Exemple #1
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def main():
    parser = ap.ArgumentParser(
        description=
        "Arguments to use in data collection and Arduino communication.")
    parser.add_argument("port", help="The serial port file to use.")
    args = parser.parse_args()

    serial_port = args.port
    if not os.path.exists(serial_port):
        print("Error: file '{}' does not exist or is not a file.".format(
            serial_port))
        exit(1)

    # William's test driver code, but with the serial port as a command line arg.
    # ctl = ac(serial_port)

    # need this delay for arduino initialization
    time.sleep(3)

    print('Starting detection...')
    detector = Detector(serial_port)
    while True:
        try:
            print('writing: ' + str(detector.sample()))
        except Exception as e:
            print(e)
            print('Breaking')
            detector.close()
            break
Exemple #2
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def video_img():
    detector = Detector()
    vc=cv2.VideoCapture(r'F:\video\mv.mp4')
    c=1
    if vc.isOpened():
        rval,frame=vc.read()
    else:
        rval=False
    while rval:
        rval,frame=vc.read()
        im = Image.fromarray(cv2.cvtColor(frame,cv2.COLOR_BGR2RGB))


        boxes = detector.detect(im)

        for box in boxes:
            x1 = int(box[0])
            y1 = int(box[1])
            x2 = int(box[2])
            y2 = int(box[3])
            _y2 = int(y2 * 0.8+y1*0.2)
            cv2.rectangle(frame,(x1, y1), (x2, _y2), (0,225,0),2)
        cv2.imshow('img',frame)
        # cv2.imwrite(r'F:\video\img\img'+str(c)+'.jpg',frame)
        c=c+1
        cv2.waitKey(1)
    vc.release()
Exemple #3
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def run(datafile, data_dir):
    def download(url):
        try:
            with urlopen(url) as response:
                if response.status == 200:
                    data = np.asarray(bytearray(response.read()),
                                      dtype=np.uint8)
                    return cv2.imdecode(data, cv2.IMREAD_COLOR)
        except HTTPError as e:
            print(f'{url}: {e}')
        except (ConnectionError, OSError) as e:
            print(f'{url}: {e}')
            time.sleep(0.1)
        except Exception as e:
            print(f'{url}: {e}')
            time.sleep(0.5)
        return None

    detector = Detector()
    with open(datafile, 'r') as fp:
        r = csv.reader(fp, delimiter='\t')
        for row in r:
            photo_url = row[1]
            print(photo_url)
            img = download(photo_url)
            if img is None:
                continue
            result = detector.detect(img)
            if result is None:
                continue

            basename = os.path.basename(photo_url)
            path0 = f'{ord(basename[0]):02x}'
            path1 = f'{ord(basename[1]):02x}'
            path2 = f'{ord(basename[2]):02x}'
            outdir = os.path.join(data_dir, path0, path1, path2)
            os.makedirs(outdir, exist_ok=True)

            faceimg = result['image']
            del result['image']
            created_at = datetime.fromtimestamp(
                time.mktime(time.strptime(row[3],
                                          '%a %b %d %H:%M:%S +0000 %Y')))
            result['meta'] = {
                'photo_id': row[0],
                'photo_url': row[1],
                'source_url': row[2],
                'published_at': created_at.isoformat(),
                'label_id': row[4],
                'label_name': row[5],
            }

            name = os.path.splitext(basename)[0]
            cv2.imwrite(os.path.join(outdir, f'{name}.jpg'), faceimg,
                        [cv2.IMWRITE_JPEG_QUALITY, 100])
            with open(os.path.join(outdir, f'{name}.json'), 'w') as fp:
                json.dump(result, fp, ensure_ascii=False)
Exemple #4
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def main_func(path):
    """
    Detect 3rd-party libraries in app.
    The detection result is printed.
    :param path: The path of target app.
    :return: None.
    """
    print "--Decoding--"
    detector = Detector()
    decoded_path = detector.get_smali(path)
    detector.get_hash(decoded_path)
 def __init__(self, opt):
     super(mywindow, self).__init__()
     self.setupUi(self)
     self.setFixedSize(self.width(), self.height())
     self.opt = opt
     self.detector = Detector(cfg=opt.cfg,
                              data_cfg=opt.data_cfg,
                              weights=opt.weights,
                              img_size=opt.img_size,
                              conf_thres=opt.conf_thres,
                              nms_thres=opt.nms_thres)
Exemple #6
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    def __init__(self, minutes):
        queue = Queue(maxsize=100)
        self.queue = queue
        self.recorder = Recorder()
        self.minutes = minutes
        self.consoleAudioHandler = ConsoleAudioHandler(self.queue,
                                                       config["tmpPath"])

        t = Thread(target=self.worker)
        t.start()

        provider = ConsoleAudioProvider(self.queue)

        detector = Detector(provider)
        detector.detect()
class TrafficLightDetector:
    def __init__(self):
        self.detector = Detector()

    def detect(self, image):
        boxes = self.detector.detect(image)
        traffic_light_boxes = self.filter(boxes, "traffic light")
        box_image = self.detector.drawBoxes(image, traffic_light_boxes)

        return traffic_light_boxes, box_image

    def filter(self, boxes, category):
        filtered_boxes = []
        for box in boxes:
            left, right, top, bot, mess, max_indx, confidence = box
            if mess == category:
                filtered_boxes.append(box)
        return filtered_boxes
class mywindow(QTabWidget, Ui_TabWidget):  #这个窗口继承了用QtDesignner 绘制的窗口
    def __init__(self, opt):
        super(mywindow, self).__init__()
        self.setupUi(self)
        self.setFixedSize(self.width(), self.height())
        self.opt = opt
        self.detector = Detector(cfg=opt.cfg,
                                 data_cfg=opt.data_cfg,
                                 weights=opt.weights,
                                 img_size=opt.img_size,
                                 conf_thres=opt.conf_thres,
                                 nms_thres=opt.nms_thres)

    def videoprocessing(self):
        global videoName  #在这里设置全局变量以便在线程中使用
        videoName, videoType = QFileDialog.getOpenFileName(
            self, "打开视频", "", " *.MOV;;*.mp4;;*.avi;;All Files (*)")
        th = Thread(self)
        th.changePixmap.connect(self.setImage)
        th.start()

    def setImage(self, image):
        self.label.setPixmap(QPixmap.fromImage(image))

    def imageprocessing(self):
        self.imgName, imgType = QFileDialog.getOpenFileName(
            self,
            "打开图片",
            "",
            #" *.jpg;;*.png;;*.jpeg;;*.bmp")
            " *.jpg;;*.png;;*.jpeg;;*.bmp;;All Files (*)")
        #利用qlabel显示图片
        # print(str(self.imgName))
        png = QtGui.QPixmap(self.imgName).scaled(
            self.label1.width(), self.label1.height())  #适应设计label时的大小
        self.label1.setPixmap(png)

