2017-02-16 19 views
0

Это мой первый вопрос здесь после многих лет сокрытия. Будьте жестоки, так как я хотел бы быть хорошим участником сайта, который помог мне так много на протяжении многих лет.opencv Декодирование Серые коды шаблонов ошибок калибровки камеры. Как отформатировать внутренние и внешние результаты?

Я начинаю с opencv, сначала в python, но теперь в C++. Я выполнил следующий код для генерации внутренних и внешних yml-файлов (калибровка была выполнена с четырьмя парами изображений шахматной доски)

Проблема, с которой я столкнулась, заключается в том, что когда я пытаюсь получить выходные файлы yml в шаблоне кода Decode Grey кода opencv пример (http://docs.opencv.org/master/dc/da9/tutorial_decode_graycode_pattern.html) Я получаю следующий вывод

------------------------COPY/PASTE from windows 10 powershell--------------------- 

. \ SL_GREYDECODE_V00.exe. \ cam1list.yml. \ intrinsics.yml 1280 720

cam1intrinsics 
[] 
cam1distCoeffs 
[] 
cam2intrinsics 
[] 
cam2distCoeffs 
[] 
T 
[15.77367340108225; 
0.04283622292590028; 
5.022783328785999] 
R 
[0.8813890844929032, -0.01214882539600122, -0.4722347803564023; 
0.01599865793973636, 0.9998634526563561, 0.004137509666229421; 
0.472120032069059, -0.01120187857496709, 0.8814630980565792] 
Failed to load cameras calibration parameters 

------------------------------------------------------------------------------ 

Являются YML файлы испорчен каким-то образом? Я пропустил какую-то очевидную вещь? Я знаю, что значения невелики, но на этом этапе я хочу убедиться, что смогу на самом деле завершить полный процесс, а затем уточнить точность калибровки.

Любая помощь будет высоко оценена.

Полный стерео калибровка Код

/* This is sample from the OpenCV book. The copyright notice is below */ 

/* *************** License:************************** 
    Oct. 3, 2008 
    Right to use this code in any way you want without warranty, support or any guarantee of it working. 

    BOOK: It would be nice if you cited it: 
    Learning OpenCV: Computer Vision with the OpenCV Library 
    by Gary Bradski and Adrian Kaehler 
    Published by O'Reilly Media, October 3, 2008 

    AVAILABLE AT: 
    http://www.amazon.com/Learning-OpenCV-Computer-Vision-Library/dp/0596516134 
    Or: http://oreilly.com/catalog/9780596516130/ 
    ISBN-10: 0596516134 or: ISBN-13: 978-0596516130 

    OPENCV WEBSITES: 
    Homepage:  http://opencv.org 
    Online docs: http://docs.opencv.org 
    Q&A forum:  http://answers.opencv.org 
    Issue tracker: http://code.opencv.org 
    GitHub:  https://github.com/opencv/opencv/ 
    ************************************************** */ 

#include "opencv2/calib3d.hpp" 
#include "opencv2/imgcodecs.hpp" 
#include "opencv2/highgui.hpp" 
#include "opencv2/imgproc.hpp" 

#include <vector> 
#include <string> 
#include <algorithm> 
#include <iostream> 
#include <iterator> 
#include <stdio.h> 
#include <stdlib.h> 
#include <ctype.h> 

using namespace cv; 
using namespace std; 

static int print_help() 
{ 
    cout << 
      " Given a list of chessboard images, the number of corners (nx, ny)\n" 
      " on the chessboards, and a flag: useCalibrated for \n" 
      " calibrated (0) or\n" 
      " uncalibrated \n" 
      "  (1: use cvStereoCalibrate(), 2: compute fundamental\n" 
      "   matrix separately) stereo. \n" 
      " Calibrate the cameras and display the\n" 
      " rectified results along with the computed disparity images. \n" << endl; 
    cout << "Usage:\n ./stereo_calib -w=<board_width default=9> -h=<board_height default=6> -s=<square_size default=1.0> <image list XML/YML file default=../data/stereo_calib.xml>\n" << endl; 
    return 0; 
} 


static void 
StereoCalib(const vector<string>& imagelist, Size boardSize, float squareSize, bool displayCorners = false, bool useCalibrated=true, bool showRectified=true) 
{ 
    if(imagelist.size() % 2 != 0) 
    { 
     cout << "Error: the image list contains odd (non-even) number of elements\n"; 
     return; 
    } 

