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.

any OpenCV expert? I'm a bit new to OpenCV. I want to run the hog.cpp included under the ocl folder. I got errors compiling the file in MSVC++9.0

1>------ Build started: Project: hog_ocl, Configuration: Debug Win32 ------
1>Linking...
1>hog.obj : error LNK2019: unresolved external symbol "public: void __thiscall cv::ocl::HOGDescriptor::detectMultiScale(class cv::ocl::oclMat const &,class std::vector<class cv::Rect_<int>,class std::allocator<class cv::Rect_<int> > > &,double,class cv::Size_<int>,class cv::Size_<int>,double,int)" (?detectMultiScale@HOGDescriptor@ocl@cv@@QAEXABVoclMat@23@AAV?$vector@V?$Rect_@H@cv@@V?$allocator@V?$Rect_@H@cv@@@std@@@std@@NV?$Size_@H@3@2NH@Z) referenced in function "public: void __thiscall App::run(void)" (?run@App@@QAEXXZ)
1>hog.obj : error LNK2019: unresolved external symbol "public: void __thiscall cv::ocl::oclMat::upload(class cv::Mat const &)" (?upload@oclMat@ocl@cv@@QAEXABVMat@3@@Z) referenced in function "public: void __thiscall App::run(void)" (?run@App@@QAEXXZ)
1>hog.obj : error LNK2019: unresolved external symbol "public: void __thiscall cv::ocl::HOGDescriptor::setSVMDetector(class std::vector<float,class std::allocator<float> > const &)" (?setSVMDetector@HOGDescriptor@ocl@cv@@QAEXABV?$vector@MV?$allocator@M@std@@@std@@@Z) referenced in function "public: void __thiscall App::run(void)" (?run@App@@QAEXXZ)
1>hog.obj : error LNK2019: unresolved external symbol "public: __thiscall cv::ocl::HOGDescriptor::HOGDescriptor(class cv::Size_<int>,class cv::Size_<int>,class cv::Size_<int>,class cv::Size_<int>,int,double,double,bool,int)" (??0HOGDescriptor@ocl@cv@@QAE@V?$Size_@H@2@000HNN_NH@Z) referenced in function "public: void __thiscall App::run(void)" (?run@App@@QAEXXZ)
1>hog.obj : error LNK2019: unresolved external symbol "public: static class std::vector<float,class std::allocator<float> > __cdecl cv::ocl::HOGDescriptor::getPeopleDetector48x96(void)" (?getPeopleDetector48x96@HOGDescriptor@ocl@cv@@SA?AV?$vector@MV?$allocator@M@std@@@std@@XZ) referenced in function "public: void __thiscall App::run(void)" (?run@App@@QAEXXZ)
1>hog.obj : error LNK2019: unresolved external symbol "public: static class std::vector<float,class std::allocator<float> > __cdecl cv::ocl::HOGDescriptor::getPeopleDetector64x128(void)" (?getPeopleDetector64x128@HOGDescriptor@ocl@cv@@SA?AV?$vector@MV?$allocator@M@std@@@std@@XZ) referenced in function "public: void __thiscall App::run(void)" (?run@App@@QAEXXZ)
1>hog.obj : error LNK2019: unresolved external symbol "int __cdecl cv::ocl::getDevice(class std::vector<class cv::ocl::Info,class std::allocator<class cv::ocl::Info> > &,int)" (?getDevice@ocl@cv@@YAHAAV?$vector@VInfo@ocl@cv@@V?$allocator@VInfo@ocl@cv@@@std@@@std@@H@Z) referenced in function "public: void __thiscall App::run(void)" (?run@App@@QAEXXZ)
1>hog.obj : error LNK2019: unresolved external symbol "public: void __thiscall cv::ocl::oclMat::release(void)" (?release@oclMat@ocl@cv@@QAEXXZ) referenced in function "public: __thiscall cv::ocl::oclMat::~oclMat(void)" (??1oclMat@ocl@cv@@QAE@XZ)
1>hog.obj : error LNK2019: unresolved external symbol "public: __thiscall cv::ocl::Info::~Info(void)" (??1Info@ocl@cv@@QAE@XZ) referenced in function "public: void * __thiscall cv::ocl::Info::`scalar deleting destructor'(unsigned int)" (??_GInfo@ocl@cv@@QAEPAXI@Z)
1>C:\Users\CT\Documents\Visual Studio 2008\Projects\hog_ocl\Debug\hog_ocl.exe : fatal error LNK1120: 9 unresolved externals
1>Build log was saved at "file://c:\Users\CT\Documents\Visual Studio 2008\Projects\hog_ocl\hog_ocl\Debug\BuildLog.htm"
1>hog_ocl - 10 error(s), 0 warning(s)
========== Build: 0 succeeded, 1 failed, 0 up-to-date, 0 skipped ==========