    def imageprocessing2(self):
        opt = self.opt
        with torch.no_grad():
            start = time.time()
            savepath = self.detector.detect_one_image(self.imgName)
            # savepath = detect_one_image(opt.cfg,
            #                             opt.data_cfg,
            #                             opt.weights,
            #                             image_path=self.imgName,
            #                             output='output',  # output folder
            #                             img_size=416,
            #                             conf_thres=0.5,
            #                             nms_thres=0.5)
            print('cost time is {}s'.format(round(time.time() - start, 2)))
        savepath = osp.abspath(savepath)
        #利用qlabel显示图片
        print(str(savepath))
        png = QtGui.QPixmap(savepath).scaled(
            self.label1.width(), self.label1.height())  #适应设计label时的大小
        self.label1.setPixmap(png)
Exemple #9
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def run(data_dir):
    detector = Detector()
    with open('data.tsv', 'r') as fp:
        r = csv.reader(fp, delimiter='\t')
        next(r)
        for row in r:
            photo_url = row[3]
            basename = os.path.basename(photo_url)

            path0 = f'{ord(basename[0]):02x}'
            path1 = f'{ord(basename[1]):02x}'
            path2 = f'{ord(basename[2]):02x}'
            filepath = os.path.join(data_dir, 'images', path0, path1, path2,
                                    basename)
            print(f'processing {filepath} ...')
            try:
                result = detector.detect(cv2.imread(filepath))
                if result is None:
                    print('detection failed.')
                    continue

                outdir = os.path.join(data_dir, 'results', path0, path1, path2)
                os.makedirs(outdir, exist_ok=True)
                img = result['image']
                del result['image']
                result['meta'] = {
                    'face_id': row[0],
                    'photo_id': row[1],
                    'source_url': row[2],
                    'photo_url': row[3],
                    'posted_at': row[4],
                    'label_id': row[5],
                    'label_name': row[6],
                }
                name = os.path.splitext(basename)[0]
                cv2.imwrite(os.path.join(outdir, f'{name}.png'), img)
                with open(os.path.join(outdir, f'{name}.json'), 'w') as fp:
                    json.dump(result, fp, ensure_ascii=False)
            except:
                print(f'error!!: {filepath}')

            time.sleep(1)
Exemple #10
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def main():
    args = parseopt()
    dump_flow(args.movie)
    flow, header = pick_flow(args.movie)
    detector = Detector(gpu=args.gpu)
    draw_box_flow_func = \
        lambda movie, flow: draw_box_flow(movie, flow, detector)
    if args.nobbox:
        vis_flow(args.movie, flow)
    else:
        vis_flow(args.movie, flow, draw=draw_box_flow_func)
Exemple #11
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def track(video_path, use_gpu=False):
    video = cv2.VideoCapture(video_path)
    ret, frame = video.read()
    if ret:
        frame = cv2.resize(frame, (input_width, input_height))

    if use_gpu:
        caffe.set_mode_gpu()

    tracker = Sort(max_age=10)
    detector = Detector()
    classes = detector.get_classes()

    while ret:
        frame_disp = np.copy(frame)
        bounding_boxes, counting = detector.infer(frame)
        class_counting = zip(classes, counting)

        for pair in class_counting:
            print('{:s} {:03d}'.format(*pair))
        print('')

        if len(bounding_boxes) > 0:
            bounding_boxes = np.array(bounding_boxes, np.int32)

            # convert (x, y, w, h) to (x1, y1, x2, y2)
            bounding_boxes[:, 2:4] += bounding_boxes[:, 0:2]
            bounding_boxes[:, 2:4] -= 1

        track_results = tracker.update(bounding_boxes)
        draw_tracking_results(track_results, frame_disp)

        cv2.imshow('tracking', frame_disp)

        key = cv2.waitKey(1)
        if key == 27:
            return

        ret, frame = video.read()
        if ret:
            frame = cv2.resize(frame, (input_width, input_height))
class Controller:
    def __init__(self):
        self.detector = Detector()

    def getScreenShot(self):
        os.system("adb shell screencap -p /sdcard/tmp.png")
        os.system("adb pull /sdcard/tmp.png")
        img = cv2.imread("tmp.png")
        return img

    def tap(self):
        img = self.getScreenShot()
        h, w, t = img.shape
        print(img.shape)
        positons = self.detector.detect(img)
        print(positons)
        hRate = 1920 / 2243
        wRate = 1080 / 1079
        for x, y in positons:
            x = (x + 20) / 800 * h
            y = (y + 20) / 400 * w
            print(x, y)
            os.system("adb shell input tap " + str(int(y)) + " " + str(int(x)))

    def searchAvailableAndTap(self):
        img = self.getScreenShot()
        for i in range(img.shape[0]):
            if img[i, -1][0] == 109:
                os.system("adb shell input tap " + str(100) + " " +
                          str(int(i)))
                time.sleep(1)
                self.tap()
                time.sleep(1)
                os.system("adb shell input keyevent 4")
                img = self.getScreenShot()
                i += 100

    def swipe(self):
        os.system("adb shell input swipe 0 1000 0 0")

    def run(self):
        self.showMoreFriends()
        time.sleep(1)
        for i in range(10):
            self.searchAvailableAndTap()
            self.swipe()
        os.system("adb shell input keyevent 4")

    def showMoreFriends(self):
        img = self.getScreenShot()
        os.system("adb shell input tap " + str(100) + " " +
                  str(int(img.shape[0] - 20)))
Exemple #13
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    def __init__(self):
        handlers = [
            (r"/config", ConfigHandler),
            (r"/voice", VoiceHandler),
            (r"/detect", HttpDetectHandler),
        ]
        settings = dict(
            debug=options.dev,
            static_path=os.path.join(
                os.path.dirname(os.path.abspath(__file__)), "static"),
            template_path=os.path.join(
                os.path.dirname(os.path.abspath(__file__)), "templates"),
        )
        super(Application, self).__init__(handlers, **settings)

        self.data = None
        self.color_map = collections.defaultdict(lambda: (random.randint(
            0, 255), random.randint(0, 255), random.randint(0, 255)))
        for i in range(1, 21):
            self.color_map[str(i)] = [
                random.randint(0, 255),
                random.randint(0, 255),
                random.randint(0, 255)
            ]

        if options.model.find('det300') >= 0:
            self.model_det300 = Detector('conf/retina_net.conf')
        if options.model.find('det600') >= 0:
            self.model_det600 = Detector('conf/retina_net_600.conf')
        if options.model.find('mask600') >= 0:
            self.model_mask600 = MaskRetinaNet('conf/mask_600.conf')
        if options.model.find('seg512') >= 0:
            self.model_seg512 = Segmentor('conf/cloth_320.conf', rotate=False)
            self.model_det300 = Detector('conf/retina_net.conf')