    const int maxScale = 2; 
    // ARRAY AND VECTOR STORAGE: 

    vector<vector<Point2f> > imagePoints[2]; 
    vector<vector<Point3f> > objectPoints; 
    Size imageSize; 

    int i, j, k, nimages = (int)imagelist.size()/2; 

    imagePoints[0].resize(nimages); 
    imagePoints[1].resize(nimages); 
    vector<string> goodImageList; 

    for(i = j = 0; i < nimages; i++) 
    { 
     for(k = 0; k < 2; k++) 
     { 
      const string& filename = imagelist[i*2+k]; 
      Mat img = imread(filename, 0); 
      if(img.empty()) 
       break; 
      if(imageSize == Size()) 
       imageSize = img.size(); 
      else if(img.size() != imageSize) 
      { 
       cout << "The image " << filename << " has the size different from the first image size. Skipping the pair\n"; 
       break; 
      } 
      bool found = false; 
      vector<Point2f>& corners = imagePoints[k][j]; 
      for(int scale = 1; scale <= maxScale; scale++) 
      { 
       Mat timg; 
       if(scale == 1) 
        timg = img; 
       else 
        resize(img, timg, Size(), scale, scale); 
       found = findChessboardCorners(timg, boardSize, corners, 
        CALIB_CB_ADAPTIVE_THRESH | CALIB_CB_NORMALIZE_IMAGE); 
       if(found) 
       { 
        if(scale > 1) 
        { 
         Mat cornersMat(corners); 
         cornersMat *= 1./scale; 
        } 
        break; 
       } 
      } 
      if(displayCorners) 
      { 
       cout << filename << endl; 
       Mat cimg, cimg1; 
       cvtColor(img, cimg, COLOR_GRAY2BGR); 
       drawChessboardCorners(cimg, boardSize, corners, found); 
       double sf = 640./MAX(img.rows, img.cols); 
       resize(cimg, cimg1, Size(), sf, sf); 
       imshow("corners", cimg1); 
       char c = (char)waitKey(500); 
       if(c == 27 || c == 'q' || c == 'Q') //Allow ESC to quit 
        exit(-1); 
      } 
      else 
       putchar('.'); 
      if(!found) 
       break; 
      cornerSubPix(img, corners, Size(11,11), Size(-1,-1), 
         TermCriteria(TermCriteria::COUNT+TermCriteria::EPS, 
             30, 0.01)); 
     } 
     if(k == 2) 
     { 
      goodImageList.push_back(imagelist[i*2]); 
      goodImageList.push_back(imagelist[i*2+1]); 
      j++; 
     } 
    } 
    cout << j << " pairs have been successfully detected.\n"; 
    nimages = j; 
    if(nimages < 2) 
    { 
     cout << "Error: too little pairs to run the calibration\n"; 
     return; 
    } 

    imagePoints[0].resize(nimages); 
    imagePoints[1].resize(nimages); 
    objectPoints.resize(nimages); 

    for(i = 0; i < nimages; i++) 
    { 
     for(j = 0; j < boardSize.height; j++) 
      for(k = 0; k < boardSize.width; k++) 
       objectPoints[i].push_back(Point3f(k*squareSize, j*squareSize, 0)); 
    } 

    cout << "Running stereo calibration ...\n"; 

    Mat cameraMatrix[2], distCoeffs[2]; 
    cameraMatrix[0] = initCameraMatrix2D(objectPoints,imagePoints[0],imageSize,0); 
    cameraMatrix[1] = initCameraMatrix2D(objectPoints,imagePoints[1],imageSize,0); 
    Mat R, T, E, F; 

    double rms = stereoCalibrate(objectPoints, imagePoints[0], imagePoints[1], 
        cameraMatrix[0], distCoeffs[0], 
        cameraMatrix[1], distCoeffs[1], 
        imageSize, R, T, E, F, 
        CALIB_FIX_ASPECT_RATIO + 
        CALIB_ZERO_TANGENT_DIST + 
        CALIB_USE_INTRINSIC_GUESS + 
        CALIB_SAME_FOCAL_LENGTH + 
        CALIB_RATIONAL_MODEL + 
        CALIB_FIX_K3 + CALIB_FIX_K4 + CALIB_FIX_K5, 
        TermCriteria(TermCriteria::COUNT+TermCriteria::EPS, 100, 1e-5)); 
    cout << "done with RMS error=" << rms << endl; 

