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Friday, February 27, 2015

Cool use of imagery - Heard about this on the radio this morning



Seven giant craters have mysteriously appeared in northern Siberia, possibly due to methane gas released from melting permafrost. Check out these jaw-dropping photos of the strange geological structures. [Read full story about the Siberian craters]
Siberian crater
This crater, in the Yamal Peninsula, was discovered in 2014 by helicopter pilots 19 miles (30 kilometers) from Bovanenkovo, a major gas field in the Yamalo-Nenets autonomous district. (Image credit: Marya Zulinova/The Siberian Times) 

Siberian crater
Four Arctic craters can be seen in this satellite image: B1, the famous Yamal hole located 19 miles (30 kilometers) from Bovanenkovo; B2, the recently discovered crater located 6.2 miles (10 km) south of Bovanenkovo; B3, a crater located 56 miles (90 km) from Antipayuta village; and B4, a crater located near Nosok village, north of the Krasnoyarsk region near Taymyr Peninsula. (Image credit:Vasily Bogoyavlensky)

Siberian crater
Satellite image of the site before the formation of the Yamal hole (B1). K1 and the red outline show the hillock formed before the emission of methane gas. Yellow outlines show potentially dangerous areas where gas could erupt. (Image credit: Marya Zulinova/The Siberian Times)

Siberian crater
Satellite images showing a mound of Earth before the gas emission that formed crater B2 (top). Lakes formed at a couple of the craters, and more than 20 smaller craters were found nearby (bottom). (Image credit: Marya Zulinova/The Siberian Times)

Siberian crater
The Yamal lake showing signs of gas emission. (Image credit: Marya Zulinova/The Siberian Times)

Siberian crater
Siberian crater
Crater B3, located 56 miles (90 km) from Antipayuta village, Yamal district (top). Crater B4, located near Nosok village, north of the Krasnoyarsk region, near Taymyr Peninsula. (Image credit: local residents/The Siberian Times)

Siberian crater
Siberian crater
The ring of soil around these craters suggests an underground explosion. (Image credit: Vasily Bogoyavlensky/The Siberian Times)

Siberian crater
Siberian crater
Siberian crater
Siberian crater
Siberian crater
The Russian Center of Arctic Exploration embarked on an expedition to Yamal crater in early November 2014. The researchers were the first in the world to climb down into the crater. (Image credit: Vladimir Pushkarev/The Siberian Times)

Wednesday, February 11, 2015

INSTAGRAM

60 followers! I'm the king of Instagram! Check it out @zoom.enhance

Friday, February 6, 2015

My new Google Earth Pro


East Canyon Reservoir  8/11/11
East Canyon Reservoir 10/7/2014
Here is a comparison over the years of a reservoir in the Wasatch Mountains using Google Earth Pro. Google just offered their high end Google Earth Pro license free for anyone. Which means you get to use their imagery for whatever purpose you want, which in this case, is for my high end blog that is viewed by millions every day. Thanks Google!

Utah, like most of the Western US has had a hard time with a water shortage. Our dismal snowpack this year shows us that things aren't going to get better any time soon. These two images, taken at roughly the same time of year 3 years apart show the change in water level, and it doesn't look good. I measured the surface area of the water by hand using Google Earth Pro and in 2011 the surface area measured 1.04 square miles, 2014? .58 square miles, almost half. I measured it by hand, not using any fancy classification, so it's not 100% accurate, but that's still not a good sign.

Salt Lake County Parcels

Salt Lake County, Utah
Parcels are symbolizing according to building age
Another quick project I did for fun. This shows younger buildings in dark and older buildings in light. Interesting to see how most of the county expanded from a central point, which is now downtown. Also you can see pockets of older communities that have expanded as well. Lots to learn from spatial relationships. 

