# Save the face of the user in encoded form # Import required modules import face_recognition import subprocess import time import os import sys import json # Import config and extra functions import config import utils def captureFrame(delay): """Capture and encode 1 frame of video""" # Call fswebcam to save a frame to /tmp with a set delay subprocess.call(["fswebcam", "-S", str(delay), "--no-banner", "-d", "/dev/video" + str(config.device_id), tmp_file], stderr=open(os.devnull, "wb")) # Get the faces in htat image ref = face_recognition.load_image_file(tmp_file) enc = face_recognition.face_encodings(ref) # If 0 faces are detected we can't continue if len(enc) == 0: print("No face detected, aborting") sys.exit() # If more than 1 faces are detected we can't know wich one belongs to the user if len(enc) > 1: print("Multiple faces detected, aborting") sys.exit() clean_enc = [] # Copy the values into a clean array so we can export it as JSON later on for point in enc[0]: clean_enc.append(point) encodings.append(clean_enc) # The current user user = os.environ.get("USER") # The name of the tmp frame file to user tmp_file = "/tmp/howdy_" + user + ".jpg" # The permanent file to store the encoded model in enc_file = "./models/" + user + ".dat" # Known encodings encodings = [] # Make the ./models folder if it doesn't already exist if not os.path.exists("models"): print("No face model folder found, creating one") os.makedirs("models") # To try read a premade encodings file if it exists try: encodings = json.load(open(enc_file)) except FileNotFoundError: encodings = False # If a file does exist, ask the user what needs to be done if encodings != False: encodings = utils.print_menu(encodings) print("\nLearning face for the user account " + user) print("Please look straight into the camera for 5 seconds") # Give the user time to read time.sleep(2) # Capture with 3 different delays to simulate different camera exposures for delay in [30, 6, 0]: time.sleep(.3) captureFrame(delay) # Save the new encodings to disk with open(enc_file, "w") as datafile: json.dump(encodings, datafile) # Remove any left over temp files os.remove(tmp_file) print("Done.")