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all right today we're going to become
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familiar with this spatial analysis
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which is one of the fanciest topics in
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GIS first we will learn what is the
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spatial analysis and then some basic
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operations and spatial analysis
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including selection and classification
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so far we have talked about the
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definition of GIS GIS data models vector
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data model and raster data model how to
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represent your graphic features and also
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locations with coordinate geographic
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coordinate system and projected
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coordinate system how to manage
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attributes into database and how to
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produce GIS data from scratch
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collecting GPS waypoints as a control
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points then geofencing scan map and
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finding and digitizing features so all
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of them all of these topics that we
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covered for about the data collection
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and data preparation data production
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from scratch and data representation as
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map now we are ready to move to the next
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step which is spatial analysis we have
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the GIS data like census data land use
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data land cover Road meant for
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typography data such as digital
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elevation model disease data such as
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disease count prevalence incidence and
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the next step is to combine these data
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and turn the data into knowledge to
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solve real world problem for example
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where is the best place to build a new
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hospital based on several criteria
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factors like slow proximity to high
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population proximity to road should be
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combined or where are the high risk
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areas for disease outbreak we can
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allocate resources budget to these areas
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to control the outbreak which route is
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the shortest route between your house to
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the University so these are knowledge
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that we can extract from the data so
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what is the spatial analysis technique
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the spatial analysis is the application
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of one or more GIS operation in order to
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solve real-world problem such as what is
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the shortest path between your house and
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department by car how many people are
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living within one kilometer around the
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hazardous situ risk assessment or or
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health disparity which areas have lowest
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access to healthcare or another
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real-world application in public health
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according to Virginia Department of
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Health is Virginia coupled GIS mapping
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many spatial analysis to identify areas
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where infant mortality rates are the
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highest the extent of racial and ethnic
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disparities in infant deaths the
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underlying causes of those infant deaths
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and how to best intervene so these are
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knowledge you can extract from the
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prepared data to support your
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decision-making to make decision based
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on the fact technically a spatial
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analysis is a chain of GIS operations a
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chain basically means the output from
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one joyous operation is served as the
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input of the second GIS operation and so
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on so operations are linked together to
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solve the real-world problems so here
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for example the input layer are we have
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an input layer a special analysis is
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done on the input layer so we will have
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an output layer the output layer will be
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the input for the second special
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operation and gives us the output layer
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and this output layer serves as input
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for the special operation and gives us a
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final output layer so you can see the
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operations are linked together to solve
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the real-world problem and by chaining
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GIS operation you will have a
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complicated GIS flowchart like this and
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a couple of input layers with many
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operations linked together it is called
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a GIS model in the future lecture we
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will build sophisticated GIS model in
