Mean Shift,我们 翻译“平均漂移”。

其集群,图像平滑。

图像分割和跟踪已广泛应用。因为我现在认为追踪,因此推出Mean Shift该方法用于目标跟踪。从而MeanShift較全面的介绍。

     (下面某些部分转载常峰学长的“Mean Shift概述”) Mean Shift 这个概念最早是由Fukunaga等人于1975年在一篇关于概率密度梯度函数的预计(The Estimation of the Gradient of a Density Function, with Applications in Pattern Recognition )中提出来的,其最初含义正如其名,就是偏移的均值向量,在这里Mean Shift是一个名词,它指代的是一个向量,但随着Mean Shift理论的发展,Mean Shift的含义也发生了变化,假设我们说Mean Shift算法,通常是指一个迭代的步骤,即先算出当前点的偏移均值,移动该点到其偏移均值,然后以此为新的起始点,继续移动,直到满足一定的条件结束.

然而在以后的非常长一段时间内Mean Shift并没有引起人们的注意,直到20年以后,也就是1995年,另外一篇关于Mean Shift的重要文献(Mean shift, mode seeking, and clustering )才发表.在这篇重要的文献中,Yizong Cheng对主要的Mean Shift算法在下面两个方面做了推广,首先Yizong Cheng定义了一族核函数,使得随着样本与被偏移点的距离不同,其偏移量对均值偏移向量的贡献也不同,其次Yizong Cheng还设定了一个权重系数,使得不同的样本点重要性不一样,这大大扩大了Mean Shift的适用范围.另外Yizong Cheng指出了Mean Shift可能应用的领域,并给出了详细的样例。

 

Comaniciu等人在还(Mean-shift Blob Tracking through Scale Space)中把非刚体的跟踪问题近似为一个Mean Shift最优化问题,使得跟踪能够实时的进行。眼下。利用Mean Shift进行跟踪已经相当成熟。

 

目标跟踪不是一个新的问题,眼下在计算机视觉领域内有不少人在研究。所谓跟踪,就是通过已知的图像帧中的目标位置找到目标在下一帧中的位置。

以下主要以代码形式展现Mean Shift在跟踪中的应用。

void CObjectTracker::ObjeckTrackerHandlerByUser(IplImage *frame)//跟踪函数

      {

          m_cActiveObject = 0;

   if (m_sTrackingObjectTable[m_cActiveObject].Status)

          {

              if (!m_sTrackingObjectTable[m_cActiveObject].assignedAnObject)

              {

                    FindHistogram(frame,m_sTrackingObjectTable[m_cActiveObject].initHistogram);

                    m_sTrackingObjectTable[m_cActiveObject].assignedAnObject = true;

              }

              else

              {

                    FindNextLocation(frame);//利用mean shift 迭代找出目标下一个位置点

             DrawObjectBox(frame);

              }

         }

}

 

void CObjectTracker::FindNextLocation(IplImage *frame)

{

int i, j, opti, optj;

SINT16 scale[3]={-3, 3, 0};

FLOAT32 dist, optdist;

SINT16 h, w, optX, optY;

//try no-scaling

FindNextFixScale(frame);//找出目标的下一个大致范围

optdist=LastDist;

optX=m_sTrackingObjectTable[m_cActiveObject].X;

optY=m_sTrackingObjectTable[m_cActiveObject].Y;

//try one of the 9 possible scaling

i=rand()*2/RAND_MAX;

j=rand()*2/RAND_MAX;

h=m_sTrackingObjectTable[m_cActiveObject].H;

w=m_sTrackingObjectTable[m_cActiveObject].W;

if(h+scale[i]>10 && w+scale[j]>10 && h+scale[i]<m_nImageHeight/2 && w+scale[j]<m_nImageWidth/2)

{

   m_sTrackingObjectTable[m_cActiveObject].H=h+scale[i];

   m_sTrackingObjectTable[m_cActiveObject].W=w+scale[j];

   FindNextFixScale(frame);

   if( (dist=LastDist) < optdist ) //scaling is better

   {

    optdist=dist;

//    printf("Next%f->/n", dist);

