1

I want to reduce a 16-Bit Mat using opencv. I tried to use opencv LUT function to reduce this mat. But it seems like it wont support 16-Bit Mat. What is the efficient way of reducing a 16-Bit Mat using opencv c++? Any help is appreciated!

e.g I want to scan & reduce all the pixels by 10 Grey levels! I want to implement the same example given in the opencv documentation for 16-Bit Mat.

How to access each element of Mat through Pointers?

  • Can you give more details about "reduce" means here ? – blackball Nov 24 '14 at 12:04
  • @blackball I've updated my question – Balaji R Nov 24 '14 at 13:07
  • You could build your own look-up table using a Mat with type int. – blackball Nov 24 '14 at 13:17
  • Yes we can! But how to access that using pointers? can you elaborate your ans? – Balaji R Nov 24 '14 at 13:38
1

The source code of LUT is in this file: https://github.com/Itseez/opencv/blob/fd59551ff0648d33568d7fc63164bf86c5d3ccb6/modules/core/src/convert.cpp

OpenCV can use several methods for performing lookup-table transforms efficiently: it can use Intel IPP library (class IppLUTParallelBody_LUTCN, for 3 or 4-channel images). If have Intel IPP, you can just copy the code of this class and use ippiLUTPalette_16u_C3R instead of ippiLUTPalette_8u_C3R +fix initialization).

Another possible way is OpenCL library (for GPU), it's invoked from ocl_LUT (sorry, have no experience with it, so I can't give any advice).

Or it uses LUTParallelBody/IppLUTParallelBody_LUTCN classes (corresponding to single and multichannel images). These classes use LUT8u_ template function. No rocket science here: it just iterates over the image a substitutes the values. So you can simply copy and paste IppLUTParallelBody and use slightly different function inside the loop. ParallelLoopBody base class uses a library like OpenMP or Intel TBB to run the loop in multiple threads. I suppose, you don't have to modify anything in it to make it work with new function.

0

Thank you for helping me to solve this problem! Here is my code for 16-Bit Look up table based reduction. hope this might be useful for someone!

main()
{
    Size Img_Size(320,240);
    Mat Img_Source_16(Size(320,240),CV_16UC1,Scalar::all(0));
    Mat Img_Destination_16(Size(320,240),CV_16UC1,Scalar::all(0));

    unsigned short LookupTable[4096];
    for (int i = 0; i < 4096; i++)
    {
        LookupTable[i]= 4096-i;
    }

    int i=0;
    for (int Row = 0; Row < Img_Size.height; Row++)
    {
        for (int Col = 0; Col < Img_Size.width; Col++)
        {
            Img_Source_16.at<short>(Row,Col)= i;
            i++;
            if(i>=4095)
                i=0;
        }
    }

    imshow("Img_Source",Img_Source_16);

    t1.start();
    Img_Destination_16= ScanImageAndReduceC_16UC1(Img_Source_16.clone(),LookupTable);

    imshow("Img_Destination",Img_Destination_16);
    t1.stop();
}

Mat& ScanImageAndReduceC_16UC1(Mat& I, const unsigned short* const table)
{
    // accept only char type matrices
    CV_Assert(I.depth() != sizeof(uchar));

    int channels = I.channels();

    int nRows = I.rows;
    int nCols = I.cols * channels;

    if (I.isContinuous())
    {
        nCols *= nRows;
        nRows = 1;
    }

    int i,j;
    unsigned short* p = (unsigned short*)I.data;
    for( unsigned int i =0; i < nCols*nRows; ++i)
        *p++ = table[*p];

    return I;
}

Your Answer

By clicking "Post Your Answer", you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.