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Three Dimensional Plotting

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We can use array math to efficiently compute the z values when z=f(x,y) NOTE #3: ... JET, HSV, GRAY, HOT, COOL, BONE, COPPER, PINK, FLAG, PRISM ... – PowerPoint PPT presentation

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Title: Three Dimensional Plotting


1
Three Dimensional Plotting
  • Learning Objectives
  • Understand the anatomy of a 3D plot
  • Basics of constructing plots in 3D
  • How to choose different plot types for best
    effects
  • Topics
  • Plotting in 3D major differences
  • The meshgrid() function to create plaids
  • 3D mesh plots
  • 3D surface plots
  • shading and light sources
  • Contour plots
  • Use of color to add a 4th dimension

2
Background
  • Plotting in 3D and 3D data visualization is where
    Matlabs power really becomes apparent!
  • Matlab defines a number of different kinds of 3D
    plots but you will probably find 3 or 4 to be the
    most useful
  • x,y,z 3D line plot plot3( )
  • mesh plot mesh( )
  • surface plot surf( )
  • contour plot contour( )
  • combo surface/mesh with contour surfc( )
  • The surface plotting can also be applied to
    create realistic 3D objects by defining and
    plotting their exterior surfaces!
  • We can only touch lightly on this vast area of
    Matlab

3
Anatomy of a 3D Plot
  • There are MANY options for plotting in 3D but we
    will consider only the basics
  • Plotting a curve in 3D plot3(x,y,z)
  • Plotting a surface, zf(x,y), in 3D mesh( )
    surf( )
  • There are also several other plotting topics that
    we will NOT cover or discuss in class (but you
    might find interesting to explore on your own)
  • ribbon plots
  • quiver plots (showing vectors)
  • volume plots
  • advanced colormap use

4
2D Plots vs 3D Line Plots
  • Actually, every 2D plot is simply a 3D plot
    without the 3rd dimension being specified.

gtgt clf gtgt x00.12.pi gtgt plot(x,sin(x))
Rotate 3D button experiment with how it works
5
3D Line Plot
  • This is the simplest (and least useful) 3D plot
    and is really just a generalization of the 2D
    function

gtgt x00.13.pi gtgt z1sin(x) gtgt
z2sin(2.x) gtgt z3sin(3.x) gtgt
y1zeros(size(x)) gtgt y3ones(size(x)) gtgt
y2y3./2 gtgt plot3(x,y1,z1,'r',x,y2,z2,'b',x,y3,z3
,'g') gtgt grid on gtgt xlabel('x-axis'),
ylabel('y-axis'), zlabel('z-axis')
6
3D Line Plot (2)
  • These examples may be a little more useful

gtgt clf gtgt turns40.pi gtgt thetalinspace(0,turns,
4000) gtgt xcos(theta).(turns-theta)./turns gtgt
ysin(theta).(turns-theta)./turns gtgt
ztheta./turns gtgt plot3(x,y,z) gtgt grid on gtgt
text(0.5,0.5,0.75,'Here is a piece of text!')
gtgt theta00.110.pi gtgt plot3(sin(theta),cos(the
ta),theta) gtgt grid on theta00.110.pi gtgt
plot3(sin(theta),cos(theta),theta) gtgt grid on
7
3D Surface Plots
  • It is often desirable to plot functions of the
    form zf(x,y)
  • for each (x,y), we can compute a value for z
  • this defines a surface in 3D space
  • If we can define (x,y) at regular intervals,
    Matlab provides powerful ways to plot the
    resulting function as a mesh or surface in 3D.
  • The (x,y) values stored in arrays will define a
    grid of mesh points through which the surface
    will be created.
  • There are tools in Matlab to handle the situation
    in which (x,y) are not defined in a grid, but we
    won't consider them in this course.
  • We will look into how colors can be employed to
    add the equivalent of a 4th dimension

