictive encoding

8 Step 1: Tree Decomposition (2D) Assume surflet dictionary with finite elements -- data in square i Stop refining a branch once node falls below threshold

9 Step 1: Tree Decomposition (2D) root

10 Step 1: Tree Decomposition (2D) root

11 Step 1: Tree Decomposition (2D) root

12 Step 1: Tree Decomposition (2D) root

13 Octree Hallmarks Multiscale representation Enable transmission of incremental details – Prune tree for coarser representation – Grow tree for finer representation

14 Step 2: Encode Polynomial Coeffs Must encode polynomial coefficients and configuration of tree Uniform quantization suboptimal Key: Allocate bits nonuniformly – multiscale quantization adapted to octree scale – variable quantization according to polynomial order

15 Multiscale Quantization Allocate more bits at finer scales: Allocate more bits to lower order coefficients – Taylor series : Smoothness Order Scale

16 Step 3: Predictive Encoding Insight: Smooth images small innovation at finer scale Coding Model: Favor small innovations over large ones Encode according to distribution: “Likely” “Less likely” Fewer bits More bits Encode with –log(p) bits:

17 Experiment: Building 22,000 points piecewise planar surflets Octree: 150 nodes 1100 bits “1400:1” compression 0.05 bpp

18 Experiment: Mountain 263,000 points piecewise planar surflets Octree: 2000 Nodes 21000 Bits “1500:1” Compression 0.08 bpp

19 Summary Multiscale, lossy compression for large point clouds – Error metric: Hausdorff distance, not L 2 distance – Surflets offer excellent encoding for piecewise smooth surfaces Multiscale surface polynomial tiling Multiscale quantization Predictive Encoding Open Question: Asymptotic optimality for Hausdorff metric


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