Download presentation
Presentation is loading. Please wait.
1
Can Color Detect Cancer? Andrew Rabinovich 12/5/02
2
Dead or Not? E – 300% cancerous DEADF – 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
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 0.10.51 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)
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
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
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.