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ArcGIS and solve complicated real world
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problems that are not easy to solve
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without GIS
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so basically there are three categories
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of Jonah's operation we will talk about
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a little today we just scratch the
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surface and with more details in the
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future lectures so GIS operations can be
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divided into three categories local
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operations neighborhood operations and
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global operations local operations
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basically mean the output is determined
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based on the input in the same location
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so for input and output are for one
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location for instance this gray polygon
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is the state of Utah we want to
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calculate population density of this
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state and the output here only depends
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on the population size and also the area
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of that state so we only need
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information about Utah State to
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calculate population density of the same
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estate so that's called local operation
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the second type is called neighborhood
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operation and this operation uses data
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from both input location plus the nearby
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or neighborhood locations to determine
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the output value so that's why it's
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called neighborhood operation for
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example let's say let's say you want to
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find out the number of adjacent say so
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the Utah State okay or in other words
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how many estates share boundary video da
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in this case we not only consider the
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location of Utah State but also the
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surrounding estates as well to calculate
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how many edges in the state's to Utah
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State which is one two three four five
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six and out would will be six right so
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that is called neighborhood operation
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and neighborhood operation involves
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neighbors of the city region from
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calculation for example for California
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its shares border with one two three so
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the output will be three and depends on
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the neighbors third type is global
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operation which means this operation
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uses the
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value from the entire input layer to
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determine each output value for example
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here here is let's say we want to rank
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Western estates by their total
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population for the year 1990 in this
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case we not only consider the population
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size of for example Utah but also the
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population size for all of the Western
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estates all of this study area and then
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we can rank them in order and find out
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Utah and Chile has a rank order of six
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okay and California has the largest
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population ranked number one among the
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other state the second one is Washington
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and so on so global operation involve
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entire study area for calculation GIS
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operations our building blocks for
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complicated spatial analysis or spatial
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analysis consists of several joist
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operation which aims to address
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real-world issue basically there are
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four types of GIS operations selection
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classification and proximity and overlay
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which are applicable for both vector and
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raster data set we're going to talk
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about the operations one by one and in
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today's class we will talk only about
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selection and classification and
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proximity and overlays for the future
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lectures let's start with the selection
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so selection is a GIS operation that
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creates a subset of data that satisfies
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certain criteria so there are two types
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of selection selection my attribute and
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selection my location selection my I
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distribute that we already have worked
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with we use that to select a specific
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type of cancer based on location and it
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selected specific records or feature
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based on attribute values but the
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selection by location selects record
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based on a special relationship like