8
Defining the (x,y) Values
  • We need a way to create the range of (x,y) values
    needed to compute f(x,y)

This won't work because we need all values of y
for each value of x and vice versa to evaluate
function over entire region shown
x -3 -2 -1 0 1 2 3 y -3 -2 -1 0
1 2 3 zf(x,y)
This works corresponding elements of xx yy
contain the x and y coordinates to be used for
f(x,y) at that point
xx -3 -2 -1 0 1 2 3 -3
-2 -1 0 1 2 3 -3 -2
-1 0 1 2 3 -3 -2 -1
0 1 2 3 -3 -2 -1 0
1 2 3 -3 -2 -1 0 1
2 3 -3 -2 -1 0 1 2
3 yy -3 -3 -3 -3 -3 -3 -3
-2 -2 -2 -2 -2 -2 -2 -1
-1 -1 -1 -1 -1 -1 0 0
0 0 0 0 0 1 1 1
1 1 1 1 2 2 2 2
2 2 2 3 3 3 3 3
3 3 zf(xx,yy)
NOTExx varies along ROWS while yy varies along
COLUMNS
9
The meshgrid() Function
  • Matlab provides a function to compute these
    arrays

gtgt x-3.53.5 gtgt y-2.52.5 gtgt
xx,yymeshgrid(x,y) xx -3.5 -2.5 -1.5
-0.5 0.5 1.5 2.5 3.5 -3.5 -2.5 -1.5
-0.5 0.5 1.5 2.5 3.5 -3.5 -2.5 -1.5
-0.5 0.5 1.5 2.5 3.5 -3.5 -2.5 -1.5
-0.5 0.5 1.5 2.5 3.5 -3.5 -2.5 -1.5
-0.5 0.5 1.5 2.5 3.5 -3.5 -2.5 -1.5
-0.5 0.5 1.5 2.5 3.5 yy -2.5 -2.5
-2.5 -2.5 -2.5 -2.5 -2.5 -2.5 -1.5 -1.5
-1.5 -1.5 -1.5 -1.5 -1.5 -1.5 -0.5 -0.5
-0.5 -0.5 -0.5 -0.5 -0.5 -0.5 0.5 0.5
0.5 0.5 0.5 0.5 0.5 0.5 1.5 1.5
1.5 1.5 1.5 1.5 1.5 1.5 2.5 2.5
2.5 2.5 2.5 2.5 2.5 2.5
NOTE 1xx varies along ROWS while yy
varies along COLUMNS
NOTE 2For any (i, j), the value in xx is the x
coordinate, while the value in yy is the y
coordinate xx(3,1) -3.5 yy(3,1) -0.5 So
(x,y) (-3.5, -0.5)
NOTE 3Matlab calls these arrays "plaids"
NOTE 4We can use array math to efficiently
compute the z values when zf(x,y)
10
Simple Example Using meshgrid()
  • In this case we will plot z (x2 y2) over the
    range -3 ? x ? 3 and -3 ? y ? 3

gtgt x-33 gtgt y-33 gtgt xx,yymeshgrid(x,y) xx
3 -2 -1 0 1 2 3
-3 -2 -1 0 1 2 3 -3
-2 -1 0 1 2 3 -3 -2
-1 0 1 2 3 -3 -2 -1
0 1 2 3 -3 -2 -1 0
1 2 3 -3 -2 -1 0 1
2 3 yy -3 -3 -3 -3 -3 -3
-3 -2 -2 -2 -2 -2 -2 -2
-1 -1 -1 -1 -1 -1 -1 0
0 0 0 0 0 0 1 1
1 1 1 1 1 2 2 2
2 2 2 2 3 3 3 3
3 3 3 gtgt zzxx.2 yy.2 gtgt
mesh(xx,yy,zz)
NOTEMatlab's array instructions make this a
deceptively simple calculation for all values at
once
11
Calculation of f(x,y)
  • Calculation of f(x,y) can be tricky depending on
    exactly how it is defined over the "plaid" (see
    MM pg. 384)

Column-wise Calculation of z f(x,y)
gtgt nclength(x) number of columns in z gtgt
nrlength(y) number of rows in z gtgt
zzeros(nr,nc) initialize z (for speed) gtgt for
k1nc z(,k) x(k).2 y().2 end gtgt
mesh(xx,yy,z)
NOTEIt can be very tricky to keep track of the
row and column indices in this kind of
calculation (it appears that the text in the
book is incorrect)
12
Calculation of f(x,y) - cont'd
  • Worst case is that you may have to compute each
    element of z explicitly as follows

Element-by-element Calculation of z f(x,y)
gtgt nclength(x) number of columns in z gtgt
nrlength(y) number of rows in z gtgt
zzeros(nr,nc) initialize z (for speed) gtgt for
kc1nc for kr1nr z(kr,kc)
x(kc).2 y(kr).2 end end gtgt mesh( gtgt
mesh(xx,yy,z)
NOTEIt can be very tricky to keep track of the
row and column indices in this kind of
calculation
13
Key Concepts for zf(x,y) Plots
  • 3D plotting introduces several key concepts
  • Meshes versus Surfaces
  • Hidden line removal
  • Pedestals and contours
  • Color maps and pseudo-coloring
  • Viewpoints and camera control (advanced!)
  • Shading and lighting (advanced)
  • The following figures demonstrate these concepts,
    but you are encouraged to check this out in your
    textbook (using Matlabs graphic brings out the
    real fun in using this powerful software!).

