基于虹软人脸识别API和Qt5的人脸识别

2019-05-22  本文已影响0人  如果天空不蓝

测试和使用了虹软的人脸API在QT5环境下设计了一个简单的人脸识别软件,实现了对人脸的跟踪和人脸识别。摄像头的控制以及图像格式的转换使用了Opencv,图像显示使用的是QT5的Qimage控件。下面是详细介绍

1基本流程

  (1)加载存储的参考图像数据和图像标签,这里简单的使用图像的名字作为标签

  (2)使用虹软人脸识别API计算参考图像的人脸位置数据并存储

  (3)使用opencv  VideoCapture  类采集摄像头图像数据

  (2)采集的图像数据送入虹软人脸识别API 计算人脸位置,并和参考人脸数据计算相似距离,返回最相似的人脸标签

2 Visual Studio 下构建Qt工程

(1)工程目录如下图所示:


在这里插入图片描述

其中QtGuiApplication1.ui是界面文件,Header File文件夹中的amcomdef.h

ammem.h arcsoft_fsdk_face_detection.h arcsoft_fsdk_face_recognition.h

asvloffscreen.h merror.h 是从虹软库中拷贝的头文件未做任何修改

FaceDiscern.h 和FaceDiscern.cpp是自定义的一个人脸识别类

(2)工程属性配置

点击工程属性->连接器->输入中出了QT5的库文件,添加opencv_world340d.lib

在这里插入图片描述
点击工程属性-》VC++目录添加OpenCV的头文件和库文件的路径,其中包含目录添加opencv的头文件路径,库目录添加opencv的dll路径,如下图
在这里插入图片描述
2工程类文件详解
 (1)QtGuiApplication1 ui类的源文件如下所示,其中Mat2QImage函数将opencv采集的图像数据转化为QImage支          持    的数据格式, VideoCapture 是Opencv用来操作摄像头的类,QImage用来显示采集的图像数据

#pragma once
#include <QtWidgets/QMainWindow>
#include "ui_QtGuiApplication1.h"
#include "qmessagebox.h"
#include "opencv2/core/core.hpp"  
#include "opencv2/highgui/highgui.hpp"  
#include "opencv2/imgproc/imgproc.hpp"  
#include <iostream>
#include "qtimer.h"
#include "FaceDiscern.h"
#include "qrect.h"
#include "qpainter.h"
using namespace cv;
using namespace std;
class QtGuiApplication1 : public QMainWindow
{
    Q_OBJECT
public:
    QtGuiApplication1(QWidget *parent = Q_NULLPTR);
    ~QtGuiApplication1();
    QImage  Mat2QImage(cv::Mat cvImg); //图像格式转换
    QTimer  *timer;
    Mat     frame;            //摄像头直接获得的数据
    FaceDiscern *facediscern; //人脸识别类
private:
    Ui::QtGuiApplication1Class ui;
    VideoCapture capture; //采集摄像头的数据
    QImage qImg;          //展示图像的控件
    //---槽函数 用作事件触发
public slots :
        void openVideo();
        void stopVideo();
        void nextFrame();
 
};

(2)QtGuiApplication1.cpp


#include "QtGuiApplication1.h"
 
QtGuiApplication1::QtGuiApplication1(QWidget *parent)
    : QMainWindow(parent)
{
    ui.setupUi(this);
    ui.image->setScaledContents(true);  //fit video to label area
    facediscern = new FaceDiscern("F:\\trainimages");//加载参考图像数据和标签
    facediscern->Train();//计算参考数据图像数据的人脸位置等
    
}
 
QtGuiApplication1::~QtGuiApplication1()
{
    if (capture.isOpened())
        capture.release();
    delete(timer);
}
 
void QtGuiApplication1::openVideo()
{
    if (capture.isOpened())
        capture.release();     //decide if capture is already opened; if so,close it
    capture.open(0);           //open the default camera
    if (capture.isOpened())
    {
        double  rate = capture.get(CV_CAP_PROP_FPS);
        capture >> frame;  //获得摄像头图像数据
        if (!frame.empty())
        {
            QImage  image = Mat2QImage(frame); //将摄像头的图像数据转换为QImage支持的格式
            this->ui.image->setPixmap(QPixmap::fromImage(image));
 
            timer = new QTimer(this); //循环获得摄像头数据
            connect(timer, SIGNAL(timeout()), this, SLOT(nextFrame()));
            timer->start(40);
        }
    }
}
void QtGuiApplication1::stopVideo()
{
    if (capture.isOpened())
    {
        capture.release();
    }
}
//循环获得摄像头数据
void QtGuiApplication1::nextFrame()
{
    capture >> frame;
    double  rate = capture.get(CV_CAP_PROP_FPS);
    if (!frame.empty())
    {
        QImage  image = Mat2QImage(frame);
        