At first, I included all the libraries in C:\opencv\build\x86\vc9\lib at project->config. properties -> linker -> input. Unfortunately it didn't work. So through trying I excluded the libraries that don't minimise the error count and reached to the following list

opencv_imgproc244.lib
opencv_highgui244.lib
opencv_core244.lib
opencv_objdetect244.lib

Still didn't work. I wonder if I started with the wrong sample that's too advanced for me?

Add. info: I followed the manual for installing OpenCV and even rebuilt the libraries. Hopefully my procedures were correct.

the code (OpenCV 2.4.4):

#include <iostream>
#include <fstream>
#include <string>
#include <sstream>
#include <iomanip>
#include <stdexcept>
#include "opencv2/ocl/ocl.hpp"
#include "opencv2/highgui/highgui.hpp"

using namespace std;
using namespace cv;

bool help_showed = false;

class Args
{
public:
    Args();
    static Args read(int argc, char** argv);

    string src;
    bool src_is_video;
    bool src_is_camera;
    int camera_id;

    bool write_video;
    string dst_video;
    double dst_video_fps;

    bool make_gray;

    bool resize_src;
    int width, height;

    double scale;
    int nlevels;
    int gr_threshold;

    double hit_threshold;
    bool hit_threshold_auto;

    int win_width;
    int win_stride_width, win_stride_height;

    bool gamma_corr;
};


class App
{
public:
    App(const Args& s);
    void run();

    void handleKey(char key);

    void hogWorkBegin();
    void hogWorkEnd();
    string hogWorkFps() const;

    void workBegin();
    void workEnd();
    string workFps() const;

    string message() const;

private:
    App operator=(App&);

    Args args;
    bool running;

    bool use_gpu;
    bool make_gray;
    double scale;
    int gr_threshold;
    int nlevels;
    double hit_threshold;
    bool gamma_corr;

    int64 hog_work_begin;
    double hog_work_fps;

    int64 work_begin;
    double work_fps;
};

static void printHelp()
{
    cout << "Histogram of Oriented Gradients descriptor and detector sample.\n"
         << "\nUsage: hog_gpu\n"
         << "  (<image>|--video <vide>|--camera <camera_id>) # frames source\n"
         << "  [--make_gray <true/false>] # convert image to gray one or not\n"
         << "  [--resize_src <true/false>] # do resize of the source image or not\n"
         << "  [--width <int>] # resized image width\n"
         << "  [--height <int>] # resized image height\n"
         << "  [--hit_threshold <double>] # classifying plane distance threshold (0.0 usually)\n"
         << "  [--scale <double>] # HOG window scale factor\n"
         << "  [--nlevels <int>] # max number of HOG window scales\n"
         << "  [--win_width <int>] # width of the window (48 or 64)\n"
         << "  [--win_stride_width <int>] # distance by OX axis between neighbour wins\n"
         << "  [--win_stride_height <int>] # distance by OY axis between neighbour wins\n"
         << "  [--gr_threshold <int>] # merging similar rects constant\n"
         << "  [--gamma_correct <int>] # do gamma correction or not\n"
         << "  [--write_video <bool>] # write video or not\n"
         << "  [--dst_video <path>] # output video path\n"
         << "  [--dst_video_fps <double>] # output video fps\n";
    help_showed = true;
}

int main(int argc, char** argv)
{
    try
    {
        if (argc < 2)
            printHelp();
        Args args = Args::read(argc, argv);
        if (help_showed)
            return -1;
        App app(args);
        app.run();
    }
    catch (const Exception& e) { return cout << "error: "  << e.what() << endl, 1; }
    catch (const exception& e) { return cout << "error: "  << e.what() << endl, 1; }
    catch(...) { return cout << "unknown exception" << endl, 1; }
    return 0;
}