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in composition interception at Jason's
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adjacent or or in general of topological
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relationship that we talked about before
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so selection by location is only
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applicable for vector data model because
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raster they talk and do not have any
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spatial topological information so let's
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start with the selection by attribute
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for vector data there are a number of
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operators you can use like and not or
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greater than less than equal to and so
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on to write your statement or query so
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we can use these operators to build a
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query a statement was said to specify
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the selection criteria so we've won with
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that in the previous labs so basically
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in select by attribute GS applies the
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query on each feature and then compare
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that reviews of each feature with the
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criteria the feature or records that
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meet the criteria will be selected for
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example here we want to select all
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counties with attribute name of the
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state of Vermont so it is based on the
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attribute table or we want to select all
00:10:03
counties that their attribute name is
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not New York so this operator is shows
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not and/or we want to select all
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counties with areas larger than or equal
00:10:16
to 1,000 square miles so you can see
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that so it's based on the area based
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based on the attribute table there is a
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field that the name of area so based on
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that one we can select all counties or
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select the counties that population
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density is less than 250 percent per
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square mile
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so these are the selected counties
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selection by attribute can also be
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applied to raster data so let's say we
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have a very simple raster dataset which
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describes land you stop for a study area
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one represents agriculture two
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represents forests and three represents
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urbanized area let's say we want we only
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want to tease out the urbanized areas
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okay we can define the SQL statement
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like land use type across the tree and
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then GIS will read this criteria and
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then compare that compared every single
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pixel one by one so let's start with the
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first cell the first cell is one and one
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doesn't satisfy the criteria because
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language type is not equal to three so
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the output will be 0 which means false
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and then we go to the next cell the next
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cell again is 1 and doesn't satisfy so 0
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the second the third one is 2 and
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doesn't satisfy it's not 3 so it's 0 so
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until we reach this cell this cell is 3
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& 3
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land use type is Erinn area so it
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satisfies the criteria so the output
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will be 1 so 1 means that criteria is
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satisfied and so that's how GIS that's
00:12:01
how can be lower scan is scan and do
00:12:04
this like by attribute or the raster
00:12:06
dataset okay so keep in mind that the
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output of selection by attribute for
00:12:12
raster dataset is always a binary great
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it's oh it's either 0 or 1
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okay or how about this one line is type
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greater than 1 so it compares each cell
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to the criteria and if satisfies this
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criteria the result would will be 1
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otherwise it will be 0 so again the
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output is only binary raster so let's
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move on to the second type of selection
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which is selection by location so here
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our selection criteria is not defined
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based on attribute information it's
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defined based on a spatial relationship
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or topological information special
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relationship between two features we
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have talked about before include the
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intersection of two lines or adjacency
00:13:01
between two polygons or composition of
00:13:03
polygons or line or containments so
00:13:06
these are spatial relationship and
00:13:09
selection by location usually involves
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two or
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more layers as the input so we need at
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least two layers for the selection by
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location for the vector data let's see
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one example of selection in my location
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based on adjacent selection so we want
