Novel methods for microscopic image processing, analysis, classification and compression
Author(s)
Advisor
Çetin, Ahmet EnisDate
2013Publisher
Bilkent University
Language
English
Type
ThesisItem Usage Stats
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Abstract
Microscopic images are frequently used in medicine and molecular biology. Many
interesting image processing problems arise after the initial data acquisition
step, since image modalities are manifold. In this thesis, we developed several
algorithms in order to handle the critical pipeline of microscopic image storage/
compression and analysis/classification more efficiently.
The first step in our processing pipeline is image compression. Microscopic
images are large in size (e.g. 100K-by-100K pixels), therefore finding efficient
ways of compressing such data is necessary for efficient transmission, storage
and evaluation.
We propose an image compression scheme that uses the color content of a
given image, by applying a block-adaptive color transform. Microscopic images of
tissues have a very specific color palette due to the staining process they undergo
before data acquisition. The proposed color transform takes advantage of this
fact and can be incorporated into widely-used compression algorithms such as
JPEG and JPEG 2000 without creating any overhead at the receiver due to its DPCM-like structure. We obtained peak signal-to-noise ratio gains up to 0.5 dB
when comparing our method with standard JPEG.
The next step in our processing pipeline is image analysis. Microscopic image
processing techniques can assist in making grading and diagnosis of images
reproducible and by providing useful quantitative measures for computer-aided
diagnosis. To this end, we developed several novel techniques for efficient feature
extraction and classification of microscopic images.
We use region co-difference matrices as inputs for the classifier, which have
the main advantage of yielding multiplication-free computationally efficient algorithms.
The merit of the co-difference framework for performing some important
tasks in signal processing is discussed. We also introduce several methods that
estimate underlying probability density functions from data. We use sparsity
criteria in the Fourier domain to arrive at efficient estimates. The proposed
methods can be used for classification in Bayesian frameworks. We evaluated
the performance of our algorithms for two image classification problems: Discriminating
between different grades of follicular lymphoma, a medical condition
of the lymph system, as well as differentiating several cancer cell lines from each
another. Classification accuracies over two large data sets (270 images for follicular
lymphoma and 280 images for cancer cell lines) were above 98%.
Keywords
Image compressionfeature extraction
pattern recognition
kernel density estimation
region covariance matrix