Args::Args()
{
    src_is_video = false;
    src_is_camera = false;
    camera_id = 0;

    write_video = false;
    dst_video_fps = 24.;

    make_gray = false;

    resize_src = false;
    width = 640;
    height = 480;

    scale = 1.05;
    nlevels = 13;
    gr_threshold = 8;
    hit_threshold = 1.4;
    hit_threshold_auto = true;

    win_width = 48;
    win_stride_width = 8;
    win_stride_height = 8;

    gamma_corr = true;
}


Args Args::read(int argc, char** argv)
{
    Args args;
    for (int i = 1; i < argc; i++)
    {
        if (string(argv[i]) == "--make_gray") args.make_gray = (string(argv[++i]) == "true");
        else if (string(argv[i]) == "--resize_src") args.resize_src = (string(argv[++i]) == "true");
        else if (string(argv[i]) == "--width") args.width = atoi(argv[++i]);
        else if (string(argv[i]) == "--height") args.height = atoi(argv[++i]);
        else if (string(argv[i]) == "--hit_threshold")
        {
            args.hit_threshold = atof(argv[++i]);
            args.hit_threshold_auto = false;
        }
        else if (string(argv[i]) == "--scale") args.scale = atof(argv[++i]);
        else if (string(argv[i]) == "--nlevels") args.nlevels = atoi(argv[++i]);
        else if (string(argv[i]) == "--win_width") args.win_width = atoi(argv[++i]);
        else if (string(argv[i]) == "--win_stride_width") args.win_stride_width = atoi(argv[++i]);
        else if (string(argv[i]) == "--win_stride_height") args.win_stride_height = atoi(argv[++i]);
        else if (string(argv[i]) == "--gr_threshold") args.gr_threshold = atoi(argv[++i]);
        else if (string(argv[i]) == "--gamma_correct") args.gamma_corr = (string(argv[++i]) == "true");
        else if (string(argv[i]) == "--write_video") args.write_video = (string(argv[++i]) == "true");
        else if (string(argv[i]) == "--dst_video") args.dst_video = argv[++i];
        else if (string(argv[i]) == "--dst_video_fps") args.dst_video_fps = atof(argv[++i]);
        else if (string(argv[i]) == "--help") printHelp();
        else if (string(argv[i]) == "--video") { args.src = argv[++i]; args.src_is_video = true; }
        else if (string(argv[i]) == "--camera") { args.camera_id = atoi(argv[++i]); args.src_is_camera = true; }
        else if (args.src.empty()) args.src = argv[i];
        else throw runtime_error((string("unknown key: ") + argv[i]));
    }
    return args;
}


App::App(const Args& s)
{
    args = s;
    cout << "\nControls:\n"
         << "\tESC - exit\n"
         << "\tm - change mode GPU <-> CPU\n"
         << "\tg - convert image to gray or not\n"
         << "\t1/q - increase/decrease HOG scale\n"
         << "\t2/w - increase/decrease levels count\n"
         << "\t3/e - increase/decrease HOG group threshold\n"
         << "\t4/r - increase/decrease hit threshold\n"
         << endl;

    use_gpu = true;
    make_gray = args.make_gray;
    scale = args.scale;
    gr_threshold = args.gr_threshold;
    nlevels = args.nlevels;

    if (args.hit_threshold_auto)
        args.hit_threshold = args.win_width == 48 ? 1.4 : 0.;
    hit_threshold = args.hit_threshold;

    gamma_corr = args.gamma_corr;

    if (args.win_width != 64 && args.win_width != 48)
        args.win_width = 64;

    cout << "Scale: " << scale << endl;
    if (args.resize_src)
        cout << "Resized source: (" << args.width << ", " << args.height << ")\n";
    cout << "Group threshold: " << gr_threshold << endl;
    cout << "Levels number: " << nlevels << endl;
    cout << "Win width: " << args.win_width << endl;
    cout << "Win stride: (" << args.win_stride_width << ", " << args.win_stride_height << ")\n";
    cout << "Hit threshold: " << hit_threshold << endl;
    cout << "Gamma correction: " << gamma_corr << endl;
    cout << endl;
}


void App::run()
{
    std::vector<ocl::Info> oclinfo;
    ocl::getDevice(oclinfo);
    running = true;
    cv::VideoWriter video_writer;