        //通过人脸检测API获得人脸的位置并在Qimage上显示人脸框
        QRect rect;
        //RecognizeFace识别人脸的位置并计算人脸所属的标签
        string result = facediscern->RecognizeFace(&frame, rect);
        
        static QTextCodec *codecForCStrings;
        QString strQ = QString::fromLocal8Bit(result.c_str());
        QString s1 = strQ;//这是在qlabel中显示中文的办法
        this->ui.result->setText(s1); //在控件上显示人脸所属的标签
 
        QPainter painter(&image);
        // 设置画笔颜色
        painter.setPen(QColor(255, 0, 0));
        painter.drawRect(rect);//绘制人脸的框
        this->ui.image->setPixmap(QPixmap::fromImage(image));
 
    }
 
}
 
//将opencv 的cv::Mat 格式图像转换为QImage图像
QImage  QtGuiApplication1::Mat2QImage(cv::Mat cvImg)
{
    if (cvImg.channels() == 3)                             //3 channels color image
    {
        cv::cvtColor(cvImg, cvImg, CV_BGR2RGB); //BGR 转为 RGB
        qImg = QImage((const unsigned char*)(cvImg.data),
            cvImg.cols, cvImg.rows,
            cvImg.cols*cvImg.channels(),
            QImage::Format_RGB888);
    }
    else if (cvImg.channels() == 1)                    //grayscale image
    {
        qImg = QImage((const unsigned char*)(cvImg.data),
            cvImg.cols, cvImg.rows,
            cvImg.cols*cvImg.channels(),
            QImage::Format_Indexed8);
    }
    else
    {
        qImg = QImage((const unsigned char*)(cvImg.data),
            cvImg.cols, cvImg.rows,
            cvImg.cols*cvImg.channels(),
            QImage::Format_RGB888);
    }
    return qImg;
 
}

(3) FaceDiscern.h

FaceDiscern 是人脸识别的主类 执行了人脸位置检测和人脸相似度计算等功能

#pragma once
#include <stdio.h>
#include <stdlib.h>
#include <stdint.h>
#include <Windows.h>
#include <iostream>
#include <vector>
#include <string>
#include <io.h>
#include <map>
#include "arcsoft_fsdk_face_recognition.h"
#include "merror.h"
#include "arcsoft_fsdk_face_detection.h"
#include "opencv2/core/core.hpp"  
#include "opencv2/highgui/highgui.hpp"  
#include "opencv2/imgproc/imgproc.hpp" 
#include "qrect.h"
//动态载入人脸识别的API库 libarcsoft_fsdk_face_detection是人脸检测库
//libarcsoft_fsdk_face_recognition.lib是人脸识别库
#pragma comment(lib,"libarcsoft_fsdk_face_detection.lib")
#pragma comment(lib,"./libarcsoft_fsdk_face_recognition.lib")
using namespace cv;
#define WORKBUF_SIZE        (40*1024*1024)
 
class FaceDiscern
{
public:
    FaceDiscern(std::string _trainpath);
    ~FaceDiscern();
    //将cv::Mat格式的图像转换为Bitmap
    void ConvertMatToBitmap(cv::Mat *img, uint8_t **imageData, int *pWidth, int *pHeight);
    void  getFiles(std::string path, std::vector<std::string>& files, std::vector<std::string> &ownname);
    void  Train();
    bool  readBmp24(const char* path, uint8_t **imageData, int *pWidth, int *pHeight);
    std::string  RecognizeFace(cv::Mat *img, QRect &rect);
     
    //APPID是从网站上注册的免费使用id 
    char APPID[45]  = "9aEAsHDYzzzWapX9rH9BZHhdBz8CPTfws4WuF5xdmgnf";
    char SDKKey[45] = "61MrwdsfKaMT8cm41uKPQBdCm4rKMLSELtJqs12p7WoV";   //SDKKey
    char DETECTIONKKey[45] = "61MrwdsfKaMT8cm41uKPQBci7TocqKmAASGS7infomre";
    std::string trainpath = "F:\\trainimages";
    MRESULT nRet ;
    MHandle hEngine ;
    MInt32  nScale ;
    MInt32  nMaxFace ;
    MByte  *pWorkMem;
 
    std::vector<std::string>  trainfullfiles;//完整路径名
    std::vector<std::string>  trainnamefiles;
    std::string   *labels;
    std::map<std::string, std::string> dicfilenametoname;
  
