Humble attempt to depict line spread function measurement - PowerPoint PPT Presentation

1 / 14
About This Presentation
Title:

Humble attempt to depict line spread function measurement

Description:

For an MTF - line spread measurement, we use as many as we can get, limited by ... the original edge spread function, I vs x. We do this because it helps ... – PowerPoint PPT presentation

Number of Views:261
Avg rating:3.0/5.0
Slides: 15
Provided by: david685
Category:

less

Transcript and Presenter's Notes

Title: Humble attempt to depict line spread function measurement


1
Humble attempt to depict line spread function
measurement
2
4 mm wide perpendicular scans in x direction
100 horizontal scans collected in y direction
0.8 mm long
What about some Gaussian values to put in these
boxes.
JSA How about these?
3
4 mm wide perpendicular scans in x direction
0.8 mm long
100 horizontal scans collected in y direction
JSA Illustrates optical dot gain variation, or
variation in kp, which makes a variation in Yule
-Nielsen n.
4
Interrogation
  • Is the diagram correct?
  • JSA Yes
  • At what point in the 4 mm scan does the shadow
    disappear and become a white paper reading?
  • JSA The shadow approaches the paper white
    asymptotically. It is like asking where the
    "bell curve" goes to zero. This is why we
    describe the width in terms of a standard
    deviation instead of the width of the "bell
    curve" at the base.
  • How many measurements in horizontal direction?
  • JSA What does "how many" mean? The diagram
    shows 12 "measurement" boxes from 0 through etc.
    We could double the measurements if we used twice
    as many boxes, each half the width. This would
    give us a higher resolution look at the edge.
    Experimentally, we use a camera with "boxes" that
    are image pixels. The higher resolution camera
    gives the better data.
  • JSA Or maybe "how many" means how many boxes to
    we average vertically for our horizontal scan.
    For an MTF - line spread measurement, we use as
    many as we can get, limited by the camera
    resolution.

5
  • For a simple chemist, do you have a picture of
    the line spread function and then a picture of
    the MTF that is calculated from it? Where would
    the magical point of MTF 0.5 usually be located
    on a 4 mm scan?
  • JSA I made some slides (below) with data I have
    for a coated paper. Don't recall what paper.
  • For paper this would normally be 0.2 mm?
  • JSA Yes, between 0.15 and 0.35 millimeters
    covers all the paper samples I ever saw.
  • Can I use the same picture to jump to your
    experiment in which 1200 rows and 1200 columns
    were scanned and then analyzed.
  • JSA Yes! This stuff really is simple enough
    for us chemists to do!
  • Is scanned the right term? Or captured?
  • JSA I "capture" the image and do the "scan" in
    software. The scan is the process of averaging
    each vertical column of pixels and plotting the
    result vs the horizontal location.
  • In the illustration what is the size of each spot
    you are measuring reflectance of?
  • JSA I don't know exactly. I do know exactly in
    the illustration below. Each pixel "box"
    measures 0.00323 millimeters in the paper image.
    This is called the "pixel size projected onto the
    paper" and is not the same as the physical size
    of the pixel on the detector in the camera.

6
  • Is there some advantage to MTF mathematically, in
    other words a convenient inflexion point or max
    that provides additional information?
  • JSA MTF doesn't really give you any more
    practical information than just measuring the
    width of the spread function. MTF is useful
    for
  • (1) Theoretical mechanistic analysis. It is
    like a rate constant in chemical kinetics. k 3
    sec-1 means the reaction is about half over in
    1/3 sec. Then, things like Arrhenius theory can
    predict k vs temperature. Similar stuff in
    optical theory for the MTF. Linear Systems
    theory tells how the spread function MTF
    propagates through other imaging systems, such as
    cameras, dots that are spread out, etc.
  • (2) The Geek factor. If you slip the term "MTF"
    or "Fourier Transform" into a talk, and point
    quickly to big equations, it gives that Geek
    effect without really being informative. I'm
    happy to hear you are trying to avoid that. It
    sure isn't helpful!
  • Below is an example analysis I did on a piece of
    coated paper. Sorry I don't know the
  • origin of the paper or other things about it.

7
A coated sheet with an image of an edge projected
onto it. This is a good way to do the MTF analys
is. Start with a scan of the edge.
Call it the "edge spread function"
1 millimeters
I is the relative intensity of the
reflected light, where I1
is the paper itself.
Note the locations marked s and kp.
8
The edge spread function.
LSF slope of I vs x.
Calculate and plot the slope at each point on the
curve. (Take the derivative) The result is calle
d the line spread function.
0.04
LSF
s 0.05 millimeters 2s 0.10 millimeters
2s
0
x in millimeters
A practical measure of the line spread function
is s. This is (approximately)
the half the width of the curve measured half way
down the peak.
9
Line Spread Function
0.04
LSF
2s
0
x in millimeters
More rigorously, we treat the line spread
function as a probability density function for la
teral light travel in the paper. The so called
"bell shaped curve". Then s is defined
statistically as the average distance light trave
ls before returning to the surface as reflected
light. The type of "average" is the "RMS" avera
ge, or the square Root of the Mean Squared distan
ce of travel. s is also called the
second statistical moment about the mean.
Anyway, it is a useful indicator of how far ligh
t scatters laterally around the edge.
10
Line Spread Function
0.04
LSF
2s
0
0.5
0.5
x in millimeters
6s 0.30 millimeters
Instead of the average distance, you generally
want to know the practical boundary for how far
light CAN scatter. This would be
measured as the base width of the curve. But the
curve approaches zero asymptotically, so what is
a useful way to estimate a base width?
One good way is to use some multiple of s. This
is where "six sigma" comes from. Nice for market
ing people, but it isn't really useful
as a way to characterize practical scattering.
Instead, we can use Fourier Transform theory.
11
Apply the Fourier Transform by giving the data to
a computer. Leave the understanding of the math
to the mathematicians.
Line Spread Function
0.04
LSF
2s
0
x in millimeters
0.5
0.5
MTF Fourier Transform of LSF vs x.
1
Plot it as frequency, 1/x, instead of distance
, x.
MTF
0.5
0
0
1
2
3
4
frequency, 1/x
12
1
MTF
0.5
0
0
1
2
3
4
frequency, 1/millimeters
1/millimeters is often called "cycles" per
millimeter.
All we did is apply some math to the original
data, I vs x. The information
contained in the MTF is identical to the
information contained in the original edge spread
function, I vs x. We do this because it helps
us extract useful parameters. In this case, the
useful parameter we want is the frequency half wa
y down the MTF. This gives us the value
1/mm 3.0. We invert this and call it kp 1/3
0.33 millimeters. Experimentally, it is easie
r to measure a point half way down a curve than
at some place along the asymptote. This is why
kp is a useful measurement.
13
The distance kp indicates the practical limit of
light scattering distance.
s
1
kp0.33 mm
I
0.5
0
x in millimeters
kp is a practical estimate of the base width of
the line spread function.
0.04
LSF
s 0.05 millimeters 2s 0.10 millimeters
2s
0
kp0.33 mm
0.5
0.5
x in millimeters
14
The distance kp indicates the practical limit of
light scattering distance.
1
I
0.5
0
x in millimeters
Placing the edge (halftone dot) directly on the
paper chops off half of our edge data and the res
t is the Yule-Nielsen effect, or the dot "shadow"
.
Write a Comment
User Comments (0)
About PowerShow.com