The
goal of lab 4 was to explore miscellaneous image functions that can be used in
remote sensing techniques to present and enhance remotely sensed images. For
this lab the class explored using ERDAS Imagine 2013 software. The techniques
used included image subset, pan-sharpening, Google-Earth connection, and
resampling. These techniques allow users to optimize visual representation by
delineating study areas and enhancing the image and its properties.
Methods
Part
one of this lab included creating an area of interest from a study area by
performing an image subset. There are two methods used to create a subset, the
first is simple and uses an inquire box to select a specified area. The second
method, which can be seen in Figure 1, creates an area of interest based upon a
shapefile, or boundary that is based on an ArcGIS file. For this example we
used the shapefile that covers Chippewa and Eau Claire counties.
Part
two covers image fusion, and in this section we used ERDAS Imagine to create a
higher resolution image in a technique called pan-sharpening. The “Pan” in
pan-sharpening comes from the word panchromatic. In an image fusion, two images
are combined to create a new output image. In this case, the panchromatic image
is of a higher resolution (15m by 15m for landsat images) than the false color
infrared image (30m by 30m). Fusing the two images creates a sharper more
refined image. This method is often used in applications such as Google Earth
to enhance images. Figure 2 in the results section shows this technique.
Part
three involves radiometric enhancement techniques. These can be used to correct
haze in an image. Haze can cause the image to become washed out, by performing
the haze reduction tool in ERDAS Imagine we can correct this. Correcting for
haze reduction enhances the image by creating an output image that has more
saturation and contrast. Figure 3 is an example of haze reduction.
Part
four of this lab allowed us to explore how ERDAS Imagine software can interact
with Google Earth to compare images or create an image interpretation key.
Since Google Earth has a higher resolution, through data collection and
pan-sharpening techniques, its images can often be used to help interpret
lesser quality images that
might be obtained through remote sensing. Figure 4 shows how we can use ERDAS
Imagine to connect to Google Earth and create a linked view of the same area.
In remote sensing often an image interpretation key is used to identify images.
Two types of keys can be used, a selective key or an elimination key. An
elimination key uses a flowchart to eliminate possible objects. Google Earth is
more of a selective key, because it allows us to compare similar images to
identify our study area.
Part
five is focused on the resampling tool. Resampling allows us to change the size
of pixels, which does not change the spatial resolution. There are two forms,
resample up and resample down. Resample up reduces the size of the pixel to
create a large file, resample down increases the pixel size creating a smaller
file. For this lab we compared two methods in ERDAS called nearest neighbor,
and bilinear interpolation. I will admit that I am still a little confused at
resampling and hope to explore this technique further. Figures 5 and 6 show
this technique.
Results
Figure 1 Screen capture of a subset image. Eau Claire and Chippewa county boundaries were used to create a shapefile that outlines this area of interest. |
Figure 2 Result of pan-sharpening an image. The image on the right is pan-sharpened and has a higher resolution. |
Figure 3 Example of haze reduction. The image on the right has had the haze reduction tool performed and appears more saturated in color and has more contrast. |
Figure 4 A synchronized view of ERDAS Imagine (left) and Google Earth (right). Google Earth has a higher resolution and can be used as an image interpretation key. |
Figure 5 Difference in pixels between input image (left) and bilinear interpolation resampled image (right) which was reduced from 30m to 20m pixel size. |
Overall learning the various miscellaneous image functions was a great exercise. I enjoyed throughly learning how to pan-sharpen an image as well as use google earth to synchronize views and use as an interpretation key. All of the techniques are useful and will prove to be beneficial in future assignments.