Пример #1
0
def build_model(config, device, train=True):
    net = PIXOR(config['use_bn']).to(device)
    criterion = CustomLoss(device=device, num_classes=1)
    if not train:
        return net, criterion

    optimizer = torch.optim.SGD(net.parameters(), lr=config['learning_rate'], momentum=config['momentum'])
    scheduler = torch.optim.lr_scheduler.StepLR(optimizer, step_size=config['lr_decay_every'], gamma=0.1)

    return net, criterion, optimizer, scheduler
    def __init__(self, config, cdll):
        if config == None:
            config = {
                "ckpt_name":
                os.path.join(os.path.dirname(os.path.realpath(__file__)),
                             "experiments/default/34epoch"),
                "use_bn":
                True,
                "cls_threshold":
                0.5,
                "nms_iou_threshold":
                0.1,
                "nms_top":
                64,
                "geometry": {
                    'L1': -40.0,
                    'L2': 40.0,
                    'W1': 0.0,
                    'W2': 70.0,
                    'H1': -2.5,
                    'H2': 1.0,
                    'grid_size': 0.1,
                    'input_shape': [800, 700, 36],
                    'label_shape': [200, 175, 7],
                },
            }

        self.config = config
        self.cdll = cdll
        path = os.path.dirname(os.path.abspath(__file__))
        path = os.path.join(path, 'preprocess/LidarPreprocess.so')
        print("PATH:=", path)
        #if self.cdll:
        self.LidarLib = ctypes.cdll.LoadLibrary(path)
        #self.device = torch.device('cuda:3' if torch.cuda.is_available() else 'cpu')
        print("AFTER LOADLIBRARY")
        self.device = torch.device('cpu')
        self.net = PIXOR(config['geometry'], config['use_bn']).to(self.device)
        print(config['ckpt_name'])
        self.net.set_decode(True)
        self.net.load_state_dict(
            torch.load(config['ckpt_name'], map_location=self.device))
        self.net.eval()

        for p in self.net.parameters():
            p.require_grad = False
        self.bridge = CvBridge()
        print("PIXOR BEV Detector Initialized!")
Пример #3
0
    def __init__(self, config, cdll):
        self.config = config
        self.cdll = cdll
        if self.cdll:
            self.LidarLib = ctypes.cdll.LoadLibrary(
                'preprocess/LidarPreprocess.so')
        #self.device = torch.device('cuda:3' if torch.cuda.is_available() else 'cpu')
        self.device = torch.device('cpu')
        self.net = PIXOR(config['geometry'], config['use_bn']).to(self.device)

        self.net.set_decode(True)
        self.net.load_state_dict(
            torch.load(config['ckpt_name'], map_location=self.device))
        self.net.eval()

        for p in self.net.parameters():
            p.require_grad = False

        print("PIXOR BEV Detector Initialized!")
Пример #4
0
def build_model(config, device, train=True):
    net = PIXOR(config['geometry'], config['use_bn'])
    loss_fn = CustomLoss(device, config, num_classes=1)

    if torch.cuda.device_count() <= 1:
        config['mGPUs'] = False
    if config['mGPUs']:
        print("using multi gpu")
        net = nn.DataParallel(net)

    net = net.to(device)
    loss_fn = loss_fn.to(device)
    if not train:
        return net, loss_fn

    optimizer = torch.optim.SGD(net.parameters(),
                                lr=config['learning_rate'],
                                momentum=config['momentum'],
                                weight_decay=config['weight_decay'])
    scheduler = torch.optim.lr_scheduler.MultiStepLR(
        optimizer, milestones=config['lr_decay_at'], gamma=0.1)

    return net, loss_fn, optimizer, scheduler
Пример #5
0
class Detector(object):
    def __init__(self, config, cdll):
        self.config = config
        self.cdll = cdll
        if self.cdll:
            self.LidarLib = ctypes.cdll.LoadLibrary(
                'srcs/preprocess/LidarPreprocess.so')
        self.device = torch.device(
            'cuda' if torch.cuda.is_available() else 'cpu')
        #self.device = torch.device('cpu')
        self.net = PIXOR(config['geometry'], config['use_bn']).to(self.device)

        self.net.set_decode(True)
        self.net.load_state_dict(
            torch.load(config['ckpt_name'], map_location=self.device))
        self.net.eval()

        for p in self.net.parameters():
            p.require_grad = False

        print("PIXOR BEV Detector Initialized!")