        self.model_fat = FatDetector()
        self.model_multi_task = MultiTaskDetector()
        logging.info("initialize done")
Exemple #14
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def result_video():
    if request.method == 'POST':
        if 'file' not in request.files:
            flash('No file part')
            return redirect(request.url)
        file = request.files['file']
        if file.filename == '':
            flash('No selected file')
            return redirect(request.url)
        if file and allowed_file(file.filename):
            filename = secure_filename(file.filename)
            filename = os.path.join(UPLOAD_FOLDER, filename)
            file.save(filename)
            model = Detector(filename, 1)
            model.run_detector()
            model.generate_plots()
            model.write_video()

            return render_template('result_video.html')
            #return redirect(url_for('uploaded_file',filename=filename))
    return render_template('upload_video.html')
Exemple #15
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        if loc is None:
            loc = Locator(frame)
            # loc.locate_tube()
            # loc.locate_window()
            # loc.locate_scale()
            loc.tube = [(0, 271, 33, 76), (0, 271, 78, 115)]
            loc.window = [[(47, 80, 43, 61), (82, 115, 42, 58),
                           (117, 151, 39, 58), (153, 186, 41, 61),
                           (188, 220, 43, 61)],
                          [(2, 35, 88, 108), (35, 69, 85, 105),
                           (72, 105, 84, 105), (108, 142, 84, 104),
                           (145, 178, 84, 104), (179, 213, 87, 108),
                           (214, 246, 89, 109)]]
            loc.scale = [[110, 199], [102, 199]]

            tube0 = Detector(loc.tube[0], loc.window[0], loc.scale[0], 210, 50)
            tube1 = Detector(loc.tube[1], loc.window[1], loc.scale[1], 160, 33)
        tube0.feed(frame)
        tube1.feed(frame)
        if not count % 20:
            tube0.update_backgrounds()
            tube1.update_backgrounds()

        level = int(tube0.cur_level)
        cv2.line(frame, (45, level), (60, level), (0, 0, 255), 1)
        level = int(tube1.cur_level)
        cv2.line(frame, (90, level), (105, level), (0, 0, 255), 1)
        text0 = 'level0: ' + str(round(tube0.level_scale))
        text1 = 'level1: ' + str(round(tube1.level_scale))
        cv2.putText(frame, text0, (5, 13), cv2.FONT_HERSHEY_COMPLEX_SMALL, 0.6,
                    (0, 0, 255), 1)
    def __init__(self):
        # Create the olympe.Drone object from its IP address
        self.drone = olympe.Drone(DRONE_IP)
        # subscribe to flight listener
        listener = FlightListener(self.drone)
        listener.subscribe()
        self.last_frame = np.zeros((1, 1, 3), np.uint8)
        self.frame_queue = queue.Queue()
        self.flush_queue_lock = threading.Lock()
        self.detector = Detector()
        self.keypoints_image = np.zeros((1, 1, 3), np.uint8)
        self.keypoints = deque(maxlen=5)
        self.faces = deque(maxlen=10)
        self.f = open("distances.csv", "w")
        self.face_distances = deque(maxlen=10)

        self.image_width = 1280
        self.image_height = 720
        self.half_face_detection_size = 150

        self.poses_model = load("models/posesmodel.joblib")
        self.pose_predictions = deque(maxlen=5)

        self.pause_finding_condition = threading.Condition(threading.Lock())
        self.pause_finding_condition.acquire()
        self.pause_finding = True
        self.person_thread = threading.Thread(target=self.fly_to_person)
        self.person_thread.start()

        # flight parameters in meter
        self.flight_height = 0.0
        self.max_height = 1.0
        self.min_dist = 1.5

        # keypoint map
        self.nose = 0
        self.left_eye = 1
        self.right_eye = 2
        self.left_ear = 3
        self.right_ear = 4
        self.left_shoulder = 5
        self.right_shoulder = 6
        self.left_elbow = 7
        self.right_elbow = 8
        self.left_wrist = 9
        self.right_wrist = 10
        self.left_hip = 11
        self.right_hip = 12
        self.left_knee = 13
        self.right_knee = 14
        self.left_ankle = 15
        self.right_ankle = 16

        # person distance
        self.eye_dist = 0.0

        # save images
        self.save_image = False
        self.image_counter = 243
        self.pose_file = open("poses.csv", "w")
        super().__init__()
        super().start()
Exemple #17
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    parser.add_argument("--reidpath", type=str, default='reidLib', help="outputdir")

    opt = parser.parse_args()
    
    videoname = os.path.join(opt.indir,opt.videoin)
    output_dir = opt.outdir
    work_dir = opt.workdir
    reid_dir = opt.reiddir if opt.reiddir != "" else None
    make_folder(output_dir)
    clean_folder(work_dir)
    clean_folder(reid_dir)
    
    sys.path.append(opt.yolopath)
    from detect import Detector
    
    detector = Detector(conf_thres=opt.detconf, yolo_path=opt.yolopath, resize_size=opt.imgsize, output_dir=work_dir)
    from reid import Reid
    
    reid = Reid(save_path=reid_dir, threshold=opt.threshold, verbose=False)
    
    videoframe = cv2.VideoCapture(videoname)
    framenr = 0
    
    if not videoframe.isOpened():
        print("Error opening video stream or file")
    
    while videoframe.isOpened():
        ret, img = videoframe.read()
        
        if not ret:  # reached end of video
            break
 def __init__(self):
     self.detector = Detector()
class MainClass(threading.Thread):
    def __init__(self):
        # Create the olympe.Drone object from its IP address
        self.drone = olympe.Drone(DRONE_IP)
        # subscribe to flight listener
        listener = FlightListener(self.drone)
        listener.subscribe()
        self.last_frame = np.zeros((1, 1, 3), np.uint8)
        self.frame_queue = queue.Queue()
        self.flush_queue_lock = threading.Lock()
        self.detector = Detector()
        self.keypoints_image = np.zeros((1, 1, 3), np.uint8)
        self.keypoints = deque(maxlen=5)
        self.faces = deque(maxlen=10)
        self.f = open("distances.csv", "w")
        self.face_distances = deque(maxlen=10)

        self.image_width = 1280
        self.image_height = 720
        self.half_face_detection_size = 150

        self.poses_model = load("models/posesmodel.joblib")
        self.pose_predictions = deque(maxlen=5)

        self.pause_finding_condition = threading.Condition(threading.Lock())
        self.pause_finding_condition.acquire()
        self.pause_finding = True
        self.person_thread = threading.Thread(target=self.fly_to_person)
        self.person_thread.start()

        # flight parameters in meter
        self.flight_height = 0.0
        self.max_height = 1.0
        self.min_dist = 1.5

        # keypoint map
        self.nose = 0
        self.left_eye = 1
        self.right_eye = 2
        self.left_ear = 3
        self.right_ear = 4
        self.left_shoulder = 5
        self.right_shoulder = 6
        self.left_elbow = 7
        self.right_elbow = 8
        self.left_wrist = 9
        self.right_wrist = 10
        self.left_hip = 11
        self.right_hip = 12
        self.left_knee = 13
        self.right_knee = 14
        self.left_ankle = 15
        self.right_ankle = 16