   }

   else //no scaling is better

   {

    m_sTrackingObjectTable[m_cActiveObject].X=optX;

    m_sTrackingObjectTable[m_cActiveObject].Y=optY;

    m_sTrackingObjectTable[m_cActiveObject].H=h;

    m_sTrackingObjectTable[m_cActiveObject].W=w;

   }

};

TotalDist+=optdist; //the latest distance

// printf("/n");

}

这里仍然在跟踪的基础上解说mean shift。

首先还是把mean shift的原理用数学公式说一下吧。1、目标模型。算法採用的是特征值的加权概率分布来描写叙述目标模型。这应该是模式识别中主要描写叙述目标的模型。不同于自己主动控制理论中採用的状态方程。

目标模型共m个特征值(能够理解为像素灰度值)

Mean Shift简介_直方图

Mean Shift简介_直方图_02

当中X0是窗体中心点向量值(可能为RBG 向量或者灰度值), Xi 是窗体内第i 点向量值。C 为归一化常数。保障q1+q2+q3+……qm=1。H 为核函数的带宽向量。M 为特征值的个数,相应于图像处理能够理解为灰度等级划分的个数,从而特征值u 为相应的灰度等级。d 函数为脉冲函数,保证仅仅有具有u 特征值的像素才对概率分布作出贡献。

从而k函数能够理解为u 灰度值的一个加权频数。

2、 匹配对象。也採用特征值加权概率分布

Mean Shift简介_#define_03

当中。Y 为匹配对象的中心, Xi 是匹配窗体内第i 点向量值。 Hh 为匹配窗体的核函数带宽向量。

Ch 为匹配窗体特征向量的归一化常数。

3、 匹配对象与目标模型的类似程度,类似函数可採用Bhattacharyya 函数

Mean Shift简介_#define_04

4、 匹配过程就是寻找类似函数最大值的寻优过程,Mean-Shift 採用的是梯度下降法。首先将Mean Shift简介_迭代_05(Y) 在Mean Shift简介_直方图_06

(Y0)附近进行泰勒级数展开。取前两项。

即:

Mean Shift简介_#define_07

要使得Mean Shift简介_特征值_08(Y) 向最大值迭代,仅仅要Y 的搜索方向与梯度方向一致就可以,通过求导可得到Y0的梯度方向为:

Mean Shift简介_直方图_09

Mean Shift简介_#define_10为权值。因此假设例如以下确定Y1,那么Y1-Y0将与梯度方向一致。


Mean Shift简介_#define_11



以上为mean shift的数学原理。

有关文字的叙述已经在上一篇中提到了。

用mean shift来跟踪属于确定性算法,粒子滤波器属于统计学方法。meanshift跟踪算法相对于粒子滤波器来说可能实时性更好一些,可是跟踪的准确性在理论上还是略逊于粒子滤波器的。mean shift跟踪的的实质就是通过相应的模板来确定目标的下一个位置。通过迭代找到新的中心点(即是目标的新的位置点)。

有关跟踪的code例如以下所看到的:

/**********************************************************************

Bilkent University:

Mean-shift Tracker based Moving Object Tracker in Video

Version: 1.0

Compiler: Microsoft Visual C++ 6.0 (tested in both debug and release

          mode)

Modified by Mr Zhou

**********************************************************************/

#include "ObjectTracker.h"

#include "utils.h"

#include <math.h>

#include <stdio.h>

#include <stdlib.h>

/*

#define GetRValue(rgb)   ((UBYTE8) (rgb))

#define GetGValue(rgb)   ((UBYTE8) (((ULONG_32) (rgb)) >> 8))

#define GetBValue(rgb)   ((UBYTE8) ((rgb) >> 16))

*/

//#define RGB(r, g ,b) ((ULONG_32) (((UBYTE8) (r) | ((UBYTE8) (g) << 8)) | (((ULONG_32) (UBYTE8) (b)) << 16)))

#define min(a, b) (((a) < (b)) ?

(a) : (b))

#define max(a, b) (((a) > (b)) ?