// CALIBRATION QUALITY CHECK 
// because the output fundamental matrix implicitly 
// includes all the output information, 
// we can check the quality of calibration using the 
// epipolar geometry constraint: m2^t*F*m1=0 
    double err = 0; 
    int npoints = 0; 
    vector<Vec3f> lines[2]; 
    for(i = 0; i < nimages; i++) 
    { 
     int npt = (int)imagePoints[0][i].size(); 
     Mat imgpt[2]; 
     for(k = 0; k < 2; k++) 
     { 
      imgpt[k] = Mat(imagePoints[k][i]); 
      undistortPoints(imgpt[k], imgpt[k], cameraMatrix[k], distCoeffs[k], Mat(), cameraMatrix[k]); 
      computeCorrespondEpilines(imgpt[k], k+1, F, lines[k]); 
     } 
     for(j = 0; j < npt; j++) 
     { 
      double errij = fabs(imagePoints[0][i][j].x*lines[1][j][0] + 
           imagePoints[0][i][j].y*lines[1][j][1] + lines[1][j][2]) + 
          fabs(imagePoints[1][i][j].x*lines[0][j][0] + 
           imagePoints[1][i][j].y*lines[0][j][1] + lines[0][j][2]); 
      err += errij; 
     } 
     npoints += npt; 
    } 
    cout << "average epipolar err = " << err/npoints << endl; 

    // save intrinsic parameters 
    FileStorage fs("intrinsics.yml", FileStorage::WRITE); 
    if(fs.isOpened()) 
    { 
     fs << "M1" << cameraMatrix[0] << "D1" << distCoeffs[0] << 
      "M2" << cameraMatrix[1] << "D2" << distCoeffs[1]; 
     fs.release(); 
    } 
    else 
     cout << "Error: can not save the intrinsic parameters\n"; 

    Mat R1, R2, P1, P2, Q; 
    Rect validRoi[2]; 

    stereoRectify(cameraMatrix[0], distCoeffs[0], 
        cameraMatrix[1], distCoeffs[1], 
        imageSize, R, T, R1, R2, P1, P2, Q, 
        CALIB_ZERO_DISPARITY, 1, imageSize, &validRoi[0], &validRoi[1]); 

    fs.open("extrinsics.yml", FileStorage::WRITE); 
    if(fs.isOpened()) 
    { 
     fs << "R" << R << "T" << T << "R1" << R1 << "R2" << R2 << "P1" << P1 << "P2" << P2 << "Q" << Q; 
     fs.release(); 
    } 
    else 
     cout << "Error: can not save the extrinsic parameters\n"; 

    // OpenCV can handle left-right 
    // or up-down camera arrangements 
    bool isVerticalStereo = fabs(P2.at<double>(1, 3)) > fabs(P2.at<double>(0, 3)); 

// COMPUTE AND DISPLAY RECTIFICATION 
    if(!showRectified) 
     return; 

    Mat rmap[2][2]; 
// IF BY CALIBRATED (BOUGUET'S METHOD) 
    if(useCalibrated) 
    { 
     // we already computed everything 
    } 
// OR ELSE HARTLEY'S METHOD 
    else 
// use intrinsic parameters of each camera, but 
// compute the rectification transformation directly 
// from the fundamental matrix 
    { 
     vector<Point2f> allimgpt[2]; 
     for(k = 0; k < 2; k++) 
     { 
      for(i = 0; i < nimages; i++) 
       std::copy(imagePoints[k][i].begin(), imagePoints[k][i].end(), back_inserter(allimgpt[k])); 
     } 
     F = findFundamentalMat(Mat(allimgpt[0]), Mat(allimgpt[1]), FM_8POINT, 0, 0); 
     Mat H1, H2; 
     stereoRectifyUncalibrated(Mat(allimgpt[0]), Mat(allimgpt[1]), F, imageSize, H1, H2, 3); 

     R1 = cameraMatrix[0].inv()*H1*cameraMatrix[0]; 
     R2 = cameraMatrix[1].inv()*H2*cameraMatrix[1]; 
     P1 = cameraMatrix[0]; 
     P2 = cameraMatrix[1]; 
    } 