    /* 初始化引擎和变量 */
    MRESULT detectionnRet;
    MHandle hdetectionEngine;
    MInt32  ndetetionScale;
    MInt32  ndetectionMaxFace ;
    MByte   *pdetectionWorkMem;
 
    int trainCount = 0;
    LPAFR_FSDK_FACEMODEL  *trainfaceModels;
 
    AFR_FSDK_FACEMODEL dectfaceModels;
 
};

(4)FaceDiscern.cpp


#include "FaceDiscern.h"
FaceDiscern::FaceDiscern(std::string _trainpath)
{
    nRet = MERR_UNKNOWN;
    hEngine = nullptr;
    nScale = 16;
    nMaxFace = 10;
    pWorkMem = (MByte *)malloc(WORKBUF_SIZE);
 
    /* 初始化引擎和变量 */
     detectionnRet = MERR_UNKNOWN;
     hdetectionEngine = nullptr;
     ndetetionScale = 16;
     ndetectionMaxFace = 10;
     pdetectionWorkMem = (MByte *)malloc(WORKBUF_SIZE);
     dicfilenametoname.insert(std::pair<std::string, std::string>("bingbing.bmp", "冰冰女神"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("fangfang.bmp", "村里有个姑娘叫小芳"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("feifei.bmp", "刘亦菲"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("huihui.bmp", "冷工"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("shishi.bmp", "诗诗妹妹"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("xiaxia.bmp", "天上掉下个林妹妹"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("xudasong.bmp", "松哥"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("likunpeng.bmp", "李工"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("gaojianjun.bmp", "高建军"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("liuzhen.bmp", "小鲜肉振哥"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("liting.bmp", "女王婷姐"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("wangxuetao.bmp", "雪涛"));
     dicfilenametoname.insert(std::pair<std::string, std::string>("guowei.bmp", "郭大侠")); 
     dicfilenametoname.insert(std::pair<std::string, std::string>("mingxin.bmp", "宝宝鸣新"));
    this->trainpath = _trainpath;
}
 
 
FaceDiscern::~FaceDiscern()
{
    /* 释放引擎和内存 */
    detectionnRet = AFD_FSDK_UninitialFaceEngine(hdetectionEngine);
    if (detectionnRet != MOK)
    {
        fprintf(stderr, "UninitialFaceEngine failed , errorcode is %d \n", detectionnRet);
    }
    free(pdetectionWorkMem);
 
    for (int i = 0; i < trainCount; i++)
    {
        if (trainfaceModels[i]->pbFeature != NULL)
            free(trainfaceModels[i]->pbFeature);
    }
    nRet = AFR_FSDK_UninitialEngine(hEngine);
    if (nRet != MOK)
    {
        fprintf(stderr, "UninitialFaceEngine failed , errorcode is %d \n", nRet);
    }
}
 
//加载所有的参考图像和图像名字作为参考库
void  FaceDiscern::getFiles(std::string path, std::vector<std::string>& files, std::vector<std::string> &ownname)
{
    /*files存储文件的路径及名称(eg.   C:\Users\WUQP\Desktop\test_devided\data1.txt)
    4      ownname只存储文件的名称(eg.     data1.txt)*/
    //文件句柄  
    long long  hFile = 0;
    //文件信息  
    struct _finddata_t fileinfo;
    std::string p;
    if ((hFile = _findfirst(p.assign(path).append("\\*").c_str(), &fileinfo)) != -1)
    {
        do
        {
            //如果是目录,迭代之  
            //如果不是,加入列表  
            if ((fileinfo.attrib &  _A_SUBDIR))
            {  /*
               if(strcmp(fileinfo.name,".") != 0  &&  strcmp(fileinfo.name,"..") != 0)
               getFiles( p.assign(path).append("\\").append(fileinfo.name), files, ownname ); */
            }
            else
            {
                files.push_back(p.assign(path).append("\\").append(fileinfo.name));
                ownname.push_back(fileinfo.name);
            }
        } while (_findnext(hFile, &fileinfo) == 0);
        _findclose(hFile);
    }
 
 
}
//将cv::Mat转换为Bitmap
void  FaceDiscern::ConvertMatToBitmap(cv::Mat *img, uint8_t **imageData, int *pWidth, int *pHeight)
{
    //======建立位图信息 ===========
    int width, height, depth, channel;
    width = img->cols;
    height = img->rows;
    depth = img->depth();
    channel = img->channels();
    *pWidth = width; //图像宽。高
    *pHeight = height;
 
    int linebyte = width * channel;
    *imageData = (uint8_t *)malloc(linebyte * (*pHeight));
    for (int i = 0; i<height; i++) {
        for (int j = 0; j<width; j++) {
 
