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I have several maps that I am working with. I want to extract the values (1, 0 and NA) from the maps and place them all into a summary matrix. Since I have so many maps, I think its best to do this as a for loop. This is the code I have so far and my maps and empty summary matrix are uploaded to my Dropbox here: DATASET here

setwd ('C:/Users/Israel/Dropbox/')
require (raster)
require (plyr)

#load in the emxpy matrix to be filled
range.summary<-read.csv('range_sizes.csv', header=T)

#load in maps and count pixels<-raster('Group1/Summary/PA_current_G1.tif')<

#these are the values I need to be placed into the empty matrix (range.summary)
count (

  PA_current_G1   freq
1             0 227193
2             1 136871
3            NA 561188
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It is unclear for me what you mean with "extract". Are you interested in summarize (table) the occurrences of 1, 0 and NA or extract them for particular regions (points? lines? polygons?)? – Paulo Cardoso May 21 '14 at 16:38
@Paulo Cardoso I just need the summary table for each map and the values from that table placed into the range.summary file – I Del Toro May 21 '14 at 16:42

1 Answer 1

up vote 0 down vote accepted

Try this

I downloaded 3 images

wd <- 'D:\\Programacao\\R\\Stackoverflow\\raster'
allfiles <- list.files(file.path(wd), all.files = F)
# List of TIF files at folder
tifs <- grep(".tif$", allfiles, = TRUE, value = TRUE) 
#stack rasterLayer 
mystack <- stack(file.path(wd, tifs))
# calculate frequencies
freqs <- freq(mystack, useNA='ifany')
# rbind list to get a data.frame
freqsdf <-, freqs)
                    value  count
PA_2050_26_G1.1         0 256157
PA_2050_26_G1.2         1 193942
PA_2050_26_G1.3        NA 475153
PA_2050_26_G2.1         0 350928
PA_2050_26_G2.2         1  99171
PA_2050_26_G2.3        NA 475153
PA_2050_26_sub_G1.1     0 112528
PA_2050_26_sub_G1.2     1  90800
PA_2050_26_sub_G1.3    NA 721924

'data.frame':   9 obs. of  2 variables:
 $ value: num  0 1 NA 0 1 NA 0 1 NA
 $ count: num  256157 193942 475153 350928 99171 ...

Now it is a matter of work the output shape.

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