14
Exploring Hidden Line Removal
  • This uses an interesting built-in function
    sphere( )
  • Hidden lines
  • ON shows white inside mesh
  • OFF shows transparent mesh

X,Y,Z sphere(12) subplot(1,2,1) mesh(X,Y,Z),
title('Figure 26.5a Opaque') hidden on axis
square off subplot(1,2,2) mesh(X,Y,Z),title('Fig
ure 26.5b Transparent') hidden off axis square
off
15
Let's Explore the mesh( ) Function
  • We'll use peaks( ) to create a zf(x,y) function
    that is interesting and shows off the 3D plotting
  • Note you should check help peaks and help mesh
    and also the textbook for further details on
    these functions

gtgt x,y,zpeaks(30) gtgt mesh(x,y,z) gtgt axis
tight gtgt xlabel('x-axis') gtgt ylabel('y-axis') gtgt
zlabel('z-axis')
SuggestionTry using hidden off and hidden on to
see what happens.
16
Exploring meshc Plots
  • meshc( ) adds a contour plot directly below the
    mesh
  • helps visualize the contours
  • can locate the peaks and dips

gtgt x,y,zpeaks(30) gtgt meshc(x,y,z) gtgt axis
tight gtgt xlabel('x-axis') gtgt ylabel('y-axis') gtgt
zlabel('z-axis')
HintIf you just finished the previous example,
you need only type in the new meshc( ) command.
17
Exploring meshz Plots
  • This special variation allows you to emphasize
    the zero plane in the mesh plot

gtgt x,y,zpeaks(30) gtgt meshz(x,y,z) gtgt axis
tight gtgt xlabel('x-axis') gtgt ylabel('y-axis') gtgt
zlabel('z-axis')
18
Exploring waterfall Plots
  • This is another variation on the mesh plot and
    can also be useful in some special cases

gtgt x,y,zpeaks(30) gtgt waterfall(x,y,z) gtgt axis
tight gtgt xlabel('x-axis') gtgt ylabel('y-axis') gtgt
zlabel('z-axis')
19
Let's Explore the surf( ) Function
  • So far we have only been able to plot meshes to
    represent the surface
  • can hide hidden lines to clarify the surface
    shape
  • still appears as a wireframe-like shape
  • Matlab provides a function that will fill in the
    mesh with facets (surfaces with 3 or 4 corners
    but not necessarily plane surfaces)
  • we'll see that these can produce very realistic
    appearing surfaces in 3D
  • can control appearance of mesh
  • can change color mapping to reveal other
    information
  • can add lighting

20
Exploring surf Plots (shading faceted)
  • The basic function uses the default shading
    faceted and this shows the mesh

gtgt x,y,zpeaks(30) gtgt surf(x,y,z) gtgt axis
tight gtgt xlabel('x-axis') gtgt ylabel('y-axis') gtgt
zlabel('z-axis')
21
Exploring surf Plots (shading flat)
  • shading flat will eliminate the mesh and leave
    the facets colored with a constant color value

gtgt x,y,zpeaks(30) gtgt surf(x,y,z) gtgt shading
flat gtgt axis tight gtgt xlabel('x-axis') gtgt
ylabel('y-axis') gtgt zlabel('z-axis')
22
Exploring surfc Plots (shading interp)
  • surfc acts much like meshc with a contour plot
    drawn below the surface
  • shading interp interpolates color over each facet

gtgt x,y,zpeaks(30) gtgt surfc(x,y,z) gtgt shading
interp gtgt axis tight gtgt xlabel('x-axis') gtgt
ylabel('y-axis') gtgt zlabel('z-axis')
NOTEshading interp can take time to execute and
the figure may cause plotting problems
23
Changing the Viewing Direction
  • You can change the orientation of the object
  • Viewing direction view(az,el) or you can use
    the rotate3d button on the view toolbar on the
    figure window menu
  • Camera direction this is best controlled from
    the camera toolbar on the figure window menu

z
viewpoint
view(-45,60)
y
elev
x
azimuth
24
Adding a Colorbar
  • You can use the colorbar command to add a color
    bar that defines the color used in the plot. Use
    help colorbar to find out what the other options
    are

