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I have an OCR based iPhone app that takes in grayscale images and thresholds them to black and white to find the text (using opencv). This works fine for images with black text on a white background. I am having an issue with automatically switching to an inverse threshold when the image is white text on a black background. Is there a widely used algorithm for checking the image to determine if it is light text on a dark background or vice versa? Can anyone recommend a clean working method? Keep in mind, I am only working with the grayscale image from the iPhone camera.

Thanks a lot.

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Compare the percentage of pixels that are white to the percentage that are black. –  Nick Bull Mar 28 '12 at 10:06
    
I am using a grayscale image, so I couldn't compare pure black to pure white. I posted my solution below. –  Kevin_TA Apr 9 '12 at 16:53
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2 Answers

I would go over every pixel and check if it's bright or dark. If the count of dark pixels is bigger than the bright ones, you have to invert the picture.

Look here for how to determinate the brightness: Detect black pixel in image iOS

And that's how to draw an UIImage inverted:

[imyImage drawInRect:theImageRect blendMode:kCGBlendModeDifference alpha:1.0];
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up vote 0 down vote accepted

Since I am dealing with a grayscale image at this point, I could not count black or white pixels but had to count the number of pixels above a given "brightness" threshold. I just used the border pixels as this is less expensive and still gives me enough information to make a sound decision.

int sum = 0; // Number of light pixels
int threshold = 135; // Light/Dark intensity threshold

/* Count number of light pixels at border of image. Must convert to unsigned char type to make range 0-255. */
// Check every other pixel of top and bottom
for (int i=0; i<(image->width); i+=2) {
    if ((unsigned char)image->imageData[i] >= threshold) { // Check top
        sum++;
    }
    if ((unsigned char)image->imageData[(image->width)*(image->height)
                       - image->width + i] >= threshold) { // Check bottom
        sum++;
    }
}

//Check every other pixel of left and right Sides
for (int i=0; i<(image->height); i+=2) {
    if ((unsigned char)image->imageData[i*(image->width)] >= threshold) { // Check left
        sum++;
    }
    if ((unsigned char)image->imageData[i*(image->width) + (image->width) - 1] >= threshold) { // Check right
        sum++;
    }
}

// If more than half of the border pixels are light, use inverse threshold to find dark characters
if (sum > ((image->width/2) + (image->height/2))) {
    // Use inverse binary threshold because background is light
}
else {
    // Use standard binary threshold because background is dark
}
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You're still using a fixed threshold which is going to give trouble as the lighting or exposure changes. –  Mark Ransom Apr 9 '12 at 16:59
    
No this is just to determine if it is a light or dark background. The actual binary thresholding is done in a separate method implementing the Otsu method for adaptive binary thresholding. –  Kevin_TA Apr 9 '12 at 20:28
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