#!/usr/bin/python | |
# 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. In | |
# particular, it shows how you can take a list of images from the command | |
# line and display each on the screen with red boxes overlaid on each human | |
# face. | |
# | |
# The examples/faces folder contains some jpg images of people. You can run | |
# this program on them and see the detections by executing the | |
# following command: | |
# ./face_detector.py ../examples/faces/*.jpg | |
# | |
# This face detector is made using the now classic Histogram of Oriented | |
# Gradients (HOG) feature combined with a linear classifier, an image | |
# pyramid, and sliding window detection scheme. This type of object detector | |
# is fairly general and capable of detecting many types of semi-rigid objects | |
# in addition to human faces. Therefore, if you are interested in making | |
# your own object detectors then read the train_object_detector.py example | |
# program. | |
# | |
# | |
# COMPILING/INSTALLING THE DLIB PYTHON INTERFACE | |
# You can install dlib using the command: | |
# pip install dlib | |
# | |
# Alternatively, if you want to compile dlib yourself then go into the dlib | |
# root folder and run: | |
# python setup.py install | |
# | |
# Compiling dlib should work on any operating system so long as you have | |
# CMake installed. On Ubuntu, this can be done easily by running the | |
# command: | |
# sudo apt-get install cmake | |
# | |
# Also note that this example requires Numpy which can be installed | |
# via the command: | |
# pip install numpy | |
import sys | |
import dlib | |
detector = dlib.get_frontal_face_detector() | |
win = dlib.image_window() | |
for f in sys.argv[1:]: | |
print("Processing file: {}".format(f)) | |
img = dlib.load_rgb_image(f) | |
# The 1 in the second argument indicates that we should upsample the image | |
# 1 time. This will make everything bigger and allow us to detect more | |
# faces. | |
dets = detector(img, 1) | |
print("Number of faces detected: {}".format(len(dets))) | |
for i, d in enumerate(dets): | |
print("Detection {}: Left: {} Top: {} Right: {} Bottom: {}".format( | |
i, d.left(), d.top(), d.right(), d.bottom())) | |
win.clear_overlay() | |
win.set_image(img) | |
win.add_overlay(dets) | |
dlib.hit_enter_to_continue() | |
# Finally, if you really want to you can ask the detector to tell you the score | |
# for each detection. The score is bigger for more confident detections. | |
# The third argument to run is an optional adjustment to the detection threshold, | |
# where a negative value will return more detections and a positive value fewer. | |
# Also, the idx tells you which of the face sub-detectors matched. This can be | |
# used to broadly identify faces in different orientations. | |
if (len(sys.argv[1:]) > 0): | |
img = dlib.load_rgb_image(sys.argv[1]) | |
dets, scores, idx = detector.run(img, 1, -1) | |
for i, d in enumerate(dets): | |
print("Detection {}, score: {}, face_type:{}".format( | |
d, scores[i], idx[i])) | |