        # person distance
        self.eye_dist = 0.0

        # save images
        self.save_image = False
        self.image_counter = 243
        self.pose_file = open("poses.csv", "w")
        super().__init__()
        super().start()

    def start(self):
        self.drone.connect()

        # Setup your callback functions to do some live video processing
        self.drone.set_streaming_callbacks(
            raw_cb=self.yuv_frame_cb,
            start_cb=self.start_cb,
            end_cb=self.end_cb,
            flush_raw_cb=self.flush_cb,
        )
        # Start video streaming
        self.drone.start_video_streaming()
        # set maximum speeds
        print("rotation", self.drone(MaxRotationSpeed(1)).wait().success())
        print("vertical", self.drone(MaxVerticalSpeed(0.1)).wait().success())
        print("tilt", self.drone(MaxTilt(5)).wait().success())

    def stop(self):
        # Properly stop the video stream and disconnect
        self.drone.stop_video_streaming()
        self.drone.disconnect()

    def yuv_frame_cb(self, yuv_frame):
        """
        This function will be called by Olympe for each decoded YUV frame.

            :type yuv_frame: olympe.VideoFrame
        """
        yuv_frame.ref()
        self.frame_queue.put_nowait(yuv_frame)

    def flush_cb(self):
        with self.flush_queue_lock:
            while not self.frame_queue.empty():
                self.frame_queue.get_nowait().unref()
        return True

    def start_cb(self):
        pass

    def end_cb(self):
        pass

    def show_yuv_frame(self, window_name, yuv_frame):
        # the VideoFrame.info() dictionary contains some useful information
        # such as the video resolution
        info = yuv_frame.info()
        height, width = info["yuv"]["height"], info["yuv"]["width"]

        # yuv_frame.vmeta() returns a dictionary that contains additional
        # metadata from the drone (GPS coordinates, battery percentage, ...)

        # convert pdraw YUV flag to OpenCV YUV flag
        cv2_cvt_color_flag = {
            olympe.PDRAW_YUV_FORMAT_I420: cv2.COLOR_YUV2BGR_I420,
            olympe.PDRAW_YUV_FORMAT_NV12: cv2.COLOR_YUV2BGR_NV12,
        }[info["yuv"]["format"]]

        # yuv_frame.as_ndarray() is a 2D numpy array with the proper "shape"
        # i.e (3 * height / 2, width) because it's a YUV I420 or NV12 frame

        # Use OpenCV to convert the yuv frame to RGB
        cv2frame = cv2.cvtColor(yuv_frame.as_ndarray(), cv2_cvt_color_flag)
        # show video stream
        cv2.imshow(window_name, cv2frame)
        cv2.moveWindow(window_name, 0, 500)

        # show other windows
        self.show_face_detection(cv2frame)
        self.show_keypoints()
        cv2.waitKey(1)

    def show_keypoints(self):
        if len(self.keypoints) > 2:
            # display eye distance
            cv2.putText(
                self.keypoints_image,
                'Distance(eyes): ' + "{:.2f}".format(self.eye_dist) + "m",
                (0, 20), cv2.FONT_HERSHEY_SIMPLEX, 0.9, (36, 255, 12), 2)
            # display nose height
            cv2.putText(
                self.keypoints_image, 'Nose: ' + "{:.2f}".format(
                    get_point(np.average(self.keypoints, axis=0), self.nose)[1]
                    / self.image_height), (0, 80), cv2.FONT_HERSHEY_SIMPLEX,
                0.9, (36, 255, 12), 2)
        cv2.imshow("keypoints", self.keypoints_image)
        cv2.moveWindow("keypoints", 500, 0)

    def show_face_detection(self, cv2frame):
        # get sub image
        img = self.get_face_detection_crop(cv2frame)
        # get face rectangle
        face, img = self.detector.detect_face(img)
        if face.size > 0:
            self.faces.append(face)
            width = face[2] - face[0]
            height = face[3] - face[1]
            # get distances for rectangle width and height
            width = get_distance_width(width)
            height = get_distance_height(height)
            # display distances
            cv2.putText(img, 'width: ' + "{:.2f}".format(width), (0, 20),
                        cv2.FONT_HERSHEY_SIMPLEX, 0.9, (36, 255, 12), 2)
            cv2.putText(img, 'height: ' + "{:.2f}".format(height), (0, 50),
                        cv2.FONT_HERSHEY_SIMPLEX, 0.9, (36, 255, 12), 2)
            cv2.putText(
                img,
                'mean: ' + "{:.2f}".format(np.mean(np.array([width, height]))),
                (0, 80), cv2.FONT_HERSHEY_SIMPLEX, 0.9, (36, 255, 12), 2)
            # append outlier free distance to log
            self.face_distances.append(self.get_face_distance())
        elif len(self.faces) > 0:
            # remove from dequeue if no face was detected
            self.faces.popleft()
        # show detection
        cv2.imshow("face", img)
        cv2.moveWindow("face", 0, 0)

    # get 300*300 crop of frame based on nose location or from the middle
    def get_face_detection_crop(self, cv2frame):
        if len(self.keypoints) > 0:
            x, y = get_point(
                np.array(self.keypoints, dtype=object)[-1], self.nose)
        else:
            x = cv2frame.shape[1] / 2
            y = cv2frame.shape[0] / 2
        x = max(self.half_face_detection_size, x)
        y = max(self.half_face_detection_size, y)
        x = min(cv2frame.shape[1] - self.half_face_detection_size, x)
        y = min(cv2frame.shape[0] - self.half_face_detection_size, y)
        img = cv2frame[int(y - self.half_face_detection_size
                           ):int(y + self.half_face_detection_size),
                       int(x - self.half_face_detection_size
                           ):int(x + self.half_face_detection_size)]
        return img

    def get_face_distance(self):
        if len(self.faces) > 2:
            try:
                faces = remove_outliers(np.array(self.faces, dtype=object))
                face = np.mean(faces, axis=0)
                width = face[2] - face[0]
                height = face[3] - face[1]
                width = get_distance_width(width)
                height = get_distance_height(height)
                return np.mean(np.array([width, height]))
            except ZeroDivisionError:
                logging.error("ZeroDivisionError in get_face_distance()")
                logging.error(self.faces)

        return -1

    def run(self):
        window_name = "videostream"
        cv2.namedWindow(window_name, cv2.WINDOW_NORMAL)
        main_thread = next(
            filter(lambda t: t.name == "MainThread", threading.enumerate()))
        while main_thread.is_alive():
            with self.flush_queue_lock:
                try:
                    yuv_frame = self.frame_queue.get(timeout=0.01)
                except queue.Empty:
                    continue
                try:
                    # the VideoFrame.info() dictionary contains some useful information
                    # such as the video resolution
                    info = yuv_frame.info()
                    height, width = info["yuv"]["height"], info["yuv"]["width"]

                    # yuv_frame.vmeta() returns a dictionary that contains additional
                    # metadata from the drone (GPS coordinates, battery percentage, ...)