            *((*imageData) + i * width*channel + j * channel) = (*img).at<Vec3b>(i, j)[2];// (uint8_t)(*(img + i * width*channel + j * width + 2));
            *((*imageData) + i * width*channel + j * channel + 1) = (*img).at<Vec3b>(i, j)[1];
            *((*imageData) + i * width*channel + j * channel + 2) = (*img).at<Vec3b>(i, j)[0];
        } // end of line                     
    }
}
//从文件中读取图像并转化为bitmap
bool FaceDiscern::readBmp24(const char* path, uint8_t **imageData, int *pWidth, int *pHeight)
{
    if (path == NULL || imageData == NULL || pWidth == NULL || pHeight == NULL)
    {
        return false;
    }
    FILE *fp = fopen(path, "rb");
    if (fp == NULL)
    {
        return false;
    }
    fseek(fp, sizeof(BITMAPFILEHEADER), 0);
    BITMAPINFOHEADER head;
    fread(&head, sizeof(BITMAPINFOHEADER), 1, fp);
    *pWidth = head.biWidth;
    *pHeight = head.biHeight;
    int biBitCount = head.biBitCount;
    if (24 == biBitCount)
    {
        int lineByte = ((*pWidth) * biBitCount / 8 + 3) / 4 * 4;
        *imageData = (uint8_t *)malloc(lineByte * (*pHeight));
        uint8_t * data = (uint8_t *)malloc(lineByte * (*pHeight));
        fseek(fp, 54, SEEK_SET);
        fread(data, 1, lineByte * (*pHeight), fp);
        for (int i = 0; i < *pHeight; i++)
        {
            for (int j = 0; j < *pWidth; j++)
            {
                memcpy((*imageData) + i * (*pWidth) * 3 + j * 3, data + (((*pHeight) - 1) - i) * lineByte + j * 3, 3);
            }
        }
        free(data);
    }
    else
    {
        fclose(fp);
        return false;
    }
    fclose(fp);
    return true;
}
 
//加载所有的参考数据
void FaceDiscern::Train()
{
    if (pWorkMem == nullptr)
    {
        return;
    }
    nRet = AFR_FSDK_InitialEngine(APPID, SDKKey, pWorkMem, WORKBUF_SIZE, &hEngine); //初始化引擎
 
    if (nRet != MOK)
    {
        return;
    }
 
    getFiles(trainpath, trainfullfiles, trainnamefiles);
    //生成训练数据 特征集合
    
    if (trainfullfiles.size() > 0)
    {
        //参考图像数据的人脸特征和标签的存储
        trainfaceModels = new LPAFR_FSDK_FACEMODEL[trainfullfiles.size()];
        labels = new  std::string[trainfullfiles.size()];
    }
    else
    {
        return ;
    }
    for (int i = 0; i < trainfullfiles.size(); i++)
    {
        std::string filename = trainfullfiles[i];
        /* 读取第一张静态图片信息,并保存到ASVLOFFSCREEN结构体 (以ASVL_PAF_RGB24_B8G8R8格式为例) */
        ASVLOFFSCREEN offInput = { 0 };
        offInput.u32PixelArrayFormat = ASVL_PAF_RGB24_B8G8R8;
        offInput.ppu8Plane[0] = nullptr;
        const char * path = filename.c_str();
        readBmp24(path, (uint8_t**)&offInput.ppu8Plane[0], &offInput.i32Width, &offInput.i32Height);
        if (!offInput.ppu8Plane[0])
        {
            fprintf(stderr, "fail to ReadBmp(%s)\n", path);
            AFR_FSDK_UninitialEngine(hEngine);
            free(pWorkMem);
            continue ;
        }
        offInput.pi32Pitch[0] = offInput.i32Width * 3;
        AFR_FSDK_FACEMODEL *faceModels = new AFR_FSDK_FACEMODEL();
        {
            AFR_FSDK_FACEINPUT faceInput;
            //第一张人脸信息通过face detection\face tracking获得
            faceInput.lOrient = AFR_FSDK_FOC_0;//人脸方向
                                               //人脸框位置
            faceInput.rcFace.left = 0;
            faceInput.rcFace.top = 0;
            faceInput.rcFace.right = offInput.i32Width - 2;;
            faceInput.rcFace.bottom = offInput.i32Height - 2;;
            //提取第一张人脸特征
            AFR_FSDK_FACEMODEL LocalFaceModels = { 0 };
            nRet = AFR_FSDK_ExtractFRFeature(hEngine, &offInput, &faceInput, &LocalFaceModels);
            if (nRet != MOK)
            {
                fprintf(stderr, "fail to Extract 1st FR Feature, error code: %d\n", nRet);
            }
            /* 拷贝人脸特征结果 */
            faceModels->lFeatureSize = LocalFaceModels.lFeatureSize;
            faceModels->pbFeature = (MByte*)malloc(faceModels->lFeatureSize);
            memcpy(faceModels->pbFeature, LocalFaceModels.pbFeature, faceModels->lFeatureSize);
        }
        trainfaceModels[i] = faceModels;
        labels[i] = trainnamefiles[i];
        trainCount++;
    }
 