Monday, February 2, 2015

SPACEX


The Many Band Combinations of Landsat 8

SOURCE: EXELIS BLOG

Landsat 8 is the most recent satellite in the Landsat program. The data quality (signal-to-noise ratio) and radiometric quantization (12-bits) of the Landsat 8 Operational Land Imager (OLI) and Thermal Infrared Sensor (TIRS) are higher than previous Landsat instruments (8-bit for TM and ETM+). Since it's launch on February 11, 2013, Landsat 8 has been providing some truly stunning images of the earth's surface. Beyond their beauty, these images are packed with information which can be manipulated to extract features and discern changes to the earth's surface over time.
When working with Landsat imagery, a logical first step is to load an image into an image analysis program and begin to visualize what is in the scene. The OLI sensor aboard Landsat 8 has nine bands for capturing the spectral response of the earth's surface at discrete wavelengths along the electromagnetic spectrum. Additionally, the TIRS sensor aboard Landsat 8 collects information at two discrete wavelengths within the thermal infrared portion of the electromagnetic spectrum. These wavelengths have been chosen carefully based on years of scientific research.
Standard digital cameras are designed to replicate what we see with the human eye, so they capture light only in the red, green and blue wavelengths and then apply red, green and blue filters (also known as channels) to these wavelengths, respectively, that when combined generate a natural looking RGB image. With a multispectral image from a sensor system such as Landsat 8, we have a lot more information to work with. Different wavelengths can often help us discern some features better than others or even help us "see through" features such as clouds or smoke. For example, the Near Infrared (NIR) wavelength is one of the most commonly used wavelengths on multispectral sensors because vegetation reflects so strongly in this portion of the electromagnetic spectrum that this information proves very useful when performing vegetation analyses. The Shortwave Infrared (SWIR) bands aboard Landsat 8 are very useful for discerning differences in bare earth and for telling what is wet and what is dry in a scene. There are many other examples of the advantages of the available bands in Landsat images, but what I would like to do here is simply show how loading different combinations of these bands into the red, green and blue channels makes different features stand out. I am not the first to do this, but I just thought I would add an additional resource to the world wide web for showing how these band combinations can be used to visualize Landsat 8 images.
4 , 3 , 2 - Natural Color Image, Fresno, California
This band combination is as close to "true color" as you can get with a Landsat OLI image. One unfortunate drawback with this band combination is that these bands tend to be susceptible to atmospheric interference, so they sometimes appear hazy.
5, 4, 3 - Traditional Color Infrared (CIR) Image, Colorado/Utah
Note how vegetation really pops in red, with healthier vegetation being more vibrant. It's also easier to tell different types of vegetation apart than it is with a natural color image. This is a very commonly used band combination in remote sensing when looking at vegetation, crops and wetlands.
7, 6, 4 - False Color useful for visualizing urban environments, Los Angeles, California
Because this band combination makes use of both of the SWIR bands aboard Landsat 8, the image is much more crisp than band combinations that make use of bands in shorter wavelengths, which are more susceptible to haze.
5, 6, 4 - False Color good for picking out land from water, Hudson Bay, Canada
In this false color image, land appears in shades of orange and green, ice stands out as a vibrant magenta color, and water appears in shades of blue.
7, 5, 3 - False color image with good atmospheric penetration, Washington/Oregon
This band combination is similar to the 5, 6, 4 band combination shown above, but vegetation shows up in more vibrant shades of green. This band combination was used for the global Landsat mosaic created by NASA.
6, 5, 2 - False color for agriculture, Fruita, Colorado
This band combination is useful for the monitoring of agricultural crops, which appear as a vibrant green. Bare earth appears as a magenta color and non-crop vegetation appears as more subdued shades of green.

7, 5, 2 - False color often used for visualizing forest fire burn scars, Rim Fire, California
This band combination is similar to the 6, 5, 2 band combination shown above, but by pushing further into the SWIR range of the electromagnetic spectrum, there is less susceptibility to smoke and haze generated by a burning fire.
6, 3, 2 - False color for distinguishing differences in bare earth, Canyonlands NP, Utah
This band combination is good for discerning variations in a landscape that does not contain an abundance of vegetation. It is good for geologic applications.
5, 7, 1 - False color for vegetation and water, Lake Victoria, Tanzania
This band combination makes use of the NIR, SWIR2, and Coastal Aerosol bands, respectively. The Coastal Aerosol band is unique to Landsat 8 and is used primarily to track fine particles like dust and smoke, and also to peer into shallow water. With this color combination, vegetation appears orange.
There are certainly several additional band combinations that would be useful for visualizing Landsat 8 scenes. In some situations, loading a grayscale image of a single band might also help to visualize specific features or phenomena. For example, in the grayscale image below, we are viewing the Thermal Infrared 1 band from the Landsat 8 TIRS sensor. This image, captured over Iceland, shows the Bardarbunga volcano in bright white in the top center of the image. Since we are using a thermal infrared band, this feature sticks out significantly from the ice sheet located just to the south of the lava flow.
With grayscale images, we also have the option of applying a color table to highlight features a little more clearly. In the image below we are viewing the same grayscale image of the Bardarbunga volcano, but now we have applied a color table that shows very cold extremes of the glacier in shades of deeper blue and very warm extremes of the lava flow in shades of deeper red.
There are many analysis techniques that can be applied to multispectral imagery to extract specific features of interest. These algorithms rely on the same principles of reflectivity and absorption at various wavelengths that allow us to see certain features when visualizing them with different band combinations. An important point to note is that if a particular band, or combination of bands, does a good job of helping you visualize a feature that is of interest to you, then it is highly likely that this band, or combination of bands, can be used to help you isolate that feature from your image. For more on this topic, please check out the section of our Documentation Center devoted to Spectral Indices.