Can Color Detect Cancer? - PowerPoint PPT Presentation

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Can Color Detect Cancer?

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... to Extract Spectral Signal Color Deconvolution Non-Negative Matrix Factorization Independent Components Analysis Color Deconvolution Non-Negative Matrix ... – PowerPoint PPT presentation

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Title: Can Color Detect Cancer?


1
Can Color Detect Cancer?
  • Andrew Rabinovich
  • 12/5/02

2
Dead or Not?
E 300 cancerous ? DEAD
F 0 cancerous ? HEALTHY
3
How To Detect Cancer?
  • Spectral Information
  • Spetial Information ? Texture

4
Spectral Information Analysis
  • Proper Image Acquisition
  • Pre-processing(image registration)
  • Color Information Extraction

5
Image Acquisition
RGB vs. Hyperspectral
6
Image Registration
  • Registering spectral bands with each other
  • is absolutely unavoidable!!!
  • Acquisition system instability optical
  • aberrations result in spectral stack
  • misalignment

7
Raw Spectral Data
Short Band Pass (Blue)
Long Band Pass (Red)
8
Misalignment
9
Misalignment
10
Registration of Multi modal Images
  • No brightness constancy
  • Common features at high resolution
  • Individual features at low resolution
  • Suppress the individual and extract the common
    using a high pass filter

11
Laplacian of Gaussian Filter
0.1 0.5 1
5 (-1.9694, 2.1693) (-1.7186, 2.0336) (-1.9646, 2.1624)
10 (-1.9264, 2.1329) (-1.8773, 2.1047) -1.9599 2.1592
20 (-1.8815, 2.1150) (-1.7773, 2.0511) -1.9559 2.1633
50 (-1.8809, 2.1283) (-1.7986, 2.0602) -1.9472 2.1762
Mean Shift (-1.8970, 2.1253) Mean Shift (-1.8970, 2.1253) Mean Shift (-1.8970, 2.1253) Mean Shift (-1.8970, 2.1253)
12
Filtered Images
Low Band Filtered
High Band Filtered
13
Shi Tomasi Affine Registration
Determine the motion based on an Affine
transformation
Transformation is found to sub-pixel resolution
14
Registered Spectral Images
15
Registered Spectral Images
16
Before and After
17
Color Models to Extract Spectral Signal
  • Color Deconvolution
  • Non-Negative Matrix Factorization
  • Independent Components Analysis

18
Color Deconvolution
19
Non-Negative Matrix Factorization
20
ICA
21
Discussion
  • To quantify the separation of spectral signals,
    each of the dies must be imaged independently and
    compared with the separated signal
  • This study was done with RGB, however,
    Hyperspectral is a MUST
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