I recommend taking a more matrix-oriented approach. MATLAB/Octave is very slow when using loops.

For example, let's say I want to create an RGB image where the pixels whose grayscale conversion values (0.3*R + 0.6*G + 0.1*B) less than or equal to 128 are set to zero:

```
# Read a 512x512 RGB image.
# Resulting matrix size is [512 512 3]
im = imread('lena_rgb.png');
# Compute grayscale value (could be done more accurately with rgb2gray).
# Resulting matrix size is [512 512 1] (same as [512 512])
grayval = 0.3*im(:,:,1) + 0.6*im(:,:,2) + 0.1*im(:,:,3);
# Create a bitmask of grayscale values above 128
# Contains 0 if less than or equal than 128, 1 if greater than 128
# Resulting matrix size is [512 512 1] (same as [512 512])
mask = (grayval > 128);
# Element-wise multiply the mask with the input image to get the new RGB image
# Resulting matrix size is [512 512 3]
result = im.* repmat(mask, [1 1 3]);
```

I recommend learning more about matrix manipulation, arithmetic, and addressing in Octave. I included the original and result images of my example for reference.