def main(args):
    if sys.version_info < (3, 0):
        print("Error: Python2 is slow. Use Python3 for max performance.")
        return

    cam_index = int(args.webcam)
    resolutions = [
        RESOLUTION_QVGA, RESOLUTION_VGA, RESOLUTION_HD, RESOLUTION_FULLHD
    ]
    try:
        cam_resolution = resolutions[int(args.resolution)]
    except:
        cam_resolution = RESOLUTION_QVGA

    if args.detector:
        try:
            detector = FaceDetectorModels(int(args.detector))
            print("Parameters: {}".format(detector))
            process_facedetection(
                detector,
                FacePoseEstimatorModels.DEFAULT,
                FaceAgeEstimatorModels.DEFAULT,
                FaceGenderEstimatorModels.DEFAULT,
                # FaceEmotionEstimatorModels.DEFAULT,
                cam_resolution,
                cam_index)
        except:
            print("Invalid parameter")
        return
    run(cam_index, cam_resolution)
def main(args):
    if sys.version_info < (3, 0):
        print("Error: Python2 is slow. Use Python3 for max performance.")
        return

    cam_index = int(args.webcam)
    resolutions = [
        RESOLUTION_QVGA, RESOLUTION_VGA, RESOLUTION_HD, RESOLUTION_FULLHD
    ]
    try:
        cam_resolution = resolutions[int(args.resolution)]
    except:
        cam_resolution = RESOLUTION_QVGA

    if args.detector and args.encoder and args.liveness:
        try:
            detector = FaceDetectorModels(int(args.detector))
            encoder = FaceEncoderModels(int(args.encoder))
            liveness = FaceLivenessModels(int(args.liveness))
            print("Parameters: {} {} {}".format(detector, encoder, liveness))
            process_livenessdetection(detector, encoder, liveness, cam_index,
                                      cam_resolution)
        except:
            print("Can not indentify your face, please try again!")
        return
    run(cam_index, cam_resolution)
def main(args):
    if sys.version_info < (3, 0):
        print("Error: Python2 is slow. Use Python3 for max performance.")
        return

    cam_index = int(args.webcam)
    resolutions = [
        RESOLUTION_QVGA, RESOLUTION_VGA, RESOLUTION_HD, RESOLUTION_FULLHD
    ]
    try:
        cam_resolution = resolutions[int(args.resolution)]
    except:
        cam_resolution = RESOLUTION_QVGA

    if args.detector and args.encoder and args.speech_synthesizer:
        try:
            detector = FaceDetectorModels(int(args.detector))
            encoder = FaceEncoderModels(int(args.encoder))
            speech_synthesizer = SpeechSynthesizerModels(
                int(args.speech_synthesizer))
            print("Parameters: {} {} {}".format(detector, encoder,
                                                speech_synthesizer))
            process_facerecognition(detector, encoder, speech_synthesizer,
                                    cam_index, cam_resolution)
        except:
            print("Invalid parameter")
        return
    run(cam_index, cam_resolution)
Example #4
0
def main(args):
    if sys.version_info < (3, 0):
        print("Error: Python2 is slow. Use Python3 for max performance.")
        return

    cam_index = int(args.webcam)
    resolutions = [
        RESOLUTION_QVGA, RESOLUTION_VGA, RESOLUTION_HD, RESOLUTION_FULLHD
    ]
    try:
        cam_resolution = resolutions[int(args.resolution)]
    except:
        cam_resolution = RESOLUTION_VGA

    if args.detector and args.name:
        try:
            detector = FaceDetectorModels(int(args.detector))
            name = str(args.name)
            print("Parameters: {}".format(detector))

            process_faceenrollment(detector, cam_index, cam_resolution)

            print("")
            print("Processing of video recording started...")
            #video_to_images(detector, "x" + INPUT_DIR_DATASET, name)
            #video_to_images(detector, INPUT_DIR_DATASET, name, one_image_only=True)
            video_to_images(detector, INPUT_DIR_DATASET, name)
            print("Processing of video recording completed!")
            print("Make sure to train the new datasets before testing!")
            print("")
        except:
            print("Invalid parameter")
        return
    run(cam_index, cam_resolution, str(args.name))
Example #5
0
def main(args):
    if args.detector and args.encoder:
        try:
            detector = FaceDetectorModels(int(args.detector))
            encoder = FaceEncoderModels(int(args.encoder))
            classifier = FaceClassifierModels(int(args.classifier))
            face_embeddings_path = args.face_embeddings_path
            print("Parameters: {} {} {} {}".format(detector, encoder,
                                                   classifier,
                                                   face_embeddings_path))

            train_recognition(detector, encoder, classifier,
                              face_embeddings_path, True)
            print("\nImage dataset training completed!")