    //Precompute maps for cv::remap() 
    initUndistortRectifyMap(cameraMatrix[0], distCoeffs[0], R1, P1, imageSize, CV_16SC2, rmap[0][0], rmap[0][1]); 
    initUndistortRectifyMap(cameraMatrix[1], distCoeffs[1], R2, P2, imageSize, CV_16SC2, rmap[1][0], rmap[1][1]); 

    Mat canvas; 
    double sf; 
    int w, h; 
    if(!isVerticalStereo) 
    { 
     sf = 600./MAX(imageSize.width, imageSize.height); 
     w = cvRound(imageSize.width*sf); 
     h = cvRound(imageSize.height*sf); 
     canvas.create(h, w*2, CV_8UC3); 
    } 
    else 
    { 
     sf = 300./MAX(imageSize.width, imageSize.height); 
     w = cvRound(imageSize.width*sf); 
     h = cvRound(imageSize.height*sf); 
     canvas.create(h*2, w, CV_8UC3); 
    } 

    for(i = 0; i < nimages; i++) 
    { 
     for(k = 0; k < 2; k++) 
     { 
      Mat img = imread(goodImageList[i*2+k], 0), rimg, cimg; 
      remap(img, rimg, rmap[k][0], rmap[k][1], INTER_LINEAR); 
      cvtColor(rimg, cimg, COLOR_GRAY2BGR); 
      Mat canvasPart = !isVerticalStereo ? canvas(Rect(w*k, 0, w, h)) : canvas(Rect(0, h*k, w, h)); 
      resize(cimg, canvasPart, canvasPart.size(), 0, 0, INTER_AREA); 
      if(useCalibrated) 
      { 
       Rect vroi(cvRound(validRoi[k].x*sf), cvRound(validRoi[k].y*sf), 
          cvRound(validRoi[k].width*sf), cvRound(validRoi[k].height*sf)); 
       rectangle(canvasPart, vroi, Scalar(0,0,255), 3, 8); 
      } 
     } 

     if(!isVerticalStereo) 
      for(j = 0; j < canvas.rows; j += 16) 
       line(canvas, Point(0, j), Point(canvas.cols, j), Scalar(0, 255, 0), 1, 8); 
     else 
      for(j = 0; j < canvas.cols; j += 16) 
       line(canvas, Point(j, 0), Point(j, canvas.rows), Scalar(0, 255, 0), 1, 8); 
     imshow("rectified", canvas); 
     char c = (char)waitKey(); 
     if(c == 27 || c == 'q' || c == 'Q') 
      break; 
    } 
} 


static bool readStringList(const string& filename, vector<string>& l) 
{ 
    l.resize(0); 
    FileStorage fs(filename, FileStorage::READ); 
    if(!fs.isOpened()) 
     return false; 
    FileNode n = fs.getFirstTopLevelNode(); 
    if(n.type() != FileNode::SEQ) 
     return false; 
    FileNodeIterator it = n.begin(), it_end = n.end(); 
    for(; it != it_end; ++it) 
     l.push_back((string)*it); 
    return true; 
} 

int main(int argc, char** argv) 
{ 
    Size boardSize; 
    string imagelistfn; 
    bool showRectified; 
    cv::CommandLineParser parser(argc, argv, "{w|9|}{h|6|}{s|1.0|}{nr||}{help||}{@input|../data/stereo_calib.xml|}"); 
    if (parser.has("help")) 
     return print_help(); 
    showRectified = !parser.has("nr"); 
    imagelistfn = parser.get<string>("@input"); 
    boardSize.width = parser.get<int>("w"); 
    boardSize.height = parser.get<int>("h"); 
    float squareSize = parser.get<float>("s"); 
    if (!parser.check()) 
    { 
     parser.printErrors(); 
     return 1; 
    } 
    vector<string> imagelist; 
    bool ok = readStringList(imagelistfn, imagelist); 
    if(!ok || imagelist.empty()) 
    { 
     cout << "can not open " << imagelistfn << " or the string list is empty" << endl; 
     return print_help(); 
    } 

    StereoCalib(imagelist, boardSize, squareSize, false, true, showRectified); 
    return 0; 
} 

