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lecture 2 : Visualization Basics

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1 lecture 2 : Visualization Basics
Bong-Soo Sohn School of Computer Science and Engineering Chung-Ang University

2 Data Acquisition Scanned/Sampled Data Computed/Simulated Data
CT/MRI/Ultrasound Electron Microscopy Computed/Simulated Data Modeled/Synthetic Data

3 Time-Varying Data Time-Varying Data from Scanning

4 Scanners can yield both domains and functions on domains
Imaging Scanners Scanners can yield both domains and functions on domains Scanners yielding domains Point Cloud Scanners: 300μ-800μ CT, MRI: 10μ-200μ Light microscopy: 5μ-10μ Electron microscopy: < 1μ Ultra microscopy like Cyro EM 50Å-100Å

5 Imaging Techniques Ultrasound Computed Tomography (CT)
Measures spacially varying X-ray attenuation coefficient Each slice 1-10mm thick High resolution , low noise Good for high density solids Magnetic Resonance Imaging (MRI) Measures distribution of mobile hydrogen nuclei by quantifying relaxation times Moderate noise Works well with soft tissue Ultrasound Handheld probe Inexpensive, fast, and real-time High noise with moderate resolution

6 Various Data Characteristics
Time varying data Vector , Tensor Meshless Sparse Static Scalar Meshed Dense

7 Data Format Mesh (Grid) Type Mesh type conversion Regular Rectilinear
Unstructured Meshless Mesh type conversion Meshless to meshed

8 Mesh Types Mesh taxonomy regular rectilinear meshes:
There is an indexing scheme, say i,j,k, with the actual positions being determined as i*dx, j*dy, k*dz. In 2-D, we get a pixel, and in 3-D, a voxel. dx A 2-D regular rectilinear cartesian grid dy

9 Mesh Types (contd) Irregular rectilinear meshes:
Individual cells are not identical but are rectangular, and connectivity is related to a rectangular grid dx, dy are not constant in grid, but connectivity is similar in topology to regular grids.

10 Mesh types (contd) Curvilinear (structured) grid:
a regular grid subjected to a non-linear transformation so as to fill a volume or surround an object. A 2-D curvilinear grid

11 Mesh Types (contd) Dynamic (Time-varying) meshes Unstructured: Hybrid:
Cells are of any shape (tetrahedral) hexahedra, etc with no implicit connectivity Hybrid: Combination of curvilinear and unstructured grids. Dynamic (Time-varying) meshes

12 Triangulations (Delaunay) & Dual Diagrams (Voronoi)
Meshless (particle) Data  Meshed Data Triangulations (Delaunay) & Dual Diagrams (Voronoi) Union of balls Triangulation & Dual

13 Multivariate Time Series
Field Data Scalar temperature, pressure, density, energy, change, resistance, capacitance, refractive index, wavelength, frequency & fluid content. Vector  velocity, acceleration, angular velocity, force, momentum, magnetic field, electric field, gravitational field, current, surface normal Tensor stress, strain, conductivity, moment of inertia and electromagnetic field Multivariate Time Series

14 Interpolation Interpolation/Approximation are often used to approximate the data on the domain In other words, it constructs a continuous function on the domain

15 Linear Interpolation on a line segment
p p p1 The Barycentric coordinates α = (α0 α1) for any point p on line segment <p0 p1>, are given by fp f1 f f0 which yields p = α0 p0 + α1 p1 and fp = α0 f0 + α1 f1

16 Linear interpolation over a triangle
p1 p p2 For a triangle p0,p1,p2, the Barycentric coordinates α = (α0 α1 α2) for point p,

17 Linear interpolant over a tetrahedron
Linear Interpolation within a Tetrahedron (p0,p1,p2,p3) α = αi are the barycentric coordinates of p p3 p p0 p2 p1 fp3 fp fp2 fp0 fp1

18 Trilinear Interpolation
Unit Cube (p1,p2,p3,p4,p5,p6,p7,p8) Tensor in all 3 dimensions p p2 p p4 p p p6 p p8 Trilinear interpolant

19 comparison Bicubic vs Bilinear vs nearest point

20 Resampling Used in image resize or data type conversion
Rectilinear to rectilinear Unstructured to rectilinear

21 Rendering Isocontouring (Surface Rendering) Volume Rendering
Builds a display list of isovalued lines/surfaces Volume Rendering 3D volume primitives are transformed into 2D discrete pixel space

22 Isosurface Visualization
Isosurface (i.e. Level Set ) : C(w) = { x | F(x) - w = 0 } ( w : isovalue , F(x) : real-valued function ) isosurfacing <medical> < ocean temperature function > < two isosurfaces (blue,yellow) > <bio-molecular>

23 Popular Visualization Techniques for Scalar Fields
Isocontouring Popular Visualization Techniques for Scalar Fields 2. Isocontouring [Lorensen and Cline87,…] Definition of isosurface C(w) of a scalar field F(x) C(w)={x|F(x)-w=0} , ( w is isovalue and x is domain R3 ) 1.0 0.8 0.4 0.3 1.0 0.8 0.4 0.3 1.0 0.8 0.4 0.3 0.7 0.6 0.75 0.4 0.7 0.6 0.75 0.4 0.7 0.6 0.75 0.4 0.6 0.4 0.8 0.4 0.6 0.4 0.8 0.4 0.6 0.4 0.8 0.4 0.4 0.3 0.35 0.25 0.4 0.3 0.35 0.25 0.4 0.3 0.35 0.25 ( Isocontour in 2D function: isovalue=0.5 ) Marching Cubes for Isosurface Extraction Dividing the volume into a set of cubes For each cubes, triangulate it based on the 2^8(reduced to 15) cases

24 Cube Polygonization Template

25 Surface Rendering (Geometry Rendering)
Objects are defined in terms of surfaces Converts data into intermediate surface representation before rendering Volume data -> geometric primitives Surface reconstruction Can use HW of the geometry engines for realtime rendering Compact storage and transmission Amorphous data does not have thin surfaces

26 Popular Visualization Techniques for Scalar Fields
Volume Rendering Popular Visualization Techniques for Scalar Fields 1. Volume Rendering [Drebin88,…] C : color C: opacity I’ C , C I Light traversal from back to front I’= C C (1- C)I <emission> <incoming light> <produced by CCV vistool> Hardware Acceleration ( 3D Texturing ) [Westermann98] Slicing along the viewing direction Put 3D textures on the slice Interactive color table manipulation

27 Volume Rendering 3D volumetric data -> 2D image
Show the information inside volume entities Good for rendering soft and amorphous objects Good for block (boolean) operation : CSG Insensitive to scene complexity Insensitive to object complexity Sensitive to image resolution

28 Transfer Function Mapping from density to (color, opacity)

29 Medical applications


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