robocar-oak-camera/camera/depthai.py

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import datetime
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import logging
import paho.mqtt.client as mqtt
import events.events_pb2
import depthai as dai
import cv2
import numpy as np
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logger = logging.getLogger(__name__)
NN_PATH = "/models/mobile_object_localizer_192x192_openvino_2021.4_6shave.blob"
NN_WIDTH = 192
NN_HEIGHT = 192
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class FramePublisher:
def __init__(self, mqtt_client: mqtt.Client, frame_topic: str, objects_topic: str, objects_threshold: float,
img_width: int, img_height: int):
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self._mqtt_client = mqtt_client
self._frame_topic = frame_topic
self._objects_topic = objects_topic
self._objects_threshold = objects_threshold
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self._img_width = img_width
self._img_height = img_height
self._pipeline = self._configure_pipeline()
def _configure_pipeline(self) -> dai.Pipeline:
logger.info("configure pipeline")
pipeline = dai.Pipeline()
pipeline.setOpenVINOVersion(version=dai.OpenVINO.VERSION_2021_4)
# Define a neural network that will make predictions based on the source frames
detection_nn = pipeline.create(dai.node.NeuralNetwork)
detection_nn.setBlobPath(NN_PATH)
detection_nn.setNumPoolFrames(4)
detection_nn.input.setBlocking(False)
detection_nn.setNumInferenceThreads(2)
xout_nn = pipeline.create(dai.node.XLinkOut)
xout_nn.setStreamName("nn")
xout_nn.input.setBlocking(False)
# Resize image
manip = pipeline.create(dai.node.ImageManip)
manip.initialConfig.setResize(NN_WIDTH, NN_HEIGHT)
manip.initialConfig.setFrameType(dai.ImgFrame.Type.RGB888p)
manip.initialConfig.setKeepAspectRatio(False)
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cam_rgb = pipeline.create(dai.node.ColorCamera)
xout_rgb = pipeline.create(dai.node.XLinkOut)
xout_rgb.setStreamName("rgb")
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# Properties
cam_rgb.setBoardSocket(dai.CameraBoardSocket.RGB)
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cam_rgb.setPreviewSize(width=self._img_width, height=self._img_height)
cam_rgb.setInterleaved(False)
cam_rgb.setColorOrder(dai.ColorCameraProperties.ColorOrder.RGB)
cam_rgb.setFps(30)
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# Link preview to manip and manip to nn
cam_rgb.preview.link(manip.inputImage)
manip.out.link(detection_nn.input)
# Linking to output
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cam_rgb.preview.link(xout_rgb.input)
detection_nn.out.link(xout_nn.input)
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logger.info("pipeline configured")
return pipeline
def run(self):
# Connect to device and start pipeline
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with dai.Device(self._pipeline) as device:
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logger.info('MxId: %s', device.getDeviceInfo().getMxId())
logger.info('USB speed: %s', device.getUsbSpeed())
logger.info('Connected cameras: %s', device.getConnectedCameras())
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logger.info("output queues found: %s", device.getOutputQueueNames())
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device.startPipeline()
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# Queues
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queue_size = 4
q_rgb = device.getOutputQueue(name="rgb", maxSize=queue_size, blocking=False)
q_nn = device.getOutputQueue(name="nn", maxSize=queue_size, blocking=False)
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while True:
try:
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logger.debug("wait for new frame")
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inRgb = q_rgb.get() # blocking call, will wait until a new data has arrived
im_resize = inRgb.getCvFrame()
is_success, im_buf_arr = cv2.imencode(".jpg", im_resize)
byte_im = im_buf_arr.tobytes()
now = datetime.datetime.now()
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frame_msg = events.events_pb2.FrameMessage()
frame_msg.id.name = "robocar-oak-camera-oak"
frame_msg.id.id = str(int(now.timestamp() * 1000))
frame_msg.id.created_at.FromDatetime(now)
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frame_msg.frame = byte_im
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logger.debug("publish frame event to %s", self._frame_topic)
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self._mqtt_client.publish(topic=self._frame_topic,
payload=frame_msg.SerializeToString(),
qos=0,
retain=False)
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in_nn = q_nn.get()
# get outputs
detection_boxes = np.array(in_nn.getLayerFp16("ExpandDims")).reshape((100, 4))
detection_scores = np.array(in_nn.getLayerFp16("ExpandDims_2")).reshape((100,))
# keep boxes bigger than threshold
mask = detection_scores >= self._objects_threshold
boxes = detection_boxes[mask]
scores = detection_scores[mask]
if boxes.shape[0] > 0:
objects_msg = events.events_pb2.ObjectsMessage()
objs = []
for i in range(boxes.shape[0]):
bbox = boxes[i]
logger.debug("new object detected: %s", str(bbox))
o = events.events_pb2.Object()
o.type = events.events_pb2.TypeObject.ANY
o.top = bbox[0].astype(float)
o.right = bbox[1].astype(float)
o.bottom = bbox[2].astype(float)
o.left = bbox[3].astype(float)
o.confidence = scores[i].astype(float)
objs.append(o)
objects_msg.objects.extend(objs)
objects_msg.frame_ref.name = frame_msg.id.name
objects_msg.frame_ref.id = frame_msg.id.id
objects_msg.frame_ref.created_at.FromDatetime(now)
logger.debug("publish object event to %s", self._frame_topic)
self._mqtt_client.publish(topic=self._objects_topic,
payload=objects_msg.SerializeToString(),
qos=0,
retain=False)
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except Exception as e:
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logger.exception("unexpected error: %s", str(e))