(a) : (b))



#define MEANSHIFT_ITARATION_NO 5

#define DISTANCE_ITARATION_NO 1

#define ALPHA 1

#define EDGE_DETECT_TRESHOLD 32

//////////////////////////////////////////////////

/*

1 给定目标的初始位置和尺寸, 计算目标在图像中的直方图;

2 输入新图像, 迭代直到收敛:

计算图像上相应区域的新直方图;

新直方图与目标直方图比較,计算权重;

依据权重,计算图像上相应区域的形心/质心;

依据形心,修正目标位置;

直方图分为两部分, 每部分大小4096,

RGB的256*256*256种组合, 缩减为16*16*16=4096种组合.

假设目标区域的点是边缘点, 则计入直方图的后一部分,

否则计入直方图的前一部分.

*/

//////////////////////////////////////////////////

CObjectTracker::CObjectTracker(INT32 imW,INT32 imH,IMAGE_TYPE eImageType)

{


m_nImageWidth = imW;

m_nImageHeight = imH;

m_eIMAGE_TYPE = eImageType;

m_cSkipValue = 0;

for (UBYTE8 i=0;i<MAX_OBJECT_TRACK_NUMBER;i++)//初始化各个目标

{

   m_sTrackingObjectTable[i].Status = false;

      for(SINT16 j=0;j<HISTOGRAM_LENGTH;j++)

    m_sTrackingObjectTable[i].initHistogram[j] = 0;

}

m_nFrameCtr = 0;

m_uTotalTime = 0;

m_nMaxEstimationTime = 0;

m_cActiveObject = 0;

TotalDist=0.0;

LastDist=0.0;

switch (eImageType)

{

   case MD_RGBA:

    m_cSkipValue = 4 ;

break ;

   case MD_RGB:

m_cSkipValue = 3 ;

   break ;

};

};

CObjectTracker::~CObjectTracker()

{

}

//returns pixel values in format |0|B|G|R| wrt to (x.y)

/*

ULONG_32 CObjectTracker::GetPixelValues(UBYTE8 *frame,SINT16 x,SINT16 y)

{

ULONG_32 pixelValues = 0;

pixelValues = *(frame+(y*m_nImageWidth+x)*m_cSkipValue+2)|//0BGR

               *(frame+(y*m_nImageWidth+x)*m_cSkipValue+1) << 8|

      *(frame+(y*m_nImageWidth+x)*m_cSkipValue) << 16;

return(pixelValues);

}*/

//set RGB components wrt to (x.y)

void CObjectTracker::SetPixelValues(IplImage *r,IplImage *g,IplImage *b,ULONG_32 pixelValues,SINT16 x,SINT16 y)

{

// *(frame+(y*m_nImageWidth+x)*m_cSkipValue+2) = UBYTE8(pixelValues & 0xFF);

// *(frame+(y*m_nImageWidth+x)*m_cSkipValue+1) = UBYTE8((pixelValues >> 8) & 0xFF);

// *(frame+(y*m_nImageWidth+x)*m_cSkipValue) = UBYTE8((pixelValues >> 16) & 0xFF);

//setpix32f

setpix8c(r, y, x, UBYTE8(pixelValues & 0xFF));

setpix8c(g, y, x, UBYTE8((pixelValues >> 8) & 0xFF));

setpix8c(b, y, x, UBYTE8((pixelValues >> 16) & 0xFF));

}

// returns box color

ULONG_32 CObjectTracker::GetBoxColor()

{

ULONG_32 pixelValues = 0;

switch(m_cActiveObject)

{

case 0:

pixelValues = RGB(255,0,0);

break;

case 1:

pixelValues = RGB(0,255,0);

break;

case 2:

pixelValues = RGB(0,0,255);

break;

case 3:

pixelValues = RGB(255,255,0);

break;

case 4:

pixelValues = RGB(255,0,255);

break;

case 5:

pixelValues = RGB(0,255,255);

break;

case 6:

pixelValues = RGB(255,255,255);

break;

case 7:

pixelValues = RGB(128,0,128);

break;

case 8:

pixelValues = RGB(128,128,0);

break;

case 9:

pixelValues = RGB(128,128,128);

break;

case 10:

pixelValues = RGB(255,128,0);

break;

case 11:

pixelValues = RGB(0,128,128);

break;

case 12:

pixelValues = RGB(123,50,10);

break;

case 13:

pixelValues = RGB(10,240,126);

break;

case 14:

pixelValues = RGB(0,128,255);

break;

case 15:

pixelValues = RGB(128,200,20);

break;

default:

break;