    def preprocess(self, velo, path):
        geom = self.config['geometry']
        velo_processed = np.zeros(geom['input_shape'], dtype=np.float32)
        if self.cdll:
            c_name = bytes(path, 'utf-8')
            c_data = ctypes.c_void_p(velo_processed.ctypes.data)
            self.LidarLib.createTopViewMaps(c_data, c_name)
        else:

            def passthrough(velo):
                q = (geom['W1'] < velo[:, 0]) * (velo[:, 0] < geom['W2']) * \
                    (geom['L1'] < velo[:, 1]) * (velo[:, 1] < geom['L2']) * \
                    (geom['H1'] < velo[:, 2]) * (velo[:, 2] < geom['H2'])
                indices = np.where(q)[0]
                return velo[indices, :]

            velo = passthrough(velo)
            velo_processed = np.zeros(geom['input_shape'], dtype=np.float32)
            intensity_map_count = np.zeros(
                (velo_processed.shape[0], velo_processed.shape[1]))
            for i in range(velo.shape[0]):
                x = int((velo[i, 1] - geom['L1']) / 0.1)
                y = int((velo[i, 0] - geom['W1']) / 0.1)
                z = int((velo[i, 2] - geom['H1']) / 0.1)
                velo_processed[x, y, z] = 1
                velo_processed[x, y, -1] += velo[i, 3]
                intensity_map_count[x, y] += 1
            velo_processed[:, :, -1] = np.divide(velo_processed[:, :, -1], intensity_map_count, \
                                                 where=intensity_map_count != 0)

        velo_processed = torch.from_numpy(velo_processed).permute(2, 0, 1).to(
            self.device)
        velo_processed.require_grad = False
        return velo_processed

    def postprocess(self, pred):
        cls_pred = pred[..., 0]
        activation = cls_pred > self.config['cls_threshold']
        num_boxes = int(activation.sum())

        if num_boxes == 0:
            print("No bounding box found")
            return [], []

        corners = torch.zeros((num_boxes, 8))
        for i in range(1, 9):
            corners[:, i - 1] = torch.masked_select(pred[i, ...], activation)
        corners = corners.view(-1, 4, 2).numpy()
        scores = torch.masked_select(cls_pred, activation).cpu().numpy()

        # NMS
        selected_ids = non_max_suppression(corners, scores,
                                           self.config['nms_iou_threshold'])
        corners = corners[selected_ids]
        scores = scores[selected_ids]

        return corners, scores

    def __call__(self, velo, path):
        t_start = time.time()
        bev = self.preprocess(velo, path)
        t_pre = time.time()
        with torch.no_grad():
            pred = self.net(bev.unsqueeze(0)).squeeze_(0)

        t_m = time.time()
        corners, scores = filter_pred(self.config, pred)
        input_np = bev.permute(1, 2, 0).cpu().numpy()

        t_post = time.time()
        pred_bev = get_bev(input_np, corners)

        t_s = [t_pre - t_start, t_m - t_pre, t_post - t_m]
        return t_s, corners, scores, pred_bev
class pc_detector(object):
    def __init__(self, config, cdll):
        if config == None:
            config = {
                "ckpt_name":
                os.path.join(os.path.dirname(os.path.realpath(__file__)),
                             "experiments/default/34epoch"),
                "use_bn":
                True,
                "cls_threshold":
                0.5,
                "nms_iou_threshold":
                0.1,
                "nms_top":
                64,
                "geometry": {
                    'L1': -40.0,
                    'L2': 40.0,
                    'W1': 0.0,
                    'W2': 70.0,
                    'H1': -2.5,
                    'H2': 1.0,
                    'grid_size': 0.1,
                    'input_shape': [800, 700, 36],
                    'label_shape': [200, 175, 7],
                },
            }

        self.config = config
        self.cdll = cdll
        path = os.path.dirname(os.path.abspath(__file__))
        path = os.path.join(path, 'preprocess/LidarPreprocess.so')
        print("PATH:=", path)
        #if self.cdll:
        self.LidarLib = ctypes.cdll.LoadLibrary(path)
        #self.device = torch.device('cuda:3' if torch.cuda.is_available() else 'cpu')
        print("AFTER LOADLIBRARY")
        self.device = torch.device('cpu')
        self.net = PIXOR(config['geometry'], config['use_bn']).to(self.device)
        print(config['ckpt_name'])
        self.net.set_decode(True)
        self.net.load_state_dict(
            torch.load(config['ckpt_name'], map_location=self.device))
        self.net.eval()

        for p in self.net.parameters():
            p.require_grad = False
        self.bridge = CvBridge()
        print("PIXOR BEV Detector Initialized!")

