Detecting grayscale images with .Net

落花浮王杯 提交于 2019-12-23 07:21:14

问题


I am scanning documents to JPG images. The scanner must scan all pages as color or all pages as black and white. Since many of my pages are color, I must scan all pages as color. After the scanning is complete, I would like to examine the images with .Net and try to detect what images are black and white so that I can convert those images to grayscale and save on storage.

Does anybody know how to detect a grayscale image with .Net?

Please let me know.


回答1:


A simple algorithm to test for color: Walk the image pixel by pixel in a nested for loop (width and height) and test to see if the pixel's RGB values are equal. If they are not then the image has color info. If you make it all the way through all the pixels without encountering this condition, then you have a gray scale image.

Revision with a more complex algorithm:

In the first rev of this post i proposed a simple algorithm that assumes that pixels are gray scale if each pixel's RGB are values are equal. So RGBs of 0,0,0 or 128,128,128 or 230,230,230 would all test as gray while 123,90,78 would not. Simple.

Here's a snippet of code that tests for a variance from gray. The two methods are a small subsection of a more complex process but ought to provide enough raw code to help with the original question.

/// <summary>
/// This function accepts a bitmap and then performs a delta
/// comparison on all the pixels to find the highest delta
/// color in the image. This calculation only works for images
/// which have a field of similar color and some grayscale or
/// near-grayscale outlines. The result ought to be that the
/// calculated color is a sample of the "field". From this we
/// can infer which color in the image actualy represents a
/// contiguous field in which we're interested.
/// See the documentation of GetRgbDelta for more information.
/// </summary>
/// <param name="bmp">A bitmap for sampling</param>
/// <returns>The highest delta color</returns>
public static Color CalculateColorKey(Bitmap bmp)
{
    Color keyColor = Color.Empty;
    int highestRgbDelta = 0;

    for (int x = 0; x < bmp.Width; x++)
    {
        for (int y = 0; y < bmp.Height; y++)
        {
            if (GetRgbDelta(bmp.GetPixel(x, y)) <= highestRgbDelta) continue;

            highestRgbDelta = GetRgbDelta(bmp.GetPixel(x, y));
            keyColor = bmp.GetPixel(x, y);
        }
    }

    return keyColor;
}

/// <summary>
/// Utility method that encapsulates the RGB Delta calculation:
/// delta = abs(R-G) + abs(G-B) + abs(B-R) 
/// So, between the color RGB(50,100,50) and RGB(128,128,128)
/// The first would be the higher delta with a value of 100 as compared
/// to the secong color which, being grayscale, would have a delta of 0
/// </summary>
/// <param name="color">The color for which to calculate the delta</param>
/// <returns>An integer in the range 0 to 510 indicating the difference
/// in the RGB values that comprise the color</returns>
private static int GetRgbDelta(Color color)
{
    return
        Math.Abs(color.R - color.G) +
        Math.Abs(color.G - color.B) +
        Math.Abs(color.B - color.R);
}



回答2:


If you can't find a library for this, you could try grabbing a large number (or all) of the pixels for an image and see if their r, g, and b values are within a certain threshold (which you might set empirically, or have as a setting) of one another. If they are, the image is grayscale.

I would definitely make the threshold for a test a bit larger than 0, though...so I wouldn't test r=g, for example, but (abs(r-g) < e) where e is your threshold. That way you can keep your false color positives down...as I suspect you'll otherwise get a decent number, unless your original image and scanning techniques give precisely grayscale.




回答3:


A faster versión. Test with a threshold of 8. Work well for my

Use:

bool grayScale;
Bitmap bmp = new Bitmap(strPath + "\\temp.png");
grayScale = TestGrayScale(bmp, 8);
if (grayScale)
   MessageBox.Show("Grayscale image");


/// <summary>Test a image is in grayscale</summary>
/// <param name="bmp">The bmp to test</param>
/// <param name="threshold">The threshold for maximun color difference</param>
/// <returns>True if is grayscale. False if is color image</returns>
public bool TestGrayScale(Bitmap bmp, int threshold)
{
    Color pixelColor = Color.Empty;
    int rgbDelta;

    for (int x = 0; x < bmp.Width; x++)
    {
        for (int y = 0; y < bmp.Height; y++)
        {
            pixelColor = bmp.GetPixel(x, y);
            rgbDelta = Math.Abs(pixelColor.R - pixelColor.G) + Math.Abs(pixelColor.G - pixelColor.B) + Math.Abs(pixelColor.B - pixelColor.R);
            if (rgbDelta > threshold) return false;
        }
    }
    return true;
}

Do you have a faster one?




回答4:


As JPEG have support for metadata, you should first to check if your scanner software place some special data on saved images and if you can rely on that information.




回答5:


The answer I posted in the python section might be helpful. Images you find e.g. on the web that a human would consider grayscale often do not have identical R,G,B values. You need some calculation of the variance and some kind of sampling process so you don't have to check a million pixels. The solution Paul gave is based on the max difference so a single red pixel artefact from a scanner could turn a grayscale image into non-grayscale. The solution I posted got 99.1% precision and 92.5% recall on 13,000 images.




回答6:


I think that this approach should require the least code, it's been tested on jpegs. bImage below is a byte array.

 MemoryStream ms = new MemoryStream(bImage);
 System.Drawing.Image returnImage = System.Drawing.Image.FromStream(ms);
 if (returnImage.Palette.Flags == 2)
 {
      System.Diagnostics.Debug.WriteLine("Image is greyscale");
 }


来源:https://stackoverflow.com/questions/1877405/detecting-grayscale-images-with-net

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