                    # convert pdraw YUV flag to OpenCV YUV flag
                    cv2_cvt_color_flag = {
                        olympe.PDRAW_YUV_FORMAT_I420: cv2.COLOR_YUV2BGR_I420,
                        olympe.PDRAW_YUV_FORMAT_NV12: cv2.COLOR_YUV2BGR_NV12,
                    }[info["yuv"]["format"]]

                    # yuv_frame.as_ndarray() is a 2D numpy array with the proper "shape"
                    # i.e (3 * height / 2, width) because it's a YUV I420 or NV12 frame

                    # Use OpenCV to convert the yuv frame to RGB
                    cv2frame = cv2.cvtColor(yuv_frame.as_ndarray(),
                                            cv2_cvt_color_flag)
                    self.last_frame = cv2frame
                    self.show_yuv_frame(window_name, yuv_frame)
                except Exception:
                    # We have to continue popping frame from the queue even if
                    # we fail to show one frame
                    traceback.print_exc()
                finally:
                    # Don't forget to unref the yuv frame. We don't want to
                    # starve the video buffer pool
                    yuv_frame.unref()
        cv2.destroyWindow(window_name)

    def command_window_thread(self, win):
        win.nodelay(True)
        key = ""
        win.clear()
        win.addstr("Detected key:")
        while 1:
            try:
                key = win.getkey()
                win.clear()
                win.addstr("Detected key:")
                win.addstr(str(key))
                # disconnect drone
                if str(key) == "c":
                    win.clear()
                    win.addstr("c, stopping")
                    self.f.close()
                    self.pose_file.close()
                    self.drone.disconnect()
                # takeoff
                if str(key) == "t":
                    win.clear()
                    win.addstr("takeoff")
                    assert self.drone(TakeOff()).wait().success()
                    win.addstr("completed")
                # land
                if str(key) == "l":
                    win.clear()
                    win.addstr("landing")
                    assert self.drone(Landing()).wait().success()
                # turn left
                if str(key) == "q":
                    win.clear()
                    win.addstr("turning left")
                    assert self.drone(
                        moveBy(0, 0, 0, -math.pi / 4) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # turn right
                if str(key) == "e":
                    win.clear()
                    win.addstr("turning right")
                    assert self.drone(
                        moveBy(0, 0, 0, math.pi / 4) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # move front
                if str(key) == "w":
                    win.clear()
                    win.addstr("front")
                    assert self.drone(
                        moveBy(0.2, 0, 0, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # move back
                if str(key) == "s":
                    win.clear()
                    win.addstr("back")
                    assert self.drone(
                        moveBy(-0.2, 0, 0, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # move up
                if str(key) == "r":
                    win.clear()
                    win.addstr("up")
                    assert self.drone(
                        moveBy(0, 0, -0.15, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # move down
                if str(key) == "f":
                    win.clear()
                    win.addstr("down")
                    assert self.drone(
                        moveBy(0, 0, 0.15, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # move left
                if str(key) == "a":
                    win.clear()
                    win.addstr("left")
                    assert self.drone(
                        moveBy(0, -0.2, 0, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # move right
                if str(key) == "d":
                    win.clear()
                    win.addstr("right")
                    assert self.drone(
                        moveBy(0, 0.2, 0, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    win.addstr("completed")
                # start person detection thread
                if str(key) == "p":
                    win.clear()

                    pause = self.check_for_pause()
                    if pause:
                        win.addstr("cannot start because of stop gesture")
                    else:
                        win.addstr("start detecting")
                        self.pause_finding = False
                        self.pause_finding_condition.notify()
                        self.pause_finding_condition.release()
                # pause person detecting thread
                if str(key) == "o":
                    win.clear()
                    win.addstr("stop detecting")
                    self.pause_finding = True
                    self.pause_finding_condition.acquire()
                    # self.person_thread.stop = True
                    # win.addstr("joined")
                # measure distances
                if str(key) == "x":
                    win.clear()
                    win.addstr("distances:")
                    arr = np.array(self.keypoints, dtype=object)
                    string = ""
                    for i in range(arr.shape[0]):
                        string += "{:.6f};".format(
                            get_point_distance(arr[i], self.left_eye,
                                               self.right_eye))
                    win.addstr(string)
                    self.f.write(string + "\n")
                # measure faces
                if str(key) == "y":
                    win.clear()
                    win.addstr("distances:")
                    arr = np.array(self.faces, dtype=object)
                    width = ""
                    height = ""
                    for i in range(arr.shape[0]):
                        width += str(arr[i][2] - arr[i][0]) + ";"
                        height += str(arr[i][3] - arr[i][1]) + ";"
                    win.addstr(width + height)
                    self.f.write(width + "\n")
                    self.f.write(height + "\n")
                # log user gesture
                if str(key) == "g":
                    win.clear()
                    win.addstr("gesture made")
                    global event_time
                    event_time = time.time()
                    logging.info("stop gesture by user;{:.3f};{:.3f}".format(
                        self.get_face_distance(), time.time()))
                # log face distances
                if str(key) == "k":
                    win.clear()
                    win.addstr("distances logged")
                    string = ""
                    arr = np.array(self.face_distances, dtype=object)
                    win.addstr(str(len(arr)))
                    for i in range(len(arr)):
                        string += "{:.2f}".format(arr[i]) + ";"
                    logging.info("distances;{}".format(string))
                    win.addstr(string)

            except Exception as e:
                # No input
                pass

    def fly_to_person(self):
        t = threading.currentThread()
        while not getattr(t, "stop", False):
            with self.pause_finding_condition:
                # wait if thread is paused
                while self.pause_finding:
                    self.pause_finding_condition.wait()
            arr = np.array(self.keypoints, dtype=object)
            if len(arr) > 2:
                pose_predictions = np.array(self.pose_predictions,
                                            dtype=object)
                if pose_predictions[-1] > 1:
                    logging.info(
                        "stop gesture {} detected;{:.3f};{:.3f}".format(
                            pose_predictions[-1], self.get_face_distance(),
                            time.time() - event_time))
                    # check if multiple stop gestures were detected
                    pause = self.check_for_pause()
                    if pause:
                        logging.info(
                            f"stopping completely gesture {pose_predictions[-1]};{self.get_face_distance()};{time.time() - event_time}"
                        )
                        # land drone
                        assert self.drone(Landing()).wait().success()
                        self.pause_finding = True
                        self.pause_finding_condition.acquire()
                    time.sleep(0.2)
                    continue
                distance = self.get_face_distance()
                xn, yn = get_point(np.average(arr[-2:], axis=0), self.nose)
                # calculate angle of nose
                angle = (xn / self.image_width - 0.5) * 1.204
                # calculate nose height in percent
                nose_height = yn / self.image_height
                # set nose to middle if none was detected
                if nose_height == 0:
                    nose_height = 0.5