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to know which assets are adjacent to
00:13:31
Missouri and so we have a shapefile of
00:13:35
Missouri and a shape far away all of the
00:13:37
US states now we're not looking at
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attribute of the Missouri assay but we
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look at the spatial relationship between
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Missouri estate and the surrounding
00:13:48
states and then the surrounding polygon
00:13:50
can be teased out like this so our
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containment selection is another
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topology our relationship for instance
00:13:59
which estates contain the Mississippi
00:14:02
River so this is the Mississippi River
00:14:06
okay and and we have it as a shapefile
00:14:12
and also we have used US states as
00:14:15
another shapefile and all states that
00:14:17
contain part of Mississippi River the
00:14:21
entire state will be selected out so
00:14:23
these gray estates okay all of these
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gray says they contain part of
00:14:29
Mississippi River
00:14:30
so in selection by location we're
00:14:32
looking at the spatial relationship
00:14:34
between the features for example
00:14:36
adjacency or containment sometimes its
00:14:41
intersection sometimes it's composition
00:14:43
so this is called selection by location
00:14:45
we're not looking at the attribute table
00:14:47
but we're looking at the relationship
00:14:50
between the features and
00:14:53
ArcGIS provides a user-friendly
00:14:55
interface to help us to construct SQL
00:14:59
statement to a specify selection
00:15:01
criteria and this dialog helps us to
00:15:05
define how to select features based on
00:15:08
the attribute or based on the spatial
00:15:13
relationship so here is like by
00:15:15
attributes and here is like by location
00:15:18
we already have work birds like by
00:15:21
attribute and in this lab we will also
00:15:23
work with select by location so in
00:15:26
summary for select by
00:15:28
beautiful Victoria Talley apply the
00:15:29
criteria on each feature if the features
00:15:33
satisfy the criteria it will be selected
00:15:35
and select by attribute for us there we
00:15:38
apply the criteria on each cell each
00:15:40
pixel and if the feature satisfies the
00:15:43
criteria it will be 1 otherwise it will
00:15:46
be 0 and select by location has nothing
00:15:52
to do with the attributes it's only
00:15:54
applicable for vector data set it cannot
00:15:57
be used for the raster dataset because
00:16:00
it's based on the relationship or is
00:16:02
based on the topological relationship
00:16:04
and topological relationship can only be
00:16:06
defined for the vector data model not
00:16:10
for the raster data model another widely
00:16:13
USG operation is classification
00:16:16
classification is also known as
00:16:18
reclassification or recoding and this
00:16:21
operation will summarize the features
00:16:23
into several groups based on predefined
00:16:26
conditions so let's say we have an input
00:16:29
raster layer and we want to simply use
00:16:34
new values to replace all values based
00:16:37
on a predefined condition and here is a
00:16:39
lookup table and lookup table basically
00:16:43
defines how old values will be replaced
00:16:46
by new values all values between 1 to 3
00:16:50
will be replaced by 5 and all values
00:16:54
between 3 to 7 will be replaced by new
00:16:57
values 3 and so on so for example first
00:17:02
cell is has a value of 3 which is old
00:17:07
value then you look up look at the
00:17:09
lookup table the cells falls into this
00:17:12
category right so the new value should
00:17:15
be 5 okay in the output and output will
00:17:18
be saved as 5 here for this cell and if
00:17:22
you look at so the second one is also
00:17:25
the same 5 the third one is 19 and 19
00:17:28
falls into this category and the new
00:17:31
value for this value for this for 19
00:17:34
will be 5 again so we can continue this
00:17:38
process for every single cell 1 by 1 2
00:17:42
reclassify this image okay so this is
00:17:45
called classification or
00:17:47
reclassification process which is widely
00:17:49
was for summarizing and displaying
00:17:52
datasets so there are many examples or
00:17:56
applications for classification for
00:17:59
example we can classify zip codes into
00:18:02
low crime rate high crime rates so two
00:18:06
categories we can summarize cancer type
00:18:09
such as brain cancer into medium and
00:18:14
high and low rate of the cancer or we
00:18:19
can summarize habitat suitability for
00:18:23
red fox to very high high medium low
00:18:26
very low suitability so you can see
00:18:29
there are numerous applications for
00:18:31
classification so now let's talk about
00:18:35
classification for all attribute size we
00:18:39
have talked about different types of
00:18:40
attributes before which were nominal
00:18:43
ordinal interval and ratio so we are
00:18:46
start with nominal and ordinal
00:18:48
attributes nominal and ordinal
00:18:51
attributes are also referred to as
00:18:54
categorical variable or categorical
00:18:57
attributes for classification of
00:19:00
categorical tribute is very easy we
00:19:03
should use a lookup table for
00:19:04
classification like this and lookup
00:19:07
table basically defines how old values
00:19:10
will be replaced by new values for
00:19:12
example let's say we're going to recode
00:19:14
all the states in the west of main
00:19:18
branch of Mississippi River as one and
00:19:21
an all estates in the east of river as
00:19:25
zero so here is a classification table
00:19:28
all values are categorical values right
00:19:33
so these are just names and new values
00:19:37
are specified as either one or zero so
00:19:41
here is their classification results
00:19:43
okay so that's what categorical
00:19:46
attributes summarize or group the data
00:19:48
now let's move on to the interval and
00:19:53
ratio attribute we
00:19:55
are also referred to as numeric
00:19:57
attributes which is more sophisticated
00:20:02
so for example let's say we have a study
00:20:06
area this is this is our study area this
00:20:08
is a community with more than 1,000
00:20:12
polygons and each polygon has a
00:20:15
population and population size ranges
00:20:18
from 0 to 500 5,000 and 100 and let's
00:20:25
say you want to reclassify our study
00:20:28
area into three categories based on
00:20:31
population size - low medium and high
00:20:34
population size so three categories mean
00:20:37
we need to define or determine two
00:20:40
cutoff values okay a and B so below a is
00:20:45
assigned to low category between a and B
00:20:51
polygons will be assigned to their own
00:20:53
medium population size and above B we
00:20:57
consider that consider this polygon as
00:20:59
high population size so question is how
00:21:03
to determine the cutoff values a and B
00:21:05
and the answer is we need some automatic
00:21:09
classification method to help us to
00:21:11
determine or define threshold values
00:21:14
there are a variety of ways for
00:21:17
classification and the first method is
00:21:19
called equal interval classification
00:21:22
which means the range of each category
00:21:23
is going to be the same or equally
00:21:26
Islita range from 0 to 5000 and 133
00:21:30
which is the maximum population so you
00:21:34
can see the entire study area is divided
00:21:36
into three categories and from low with
00:21:40
white color medium with gray color and
00:21:44
high with black color and if you look at
00:21:46
the range of each category from minimum
00:21:49
to maximum ranges of each class or
00:21:51
category is equal that's called equal
00:21:54
interval classification maybe this
00:21:58
picture is not really clear so let's see
00:22:01
the next picture the next slide that
00:22:04
percentage of population under
00:22:07
five so has been classified into five
