// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
/*This example program shows how to find frontal human faces in an image. Inparticular, this program shows how you can take a list of images from thecommand line and display each on the screen with red boxes overlaid on eachhuman face.The examples/faces folder contains some jpg images of people. You can runthis program on them and see the detections by executing the following command:./face_detection_ex faces/*.jpgThis face detector is made using the now classic Histogram of OrientedGradients (HOG) feature combined with a linear classifier, an image pyramid,and sliding window detection scheme. This typeofobjectdetectorisfairlygeneral and capable of detecting many types of semi-rigid objects inaddition to human faces. Therefore, if you are interested in making yourown object detectors then read the fhog_object_detector_ex.cpp exampleprogram. It shows how touse the machine learning tools which were used tocreate dlib's face detector. Finally, note that the face detector is fastest when compiled with at leastSSE2 instructions enabled. So if you are using a PC with an Intel or AMDchip then you should enable at least SSE2 instructions. If you are usingcmake to compile this program you can enable them by using one of thefollowing commands when you create the build project:cmake path_to_dlib_root/examples -DUSE_SSE2_INSTRUCTIONS=ONcmake path_to_dlib_root/examples -DUSE_SSE4_INSTRUCTIONS=ONcmake path_to_dlib_root/examples -DUSE_AVX_INSTRUCTIONS=ONThis will set the appropriate compiler options for GCC, clang, VisualStudio, or the Intel compiler. If you are using another compiler then youneed to consult your compiler's manual to determine how to enable theseinstructions. Note that AVX is the fastest but requires a CPU from at least2011. SSE4 is the next fastest and is supported by most current machines.
*/#include <dlib/image_processing/frontal_face_detector.h>
#include <dlib/gui_widgets.h>
#include <dlib/image_io.h>
#include <iostream>using namespace dlib;
using namespace std;// ----------------------------------------------------------------------------------------int main(int argc, char** argv)
{ try{if (argc == 1){cout << "Give some image files as arguments to this program." << endl;return0;}frontal_face_detector detector = get_frontal_face_detector();image_window win;// Loop over all the images provided on the command line.for (int i = 1; i < argc; ++i){cout << "processing image " << argv[i] << endl;array2d<unsigned char> img;load_image(img, argv[i]);// Make the image bigger by a factor of two. This is useful since// the face detector looks for faces that are about 80 by 80 pixels// or larger. Therefore, if you want to find faces that are smaller// than that then you need to upsample the image as we do here by// calling pyramid_up(). So this will allow it to detect faces that// are at least 40 by 40 pixels in size. We could call pyramid_up()// again to find even smaller faces, but note that every time we// upsample the image we make the detector run slower since it must// process a larger image.pyramid_up(img);// Now tell the face detector to give us a list of bounding boxes// around all the faces it can find in the image.std::vector<rectangle> dets = detector(img);cout << "Number of faces detected: " << dets.size() << endl;// Now we show the image on the screen and the face detections as// red overlay boxes.win.clear_overlay();win.set_image(img);win.add_overlay(dets, rgb_pixel(255,0,0));cout << "Hit enter to process the next image..." << endl;cin.get();}}catch (exception& e){cout << "\nexception thrown!" << endl;cout << e.what() << endl;}
}// ----------------------------------------------------------------------------------------