    def init(self):
        rospy.init_node("pc_detector")
        self.publisher = rospy.Publisher('pc_detection', Image, queue_size=1)
        rospy.Subscriber("/velodyne/velodyne_points", PointCloud2,
                         self.callback)
        try:
            rospy.spin()
        except KeyboardInterrupt:
            print("Shutting Down")

    def preprocess(self, velo, path):
        geom = self.config['geometry']
        velo_processed = np.zeros(geom['input_shape'], dtype=np.float32)
        if self.cdll:
            c_name = bytes(path).encode('utf-8')
            c_data = ctypes.c_void_p(velo_processed.ctypes.data)
            self.LidarLib.createTopViewMaps(c_data, c_name)
        else:
            func = self.LidarLib.createTopViewMaps2
            func.restype = None
            c_float_p = ctypes.POINTER(ctypes.c_float)
            func.argtypes = [ctypes.c_void_p, c_float_p, ctypes.c_int]
            velo = velo.astype(np.float32)
            func(velo_processed.ctypes.data, velo.ctypes.data_as(c_float_p),
                 velo.shape[0])

        #    def passthrough(velo):
        #        q = (geom['W1'] < velo[:, 0]) * (velo[:, 0] < geom['W2']) * \
        #            (geom['L1'] < velo[:, 1]) * (velo[:, 1] < geom['L2']) * \
        #            (geom['H1'] < velo[:, 2]) * (velo[:, 2] < geom['H2'])
        #        indices = np.where(q)[0]
        #        return velo[indices, :]
        #    velo = passthrough(velo)
        #
        #    velo_processed = np.zeros(geom['input_shape'], dtype=np.float32)
        #    intensity_map_count = np.zeros((velo_processed.shape[0], velo_processed.shape[1]), dtype=np.float32)
        #    for i in range(velo.shape[0]):
        #        x = int((velo[i, 1] - geom['L1']) / 0.1)
        #        y = int((velo[i, 0] - geom['W1']) / 0.1)
        #        z = int((velo[i, 2] - geom['H1']) / 0.1)
        #        velo_processed[x, y, z] = 1
        #        velo_processed[x, y, -1] += velo[i, 3]
        #        intensity_map_count[x, y] += 1.0
        #    velo_processed[:, :, -1] = np.divide(velo_processed[:, :, -1], intensity_map_count, \
        #                                         where=intensity_map_count != 0)
        #    print(np.nonzero(velo_processed).shape)
        #    velo_precessed[velo_precessed < 1e-4] = 0.0
        #    print(np.nonzero(velo_processed).shape)
        velo_processed = torch.from_numpy(velo_processed).permute(2, 0, 1).to(
            self.device)
        velo_processed.require_grad = False
        return velo_processed

    def postprocess(self, pred):
        cls_pred = pred[..., 0]
        activation = cls_pred > self.config['cls_threshold']
        num_boxes = int(activation.sum())

        if num_boxes == 0:
            print("No bounding box found")
            return [], []

        corners = torch.zeros((num_boxes, 8))
        for i in range(1, 9):
            corners[:, i - 1] = torch.masked_select(pred[i, ...], activation)
        corners = corners.view(-1, 4, 2).numpy()
        scores = torch.masked_select(cls_pred, activation).cpu().numpy()

        # NMS
        #print(corners)
        selected_ids = non_max_suppression(corners, scores,
                                           self.config['nms_iou_threshold'])
        corners = corners[selected_ids]
        scores = scores[selected_ids]

        return corners, scores

    def __call__(self, velo, path):
        t_start = time.time()
        bev = self.preprocess(velo, path)
        t_pre = time.time()
        with torch.no_grad():
            pred = self.net(bev.unsqueeze(0)).squeeze_(0)
        print("Predicition:", pred)
        t_m = time.time()
        corners, scores = filter_pred(self.config, pred)
        input_np = bev.permute(1, 2, 0).cpu().numpy()

        t_post = time.time()
        pred_bev = get_bev(input_np, corners)

        t_s = [t_pre - t_start, t_m - t_pre, t_post - t_m]
        return t_s, corners, scores, pred_bev

    def callback(self, data):
        print("Process Point Cloud")
        time, corners, scores, pred_bev = self(data, "")
        try:
            print("Publish BEV Image")
            self.publisher.publish(self.bridge.cv2_to_imgmsg(pred_bev), 'bgr8')
        except CvBridgeError as e:
            print(e)