00:22:11
categories and when you look at the
00:22:14
ranges the ranges are between 3 to 6 6
00:22:17
to 9 9 to 12 12 to 15 15 to 18 so the
00:22:22
ranges are equal or they have equal
00:22:26
interval okay so that's the first type
00:22:30
of classification the second method that
00:22:34
help us to determine the cutoff value is
00:22:37
called quantile classification so in
00:22:40
this classification method the threshold
00:22:42
or color values are set so that each
00:22:45
category is going to have the same
00:22:47
number of special features special
00:22:50
features the same number of features for
00:22:53
example in this color and the same
00:22:55
number of features in this color and so
00:22:58
for so on so this classification method
00:23:01
is suitable for linearly distributed
00:23:03
data so you can see the categories will
00:23:06
have however their range for each
00:23:08
categories are different within each
00:23:12
category the number of features is
00:23:14
almost the same or the polygons are
00:23:17
approximately the same that's called
00:23:19
equal number classification or quantile
00:23:22
classification so let's see an
00:23:25
application of contour classification in
00:23:27
GIS for example we want to rank in US
00:23:31
states based on their areas into five
00:23:33
categories so we use quantile
00:23:36
classification if you generate five
00:23:39
classes this means that ten states will
00:23:42
reside in each class each class the
00:23:46
first class will have the ten largest
00:23:49
states in terms of land mass and the
00:23:52
last class or last category will have
00:23:55
the ten as small as the States in terms
00:23:57
of land mass so when you use the
00:24:00
quantile map classification with five
00:24:02
classes it will look like this map so it
00:24:06
is easy to see see that it is easy to
00:24:10
see that it states like Texas or
00:24:12
California or New Mexico are in the top
00:24:17
ten for
00:24:18
his closest aides are obviously their
00:24:22
smallest so quantile classification is
00:24:26
ideal when there is a order in the data
00:24:28
it is suitable for ordinal data and
00:24:32
third method method that helps us to
00:24:35
determine the cutoff value is called
00:24:37
natural break classification and this
00:24:40
might be the most widely used
00:24:41
classification technique this
00:24:43
classification is based on the histogram
00:24:45
and looks for the obvious or largest
00:24:48
gaps in the data so let's say in the
00:24:51
same study area this is a histogram of
00:24:55
the same study area and x-axis indicates
00:25:00
population size from zero to maximum
00:25:03
which was 5133
00:25:05
and the y-axis tells us the frequency of
00:25:10
the occurrence of the population which
00:25:12
means number of polygons you have for
00:25:15
this population size then if you look at
00:25:18
histogram here we can identify the
00:25:20
number of natural gaps for example here
00:25:22
is a gap and also here is another
00:25:25
largest gap in the data so the natural
00:25:29
break classification uses mathematical
00:25:32
formula to help us to find the largest
00:25:34
gaps in histogram and then we use these
00:25:37
gaps as cutoff values so technically it
00:25:40
minimizes variance within each class and
00:25:44
maximizes variance between the classes
00:25:46
the last classification method is called
00:25:49
manual or defined interval
00:25:51
classification method so the choice of
00:25:54
cutoff values is up to you and you
00:25:58
define intervals or cutoff values so we
00:26:05
talked about four different type of
00:26:07
classification method for numeric
00:26:09
attributes manual defined equal interval
00:26:14
quantile and natural break so you can
00:26:17
see for the same data you got different
00:26:19
visual results or different pattern
00:26:22
that's why people say maps can be
00:26:25
misleading if I change cutoff value for
00:26:28
each class I will get different result
00:26:30
if I change the class
00:26:31
vacation technique I will get different
00:26:33
results so the question is which one
00:26:36
gives us the best display of data and
00:26:39
here are some criteria or guidelines for
00:26:43
you to select the best classification
00:26:45
method so you always have to look at the
00:26:47
data when when do we use natural break
00:26:51
so we use natural breaks when the
00:26:53
attributes like I don't know population
00:26:56
size are distributed unevenly across
00:26:59
overall range of the data so then when
00:27:03
you look at the histogram of the data
00:27:04
you will see some pics the distribution
00:27:07
will be like this and in that case
00:27:11
natural breaks might be the best choice
00:27:14
so you choose numbers that best reflects
00:27:18
natural gaps within your data and how
00:27:22
about equal interval equal interval
00:27:24
classification is suitable when you want
00:27:28
to have all classes with the same range
00:27:31
for example if you want to display
00:27:32
category score every 1000 increments and
00:27:35
then interval is 1000 for every category
00:27:38
in that case you call interval is
00:27:41
suitable the quantile classification
00:27:46
basically produces the same number of
00:27:48
the geographic feature for every
00:27:50
category and the best time you can use
00:27:52
this classification is menu when your
00:27:55
attributes are linearly distributed
00:27:57
across the range which means that if you
00:27:59
draw out a histogram there is no pick or
00:28:04
basically it's flat for histogram or
00:28:06
probably there is a very it has a very
00:28:08
gentle slope and the manual
00:28:11
classification and the manual defined
00:28:13
classification can be used when you want
00:28:15
your classes to break at a specific
00:28:17
values so that's a guideline for
00:28:20
classification method so let's open up
00:28:24
our jaws to show you classification
00:28:27
techniques first of all we need to
00:28:30
download US sa foundries from tiger line
00:28:34
so if I here type tiger line
00:28:39
and then go to the tiger line website
00:28:44
the most recent data web interface and
00:28:54
states and equivalent submit download
00:29:00
national file and then let's extract it
00:29:21
and loaded into ArcGIS
00:29:39
we're going to classify this shapefile
00:29:44
based on the land area so if you open up
00:29:48
attribute table of their states there is
00:29:52
a field with name of a land I think this
00:29:58
area land and I'm going to classify it
00:30:02
based on the symbology symbology and its
00:30:10
quantity right because it's a numeric
00:30:13
value and then graduate color and base
00:30:19
under a land so here the classification
00:30:25
technique is natural breaks right and
00:30:27
here we have five number of the classes
00:30:30
if I click apply and then okay so I can
00:30:34
see that so these areas you have higher
00:30:36
so remember this picture okay so if I
00:30:40
here instead of natural break with five
00:30:42
classes I use I don't know click on
00:30:46
classify and then I select equal
00:30:49
interval okay and then okay apply okay
00:30:55
so you can see that chain the shape
00:30:58
completely changed right so depend on
00:31:01
the classification technique we have
00:31:03
different cutoff values and then we have
00:31:07
different Maps right so or we can change
00:31:11
number of the classes instead of five
00:31:13
classes we can change it to three
00:31:16
classes and then we get different
00:31:17
results right or here we have another
00:31:21
type of classification you can manually
00:31:23
define the break values here okay you
00:31:26
can change them or you can use equal
00:31:30
interval define interval natural break
00:31:33
or other type of classification
00:31:35
techniques and each one gives us
00:31:38
different maps so so you can create
00:31:42
numerous maps with the same data that's
00:31:44
why in elections or advertisement they
00:31:48
use maps to deceive people the data are
00:31:52
the same
00:31:52
and true but classification techniques
00:31:55
are different