Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am really confused by using Mat and IplImage objects in OpenCV. I read a lot of questions and answers here but I am still in trouble with these 2 types.

Many times, I need converting them to each other that is what makes me lost in those conversions. The functions I know and use sometimes take IplImage objects and sometimes Mat objects.

For example, "cvThreshold" method takes IplImages and "threshold" method takes Mat objects, no problem here but "cvSmooth" method is only for IplImages, I couldn't find a dedicated method for Mat objects (is there?), then I unwillingly convert Mat to IplImage then use in "cvSmooth" and then again convert to Mat. At this point, how can I use Mat object with cvSmooth? I am sure this is not a normal way to handle this issue and there are better ways. Maybe I am missing something in understanding these types.

Can you please help me out to get rid of this problem ?

share|improve this question

2 Answers 2

up vote 2 down vote accepted

Calling cvSmooth:

void callCvSmooth(cv::Mat srcmtx, cv::Mat dstmtx, int smooth_type,
      int param1, int param2, double param3, double param4 )
{
   IplImage src = srcmtx;
   IplImage dst = dstmtx;
   cvSmooth( &src, &dst, smooth_type, param1, param2, param3, param4 );
}

But if you look into the cvSmooth implementation you will easily find the C++ analogs:

CV_IMPL void
cvSmooth( const void* srcarr, void* dstarr, int smooth_type,
          int param1, int param2, double param3, double param4 )
{
    cv::Mat src = cv::cvarrToMat(srcarr), dst0 = cv::cvarrToMat(dstarr), dst = dst0;

    CV_Assert( dst.size() == src.size() &&
        (smooth_type == CV_BLUR_NO_SCALE || dst.type() == src.type()) );

    if( param2 <= 0 )
        param2 = param1;

    if( smooth_type == CV_BLUR || smooth_type == CV_BLUR_NO_SCALE )
        cv::boxFilter( src, dst, dst.depth(), cv::Size(param1, param2), cv::Point(-1,-1),
            smooth_type == CV_BLUR, cv::BORDER_REPLICATE );
    else if( smooth_type == CV_GAUSSIAN )
        cv::GaussianBlur( src, dst, cv::Size(param1, param2), param3, param4, cv::BORDER_REPLICATE );
    else if( smooth_type == CV_MEDIAN )
        cv::medianBlur( src, dst, param1 );
    else
        cv::bilateralFilter( src, dst, param1, param3, param4, cv::BORDER_REPLICATE );

    if( dst.data != dst0.data )
        CV_Error( CV_StsUnmatchedFormats, "The destination image does not have the proper type" );
}
share|improve this answer

Stick with one of the two. cv::Mat is the C++ way of things. The class has reference counting mechanisms and handles all the garbage collection process. Every cv* function has a corresponding cv::* version in C++ (mostly, IMO).


For the cvSmooth equivalent, you could use cv::GaussianBlur(..) or cv::medianBlur(..) or cv::blur(..). There are many variations. Its best to consult the documentation as always. The cvSmooth(..) is just split up into various functions.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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