X-Git-Url: http://pere.pagekite.me/gitweb/homepage.git/blobdiff_plain/fbb1eda6f330944447ea70536857e33891b958a1..ac8c47a23c0bfb4fea0f160f02413eefa5ee5812:/mypapers/drafts/geg2210/assignment-8.html diff --git a/mypapers/drafts/geg2210/assignment-8.html b/mypapers/drafts/geg2210/assignment-8.html index 1348096fe3..383872b67a 100644 --- a/mypapers/drafts/geg2210/assignment-8.html +++ b/mypapers/drafts/geg2210/assignment-8.html @@ -1,7 +1,7 @@
-This exercise was performed by logging into jern.uio.no using ssh and running ERDAS Imagine. Started by using 'imagine' on the command -line. The images were loaded from /mn/geofag/gggruppe-data/geomatikk/ +line. The images were loaded from /mn/geofag/gggruppe-data/geomatikk/
We tried to use svalbard/tm87.img, but it only have 5 bands. We decided to switch, and next tried jotunheimen/tm.img, which had 7 -bands. +bands.
The pixel values in a given band is only a using a given range of values. This is because sensor data in a single image rarely extend -over the entire range of possible values. +over the entire range of possible values.
The peak values of the histograms represent the the spectral sensitivity values that occure the most often with in the image band -being analysed. +being analysed.
+
This image show the "true colour" version, with the blue range
assigned to the blue colour, green range to green colour and red range
to red colour.
When we look at the linear contrast functions, we can move the +slope and shift values increasing or decreasing the contrast of the +image. For example, in the linear contrasting we moved the slope value +from 1.00 to 3.00 to obtain a brighter appearing image, and then we +moved the shift from 0 to 10 to recieve a sharper image.
+ +We also tried to do histogram equilization on the +standard infrared composition. This changed the colours in the image, +making the previously green areas red, and the brown areas more light +blue. In this new image, we can clearly see the difference between +two kind of water, one black and one green. We suspect the green +water might be deeper, but do not know for sure.
+ +We can get best contrast stretch by using the histogram
+equalisation. This gave us the widest range of visible separation
+between features.
+
+
+
-
+
Comparing a map we found on the web, and the standard infrared image composition, we can identify some features from the colors used:
-Next, we tried to shift the frequencies displayed to use blue for the red band, green for the near ir band and red for the mid ir (1.55-1.75 um). With this composition, we get some changes in the colours of -different features: +different features:
We also tried to do histogram equilization on the standard infrared -composition. This changed the colours in the image, making the -previously green areas red, and the brown areas more light blue. In -this new image, we can clearly see the difference between two kind of -water, one black and one green. We suspect the green water might be -deeper, but do not know for sure.
-We decided to work on the grey scale version of the thermal infrared. -This one has lower resolution then the rest of the bands, with 120m -spatial resolution while the others have 30m spatial resolution. - -
The high pass filtering seem to enhance the borders between the
-pixels. Edge detection gave us the positions of glaciers and water.
-We tried a gradient filter using this 3x3 matrix. The matrix was
-chosen to make sure the sum of all the weights were zero, and to make
-sure the sum of horizontal, vertical and diagonal numbers were zero
-too.
+'
+
We decided to work on the grey scale version of the +near infrared (band4). We changed the colour assignment to use this +band for all three colours, giving us a gray scale image.
+ +We applied the 3x3 low pass filter on this image, and +this gave us almost the same image as the original. If you look +closely you can see that some white dots in the original disapper, and +some of the water edges seem to blur very slightly.
+ +We also tried the 3x3 high pass filter on the band4 +grey scale image. This gave a very noisy image. Edges of vallies and +ice are not well defined. The black waters are still obvious.
+ +We also tried the 3x3 edge detection, and this gave us
+an image that makes it difficult to distinguish elevation features
+such as the valleys. Rather, edge detection allows us to study main
+features in an area like the lakes. (insert band4 edge 3 image)
+
+'
+
We tried a gradient filter using this 3x3 matrix. The +matrix was chosen to make sure the sum of all the weights were zero, +and to make sure the sum of horizontal, vertical and diagonal numbers +were zero too.
1 | 2 | -1 |
1 | 2 | -1 |
2 | 0 | -2 |
1 | -2 | -1 |
It gave a similar result to the edge detection. +
The gradient filter used gave us enhancement on lines in the +vertical, horizontal and diagonal directions. This is seen by the +white lines that outline certain areas of main features like the +rivers within the vallies and some of the lakes.
- -We also tried unsharp filtering using this 3x3 matrix, selected
-also to make sure the sum of all the weights were zero, and making
-sure the high frequency changes had extra weight.
+'
+
When we rework the matrix to equal negative one, we end up with a +lot of noise in the image that also seems to blurr the image. Using a +negative one matrix is not optimal if you are trying to obtain +sharpness.
-1 | -1 | -1 |
-1 | 7 | -1 |
-1 | -1 | -1 |
-1 | 8 | -1 |
-1 | -1 | -1 |
This gave similar results to the edge detection too.
+'
+
We then tried with a 3x3 matrix were the sum of all +values equals 1, to enhance the high frequency parts of the image.
-We started to suspect that the reason the 3x3 filters gave almost -the same result was that the fact that the spatial resolution of the -thermal band is actually 4x4 pixels (120 m, while the pixel size was -30m). Because of this, we tried with a 5x5 matrix, making sure it -sums up to 0. - -
-1 | -1 | -1 | -1 | -1 |
-1 | -1 | -1 | -1 | -1 |
-1 | -1 | 24 | -1 | -1 |
-1 | -1 | -1 | -1 | -1 |
-1 | -1 | -1 | -1 | -1 |
-Next, we tried some different weight:
-
-
-1 | -1 | -1 | -1 | -1 |
-1 | -2 | -2 | -2 | -1 |
-1 | -2 | 32 | -2 | -1 |
-1 | -2 | -2 | -2 | -1 |
-1 | -1 | -1 | -1 | -1 |
-1 | -1 | -1 |
-1 | 9 | -1 |
-1 | -1 | -1 |
This one gave more lines showing the borders between the thermal -pixels. See the included image. +
This gave us a sharper looking image compared to the +result of the negative 1 filter. This is not really obvious unless +one is comparing the two images carefully. In order to see more +differences the matrix sums would have to be more then plus/minus one.
-