中值滤波C语言优化

中值滤波C语言优化

图像平滑是图像预处理的基本操作,本文首先用不同的方法对一张图片做预处理比较它们效果的不同,然后针对中值滤波,实现了一种快速实现.(其实是copyopencv实现,呵呵).因为opencv的实现方法感觉太好了,今天就特别写下来.既有备忘的作用,同时如果谁看到这篇文章,也可以借鉴下opencv的实现.

1 原始图像

clip_image001

2 均值滤波图像

clip_image002

3 中值滤波图像

clip_image003

4 双边滤波图像

clip_image004

5高斯滤波图像

clip_image005

上图的代码

void CDialogTest2013Dlg::OnBnClickedMfcbutton1()

{

    char file[10]="e:\1.jpg";

   

    IplImage *src = cvLoadImage(file,0);

    CvSize picSize;

    picSize.width = src->width;

    picSize.height = src->height;

    IplImage *dst_midian= cvCreateImage(picSize,8,1);

    IplImage *dst_blur = cvCreateImage(picSize,8,1);

    IplImage *dst_gaussian = cvCreateImage(picSize,8,1);

    IplImage *dst_bilateral = cvCreateImage(picSize,8,1);

    cvSmooth(src, dst_midian, CV_MEDIAN,3,3);

    cvSmooth(src, dst_blur, CV_BLUR,3,3);

    cvSmooth(src, dst_gaussian, CV_GAUSSIAN,3,3);

    cvSmooth(src, dst_bilateral, CV_BILATERAL,3,3);

   

}

均值滤波原理:把一个点周围点求均值,这个均值给这个点.

中值滤波原理:把一个点周围的点排序,把中位数给这个点.

双边滤波原理:这个一句话说不清楚,可以看这个博文 http://blog.csdn.net/bugrunner/article/details/7170471

高斯滤波原理:均值滤波对一个点周围点求和是每个点的权重都是1,高斯滤波的权重不是1,是一个类似高斯分布的权重分布,距离目标点

近的地方权重高点,距离目标点远的地方,权重低些.

中值滤波的opencv实现

template<class Op, class VecOp>

staticvoid

medianBlur_SortNet(const Mat& _src, Mat& _dst,int m )

{

    typedef typename Op::value_type T;

    typedef typename Op::arg_type WT;

    typedef typename VecOp::arg_type VT;

    const T* src =(const T*)_src.data;

    T* dst =(T*)_dst.data;

    int sstep =(int)(_src.step/sizeof(T));

    int dstep =(int)(_dst.step/sizeof(T));

    Size size = _dst.size();

    int i, j, k, cn = _src.channels();

    Op op;

    VecOp vop;

    volatile bool useSIMD = checkHardwareSupport(CV_CPU_SSE2);

    if( m ==3)

    {

        if( size.width ==1|| size.height ==1)

        {

            int len = size.width + size.height -1;

            int sdelta = size.height ==1? cn : sstep;

            int sdelta0 = size.height ==1?0: sstep - cn;

            int ddelta = size.height ==1? cn : dstep;

            for( i =0; i < len; i++, src += sdelta0, dst += ddelta )

                for( j =0; j < cn; j++, src++)

                {

                    WT p0 = src[i >0?-sdelta :0];

                    WT p1 = src[0];

                    WT p2 = src[i < len -1? sdelta :0];

                    op(p0, p1); op(p1, p2); op(p0, p1);

                    dst[j]=(T)p1;

                }

            return;

        }

        size.width *= cn;

        for( i =0; i < size.height; i++, dst += dstep )

        {

            const T* row0 = src + std::max(i -1,0)*sstep;

            const T* row1 = src + i*sstep;

            const T* row2 = src + std::min(i +1, size.height-1)*sstep;

            int limit = useSIMD ? cn : size.width;

            for(j =0;;)

            {

                for(; j < limit; j++)

                {

                    int j0 = j >= cn ? j - cn : j;

                    int j2 = j < size.width - cn ? j + cn : j;

                    WT p0 = row0[j0], p1 = row0[j], p2 = row0[j2];

                    WT p3 = row1[j0], p4 = row1[j], p5 = row1[j2];

                    WT p6 = row2[j0], p7 = row2[j], p8 = row2[j2];

                    op(p1, p2); op(p4, p5); op(p7, p8); op(p0, p1);  //op(p1, p2)  交换p1p2两个数

                    op(p3, p4); op(p6, p7); op(p1, p2); op(p4, p5);

                    op(p7, p8); op(p0, p3); op(p5, p8); op(p4, p7);

                    op(p3, p6); op(p1, p4); op(p2, p5); op(p4, p7);

                    op(p4, p2); op(p6, p4); op(p4, p2);

                    dst[j]=(T)p4;

                }

                if( limit == size.width )

                    break;

                for(; j <= size.width - VecOp::SIZE - cn; j += VecOp::SIZE )

                {

                    VT p0 = vop.load(row0+j-cn), p1 = vop.load(row0+j), p2 = vop.load(row0+j+cn);

                    VT p3 = vop.load(row1+j-cn), p4 = vop.load(row1+j), p5 = vop.load(row1+j+cn);

                    VT p6 = vop.load(row2+j-cn), p7 = vop.load(row2+j), p8 = vop.load(row2+j+cn);

                    vop(p1, p2); vop(p4, p5); vop(p7, p8); vop(p0, p1);

                    vop(p3, p4); vop(p6, p7); vop(p1, p2); vop(p4, p5);

                    vop(p7, p8); vop(p0, p3); vop(p5, p8); vop(p4, p7);

                    vop(p3, p6); vop(p1, p4); vop(p2, p5); vop(p4, p7);

                    vop(p4, p2); vop(p6, p4); vop(p4, p2);

                    vop.store(dst+j, p4);

                }

                limit = size.width;

            }

        }

    }

}

}

原文地址:https://www.cnblogs.com/guopengfei/p/4745676.html