mirror of
https://github.com/blakeblackshear/frigate.git
synced 2024-11-21 19:07:46 +01:00
439 lines
18 KiB
Python
439 lines
18 KiB
Python
import os
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import signal
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import sys
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import traceback
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import signal
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import cv2
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import time
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import datetime
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import queue
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import yaml
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import threading
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import multiprocessing as mp
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import subprocess as sp
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import numpy as np
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import logging
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from flask import Flask, Response, make_response, jsonify, request
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import paho.mqtt.client as mqtt
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from frigate.video import track_camera, get_ffmpeg_input, get_frame_shape, CameraCapture, start_or_restart_ffmpeg
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from frigate.object_processing import TrackedObjectProcessor
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from frigate.events import EventProcessor
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from frigate.util import EventsPerSecond
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from frigate.edgetpu import EdgeTPUProcess
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FRIGATE_VARS = {k: v for k, v in os.environ.items() if k.startswith('FRIGATE_')}
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with open('/config/config.yml') as f:
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CONFIG = yaml.safe_load(f)
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MQTT_HOST = CONFIG['mqtt']['host']
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MQTT_PORT = CONFIG.get('mqtt', {}).get('port', 1883)
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MQTT_TOPIC_PREFIX = CONFIG.get('mqtt', {}).get('topic_prefix', 'frigate')
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MQTT_USER = CONFIG.get('mqtt', {}).get('user')
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MQTT_PASS = CONFIG.get('mqtt', {}).get('password')
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if not MQTT_PASS is None:
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MQTT_PASS = MQTT_PASS.format(**FRIGATE_VARS)
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MQTT_CLIENT_ID = CONFIG.get('mqtt', {}).get('client_id', 'frigate')
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# Set the default FFmpeg config
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FFMPEG_CONFIG = CONFIG.get('ffmpeg', {})
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FFMPEG_DEFAULT_CONFIG = {
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'global_args': FFMPEG_CONFIG.get('global_args',
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['-hide_banner','-loglevel','panic']),
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'hwaccel_args': FFMPEG_CONFIG.get('hwaccel_args',
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[]),
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'input_args': FFMPEG_CONFIG.get('input_args',
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['-avoid_negative_ts', 'make_zero',
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'-fflags', 'nobuffer',
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'-flags', 'low_delay',
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'-strict', 'experimental',
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'-fflags', '+genpts+discardcorrupt',
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'-rtsp_transport', 'tcp',
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'-stimeout', '5000000',
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'-use_wallclock_as_timestamps', '1']),
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'output_args': FFMPEG_CONFIG.get('output_args',
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['-f', 'rawvideo',
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'-pix_fmt', 'rgb24'])
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}
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GLOBAL_OBJECT_CONFIG = CONFIG.get('objects', {})
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WEB_PORT = CONFIG.get('web_port', 5000)
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DEBUG = (CONFIG.get('debug', '0') == '1')
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TENSORFLOW_DEVICE = CONFIG.get('tensorflow_device')
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class CameraWatchdog(threading.Thread):
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def __init__(self, camera_processes, config, tflite_process, tracked_objects_queue, stop_event):
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threading.Thread.__init__(self)
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self.camera_processes = camera_processes
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self.config = config
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self.tflite_process = tflite_process
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self.tracked_objects_queue = tracked_objects_queue
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self.stop_event = stop_event
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def run(self):
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time.sleep(10)
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while True:
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# wait a bit before checking
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time.sleep(10)
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if self.stop_event.is_set():
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print(f"Exiting watchdog...")
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break
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now = datetime.datetime.now().timestamp()
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# check the detection process
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detection_start = self.tflite_process.detection_start.value
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if (detection_start > 0.0 and
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now - detection_start > 10):
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print("Detection appears to be stuck. Restarting detection process")
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self.tflite_process.start_or_restart()
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elif not self.tflite_process.detect_process.is_alive():
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print("Detection appears to have stopped. Restarting detection process")
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self.tflite_process.start_or_restart()
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# check the camera processes
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for name, camera_process in self.camera_processes.items():
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process = camera_process['process']
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if not process.is_alive():
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print(f"Track process for {name} is not alive. Starting again...")