    Size win_size(args.win_width, args.win_width * 2); //(64, 128) or (48, 96)
    Size win_stride(args.win_stride_width, args.win_stride_height);

    // Create HOG descriptors and detectors here
    vector<float> detector;
    if (win_size == Size(64, 128))
        detector = cv::ocl::HOGDescriptor::getPeopleDetector64x128();
    else
        detector = cv::ocl::HOGDescriptor::getPeopleDetector48x96();

    cv::ocl::HOGDescriptor gpu_hog(win_size, Size(16, 16), Size(8, 8), Size(8, 8), 9,
                                   cv::ocl::HOGDescriptor::DEFAULT_WIN_SIGMA, 0.2, gamma_corr,
                                   cv::ocl::HOGDescriptor::DEFAULT_NLEVELS);
    cv::HOGDescriptor cpu_hog(win_size, Size(16, 16), Size(8, 8), Size(8, 8), 9, 1, -1,
                              HOGDescriptor::L2Hys, 0.2, gamma_corr, cv::HOGDescriptor::DEFAULT_NLEVELS);
    gpu_hog.setSVMDetector(detector);
    cpu_hog.setSVMDetector(detector);

    while (running)
    {
        VideoCapture vc;
        Mat frame;

        if (args.src_is_video)
        {
            vc.open(args.src.c_str());
            if (!vc.isOpened())
                throw runtime_error(string("can't open video file: " + args.src));
            vc >> frame;
        }
        else if (args.src_is_camera)
        {
            vc.open(args.camera_id);
            if (!vc.isOpened())
            {
                stringstream msg;
                msg << "can't open camera: " << args.camera_id;
                throw runtime_error(msg.str());
            }
            vc >> frame;
        }
        else
        {
            frame = imread(args.src);
            if (frame.empty())
                throw runtime_error(string("can't open image file: " + args.src));
        }

        Mat img_aux, img, img_to_show;
        ocl::oclMat gpu_img;

        // Iterate over all frames
        while (running && !frame.empty())
        {
            workBegin();

            // Change format of the image
            if (make_gray) cvtColor(frame, img_aux, CV_BGR2GRAY);
            else if (use_gpu) cvtColor(frame, img_aux, CV_BGR2BGRA);
            else frame.copyTo(img_aux);

            // Resize image
            if (args.resize_src) resize(img_aux, img, Size(args.width, args.height));
            else img = img_aux;
            img_to_show = img;

            gpu_hog.nlevels = nlevels;
            cpu_hog.nlevels = nlevels;

            vector<Rect> found;

            // Perform HOG classification
            hogWorkBegin();
            if (use_gpu)
            {
                gpu_img.upload(img);
                gpu_hog.detectMultiScale(gpu_img, found, hit_threshold, win_stride,
                                         Size(0, 0), scale, gr_threshold);
            }
            else cpu_hog.detectMultiScale(img, found, hit_threshold, win_stride,
                                          Size(0, 0), scale, gr_threshold);
            hogWorkEnd();

            // Draw positive classified windows
            for (size_t i = 0; i < found.size(); i++)
            {
                Rect r = found[i];
                rectangle(img_to_show, r.tl(), r.br(), CV_RGB(0, 255, 0), 3);
            }

            if (use_gpu)
                putText(img_to_show, "Mode: GPU", Point(5, 25), FONT_HERSHEY_SIMPLEX, 1., Scalar(255, 100, 0), 2);
            else
                putText(img_to_show, "Mode: CPU", Point(5, 25), FONT_HERSHEY_SIMPLEX, 1., Scalar(255, 100, 0), 2);
            putText(img_to_show, "FPS (HOG only): " + hogWorkFps(), Point(5, 65), FONT_HERSHEY_SIMPLEX, 1., Scalar(255, 100, 0), 2);
            putText(img_to_show, "FPS (total): " + workFps(), Point(5, 105), FONT_HERSHEY_SIMPLEX, 1., Scalar(255, 100, 0), 2);
            imshow("opencv_gpu_hog", img_to_show);