}

return(pixelValues);

}

//初始化一个目标的參数

void CObjectTracker::ObjectTrackerInitObjectParameters(SINT16 x,SINT16 y,SINT16 Width,SINT16 Height)

{

   m_cActiveObject = 0;

   m_sTrackingObjectTable[m_cActiveObject].X = x;

   m_sTrackingObjectTable[m_cActiveObject].Y = y;

   m_sTrackingObjectTable[m_cActiveObject].W = Width;

   m_sTrackingObjectTable[m_cActiveObject].H = Height;

   m_sTrackingObjectTable[m_cActiveObject].vectorX = 0;

   m_sTrackingObjectTable[m_cActiveObject].vectorY = 0;

   m_sTrackingObjectTable[m_cActiveObject].Status = true;

   m_sTrackingObjectTable[m_cActiveObject].assignedAnObject = false;

}

//进行一次跟踪

void CObjectTracker::ObjeckTrackerHandlerByUser(IplImage *frame)

{

   m_cActiveObject = 0;

   if (m_sTrackingObjectTable[m_cActiveObject].Status)

   {

    if (!m_sTrackingObjectTable[m_cActiveObject].assignedAnObject)

    {

     //计算目标的初始直方图

     FindHistogram(frame,m_sTrackingObjectTable[m_cActiveObject].initHistogram);

           m_sTrackingObjectTable[m_cActiveObject].assignedAnObject = true;

    }

    else

    {

     //在图像上搜索目标

     FindNextLocation(frame);   

     DrawObjectBox(frame);

    }

   }

}

//Extracts the histogram of box

//frame: 图像

//histogram: 直方图

//在图像frame中计算当前目标的直方图histogram

//直方图分为两部分,每部分大小4096,

//RGB的256*256*256种组合,缩减为16*16*16=4096种组合

//假设目标区域的点是边缘点,则计入直方图的后一部分,

//否则计入直方图的前一部分

void CObjectTracker::FindHistogram(IplImage *frame, FLOAT32 (*histogram))

{

SINT16 i = 0;

SINT16 x = 0;

SINT16 y = 0;

UBYTE8 E = 0;

UBYTE8 qR = 0,qG = 0,qB = 0;

// ULONG_32 pixelValues = 0;

UINT32 numberOfPixel = 0;

IplImage* r, * g, * b;

r = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

g = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

b = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

cvCvtPixToPlane( frame, b, g, r, NULL ); //divide color image into separate planes r, g, b. The exact sequence doesn't matter.

for (i=0;i<HISTOGRAM_LENGTH;i++) //reset all histogram

   histogram[i] = 0.0;

//for all the pixels in the region

for (y=max(m_sTrackingObjectTable[m_cActiveObject].Y-m_sTrackingObjectTable[m_cActiveObject].H/2,0);y<=min(m_sTrackingObjectTable[m_cActiveObject].Y+m_sTrackingObjectTable[m_cActiveObject].H/2,m_nImageHeight-1);y++)

   for (x=max(m_sTrackingObjectTable[m_cActiveObject].X-m_sTrackingObjectTable[m_cActiveObject].W/2,0);x<=min(m_sTrackingObjectTable[m_cActiveObject].X+m_sTrackingObjectTable[m_cActiveObject].W/2,m_nImageWidth-1);x++)

   {

    //边缘信息: 当前点与上下左右4点灰度差异是否超过阈值

    E = CheckEdgeExistance(r, g, b,x,y);

    qR = (UBYTE8)pixval8c( r, y, x )/16;//quantize R component

    qG = (UBYTE8)pixval8c( g, y, x )/16;//quantize G component

    qB = (UBYTE8)pixval8c( b, y, x )/16;//quantize B component

    histogram[4096*E+256*qR+16*qG+qB] += 1; //依据边缘信息, 累计直方图//HISTOGRAM_LENGTH=8192

    numberOfPixel++;

   }

for (i=0;i<HISTOGRAM_LENGTH;i++) //normalize

   histogram[i] = histogram[i]/numberOfPixel;

//for (i=0;i<HISTOGRAM_LENGTH;i++)

//   printf("histogram[%d]=%d/n",i,histogram[i]);