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camera_process['process_fps'].value = 0.0
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camera_process['detection_fps'].value = 0.0
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camera_process['read_start'].value = 0.0
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process = mp.Process(target=track_camera, args=(name, self.config[name], camera_process['frame_queue'],
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camera_process['frame_shape'], self.tflite_process.detection_queue, self.tracked_objects_queue,
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camera_process['process_fps'], camera_process['detection_fps'],
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camera_process['read_start'], camera_process['detection_frame'], self.stop_event))
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process.daemon = True
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camera_process['process'] = process
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process.start()
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print(f"Track process started for {name}: {process.pid}")
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if not camera_process['capture_thread'].is_alive():
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frame_shape = camera_process['frame_shape']
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frame_size = frame_shape[0] * frame_shape[1] * frame_shape[2]
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ffmpeg_process = start_or_restart_ffmpeg(camera_process['ffmpeg_cmd'], frame_size)
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camera_capture = CameraCapture(name, ffmpeg_process, frame_shape, camera_process['frame_queue'],
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camera_process['take_frame'], camera_process['camera_fps'], camera_process['detection_frame'], self.stop_event)
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camera_capture.start()
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camera_process['ffmpeg_process'] = ffmpeg_process
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camera_process['capture_thread'] = camera_capture
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elif now - camera_process['capture_thread'].current_frame.value > 5:
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print(f"No frames received from {name} in 5 seconds. Exiting ffmpeg...")
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ffmpeg_process = camera_process['ffmpeg_process']
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ffmpeg_process.terminate()
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try:
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print("Waiting for ffmpeg to exit gracefully...")
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ffmpeg_process.communicate(timeout=30)
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except sp.TimeoutExpired:
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print("FFmpeg didnt exit. Force killing...")
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ffmpeg_process.kill()
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ffmpeg_process.communicate()
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def main():
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stop_event = threading.Event()
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# connect to mqtt and setup last will
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def on_connect(client, userdata, flags, rc):
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print("On connect called")
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if rc != 0:
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if rc == 3:
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print ("MQTT Server unavailable")
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elif rc == 4:
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print ("MQTT Bad username or password")
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elif rc == 5:
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print ("MQTT Not authorized")
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else:
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print ("Unable to connect to MQTT: Connection refused. Error code: " + str(rc))
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# publish a message to signal that the service is running
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client.publish(MQTT_TOPIC_PREFIX+'/available', 'online', retain=True)
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client = mqtt.Client(client_id=MQTT_CLIENT_ID)
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client.on_connect = on_connect
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client.will_set(MQTT_TOPIC_PREFIX+'/available', payload='offline', qos=1, retain=True)
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if not MQTT_USER is None:
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client.username_pw_set(MQTT_USER, password=MQTT_PASS)
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client.connect(MQTT_HOST, MQTT_PORT, 60)
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client.loop_start()
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##
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# Setup config defaults for cameras
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##
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for name, config in CONFIG['cameras'].items():
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config['snapshots'] = {
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'show_timestamp': config.get('snapshots', {}).get('show_timestamp', True),
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'draw_zones': config.get('snapshots', {}).get('draw_zones', False)
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}
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config['zones'] = config.get('zones', {})
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# Queue for cameras to push tracked objects to
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tracked_objects_queue = mp.Queue()
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# Queue for clip processing
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event_queue = mp.Queue()
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# create the detection pipes
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out_events = {}
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for name in CONFIG['cameras'].keys():
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out_events[name] = mp.Event()
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# Start the shared tflite process
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tflite_process = EdgeTPUProcess(out_events=out_events, tf_device=TENSORFLOW_DEVICE)
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# create the camera processes
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camera_processes = {}
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for name, config in CONFIG['cameras'].items():
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# Merge the ffmpeg config with the global config
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ffmpeg = config.get('ffmpeg', {})
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ffmpeg_input = get_ffmpeg_input(ffmpeg['input'])
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ffmpeg_global_args = ffmpeg.get('global_args', FFMPEG_DEFAULT_CONFIG['global_args'])
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ffmpeg_hwaccel_args = ffmpeg.get('hwaccel_args', FFMPEG_DEFAULT_CONFIG['hwaccel_args'])
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ffmpeg_input_args = ffmpeg.get('input_args', FFMPEG_DEFAULT_CONFIG['input_args'])
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ffmpeg_output_args = ffmpeg.get('output_args', FFMPEG_DEFAULT_CONFIG['output_args'])
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if not config.get('fps') is None:
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ffmpeg_output_args = ["-r", str(config.get('fps'))] + ffmpeg_output_args
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if config.get('save_clips', {}).get('enabled', False):
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ffmpeg_output_args = [
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"-f",