    if (pdetectionWorkMem == nullptr)
    {
        return;
    }
    //人脸检测engine
    detectionnRet = AFD_FSDK_InitialFaceEngine(APPID, DETECTIONKKey, pdetectionWorkMem, WORKBUF_SIZE, &hdetectionEngine, AFD_FSDK_OPF_0_HIGHER_EXT, ndetetionScale, ndetectionMaxFace);
    if (detectionnRet != MOK)
    {
        return;
    }
    
}
//简单的通过距离相似计算出最相似的参考图像
std::string FaceDiscern::RecognizeFace(cv::Mat *img, QRect &rect)
{
    /* 读取静态图片信息,并保存到ASVLOFFSCREEN结构体 (以ASVL_PAF_RGB24_B8G8R8格式为例) */
    /* 人脸检测 */
 
    ASVLOFFSCREEN offInput = { 0 };
    offInput.u32PixelArrayFormat = ASVL_PAF_RGB24_B8G8R8;
    offInput.ppu8Plane[0] = nullptr;
    ConvertMatToBitmap(img, (uint8_t**)&offInput.ppu8Plane[0], &offInput.i32Width, &offInput.i32Height);
    if (!offInput.ppu8Plane[0])
    {
        return "";
    }
    offInput.pi32Pitch[0] = offInput.i32Width * 3;
    LPAFD_FSDK_FACERES  FaceRes = nullptr;
    detectionnRet = AFD_FSDK_StillImageFaceDetection(hdetectionEngine, &offInput, &FaceRes);
    void *imgptr = offInput.ppu8Plane[0];
    ////识别人脸信息
    AFR_FSDK_FACEINPUT faceInput;
    faceInput.lOrient = AFR_FSDK_FOC_0;//人脸方向                              //人脸框位置
    faceInput.rcFace.left =FaceRes->rcFace[0].left;
    faceInput.rcFace.top = FaceRes->rcFace[0].top;
    faceInput.rcFace.right = FaceRes->rcFace[0].right;
    faceInput.rcFace.bottom = FaceRes->rcFace[0].bottom;
 
    rect.setLeft(FaceRes->rcFace[0].left);
    rect.setTop(FaceRes->rcFace[0].top);
    rect.setRight(FaceRes->rcFace[0].right);
    rect.setBottom(FaceRes->rcFace[0].bottom);
    //提取人脸特征
    nRet = AFR_FSDK_ExtractFRFeature(hEngine, &offInput, &faceInput, &dectfaceModels);
    free(imgptr);
    
    if (nRet != MOK)
    {
        return "";
    }
    float maxscore = -1.0;
    int index = -1;
    for (int i = 0; i < trainCount; i++)
    {
        MFloat  fSimilScore = 0.0f;
        nRet = AFR_FSDK_FacePairMatching(hEngine, &dectfaceModels, trainfaceModels[i], &fSimilScore);
        if (fSimilScore > maxscore)
        {
            maxscore = fSimilScore;
            index = i;
        }
    }
    if (index != -1)
    {
        double num = maxscore * 100.0;
        std::string str;
        char ctr[10];
        _gcvt(num, 6, ctr);
        str = ctr;
        std::string nameresult = labels[index];
        if (dicfilenametoname.find(nameresult) != dicfilenametoname.end())
        {
            nameresult = dicfilenametoname[nameresult];
        }
        return nameresult + "," + str;
    }
    //释放
    if(dectfaceModels.lFeatureSize>0)
       free(dectfaceModels.pbFeature);
 
    return "";
}

(3) 界面展示

在这里插入图片描述
最后是SDK下载地址 https://ai.arcsoft.com.cn/ucenter/user/reg?utm_source=csdn1&utm_medium=referral
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