# Android image processing algorithm performance

I have created a method which performs a sobel edge detection. I use the Camera yuv byte array to perform the detection on. Now my problem is that I only get 5fps or something, which is really low. I know it can be done faster because there are other apps on the market who are able to do it at good fps on good quality. I pass images in a 800x400 resolution. Can anyone check if my algorithm can be made shorter or more performant? I already put the algorithm in native code but there seems to be no difference in fps.

``````public void process() {
progress=0;
index = 0;
// calculate size

// pixel index

size = width*(height-2) - 2;
// pixel loop
while (size>0)
{
// get Y matrix values from YUV
ay = input[index];
by = input[index+1];
cy = input[index+2];
gy = input[index+doubleWidth];
hy = input[index+doubleWidth+1];
iy = input[index+doubleWidth+2];

// get X matrix values from YUV
ax = input[index];
cx = input[index+2];
dx = input[index+width];
fx = input[index+width+2];
gx = input[index+doubleWidth];
ix = input[index+doubleWidth+2];

//  1  2  1
//  0  0  0
// -1 -2 -1
sumy = ay + (by*2) + cy - gy - (2*hy) - iy;

// -1  0  1
// -2  0  2
// -1  0  1
sumx = -ax + cx -(2*dx) + (2*fx) - gx + ix;

total[index] =  (int) Math.sqrt(sumx*sumx+sumy*sumy);
// Math.atan2(sumx,sumy);
if(max < total[index])
max = total[index];
//  sum = - a -(2*b) - c + g + (2*h) + i;

if (total[index] <0)
total[index] = 0;

// clamp to 255
if (total[index] >255)
total[index] = 0;

sum = (int) (total[index]);
output[index] = 0xff000000 | (sum << 16) | (sum << 8) | sum;
size--;
// next
index++;
}
//ratio = max/255;

}
``````

Thx in Advance ! greetings

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So I have two things:

1. I would consider loosing the Math.sqrt() expression: If you are only interested in edge detection, I see no need for the this, as the sqrt function is monotonic and it is really costly to calculate.
2. I would consider another algorithm, especially I have had good results with a seperated convolution-filter: http://www.songho.ca/dsp/convolution/convolution.html#separable_convolution as this might bring down the number of arithmetic floating-point operations (which is probably your bottleneck).

I hope this helps, or at least sparks some inspiration. Good luck.

-
• If you are using your algorithm in real-time, call it less often, maybe every ~20 frames instead of every frame.
• Do more work per iteration, 800x400 in your algorithm is 318,398 iterations. Each iteration is pulling from the input array in a (to the processor) random way which causes issues with caching. Try pulling ay, ay2, by, by2, cy, cy2 and do twice the calculations per loop, you'll notice that the variables in the next iteration will relate to the previous. ay is now ay2 etc...

Here's a rewrite of your algo, doing twice the work per iteration. It saves a bit in redundant memory access, and ignores square root mentioned in another answer.

``````public void process() {
progress=0;
index = 0;
// calculate size

// pixel index

size = width*(height-2) - 2;
// do FIRST iteration outside of loop
// grab input avoid redundant memory accesses
ay = ax = input[index];
by = ay2 = ax2 = input[index+1];
cy = by2 = cx = input[index+2];
cy2 = cx2 = input[index+3];
gy = gx = input[index+doubleWidth];
hy = gy2 = gx2 = input[index+doubleWidth+1];
iy = hy2 = ix = input[index+doubleWidth+2];
iy2 = ix2 = input[index+doubleWidth+3];
dx = input[index+width];
dx2 = input[index+width+1];
fx = input[index+width+2];
fx2 = input[index+width+3];
//
sumy = ay + (by*2) + cy - gy - (2*hy) - iy;
sumy2 = ay2 + (by2*2) + cy2 - gy2 - (2*hy2) - iy2;
sumx = -ax + cx -(2*dx) + (2*fx) - gx + ix;
sumx2 = -ax2 + cx2 -(2*dx2) + (2*fx2) - gx2 + ix2;
// ignore the square root
total[index] = fastSqrt(sumx*sumx+sumy*sumy);
total[index+1] = fastSqrt(sumx2*sumx2+sumy2*sumy2);
max = Math.max(max, Math.max(total[index], total[index+1]));
// skip the test for negative value it can never happen
if(total[index] > 255) total[index] = 0;
if(total[index+1] > 255) total[index+1] = 0;
sum = (int) (total[index]);
sum2 = (int) (total[index+1]);
output[index] = 0xff000000 | (sum << 16) | (sum << 8) | sum;
output[index+1] = 0xff000000 | (sum2 << 16) | (sum2 << 8) | sum2;
size -= 2;
index += 2;
while (size>0)
{
// grab input avoid redundant memory accesses
ay = ax = cy;
by = ay2 = ax2 = cy2;
cy = by2 = cs = input[index+2];
cy2 = cx2 = input[index+3];
gy = gx = iy;
hy = gy2 = gx2 = iy2;
iy = hy2 = ix = input[index+doubleWidth+2];
iy2 = ix2 = input[index+doubleWidth+3];
dx = fx;
dx2 = fx2;
fx = input[index+width+2];
fx2 = input[index+width+3];
//
sumy = ay + (by*2) + cy - gy - (2*hy) - iy;
sumy2 = ay2 + (by2*2) + cy2 - gy2 - (2*hy2) - iy2;
sumx = -ax + cx -(2*dx) + (2*fx) - gx + ix;
sumx2 = -ax2 + cx2 -(2*dx2) + (2*fx2) - gx2 + ix2;
// ignore the square root
total[index] = fastSqrt(sumx*sumx+sumy*sumy);
total[index+1] = fastSqrt(sumx2*sumx2+sumy2*sumy2);
max = Math.max(max, Math.max(total[index], total[index+1]));
// skip the test for negative value it can never happen
if(total[index] >= 65536) total[index] = 0;
if(total[index+1] >= 65536) total[index+1] = 0;
sum = (int) (total[index]);
sum2 = (int) (total[index+1]);
output[index] = 0xff000000 | (sum << 16) | (sum << 8) | sum;
output[index+1] = 0xff000000 | (sum2 << 16) | (sum2 << 8) | sum2;
size -= 2;
index += 2;
}
}

// some faster integer only implementation of square root.
public static int fastSqrt(int x) {

}
``````

Please note, the above code was not tested, it was written inside the browser window and may contain syntax errors.

EDIT You could try using a fast integer only square root function to avoid the Math.sqrt. http://atoms.alife.co.uk/sqrt/index.html

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THX ALOT LastCoder. Never thought about assigning more data per loop at once, that IS the key to performance here. Its running 3 fps faster now. I readded the Sqrt method because it gives me the nice Sobel Effect. It's also on wikipedia. I don't know how else I can recreate the sobel effect without using the Sqrt function –  LordrAider Dec 15 '11 at 18:17
@user1083398 - try a fast java integer only square root implementation, you may find it to be ~3x faster than Math.sqrt. You might also want to consider multi-threading if your hardware supports multiple cores you could run the loop on two threads each processing half of the image. –  LastCoder Dec 15 '11 at 19:50
"If you are using your algorithm in real-time, call it less often, maybe every ~20 frames instead of every frame." Wouldn't I be getting 20 frames the same image then if I only decode once every 20 frames? –  LordrAider Dec 15 '11 at 22:29
@user1083398 - I was thinking you could use the edge finding image as an overlay on top of the real image, and you'd only update that overlay every ~20 frames. Since I don't know exactly what your doing I can only speak hypothetically... –  LastCoder Dec 16 '11 at 17:37