            if (args.src_is_video || args.src_is_camera) vc >> frame;

            workEnd();

            if (args.write_video)
            {
                if (!video_writer.isOpened())
                {
                    video_writer.open(args.dst_video, CV_FOURCC('x','v','i','d'), args.dst_video_fps,
                                      img_to_show.size(), true);
                    if (!video_writer.isOpened())
                        throw std::runtime_error("can't create video writer");
                }

                if (make_gray) cvtColor(img_to_show, img, CV_GRAY2BGR);
                else cvtColor(img_to_show, img, CV_BGRA2BGR);

                video_writer << img;
            }

            handleKey((char)waitKey(3));
        }
    }
}


void App::handleKey(char key)
{
    switch (key)
    {
    case 27:
        running = false;
        break;
    case 'm':
    case 'M':
        use_gpu = !use_gpu;
        cout << "Switched to " << (use_gpu ? "CUDA" : "CPU") << " mode\n";
        break;
    case 'g':
    case 'G':
        make_gray = !make_gray;
        cout << "Convert image to gray: " << (make_gray ? "YES" : "NO") << endl;
        break;
    case '1':
        scale *= 1.05;
        cout << "Scale: " << scale << endl;
        break;
    case 'q':
    case 'Q':
        scale /= 1.05;
        cout << "Scale: " << scale << endl;
        break;
    case '2':
        nlevels++;
        cout << "Levels number: " << nlevels << endl;
        break;
    case 'w':
    case 'W':
        nlevels = max(nlevels - 1, 1);
        cout << "Levels number: " << nlevels << endl;
        break;
    case '3':
        gr_threshold++;
        cout << "Group threshold: " << gr_threshold << endl;
        break;
    case 'e':
    case 'E':
        gr_threshold = max(0, gr_threshold - 1);
        cout << "Group threshold: " << gr_threshold << endl;
        break;
    case '4':
        hit_threshold+=0.25;
        cout << "Hit threshold: " << hit_threshold << endl;
        break;
    case 'r':
    case 'R':
        hit_threshold = max(0.0, hit_threshold - 0.25);
        cout << "Hit threshold: " << hit_threshold << endl;
        break;
    case 'c':
    case 'C':
        gamma_corr = !gamma_corr;
        cout << "Gamma correction: " << gamma_corr << endl;
        break;
    }
}


inline void App::hogWorkBegin() { hog_work_begin = getTickCount(); }

inline void App::hogWorkEnd()
{
    int64 delta = getTickCount() - hog_work_begin;
    double freq = getTickFrequency();
    hog_work_fps = freq / delta;
}

inline string App::hogWorkFps() const
{
    stringstream ss;
    ss << hog_work_fps;
    return ss.str();
}


inline void App::workBegin() { work_begin = getTickCount(); }

inline void App::workEnd()
{
    int64 delta = getTickCount() - work_begin;
    double freq = getTickFrequency();
    work_fps = freq / delta;
}

inline string App::workFps() const
{
    stringstream ss;
    ss << work_fps;
    return ss.str();
}
share|improve this question
add comment

2 Answers 2

up vote 1 down vote accepted

It turns out that the library opencv_ocl.lib is needed to run this code and the same goes with the other examples under ocl folder. OpenCV must be built on your device using CMake and a C compiler (I used MSVC 2010). I managed to build it correctly after several days and long trials building/rebuilding and readings on OCL and GPU. I just wonder why it cannot be pre-built and included with the package like the rest of the libraries, is it because of hardware dependency?

However, this is the list of libraries needed for ocl\hog.cpp:

opencv_imgproc245.lib
opencv_highgui245.lib
opencv_core245.lib
opencv_objdetect245.lib
opencv_ocl245.lib

using the most recent OpenCV 2.4.5.

share|improve this answer
add comment

I think you need to include the features2d library.

share|improve this answer
    
I did so but it didn't help. I still get the same 10 errors. if I'm not mistaken, perhaps I'm missing any library regarding the ocl since it's included in the header. is it like this? –  Sanny Apr 10 '13 at 9:50
    
Yup it seems that way. Worth taking a look at all the ocl related libs you have, and make sure they're all included. I'll get back to you if I find anything else. –  Zaphod Apr 10 '13 at 13:02
add comment

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.