     // printf("numberOfPixel=%d/n",numberOfPixel);

cvReleaseImage(&r);

cvReleaseImage(&g);

cvReleaseImage(&b);

}

//Draw box around object

void CObjectTracker::DrawObjectBox(IplImage *frame)

{

SINT16 x_diff = 0;

SINT16 x_sum = 0;

SINT16 y_diff = 0;

SINT16 y_sum = 0;

SINT16 x = 0;

SINT16 y = 0;

ULONG_32 pixelValues = 0;

IplImage* r, * g, * b;

r = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

g = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

b = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

cvCvtPixToPlane( frame, b, g, r, NULL );

pixelValues = GetBoxColor();

//the x left and right bounds

x_sum = min(m_sTrackingObjectTable[m_cActiveObject].X+m_sTrackingObjectTable[m_cActiveObject].W/2+1,m_nImageWidth-1);//右边界

x_diff = max(m_sTrackingObjectTable[m_cActiveObject].X-m_sTrackingObjectTable[m_cActiveObject].W/2,0);//左边界

//the y upper and lower bounds

y_sum = min(m_sTrackingObjectTable[m_cActiveObject].Y+m_sTrackingObjectTable[m_cActiveObject].H/2+1,m_nImageHeight-1);//下边界

y_diff = max(m_sTrackingObjectTable[m_cActiveObject].Y-m_sTrackingObjectTable[m_cActiveObject].H/2,0);//上边界

for (y=y_diff;y<=y_sum;y++)

{

   SetPixelValues(r, g, b,pixelValues,x_diff,y);

   SetPixelValues(r, g, b,pixelValues,x_diff+1,y);

      SetPixelValues(r, g, b,pixelValues,x_sum-1,y);

      SetPixelValues(r, g, b,pixelValues,x_sum,y);

}

for (x=x_diff;x<=x_sum;x++)

{

   SetPixelValues(r, g, b,pixelValues,x,y_diff);

      SetPixelValues(r, g, b,pixelValues,x,y_diff+1);

      SetPixelValues(r, g, b,pixelValues,x,y_sum-1);

      SetPixelValues(r, g, b,pixelValues,x,y_sum);

}

cvCvtPlaneToPix(b, g, r, NULL, frame);

cvReleaseImage(&r);

cvReleaseImage(&g);

cvReleaseImage(&b);

}

// Computes weights and drives the new location of object in the next frame

//frame: 图像

//histogram: 直方图

//计算权重, 更新目标的坐标

void CObjectTracker::FindWightsAndCOM(IplImage *frame, FLOAT32 (*histogram))

{

SINT16 i = 0;

SINT16 x = 0;

SINT16 y = 0;

UBYTE8 E = 0;

FLOAT32 sumOfWeights = 0;

SINT16 ptr = 0;

UBYTE8 qR = 0,qG = 0,qB = 0;

FLOAT32   newX = 0.0;

FLOAT32   newY = 0.0;

// ULONG_32 pixelValues = 0;

IplImage* r, * g, * b;

FLOAT32 *weights = new FLOAT32[HISTOGRAM_LENGTH];

for (i=0;i<HISTOGRAM_LENGTH;i++)

{

   if (histogram[i] >0.0 )

    weights[i] = m_sTrackingObjectTable[m_cActiveObject].initHistogram[i]/histogram[i]; //qu/pu(y0)

   else

    weights[i] = 0.0;

}

r = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

g = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

b = cvCreateImage( cvGetSize(frame), frame->depth, 1 );

cvCvtPixToPlane( frame, b, g, r, NULL ); //divide color image into separate planes r, g, b. The exact sequence doesn't matter.

for (y=max(m_sTrackingObjectTable[m_cActiveObject].Y-m_sTrackingObjectTable[m_cActiveObject].H/2,0);y<=min(m_sTrackingObjectTable[m_cActiveObject].Y+m_sTrackingObjectTable[m_cActiveObject].H/2,m_nImageHeight-1);y++)

   for (x=max(m_sTrackingObjectTable[m_cActiveObject].X-m_sTrackingObjectTable[m_cActiveObject].W/2,0);x<=min(m_sTrackingObjectTable[m_cActiveObject].X+m_sTrackingObjectTable[m_cActiveObject].W/2,m_nImageWidth-1);x++)