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"segment",
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"-segment_time",
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"10",
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"-segment_format",
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"mp4",
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"-reset_timestamps",
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"1",
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"-strftime",
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"1",
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"-c",
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"copy",
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"-an",
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"-map",
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"0",
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f"/cache/{name}-%Y%m%d%H%M%S.mp4"
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] + ffmpeg_output_args
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ffmpeg_cmd = (['ffmpeg'] +
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ffmpeg_global_args +
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ffmpeg_hwaccel_args +
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ffmpeg_input_args +
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['-i', ffmpeg_input] +
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ffmpeg_output_args +
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['pipe:'])
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if 'width' in config and 'height' in config:
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frame_shape = (config['height'], config['width'], 3)
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else:
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frame_shape = get_frame_shape(ffmpeg_input)
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config['frame_shape'] = frame_shape
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frame_size = frame_shape[0] * frame_shape[1] * frame_shape[2]
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take_frame = config.get('take_frame', 1)
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detection_frame = mp.Value('d', 0.0)
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ffmpeg_process = start_or_restart_ffmpeg(ffmpeg_cmd, frame_size)
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frame_queue = mp.Queue()
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camera_fps = EventsPerSecond()
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camera_fps.start()
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camera_capture = CameraCapture(name, ffmpeg_process, frame_shape, frame_queue, take_frame, camera_fps, detection_frame, stop_event)
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camera_capture.start()
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camera_processes[name] = {
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'camera_fps': camera_fps,
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'take_frame': take_frame,
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'process_fps': mp.Value('d', 0.0),
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'detection_fps': mp.Value('d', 0.0),
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'detection_frame': detection_frame,
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'read_start': mp.Value('d', 0.0),
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'ffmpeg_process': ffmpeg_process,
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'ffmpeg_cmd': ffmpeg_cmd,
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'frame_queue': frame_queue,
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'frame_shape': frame_shape,
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'capture_thread': camera_capture
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}
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# merge global object config into camera object config
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camera_objects_config = config.get('objects', {})
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# get objects to track for camera
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objects_to_track = camera_objects_config.get('track', GLOBAL_OBJECT_CONFIG.get('track', ['person']))
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# get object filters
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object_filters = camera_objects_config.get('filters', GLOBAL_OBJECT_CONFIG.get('filters', {}))
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config['objects'] = {
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'track': objects_to_track,
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'filters': object_filters
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}
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camera_process = mp.Process(target=track_camera, args=(name, config, frame_queue, frame_shape,
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tflite_process.detection_queue, out_events[name], tracked_objects_queue, camera_processes[name]['process_fps'],
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camera_processes[name]['detection_fps'],
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camera_processes[name]['read_start'], camera_processes[name]['detection_frame'], stop_event))
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camera_process.daemon = True
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camera_processes[name]['process'] = camera_process
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# start the camera_processes
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for name, camera_process in camera_processes.items():
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camera_process['process'].start()
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print(f"Camera_process started for {name}: {camera_process['process'].pid}")
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event_processor = EventProcessor(CONFIG, camera_processes, '/cache', '/clips', event_queue, stop_event)
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event_processor.start()
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object_processor = TrackedObjectProcessor(CONFIG['cameras'], client, MQTT_TOPIC_PREFIX, tracked_objects_queue, event_queue, stop_event)
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object_processor.start()
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camera_watchdog = CameraWatchdog(camera_processes, CONFIG['cameras'], tflite_process, tracked_objects_queue, stop_event)
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camera_watchdog.start()
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def receiveSignal(signalNumber, frame):
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print('Received:', signalNumber)
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stop_event.set()
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event_processor.join()
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object_processor.join()
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camera_watchdog.join()
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for camera_process in camera_processes.values():
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camera_process['capture_thread'].join()
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tflite_process.stop()
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sys.exit()
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signal.signal(signal.SIGTERM, receiveSignal)
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signal.signal(signal.SIGINT, receiveSignal)
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# create a flask app that encodes frames a mjpeg on demand
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app = Flask(__name__)
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log = logging.getLogger('werkzeug')
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log.setLevel(logging.ERROR)
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@app.route('/')
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def ishealthy():
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# return a healh
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return "Frigate is running. Alive and healthy!"
