# Efficient implementation of summed area table/integral image in R

I am trying to construct a summed area table or integral image given an image matrix. For those of you who dont know what it is, from wikipedia:

A summed area table (also known as an integral image) is a data structure and algorithm for quickly and efficiently generating the sum of values in a rectangular subset of a grid

In other words, its used to sum up values of any rectangular region in the image/matrix in constant time.

I am trying to implement this in R. However, my code seems to take too long to run.

Here is the pseudo code from this link. `in` is the input matrix or image and `intImg` is whats returned

```for i=0 to w do
sum←0

for j=0 to h do
sum ← sum + in[i, j]

if i = 0 then
intImg[i, j] ← sum
else
intImg[i, j] ← intImg[i − 1, j] + sum
end if
end for
end for
```

And here is my implementation

```w = ncol(im)
h = nrow(im)
intImg = c(NA)
length(intImg) = w*h

for(i in 1:w){ #x
sum = 0;
for(j in 1:h){ #y
ind = ((j-1)*w)+ (i-1) + 1 #index
sum = sum + im[ind]
if(i == 1){
intImg[ind] = sum
}else{
intImg[ind] = intImg[ind-1]+sum
}
}
}
intImg = matrix(intImg, h, w, byrow=T)
```

Example of input and output matrix:

However, on a `480x640` matrix, this takes ~ 4 seconds. In the paper they describe it to take on the order of milliseconds for those dimensions.

Am I doing something inefficient in my loops or indexing?

I considered writing it in C++ and wrapping it in R, but I am not very familiar with C++.

Thank you

-
a link to `im` would make this reproducible. it's hard for me to parse what you're doing without an example, but you can probably use `colSums()` and `rowSums()` or some other vectorized function(s). –  Chase May 14 '13 at 14:50
`im` is just any matrix. I've added an example of the input and output in the question –  by0 May 14 '13 at 14:55
How much improvement do you get by changing `intImg = c(NA)` to `intImg <- rep(NA, 480*460)`? –  joran May 14 '13 at 14:59
Hi joran, I've tried that. Doesn't change much. What's the difference? –  by0 May 14 '13 at 15:01
You need to start being much more specific. "Doesn't change much" and providing images of example matrices isn't very helpful. –  joran May 14 '13 at 15:02

You could try to use `apply` (isn't faster than your for-loops if you pre-allocating the memory):

``````areaTable <- function(x) {
return(apply(apply(x, 1, cumsum), 1, cumsum))
}

areaTable(m)
#      [,1] [,2] [,3] [,4]
# [1,]    4    5    7    9
# [2,]    4    9   12   17
# [3,]    7   13   16   25
# [4,]    9   16   22   33
``````
-
It will be quicker - though probably not by a huge margin - as you are doing 8 `cumsum` calls (plus the loop forming code and allocation etc) whereas the OP's code is doing lots of calls to `+` to give the equivalent of your `cumsum` calls. As it is interpreted code all those function calls will add up. –  Gavin Simpson May 14 '13 at 15:26
@GavinSimpson I'm actually surprised at how much faster it is, based on a quick timing of a 500x500 example. –  joran May 14 '13 at 15:30
Yes, its vastly faster. I gave up waiting for two nested `for` loops, the double-apply took less than a second. –  Spacedman May 14 '13 at 15:32
@joran I should have stuck to my initial thought - I went back and added the caveat before submitting the comment in a moment of self-doubt. `cumsum` is very efficient code and all those `+` calls will mount up as the dimensions of the input increase. Profiling the OP's code will show that. –  Gavin Simpson May 14 '13 at 15:33
@GavinSimpson: you are right, I didn't thought about this fact of interpreted code. –  sgibb May 14 '13 at 16:06