Let''s Build Facial Recognition System - part 1
Introduction Over the last decade or so, face recognition has become a popular topic for computer vision researcher and one of the most successful applications of image analysis and understanding. Day by day, they always try to build the better libs which help us to create face recognition system ...
Introduction
Over the last decade or so, face recognition has become a popular topic for computer vision researcher and one of the most successful applications of image analysis and understanding. Day by day, they always try to build the better libs which help us to create face recognition system with ease.
Now, let's define what face recognition system is:
A face recognition system is a computer application capable of identifying or verifying a person from a digital image or a video frame from a video source. Source Wikipedia
The process of facial recognition system is quite simple where we can split it into two simple steps:
- Find faces: identify the face from the given image or video.
- Recognize faces: search the faces where we found in step 1 with our faces database in the system.
However in this post, we're going to talk about first step which is finding the face from our computer webcam.
What we need
Decade ago, to build this system you need to do everything on your own from scratch. Now, we can harvest the help from some libs which help us speed up our development. Libraries which we'll use in the code in this post are:
- Python3.6: programming language use in this post
- OpenCV: the most popular library for computer version and machine learning. How to set it up here
- dlib: is a cross-platform package for threading, networking, numerical operations, machine learning, computer vision, and compression, placing a strong emphasis on extremely high-quality and portable code. How to set it up here
- imutils: A series of convenience functions to make basic image processing functions such as translation, rotation, resizing, skeletonization, and displaying Matplotlib images easier with OpenCV. Checkout its official link here
Let's code
By using opencv library cv2 and dlib, we can build a face detection with just few lines of code and here they are:
# load the needed package from imutils.video import VideoStream from imutils import face_utils import imutils import time import cv2 import dlib print("[INFO] loading facial landmark predictor...") detector = dlib.get_frontal_face_detector() print("[INFO] camera sensor warming up...") vs = VideoStream().start() time.sleep(2.0) # loop over the frames from the video stream while True: # grab the frame from the threaded video stream, resize it to # have a maximum awidth of 600 pixels, and convert it to # grayscale frame = vs.read() frame = imutils.resize(frame, awidth=600) gray = cv2.cvtColor(frame, cv2.COLOR_BGR2GRAY) # detect faces in the grayayscale frame rects = detector(gray, 0) # loopop over the face detections # and draw rectangle around face for rect in rects: (x,y,w,h) = face_utils.rect_to_bb(rect) cv2.rectangle(frame, (x, y), (x+w, y+h), (0,0,255), 1) # show the frame cv2.imshow("Frame", frame) key = cv2.waitKey(1) & 0xFF # if the `q` key was pressed, break from the loop if key == ord("q"): break # do a bit of cleanup cv2.destroyAllWindows() vs.stop()
It's time to run our code and here the result
Awesome, it's working.
Resources
- https://github.com/RathanakSreang/MachineLearning/tree/master/FacialRecognition
- http://www.pyimagesearch.com/2015/06/22/install-opencv-3-0-and-python-2-7-on-ubuntu/
- http://www.pyimagesearch.com/2017/03/27/how-to-install-dlib/
- http://www.pyimagesearch.com/2017/04/17/real-time-facial-landmark-detection-opencv-python-dlib/
- http://www.pyimagesearch.com/2017/04/03/facial-landmarks-dlib-opencv-python/
- https://en.wikipedia.org/wiki/Facial_recognition_system
- https://github.com/jrosebr1/imutils
- http://opencv.org/
- http://dlib.net/
What next
By using additional library like dlib, opencv we can easily write the code to find the faces from the given images, videos. Next, we are going to search the found faces in our faces database. Then we will build a small web application for real time face recognition. So stay tuned for my next post.