NOTE You should check out the instructions on
how to use the Property Editor and the tools in
the Figure window to interactively add text and
labels to various parts of this 3D graph.
25
Using Color as a 4th Dimension
  • Matlab associates a colormap with each figure
    window
  • this is a 3 column array in which columns 1-3
    control the Red, Blue Green colors (defined
    using a 0-1 range)
  • each row defines a specific color
  • colors are limited by the color display
    capabilities of the computer
  • these, along with a few fixed colors, are the
    colors Matlab will use in the figure window (each
    figure window has its own separate colormap)
  • Matlab predefines a number of useful colormaps
  • JET, HSV, GRAY, HOT, COOL, BONE, COPPER, PINK,
    FLAG, PRISM
  • see help graph3d for more information and other
    colormaps
  • use colormap hsv or colormap(hsv) to change
  • colormap default restores the colormap to default
    values
  • use the colorbar command to display the color bar
    by itself or alongside a plot (see help)

26
Using Color as a 4th Dimension (2)
  • Matlab uses pseudo-color to change the color in
    a mesh or surf plot
  • colors can be based on the z values (default)
  • you can specify the color variable in mesh() and
    surf()
  • Use caxis(cmin cmax) to define the max and min
    values that are mapped to the colormap

gtgt caxis(-5 5) gtgt colorbar
gtgt caxis(-50 50) gtgt colorbar
27
Using Color as a 4th Dimension (3)
  • mesh() and surf() can accept a "color" argument
    that defines the color used over the plaid.

gtgt caxis('auto') gtgt surf(x,y,z,y) gtgt axis
tight gtgt ylabel('y-axis')
gtgt Cdel2(z) compute Laplacian gtgt
surf(x,y,z,C) gtgt axis tight gtgt colorbar
Here we have used the y values as the color
variable.
This shows curvature of the surface as the color
variable.
28
Contour Plots
  • Matlab provides several functions to draw
    contours
  • contour() draws simple contour map with N
    intervals
  • contourf() draws a contour with filled contours
  • contour3() draws a contour map in 3D

x,y,zpeaks(30) contourf(x,y,z,10)
colorbar xlabel('x-axis') ylabel('y-axis')
x,y,zpeaks(30) contour(x,y,z,10)
colorbar xlabel('x-axis') ylabel('y-axis')
NOTE See textbook for other options.
29
Example
  • Here is a simple example to illustrate 3D
    plotting
  • it is the sinc function (sin(r)/r) where
    rradius
  • we need to add eps to avoid inf when dividing by
    zero

xx,yymeshgrid(-4.pipi./54.pi)
Rsqrt(xx.2 yy.2)eps radius
zzsin(R)./R surf(xx,yy,zz) axis tight
Question How could you handle a situation when
the data are not defined on a regular grid (when
the points are unevenly spaced)?
30
Incentives
  • Here is a sphere with 2 lights added and the
    shading adjusted to show the lights (gouraud
    shading). See if you can create similar figures!

Now you really don't have any reason why you
can't produce outstanding graphics for all your
reports and projects!
31
Problem Solving
  • Create a plot of the sinc(R) function shown in a
    previous slide, but in this case make the plot
    region a circular area in the xy plane that has a
    radius of 3p. (Hint you will need to create an
    xy plaid but computed from a grid defined using
    polar coordinates.)
  • Add a circular disk of radius 3p to the above
    sinc(R) plot. (Hint you can use hold on to add
    additional surfaces using the surf command just
    like you did for plot() ).
  • Now add a vertical plane (y0) and a second
    vertical plane (x0) to the plot. This
    effectively partitions the surface into 8 regions.

32
Summary
  • Review questions
  • Describe 3D plotting in MATLAB,
  • What is a scalar function in two variables?
  • What is a plaid? What do they look like?
  • Describe differences between surface and mesh
    plot, and all their variants.
  • What do the shading, hidden commands do?
  • Action Items
  • Review the lecture
  • Work through the examples
  • See if you can figure out how to use color
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