# How to count the number of pixels in a file in R?

I have two files with (1440*720, raster) the same dimensions: I want to take the average of my first file `corr` based on the the second file values (intervals) `cus`, the values of this file range from 1 to 7. whenever the values in `cus` range between 0-1, calculate the corresponding average in `cor` and return the result, do the same thing with 2-3,3-4,5-6,7-8.no data values are assigned as NA.

1- to read `corr`:

``````conne <- file("C:\\corr.bin","rb")
corr <- readBin(conne, numeric(), size=4, n=1440*720, signed=TRUE)
#please assume a matrix of 720*1440 dimnsions
``````

2- to read `cus` :

``````conne1 <- file("C:\\use.bin","rb")
cus <- readBin(conne1, numeric(), size=4, n=1440*720, signed=TRUE)
#please assume a matrix of 720*1440 dimnsions
``````

calculate:

``````     cusBREAK <- cut(cus,1:8))

aggregate(corr, list(cusBREAK), function(values){
c( "x"       = mean(values),
"pixels"  = length(values),
"percent" = length(values) / length(corr) * 100
)
}, na.rm=TRUE)
``````

This worked fine But I noticed that the number of pixels returned is just the number of pixels from the file cus. I need also to know the number of pixels used from the file corr. Because we might have 2000 pixels in file cus but might have only 1500 pixels in file corr(the other 500 pixels are NAs). I appreciate any help.

-

How about using `data.table`. I am assuming that the values in `cus` are actually 1:7 (so basically not sure why you need `cusBreak`). We create a variable to count the number of pixels used to find the `mean` of each group (and don't forget to include `na.rm` if you have NAs in your data):

``````require( data.table )
DT <- data.table( "Cus" = as.vector(cus) , "Corr" = as.vector(corr) )
DT[ , Pix:=( ifelse( is.na( DT\$Corr ) , 0 , 1 ) ) ]
DT[ , list( "Mean" = mean(Corr,na.rm=TRUE) , "Sum" = sum(Pix) ) , by = Cus ]
``````

### A reproducible example with toy data

``````#  Data
set.seed(12345)
corr <- matrix( rnorm(16) , 4 )
cus <- matrix( sample(0:7,16,repl=T) , 4 )
cus
#    [,1] [,2] [,3] [,4]
#[1,]    1    6    6    2
#[2,]    5    7    3    2
#[3,]    2    4    7    0
#[4,]    2    1    6    0

#  Create data.table
DT <- data.table( "Cus" = as.vector(cus) , "Corr" = as.vector(corr) )

#  Order by Cus
setkey(DT,Cus)

# Variable to count pixels
DT[ , Pix:=( ifelse( is.na( DT\$Corr ) , 0 , 1 ) ) ]

# Get meean of corr grouped by cus
DT[ ,  list( "Mean" = mean(Corr , na.rm = TRUE ) , "Sum" = sum(Pix) )  , by = Cus ]
#   Cus        Mean Pixels
#1:   1  0.15467236      2
#2:   5  0.70946602      1
#3:   2  0.08201096      4
#4:   6  0.71301325      3
#5:   7 -0.96710189      2
#6:   4  0.63009855      1
#7:   3 -0.91932200      1
#8:   0  0.03318392      2
``````
-
Thanks but where is the number of pixels ? –  hyat Jun 10 '13 at 15:41
@ZadSim updated –  Simon O'Hanlon Jun 10 '13 at 15:48
@ZadSim if the `corr` file contains an `NA` put `0`, otherwise put `1`. Then when we come to do the `sum` to know how many pixels were counted in the `mean` NA cells don't count towards the sum because they are 0. Do you see? –  Simon O'Hanlon Jun 10 '13 at 16:09
@ZadSim then just use `as.integer( cusBreak )` instead of `cus` when you make the `data.table`, i.e. `DT <- data.table( "Cus" = as.integer(cusBreak) , "Corr" = as.vector(corr) )` –  Simon O'Hanlon Jun 10 '13 at 16:29
@ZadSim no, leave corr as it is because you want the mean of those values. cusBREAK is just a categorical classification variable used to subset corr. –  Simon O'Hanlon Jun 10 '13 at 17:24