Enda Molloy, Electronic Eng. - PowerPoint PPT Presentation

1 / 11
About This Presentation
Title:

Enda Molloy, Electronic Eng.

Description:

Automated Image Analysis Techniques for Screening of Mammography Images ENDA MOLLOY, ELECTRONIC ENG. PROGRESS PRESENTATION, 22/01/09. Outline Project Overview Current ... – PowerPoint PPT presentation

Number of Views:34
Avg rating:3.0/5.0
Slides: 12
Provided by: Own21375
Category:

less

Transcript and Presenter's Notes

Title: Enda Molloy, Electronic Eng.


1
Automated Image Analysis Techniques for Screening
of Mammography Images
  • Enda Molloy, Electronic Eng.
  • Progress Presentation, 22/01/09.

2
Outline
  • Project Overview
  • Current Progress
  • Future Plans

3
Project Overview
  • The project aims to investigate analysis
    techniques for the screening of mammography
    images, which may be used in automated screening
    of a large set of images.
  • This will be achieved by developing a system
    comprising of feature extraction and a
    classification architecture.
  • Provide functionality for remote access to the
    data via a web browser.

4
Contrast Enhancement
  • Contrast Limited Adaptive Histogram Equalisation

5
Image Segmentation
  • Global Thresholding

6
Image de-noising
  • Often Mammograms can be affected by Gaussian
    noise. Although the images in the MIAS database
    are not affected, noise is added to the images to
    simulate the effect.
  • Wavelet Analysis is used to remove the noise
  • Wavelet type and number of levels for
    decomposition are selected, then the FWT of noisy
    image is computed.
  • A threshold is applied to the detail
    coefficients.
  • Wavelet reconstruction is performed to produce
    the de-noised image.

7
Neural Networks
  • An Artificial Neural Network is being used as a
    classification architecture for screening regions
    of interest.
  • A Multilayer Perceptron is currently being
    implemented using ROI textural statistics as
    inputs to the input layer.
  • The output signal will indicate the appropriate
    class for the input data i.e. Benign, malignant,
    normal.

8
MLP Overview
Mean
Standard Deviation
Benign
Third Moment
Malignant
Uniformity
Normal
Entropy
Kurtosis
Input Layer
Hidden Layer
Output Layer
9
Online Database
  • MySQL database, with a table holding usernames
    and passwords of registered users and a second
    table holding image information. The images are
    uploaded directly to the server with the filename
    stored in the database.

10
Future Plans
  • Jan 22th Jan 30th
  • Continuing with work on MLP i.e. Training and
    testing it.
  • Jan 30th Feb 6th
  • Complete the online database.
  • Feb 6th Feb 27th
  • Research and implement a second classification
    architecture.

11
Questions
Write a Comment
User Comments (0)
About PowerShow.com