                # adjust angle
                if np.abs(angle) > 0.15:
                    assert self.drone(
                        moveBy(0, 0, 0, angle) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()

                # adjust height
                elif nose_height < 0.4 and self.flight_height < self.max_height:
                    self.flight_height += 0.15
                    assert self.drone(
                        moveBy(0.0, 0, -0.15, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    time.sleep(0.4)
                elif nose_height > 0.6 and self.flight_height > 0:
                    self.flight_height -= 0.15
                    assert self.drone(
                        moveBy(0.0, 0, 0.15, 0) >> FlyingStateChanged(
                            state="hovering", _timeout=5)).wait().success()
                    time.sleep(0.4)

                # adjust distance
                elif distance > self.min_dist:
                    assert self.drone(
                        moveBy(min(0.2, distance - self.min_dist), 0, 0, 0) >>
                        FlyingStateChanged(state="hovering", _timeout=5)).wait(
                        ).success()
            else:
                assert self.drone(
                    moveBy(0, 0, 0, 0.3) >> FlyingStateChanged(
                        state="hovering", _timeout=5)).wait().success()

    # returns true if 4 of the 5 last pose predictions were stop
    def check_for_pause(self):
        pose_predictions = np.array(self.pose_predictions, dtype=object)
        prediction_counts = np.asarray(
            (np.unique(pose_predictions, return_counts=True)), dtype=object).T
        for i in range(prediction_counts.shape[0]):
            if prediction_counts[i, 0] > 1 and prediction_counts[i, 1] > 3:
                return True
        return False

    # thread for keypoint predictions
    def make_predictions(self):
        while 1:
            # check if camera stream has started
            if not np.array_equal(self.last_frame, np.zeros(
                (1, 1, 3), np.uint8)):
                # get detections
                start = time.time()
                keypoint, self.keypoints_image = self.detector.keypoint_detection(
                    self.last_frame)
                logging.info(
                    "time for prediction = {:0.3f}".format(time.time() -
                                                           start))
                # check if detection returned results
                if keypoint.size > 2:
                    self.keypoints.append(keypoint)
                    pred = self.poses_model.predict(keypoint[0].reshape(1, -1))
                    self.pose_predictions.append(int(pred[0]))
                    if pred > 1:
                        # stop moving if prediction is stop
                        logging.info("canceling move to;{:.3f};{:.3f}".format(
                            self.get_face_distance(),
                            time.time() - event_time))
                        self.drone(CancelMoveBy()).wait()
                    # put prediction on image
                    cv2.putText(self.keypoints_image,
                                'Classpred: ' + "{:.0f}".format(pred[0]),
                                (0, 100), cv2.FONT_HERSHEY_SIMPLEX, 0.9,
                                (36, 255, 12), 2)
                    if self.save_image:
                        cv2.imwrite(
                            "images/" + str(self.image_counter) + ".jpg",
                            self.keypoints_image)
                        string = str(self.image_counter) + ";"
                        self.image_counter += 1
                        for i in range(keypoint.shape[1]):
                            string += "{:.2f};{:.2f};".format(
                                keypoint[0, i, 0], keypoint[0, i, 1])
                        self.pose_file.write(string + "\n")
                # delete from last results if there is no detection
                elif len(self.keypoints) > 0:
                    self.keypoints.popleft()
                    self.pose_predictions.popleft()
                if len(self.keypoints) > 1 and self.keypoints[-1].size > 2:
                    # arr = np.array(self.keypoints, dtype=object)
                    # left_eye = remove_outliers(arr[:, 0, self.left_eye])
                    # if len(np.shape(left_eye)) > 1 and np.shape(left_eye)[0] > 1:
                    #     left_eye = np.average(left_eye, axis=0)
                    # right_eye = remove_outliers(arr[:, 0, self.right_eye])
                    # if len(np.shape(right_eye)) > 1 and np.shape(right_eye)[0] > 1:
                    #     right_eye = np.average(right_eye, axis=0)
                    # left_eye = left_eye.reshape((-1))
                    # right_eye = right_eye.reshape((-1))
                    # # eye_dist = 24.27 / np.max(
                    # #     [0.001, np.power(get_distance(np.average(arr[-2:], axis=0), self.left_eye, self.right_eye),
                    # #                      0.753)])
                    # if len(left_eye) > 1 and len(right_eye) > 1:
                    #     self.eye_dist = 24.27 / np.max(
                    #         [0.001,
                    #          np.power(math.sqrt((left_eye[0] - right_eye[0]) ** 2 + (left_eye[1] - right_eye[1]) ** 2),
                    #                   0.753)])

                    # display face distance
                    cv2.putText(
                        self.keypoints_image, 'Distance(face): ' +
                        "{:.2f}".format(self.get_face_distance()) + "m",
                        (0, 50), cv2.FONT_HERSHEY_SIMPLEX, 0.9, (36, 255, 12),
                        2)

            else:
                # wait for stream
                time.sleep(1)
Exemple #20
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def main():
    yolo = Detector()
    # Definition of the parameters
    max_cosine_distance = 0.3
    nn_budget = None
    nms_max_overlap = 1.0

    # deep_sort
    model_filename = 'model_data/mars-small128.pb'
    encoder = gdet.create_box_encoder(model_filename, batch_size=1)

    metric = nn_matching.NearestNeighborDistanceMetric("cosine",
                                                       max_cosine_distance,
                                                       nn_budget)
    tracker = Tracker(metric)

    writeVideo_flag = True

    video_capture = cv2.VideoCapture("town.avi")

    if writeVideo_flag:
        # Define the codec and create VideoWriter object
        w = int(video_capture.get(3))
        h = int(video_capture.get(4))
        fourcc = cv2.VideoWriter_fourcc(*'MJPG')
        out = cv2.VideoWriter('output.avi', fourcc, 15, (w, h))
        list_file = open('detection.txt', 'w')
        frame_index = -1

    fps = 0.0
    maxframe = 1
    nframe = 0
    while True:
        ret, frame = video_capture.read()  # frame shape 640*480*3
        if ret != True:
            break
        t1 = time.time()
        detections = []
        # image = Image.fromarray(frame)
        nframe += 1
        if (nframe >= maxframe):
            boxs, obj = yolo.detect(frame)
            print(len(boxs))

            # print("box_num",len(boxs))
            features = encoder(frame, boxs)

            # score to 1.0 here).
            detections = [
                Detection(bbox, 1.0, feature)
                for bbox, feature in zip(boxs, features)
            ]

