+ All Categories
Home > Documents > Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Date post: 02-Feb-2016
Category:
Upload: clodia
View: 25 times
Download: 0 times
Share this document with a friend
Description:
Sea Ice Detection in Radarsat Imagery using Statistical Distributions. R. S. Gill. IICWG-II, Reykavik. DMI, Copenhagen. Recall: - PowerPoint PPT Presentation
23
Sea Ice Detection in Radarsat Imagery using Statistical Distributions R. S. Gill IICWG-II, Reykavik. DMI, Copenhagen.
Transcript
Page 1: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Sea Ice Detection in Radarsat Imageryusing Statistical Distributions

R. S. Gill

IICWG-II, Reykavik.

DMI, Copenhagen.

Page 2: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Recall:

Ice analysts often have to make ‘best guess’ of the position of the ice edge and the ice concentration when interpreting SAR data. ‘Best guess’ is often based on their experience of the region and on historical information.

Accuracy of ice information has a direct impact on vessel safety !

Page 3: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Why is life so difficult for the ice analysts and developers?

-SAR signals over open water and sea ice region are ambiguous.

OPERATIONS:It’s problem of SAR image interpretation.

Determining the ice edge and ice concentration -in regions with low ice concentration,-strong surface wind conditions,-surface melting (seasonal)

In the watersaround Greenland !

DEVELOPMENTS:-All tools/products give results that are also ambiguous.-Even interpreting them is a problem for some ice analysts.- Manual interpretation of grey tone images helps.-PMR most reliable and simplest

CURRENT STATUS:-Large gap between what the ice analysts need and what the tools/products can deliver.

-Be realistic in expectations: For really ‘nasty’ images nothing will works !

Page 4: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

To develop ‘easily interpretable’ tools/products that would aid ice analysts to discriminate between the different regions in a SAR image in an operational environment.

CONTENT:

1. Proposed new algorithms

2. Test results

3. Conclusions

What is our goal ?

Page 5: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

A. Ice Edge detection using distributions

-Gamma pdf (undergoing testing -limiting case of k-pdf), -k- pdf (planned for later)

-Scheme similar to CFAR method to detect icebergs.-Show probabilities on a grey scale to discriminate between the different regions.

B. Semi-automatic image classification using distribution matching

-Matching the image to a known region type -Don’t throw the ice analysts knowledge away: use it !-No prior knowledge of the distribution function-Using Kolmogorov - Smirov test (other can also be used)

Page 6: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Pearson diagram - Skewness vs. pmr

Pearson diagram - kurtosis vs. pmr

Classifying different region types using distributions

Page 7: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Background region

Test region

Compute the probability distribution function, P(I), forthe test region

Computation scheme for computing distributions:

Page 8: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Disko Bay, 9th April 2000.

Page 9: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

PMR ‘image’. Gamma pdf ‘image’

Page 10: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Amplitude image from Cape Farewell - 11th March 2000

Page 11: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Gamma pdf‘image’

PMR ‘image’

Page 12: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Amplitude image - Disko Bay 2/4/2000.

Page 13: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

PMR ‘image’ Gamma pdf ‘image’

Page 14: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Amplitude image - Disko Bay 24/5/2000.

Page 15: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

PMR ‘image’ Gamma pdf ‘image’

Page 16: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Distribution matchingto the ice region shown in red -basedon PMR ‘image’.

Distribution matching to the water region shown in blue - based on Gamma pdf ‘image’.

Page 17: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Amplitude image from the East coast of Greenland, 22nd July 2000.

Page 18: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

PMR ‘image’ Gamma distribution ‘image’

Page 19: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

KS matching to the blue water region KS matching to the red ice region

Dark values indicates maximum matching

Page 20: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Amplitude image 29th June 2000.

Time when you most need help !

1/10 ice,floes size5-10 m

Page 21: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

PMR ‘image’ Gamma distribution ‘image’.

Not so convincing

Page 22: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

Conclusions.

1. Gamma distribution ‘images’

-Useful for determing the open water region in ice pack , near the coasts and in-land regions.

-Easier to interpret than PMR -Complement the PMR ‘images’

Again like PMR, and all other texture parameters, Gamma ‘images’are also ambiguous.

All perform poorly when their help is most needed.

Page 23: Sea Ice Detection in Radarsat Imagery using Statistical Distributions

2. KS-Distribution matching:

-Performs o.k. for the sea ice along the East and West coasts of Greenland.

Shows potential for semi-automatically classifying an image.

Advantage: Taps on the ice analysts experience of image interpretation.

Currently 3 products operational: PMR, CFAR and now Gamma


Recommended