            # generate audio samples for image datasets using text to speech synthesizer
            if args.set_speech_synthesizer:
                from libfaceid.speech_synthesizer import SpeechSynthesizerModels  # lazy loading
                speech_synthesizer = SpeechSynthesizerModels(
                    int(args.speech_synthesizer))
                #print( "Parameters: {}".format(speech_synthesizer) )
                train_audiosets(speech_synthesizer)
                print("Audio samples created!")
        except Exception as ex:
            print(ex)
            print("Invalid parameter")
        return
    run()
Example #6
0
def main(args):
    if sys.version_info < (3, 0):
        print("Error: Python2 is slow. Use Python3 for max performance.")
        return


    redis_cam = RedisCam(**ConfigRedis.cam2)
    resolutions = [ RESOLUTION_QVGA, RESOLUTION_VGA, RESOLUTION_HD, RESOLUTION_FULLHD ]
    try:
        cam_resolution = resolutions[int(args.resolution)]
    except:
        cam_resolution = RESOLUTION_QVGA

    if args.detector is not None and args.encoder is not None:
        try:
            detector = FaceDetectorModels(int(args.detector))
            encoder = FaceEncoderModels(int(args.encoder))
            embeddings_path = args.embeddings_path
            image_folder = args.image_folder
            print( "Parameters: {} {}".format(detector, encoder) )
            process_facerecognition(detector, encoder, redis_cam, cam_resolution, embeddings_path, image_folder)
        except Exception as ex:
            print( "Invalid parameter" )
            print(ex)
        return
def main(args):
    if args.detector and args.encoder:
        try:
            detector = FaceDetectorModels(int(args.detector))
            encoder = FaceEncoderModels(int(args.encoder))
            classifier = FaceClassifierModels(int(args.classifier))
            print("Parameters: {} {} {}".format(detector, encoder, classifier))
            train_recognition(detector, encoder, classifier, True)
            print("Training completed!")
        except:
            print("Invalid parameter")
        return
    run()
def main(args):
    if sys.version_info < (3, 0):
        print("Error: Python2 is slow. Use Python3 for max performance.")
        return
    if args.detector and args.encoder:
        try:
            detector = FaceDetectorModels(int(args.detector))
            encoder = FaceEncoderModels(int(args.encoder))
            print("Parameters: {} {}".format(detector, encoder))
            process_facerecognition(detector, encoder, args.image)
        except:
            print("Invalid parameter")
        return
    run(args.image)
Example #9
0
def init_model(int_detect=1, int_encode=3):
    # Only for debugging while developing
    try:
        # Initialize face detection
        global face_recognizer, face_detector, face_encoder
        face_detector = FaceDetector(model=FaceDetectorModels(int_detect),
                                     path=join(ROOT_DIR,
                                               INPUT_DIR_MODEL_DETECTION))
        # Initialize face recognizer
        face_encoder = FaceEncoder(model=FaceEncoderModels(int_encode),
                                   path=join(ROOT_DIR,
                                             INPUT_DIR_MODEL_ENCODING),
                                   path_training=join(
                                       ROOT_DIR, INPUT_DIR_MODEL_TRAINING),
                                   training=False)
        face_recognizer = FaceRecognizer(face_embeddings_path=join(
            ROOT_DIR, EMBEDDINGS_DIR + '/3_face_encodings_83.pickle'))
    except Exception as ex:
        face_encoder = None
        print(ex)
Example #10
0
def main(args):
    if sys.version_info < (3, 0):
        print("Error: Python2 is slow. Use Python3 for max performance.")
        return
    if args.detector and args.encoder:
        try:
            detector = FaceDetectorModels(int(args.detector))
            encoder = FaceEncoderModels(int(args.encoder))
            classifier = FaceEncoderModels(int(args.classifier))
            print("Parameters: {} {} {}".format(detector, encoder, classifier))
            train_recognition(detector, encoder, classifier, True)
            fps = process_facerecognition(RESOLUTION_QVGA,
                                          None,
                                          0,
                                          model_detector=detector,
                                          model_recognizer=encoder)
            print("Result: {}x{} {:.2f} fps".format(RESOLUTION_QVGA[0],
                                                    RESOLUTION_QVGA[1], fps))
        except:
            print("Invalid parameter")
        return
    run()