            # Run non-maxima suppression.
            boxes = np.array([d.tlwh for d in detections])
            scores = np.array([d.confidence for d in detections])
            indices = preprocessing.non_max_suppression(
                boxes, nms_max_overlap, scores)
            detections = [detections[i] for i in indices]
            tracker.predict()
            tracker.update(detections)
            # Call the tracker
            nframe = 0

        for track in tracker.tracks:
            if not track.is_confirmed() or track.time_since_update > 1:
                continue
            bbox = track.to_tlbr()

            # # s=recognize(img)
            # try:
            #     if(len(s)>len(track.track_lpn)):
            #         track.track_lpn=s
            # except Exception as e:
            #     print(e)

            cv2.rectangle(frame, (int(bbox[0]), int(bbox[1])),
                          (int(bbox[2]), int(bbox[3])), (255, 255, 255), 2)
            cv2.putText(frame, str(track.track_id),
                        (int(bbox[0]), int(bbox[1])), 0, 5e-3 * 200,
                        (0, 255, 0), 2)

        # for det in detections:
        #     bbox = det.to_tlbr()
        #     cv2.rectangle(frame,(int(bbox[0]), int(bbox[1])), (int(bbox[2]), int(bbox[3])),(255,0,0), 2)

        cv2.imshow('', frame)

        if writeVideo_flag:
            # save a frame
            out.write(frame)
            frame_index = frame_index + 1
            list_file.write(str(frame_index) + ' ')

        fps = (fps + (1. / (time.time() - t1))) / 2
        print("fps= %f" % (fps))

        # Press Q to stop!
        if cv2.waitKey(1) & 0xFF == ord('q'):
            break

    video_capture.release()
    if writeVideo_flag:
        out.release()
        list_file.close()
    cv2.destroyAllWindows()
import logging

import yaml

from detect import Detector

config_dir = "./"
# Load configuration.
config_file_path = config_dir + 'config.yml'
config = yaml.safe_load(open(config_file_path, 'r'))

# start_detect(config)

if __name__ == "__main__":
    print(
        "====================================FCD Started===================================="
    )
    LOG_FORMAT = "%(asctime)s - %(levelname)s - %(message)s"
    logging.basicConfig(filename='logs.log',
                        level=logging.DEBUG,
                        format=LOG_FORMAT)
    detector = Detector(config)
    detector.start_detect()
Exemple #22
0
 def __init__(self, **kwargs):
     super(CalcGridLayout, self).__init__(**kwargs)
     Window.bind(on_dropfile=self._on_file_drop)
     self.detector = Detector(self.weights, self.filePath)
     self.ids.model_label.text = self.weights_description[0]
Exemple #23
0
            loc.tube = [(0, 271, 33, 76), (0, 271, 78, 115)]
            loc.window = [[(47, 80, 43, 61),
                          (82, 115, 42, 58),
                          (117, 151, 39, 58),
                          (153, 186, 41, 61),
                          (188, 220, 43, 61)],
                         [(2, 35, 88, 108),
                          (35, 69, 85, 105),
                          (72, 105, 84, 105),
                          (108, 142, 84, 104),
                          (145, 178, 84, 104),
                          (179, 213, 87, 108),
                          (214, 246, 89, 109)]]
            loc.scale = [[110, 199], [102, 199]]

            tube0 = Detector(loc.tube[0], loc.window[0], loc.scale[0], 210, 50)
            tube1 = Detector(loc.tube[1], loc.window[1], loc.scale[1], 160, 33)
        tube0.feed(frame)
        tube1.feed(frame)
        if not count % 20:
            tube0.update_backgrounds()
            tube1.update_backgrounds()

        level = int(tube0.cur_level)
        cv2.line(frame, (45, level), (60, level), (0, 0, 255), 1)
        level = int(tube1.cur_level)
        cv2.line(frame, (90, level), (105, level), (0, 0, 255), 1)
        text0 = 'level0: ' + str(round(tube0.level_scale))
        text1 = 'level1: ' + str(round(tube1.level_scale))
        cv2.putText(frame, text0, (5, 13), cv2.FONT_HERSHEY_COMPLEX_SMALL, 0.6,
                    (0, 0, 255), 1)
Exemple #24
0
from detect import Detector
from imgUtils import ImgUtils

if __name__ == "__main__":
    param = {
        (1, 'postbake'): {
            'expectedWidth': 120,
            'expectedHeight': 110,  # detection params
            'transformationTarget':
            'cool',  # select correct image transformations
            'upperKillzone': 550,
            'lowerKillzone': 220,  # select correct tracking parameters
            'rightKillzone': 3000,
            'leftKillzone': -3000,  # select correct tracking parameters
            'timeToDie': 1,
            'timeToLive': 0,
            'partioningRequired': True
        }
    }

    D = Detector(**param.get((1, 'postbake')))

    for i in range(49, 100):
        img = cv2.imread("PostBakeSamples/postbake" + str(i) + ".png")
        x = D.getImgWithBoxes(img)
        while True:
            ImgUtils.show("x", x, 0, 0)
            key = cv2.waitKey(30)
            if key == ord('q'):
                break
import argparse
import platform

from detect import Detector

if __name__ == '__main__':
  parser = argparse.ArgumentParser(description='Start for face recognition client')
  parser.add_argument('--ip', help='Ip of recognition server')
  parser.add_argument('--port', help='Port of recognition server')

  args = parser.parse_args()

  detector = Detector(args.ip, args.port)

  if platform.system() == 'Windows' or platform.system() == 'Darwin':
    import win_recorder
    win_recorder.record_forever(detector)
  else:  
    import pi_recorder
    pi_recorder.record_forever(detector)
Exemple #26
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def annotate(cap,text_file_path):
    global frameNum
    frameNum = 0
    cap.read()
    _, first_frame = cap.read()
    mask = toolMaskDrawer.main('',image=first_frame)
    
    #need to massively change below lines
    parameters = importlib.import_module("parameters.will1")
    #parameters.red_range,parameters.white_range = automation.findColorRanges(first_frame,debug=True)
    global detector
    detector = Detector(mask,parameters)
    global state
    state = State(parameters)
    #global current_positions
    #current_positions = {i:(-1,-1) for i in range(10)}
    global ball_infos
    ball_infos = [BallInfo(state.getBall(i)) for i in range(10)]
    global text_file
    initial_frameNum = 0
    if cont:
        read_file = open(text_file_path,"r")
        remember_line = ''
        d = {}
        while(True):
            line = read_file.readline()
            if line == '':
                break
            remember_line = line
            _, d = read_annotation.processLine(line)
            for k,v in d.items():
                print k,v
                ball_infos[k].ball.position = v
                ball_infos[k].position = v
        initial_frameNum = int(remember_line.split(':')[0])
        text_file = open(text_file_path,"a")
    else:
        text_file = open(text_file_path,"w")
    
    
    circles = detector.detect(first_frame)
    if not cont:
        for color in [Color.RED,Color.WHITE]:
            colored_circles = sorted(circles[color], key=lambda c: c.x)#copied code from tracker v3