   {

    E = CheckEdgeExistance(r, g, b,x,y);

    qR = (UBYTE8)pixval8c( r, y, x )/16;

    qG = (UBYTE8)pixval8c( g, y, x )/16;

    qB = (UBYTE8)pixval8c( b, y, x )/16;

    ptr = 4096*E+256*qR+16*qG+qB; //some recalculation here. The bin number of (x, y) can be stroed somewhere in fact.

    newX += (weights[ptr]*x);

    newY += (weights[ptr]*y);

    sumOfWeights += weights[ptr];

   }

   if (sumOfWeights>0)

   {

    m_sTrackingObjectTable[m_cActiveObject].X = SINT16((newX/sumOfWeights) + 0.5); //update location

    m_sTrackingObjectTable[m_cActiveObject].Y = SINT16((newY/sumOfWeights) + 0.5);

   }

cvReleaseImage(&r);

cvReleaseImage(&g);

cvReleaseImage(&b);

   delete[] weights, weights = 0;

}

// Returns the distance between two histograms.

FLOAT32 CObjectTracker::FindDistance(FLOAT32 (*histogram))

{

SINT16 i = 0;

FLOAT32 distance = 0;

for(i=0;i<HISTOGRAM_LENGTH;i++)

   distance += FLOAT32(sqrt(DOUBLE64(m_sTrackingObjectTable[m_cActiveObject].initHistogram[i]

                  *histogram[i])));

return(sqrt(1-distance));

}

//An alternative distance measurement

FLOAT32 CObjectTracker::CompareHistogram(UBYTE8 (*histogram))

{

SINT16 i = 0;

FLOAT32 distance = 0.0;

FLOAT32 difference = 0.0;

for (i=0;i<HISTOGRAM_LENGTH;i++)

{

   difference = FLOAT32(m_sTrackingObjectTable[m_cActiveObject].initHistogram[i]

                         -histogram[i]);

   if (difference>0)

    distance += difference;

   else

    distance -= difference;

}

return(distance);

}

// Returns the edge insformation of a pixel at (x,y), assume a large jump of value around edge pixels

UBYTE8 CObjectTracker::CheckEdgeExistance(IplImage *r, IplImage *g, IplImage *b, SINT16 _x,SINT16 _y)

{

UBYTE8 E = 0;

SINT16 GrayCenter = 0;

SINT16 GrayLeft = 0;

SINT16 GrayRight = 0;

SINT16 GrayUp = 0;

SINT16 GrayDown = 0;

// ULONG_32 pixelValues = 0;

// pixelValues = GetPixelValues(frame,_x,_y);

GrayCenter = SINT16(3*pixval8c( r, _y, _x )+6*pixval8c( g, _y, _x )+pixval8c( b, _y, _x ));

if (_x>0)

{

//   pixelValues = GetPixelValues(frame,_x-1,_y);


   GrayLeft = SINT16(3*pixval8c( r, _y, _x-1 )+6*pixval8c( g, _y, _x-1 )+pixval8c( b, _y, _x-1 ));

}

if (_x < (m_nImageWidth-1))

{

//   pixelValues = GetPixelValues(frame,_x+1,_y);


      GrayRight = SINT16(3*pixval8c( r, _y, _x+1 )+6*pixval8c( g, _y, _x+1 )+pixval8c( b, _y, _x+1 ));

}

if (_y>0)

{

//   pixelValues = GetPixelValues(frame,_x,_y-1);


      GrayUp = SINT16(3*pixval8c( r, _y-1, _x )+6*pixval8c( g, _y-1, _x )+pixval8c( b, _y-1, _x ));

}

if (_y<(m_nImageHeight-1))

{

//   pixelValues = GetPixelValues(frame,_x,_y+1);

   GrayDown = SINT16(3*pixval8c( r, _y+1, _x )+6*pixval8c( g, _y+1, _x )+pixval8c( b, _y+1, _x ));

}

if (abs((GrayCenter-GrayLeft)/10)>EDGE_DETECT_TRESHOLD)

   E = 1;

if (abs((GrayCenter-GrayRight)/10)>EDGE_DETECT_TRESHOLD)