и выход YML файлы

intrinsic.yml

%YAML:1.0 
--- 
M1: !!opencv-matrix 
    rows: 3 
    cols: 3 
    dt: d 
    data: [ 7.9985689637206394e+02, 0., 3.1888931960018391e+02, 0., 
     7.9531749551802511e+02, 2.4016473855341377e+02, 0., 0., 1. ] 
D1: !!opencv-matrix 
    rows: 1 
    cols: 14 
    dt: d 
    data: [ -2.9279927390873359e-02, -1.7234478154581664e-02, 0., 0., 0., 
     0., 0., -6.8058126545379194e-01, 0., 0., 0., 0., 0., 0. ] 
M2: !!opencv-matrix 
    rows: 3 
    cols: 3 
    dt: d 
    data: [ 7.9985689637206394e+02, 0., 3.2120481600280135e+02, 0., 
     7.9531749551802511e+02, 2.3825084123786758e+02, 0., 0., 1. ] 
D2: !!opencv-matrix 
    rows: 1 
    cols: 14 
    dt: d 
    data: [ -8.2357568517112279e-03, -3.0119285678826862e-02, 0., 0., 0., 
     0., 0., -7.5797854621684968e-01, 0., 0., 0., 0., 0., 0. ] 

extrinsic.yml

R: !!opencv-matrix 
    rows: 3 
    cols: 3 
    dt: d 
    data: [ 8.8138908449290321e-01, -1.2148825396001222e-02, 
     -4.7223478035640226e-01, 1.5998657939736358e-02, 
     9.9986345265635612e-01, 4.1375096662294207e-03, 
     4.7212003206905900e-01, -1.1201878574967093e-02, 
     8.8146309805657919e-01 ] 
T: !!opencv-matrix 
    rows: 3 
    cols: 1 
    dt: d 
    data: [ 1.5773673401082249e+01, 4.2836222925900280e-02, 
     5.0227833287859989e+00 ] 
R1: !!opencv-matrix 
    rows: 3 
    cols: 3 
    dt: d 
    data: [ 9.8312585634867622e-01, -1.2387599744347073e-02, 
     -1.8251054202773007e-01, 1.2955703518228558e-02, 
     9.9991422663040130e-01, 1.9207104087663354e-03, 
     1.8247109449178447e-01, -4.2528525368786835e-03, 
     9.8320202040082783e-01 ] 
R2: !!opencv-matrix 
    rows: 3 
    cols: 3 
    dt: d 
    data: [ 9.5285471898202379e-01, 2.5876469050964915e-03, 
     3.0341586741168125e-01, -1.6357939454294122e-03, 
     9.9999291182572214e-01, -3.3912352442119049e-03, 
     -3.0342249206651850e-01, 2.7350286667662269e-03, 
     9.5285219783885455e-01 ] 
P1: !!opencv-matrix 
    rows: 3 
    cols: 4 
    dt: d 
    data: [ 4.0573853248682479e+02, 0., 2.5764449977874756e+02, 0., 0., 
     4.0573853248682479e+02, 2.3996722984313965e+02, 0., 0., 0., 1., 
     0. ] 
P2: !!opencv-matrix 
    rows: 3 
    cols: 4 
    dt: d 
    data: [ 4.0573853248682479e+02, 0., 2.5764449977874756e+02, 
     6.7166452242782234e+03, 0., 4.0573853248682479e+02, 
     2.3996722984313965e+02, 0., 0., 0., 1., 0. ] 
Q: !!opencv-matrix 
    rows: 4 
    cols: 4 
    dt: d 
    data: [ 1., 0., 0., -2.5764449977874756e+02, 0., 1., 0., 
     -2.3996722984313965e+02, 0., 0., 0., 4.0573853248682479e+02, 0., 
     0., -6.0407914805478774e-02, 0. ] 

ответ

0

Я нашел ответ в этот YML ISSU е.

Оказывается значения М1 М2 D1 D2 из программы калибровки стерео intrinsics.yml выход должен был быть вручную (но может быть изменено в программе) изменено на следующей

изменения M1 к cam1_intrinsics D1, чтобы изменения cam1_distorsion изменения M2 в cam2_intrinsics изменения D2 в cam2_distorsion

После переименования я скопировал и вставил эти части в верхней части файла extrinics.yml

это заставило меня до точки, где I C прогресс.