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@app.route('/debug/stack')
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def processor_stack():
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frame = sys._current_frames().get(object_processor.ident, None)
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if frame:
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return "<br>".join(traceback.format_stack(frame)), 200
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else:
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return "no frame found", 200
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@app.route('/debug/print_stack')
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def print_stack():
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pid = int(request.args.get('pid', 0))
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if pid == 0:
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return "missing pid", 200
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else:
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os.kill(pid, signal.SIGUSR1)
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return "check logs", 200
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@app.route('/debug/stats')
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def stats():
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stats = {}
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total_detection_fps = 0
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for name, camera_stats in camera_processes.items():
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total_detection_fps += camera_stats['detection_fps'].value
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capture_thread = camera_stats['capture_thread']
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stats[name] = {
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'camera_fps': round(capture_thread.fps.eps(), 2),
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'process_fps': round(camera_stats['process_fps'].value, 2),
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'skipped_fps': round(capture_thread.skipped_fps.eps(), 2),
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'detection_fps': round(camera_stats['detection_fps'].value, 2),
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'read_start': camera_stats['read_start'].value,
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'pid': camera_stats['process'].pid,
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'ffmpeg_pid': camera_stats['ffmpeg_process'].pid,
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'frame_info': {
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'read': capture_thread.current_frame.value,
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'detect': camera_stats['detection_frame'].value,
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'process': object_processor.camera_data[name]['current_frame_time']
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}
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}
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stats['coral'] = {
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'fps': round(total_detection_fps, 2),
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'inference_speed': round(tflite_process.avg_inference_speed.value*1000, 2),
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'detection_start': tflite_process.detection_start.value,
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'pid': tflite_process.detect_process.pid
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}
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return jsonify(stats)
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@app.route('/<camera_name>/<label>/best.jpg')
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def best(camera_name, label):
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if camera_name in CONFIG['cameras']:
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best_object = object_processor.get_best(camera_name, label)
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best_frame = best_object.get('frame', np.zeros((720,1280,3), np.uint8))
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crop = bool(request.args.get('crop', 0, type=int))
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if crop:
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region = best_object.get('region', [0,0,300,300])
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best_frame = best_frame[region[1]:region[3], region[0]:region[2]]
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height = int(request.args.get('h', str(best_frame.shape[0])))
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width = int(height*best_frame.shape[1]/best_frame.shape[0])
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best_frame = cv2.resize(best_frame, dsize=(width, height), interpolation=cv2.INTER_AREA)
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best_frame = cv2.cvtColor(best_frame, cv2.COLOR_RGB2BGR)
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ret, jpg = cv2.imencode('.jpg', best_frame)
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response = make_response(jpg.tobytes())
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response.headers['Content-Type'] = 'image/jpg'
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return response
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else:
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return "Camera named {} not found".format(camera_name), 404
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@app.route('/<camera_name>')
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def mjpeg_feed(camera_name):
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fps = int(request.args.get('fps', '3'))
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height = int(request.args.get('h', '360'))
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if camera_name in CONFIG['cameras']:
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# return a multipart response
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return Response(imagestream(camera_name, fps, height),
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mimetype='multipart/x-mixed-replace; boundary=frame')
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else:
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return "Camera named {} not found".format(camera_name), 404
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@app.route('/<camera_name>/latest.jpg')
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def latest_frame(camera_name):
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if camera_name in CONFIG['cameras']:
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# max out at specified FPS
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frame = object_processor.get_current_frame(camera_name)
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if frame is None:
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frame = np.zeros((720,1280,3), np.uint8)
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height = int(request.args.get('h', str(frame.shape[0])))
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width = int(height*frame.shape[1]/frame.shape[0])
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frame = cv2.resize(frame, dsize=(width, height), interpolation=cv2.INTER_AREA)
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frame = cv2.cvtColor(frame, cv2.COLOR_RGB2BGR)
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ret, jpg = cv2.imencode('.jpg', frame)
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response = make_response(jpg.tobytes())
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response.headers['Content-Type'] = 'image/jpg'
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return response
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else:
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return "Camera named {} not found".format(camera_name), 404
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def imagestream(camera_name, fps, height):
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while True:
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# max out at specified FPS
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time.sleep(1/fps)
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frame = object_processor.get_current_frame(camera_name)
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if frame is None:
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frame = np.zeros((height,int(height*16/9),3), np.uint8)
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width = int(height*frame.shape[1]/frame.shape[0])
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frame = cv2.resize(frame, dsize=(width, height), interpolation=cv2.INTER_LINEAR)
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frame = cv2.cvtColor(frame, cv2.COLOR_RGB2BGR)
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ret, jpg = cv2.imencode('.jpg', frame)
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yield (b'--frame\r\n'
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b'Content-Type: image/jpeg\r\n\r\n' + jpg.tobytes() + b'\r\n\r\n')
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app.run(host='0.0.0.0', port=WEB_PORT, debug=False)
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object_processor.join()
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if __name__ == '__main__':
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main()
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