   E = 1;

if (abs((GrayCenter-GrayUp)/10)>EDGE_DETECT_TRESHOLD)

      E = 1;

if (abs((GrayCenter-GrayDown)/10)>EDGE_DETECT_TRESHOLD)

      E = 1;

return(E);

}

// Alpha blending: used to update initial histogram by the current histogram

void CObjectTracker::UpdateInitialHistogram(UBYTE8 (*histogram))

{

SINT16 i = 0;


for (i=0; i<HISTOGRAM_LENGTH; i++)

   m_sTrackingObjectTable[m_cActiveObject].initHistogram[i] = ALPHA*m_sTrackingObjectTable[m_cActiveObject].initHistogram[i]

                                                            +(1-ALPHA)*histogram[i];

}

// Mean-shift iteration

//frame: 图像

//MeanShift迭代找出中心点

void CObjectTracker::FindNextLocation(IplImage *frame)

{

int i, j, opti, optj;

SINT16 scale[3]={-3, 3, 0};

FLOAT32 dist, optdist;

SINT16 h, w, optX, optY;

//try no-scaling

FindNextFixScale(frame);

optdist=LastDist;

optX=m_sTrackingObjectTable[m_cActiveObject].X;

optY=m_sTrackingObjectTable[m_cActiveObject].Y;

//try one of the 9 possible scaling

i=rand()*2/RAND_MAX;

j=rand()*2/RAND_MAX;

h=m_sTrackingObjectTable[m_cActiveObject].H;

w=m_sTrackingObjectTable[m_cActiveObject].W;

if(h+scale[i]>10 && w+scale[j]>10 && h+scale[i]<m_nImageHeight/2 && w+scale[j]<m_nImageWidth/2)

{

   m_sTrackingObjectTable[m_cActiveObject].H=h+2*scale[i];

   m_sTrackingObjectTable[m_cActiveObject].W=w+2*scale[j];

   FindNextFixScale(frame);

   if( (dist=LastDist) < optdist ) //scaling is better

   {

    optdist=dist;

//    printf("Next%f->/n", dist);

   }

   else //no scaling is better

   {

    m_sTrackingObjectTable[m_cActiveObject].X=optX;

    m_sTrackingObjectTable[m_cActiveObject].Y=optY;

    m_sTrackingObjectTable[m_cActiveObject].H=h;

    m_sTrackingObjectTable[m_cActiveObject].W=w;

   }

};

TotalDist+=optdist; //the latest distance

// printf("/n");

}

void CObjectTracker::FindNextFixScale(IplImage *frame)

{

UBYTE8 iteration = 0;

SINT16 optX, optY;

FLOAT32 *currentHistogram = new FLOAT32[HISTOGRAM_LENGTH];

FLOAT32 dist, optdist=1.0;

for (iteration=0; iteration<MEANSHIFT_ITARATION_NO; iteration++)

{

   FindHistogram(frame,currentHistogram); //current frame histogram, use the last frame location as starting point

  

      FindWightsAndCOM(frame,currentHistogram);//derive weights and new location

  

      //FindHistogram(frame,currentHistogram);   //uptade histogram

  

      //UpdateInitialHistogram(currentHistogram);//uptade initial histogram

   if( ((dist=FindDistance(currentHistogram)) < optdist) || iteration==0 )

   {

    optdist=dist;

    optX=m_sTrackingObjectTable[m_cActiveObject].X;

    optY=m_sTrackingObjectTable[m_cActiveObject].Y;

//      printf("%f->", dist);

   }

   else //bad iteration, then find a better start point for next iteration

   {

   m_sTrackingObjectTable[m_cActiveObject].X=(m_sTrackingObjectTable[m_cActiveObject].X+optX)/2;

   m_sTrackingObjectTable[m_cActiveObject].Y=(m_sTrackingObjectTable[m_cActiveObject].Y+optY)/2;

   }

}//end for

m_sTrackingObjectTable[m_cActiveObject].X=optX;

m_sTrackingObjectTable[m_cActiveObject].Y=optY;

LastDist=optdist; //the latest distance

// printf("/n");

delete[] currentHistogram, currentHistogram = 0;

}


float CObjectTracker::GetTotalDist(void)

{

return(TotalDist);

}