            balls = state.red_balls if color == Color.RED else state.white_balls
            for i,ball in enumerate(balls):
                if i >= len(colored_circles):
                    break
                ball.position = colored_circles[i].center()
    while(initial_frameNum!=frameNum):
        ret,frame = cap.read()
        frameNum+=1
    while(cap.isOpened()):
        global frame, frameNum
        ret, frame = cap.read()	
        frameNum += 1
        redraw()
        if not handleInput():
            break
        write()
    cv2.destroyAllWindows()
Exemple #27
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from detect import Detector
import cv2

detector = Detector(resolution=320)
loop = True

detect_path = 'imgs/img1.jpg'

path, objects, image = detector.detect_objects(detect_path)
cv2.imwrite('detected_image.jpg', image)
image_np = cv2.imread('detected_image.jpg')
cv2.imshow('images', image_np)
cv2.waitKey()
Exemple #28
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    def work(self, im):
        super(HandCropper, self).work(im)
        self.thresholdGrey(150)
        self.findContours()
        self.filterSudoku()  # minAreaRect旋转矩形, 筛选出九个九宫格块的轮廓
        self.alignPlank()  # 透视变换, 对齐并切割出大板(包含整个九宫格和七段管数字板)
        self.splitSudokuLight()

        self.threshold_im = self.threshold_sudoku_im
        self.findRecContours()
        self.filterRecContoursByArea(9)  # boundingRect, 筛选出九宫格块
        self.rec_contours = self.resumeOrder(self.rec_contours[:9],
                                             ykey=lambda it: it[1],
                                             xkey=lambda it: it[0])
        self.cropRecContours(self.rec_contours,
                             base_im=self.threshold_sudoku_im)

        if SAVE:
            self.saveCropResults()
            self.saveCropResults(results=[self.threshold_light_im])

        return self.results


if __name__ == '__main__':
    # d = Detector(LightCropper(), None)
    # d.work('../test_im/52648.jpg')

    d = Detector(HandCropper(), None)
    d.work('../test_im/real1.jpg')
Exemple #29
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class CalcGridLayout(GridLayout):
    filePath = StringProperty('')
    weights = r'weights\best-100.pt'
    grafic_list = []
    label_list = []
    weights_description = [
        'Red entrenada 100 ciclos con dataset SVHN',
        'Red entrenada 1000 ciclos con dataset SVHN',
        'Red entrenada 1000 ciclos con dataset UNO Cards',
        "Red entrenada 1000 ciclos con dataset SVHN con datos incrementados"
    ]

    def __init__(self, **kwargs):
        super(CalcGridLayout, self).__init__(**kwargs)
        Window.bind(on_dropfile=self._on_file_drop)
        self.detector = Detector(self.weights, self.filePath)
        self.ids.model_label.text = self.weights_description[0]

    def reduced_image(self):
        pass

    def _on_file_drop(self, window, file_path):
        self.reset_canvas()
        self.filePath = file_path.decode("utf-8")
        self.ids.img.source = self.filePath
        self.ids.img.reload()
        self.ids.message_label.text = ' '
        self.ids.start.visible = True
        self.detector.change_source(self.filePath)

    def change_weight(self, value):
        self.ids.model_label.text = self.weights_description[value]
        if value == 0:
            self.weights = 'weights/best-100.pt'
        if value == 1:
            self.weights = 'weights/best-1000.pt'
        if value == 2:
            self.weights = 'weights/uno.pt'
        if value == 3:
            self.weights = 'weights/best-fused.pt'

        self.detector.change_weights(self.weights)

    def start_detection(self):
        self.reset_canvas()
        self.coordinates = self.detector.detect()
        self.draw_rectangle(self.coordinates)

    def reset_canvas(self):
        for item in self.grafic_list:
            self.canvas.remove(item)

        for item in self.label_list:
            self.ids.float_canvas.remove_widget(item)

        for item in self.canvas.children:
            if 'Line' in repr(item):
                self.canvas.remove(item)

    def draw_rectangle(self, coordinates):
        print(coordinates)
        full_size_x = self.ids.img.size[0]
        full_size_y = self.ids.img.size[1]
        center = (full_size_x / 2, full_size_y / 2)
        image = Image.open(self.filePath)
        image_width = int(image.size[0])
        image_height = int(image.size[1])
        for coordinate in coordinates:
            rectangle_size_x = coordinate['bottom_right'][0] - coordinate[
                'top_left'][0]
            rectangle_size_y = coordinate['bottom_right'][1] - coordinate[
                'top_left'][1]

            relative_x_position = (center[0] - image_width / 2 +
                                   coordinate['top_left'][0])
            relative_y_position = (center[1] + image_height / 2 -
                                   coordinate['top_left'][1] -
                                   rectangle_size_y)

            with self.canvas:
                self.obj = InstructionGroup()
                self.obj.add(Color(0, 1, 0, 0.3, mode="rgba"))
                self.obj.add(
                    Line(rectangle=(relative_x_position, relative_y_position,
                                    rectangle_size_x, rectangle_size_y),
                         width=3))
                self.grafic_list.append(self.obj)

            label_position_x = relative_x_position - center[
                0] + rectangle_size_x / 2
            label_position_y = relative_y_position - center[
                1] + rectangle_size_y * 1.2

            label = Label(text=coordinate['label'],
                          pos_hint={
                              'x': label_position_x / full_size_x,
                              'y': label_position_y / full_size_y
                          },
                          size=(self.ids.float_canvas.size[0],
                                self.ids.float_canvas.size[1]),
                          size_hint=(None, None),
                          bold=True,
                          outline_color=[1, 0, 0, 0.5],
                          outline_width=2)
            self.ids.float_canvas.add_widget(label)
            self.label_list.append(label)
def worker():
    provider = ServerAudioProvider(queue)
    detector = Detector(provider)
    detector.detect()
Exemple #31
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                min = distance
                f1 = f
        print("Face recognised", str(f1[:-4]))
        cv2.rectangle(img1, (0, img1.shape[0]), (img1.shape[1], 0),
                      (0, 255, 0), 3)
        font = cv2.FONT_HERSHEY_SIMPLEX
        cv2.putText(img1, str(f1[:-4]), (30, img1.shape[0] - 20), font, 1,
                    (255, 255, 255), 2, cv2.LINE_AA)
        cv2.imwrite("result.jpg", img1)

        # return [1,str(f[:-4])]

        # return [0,""]


obj2 = Detector()
# obj2.detection()
obj1 = Recognition()
obj1.initialise("")
while True:
    t1 = threading.Thread(target=obj2.detection())
    t2 = threading.Thread(target=obj1.printResults(""))
    t1.start()
    t2.start()
    t1.join()
    t2.join()
# while True:
#     obj1=Recognition()

#     t1.start()
#     t1.join()
def detect():
    data = request.get_data(cache=False, as_text=False, parse_form_data=False)

    provider = BasicAudioProvider(data)
    detector = Detector(provider)
    return detector.classify()