mirror of
https://github.com/blakeblackshear/frigate.git
synced 2024-11-21 19:07:46 +01:00
278 lines
14 KiB
Python
278 lines
14 KiB
Python
import json
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import hashlib
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import datetime
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import time
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import copy
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import cv2
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import threading
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import queue
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import numpy as np
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from collections import Counter, defaultdict
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import itertools
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import pyarrow.plasma as plasma
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import matplotlib.pyplot as plt
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from frigate.util import draw_box_with_label, PlasmaManager
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from frigate.edgetpu import load_labels
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PATH_TO_LABELS = '/labelmap.txt'
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LABELS = load_labels(PATH_TO_LABELS)
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cmap = plt.cm.get_cmap('tab10', len(LABELS.keys()))
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COLOR_MAP = {}
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for key, val in LABELS.items():
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COLOR_MAP[val] = tuple(int(round(255 * c)) for c in cmap(key)[:3])
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def filter_false_positives(event):
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if len(event['history']) < 2:
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return True
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return False
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def zone_filtered(obj, object_config):
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object_name = obj['label']
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object_filters = object_config.get('filters', {})
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if object_name in object_filters:
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obj_settings = object_filters[object_name]
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# if the min area is larger than the
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# detected object, don't add it to detected objects
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if obj_settings.get('min_area',-1) > obj['area']:
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return True
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# if the detected object is larger than the
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# max area, don't add it to detected objects
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if obj_settings.get('max_area', 24000000) < obj['area']:
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return True
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# if the score is lower than the threshold, skip
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if obj_settings.get('threshold', 0) > obj['score']:
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return True
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return False
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class TrackedObjectProcessor(threading.Thread):
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def __init__(self, camera_config, zone_config, client, topic_prefix, tracked_objects_queue, event_queue, stop_event):
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threading.Thread.__init__(self)
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self.camera_config = camera_config
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self.zone_config = zone_config
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self.client = client
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self.topic_prefix = topic_prefix
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self.tracked_objects_queue = tracked_objects_queue
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self.event_queue = event_queue
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self.stop_event = stop_event
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self.camera_data = defaultdict(lambda: {
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'best_objects': {},
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'object_status': defaultdict(lambda: defaultdict(lambda: 'OFF')),
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'tracked_objects': {},
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'current_frame': np.zeros((720,1280,3), np.uint8),
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'current_frame_time': 0.0,
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'object_id': None
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})
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self.zone_data = defaultdict(lambda: {
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'object_status': defaultdict(lambda: defaultdict(lambda: 'OFF')),
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'contours': {}
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})
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# create zone contours
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for name, config in zone_config.items():
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for camera, camera_zone_config in config.items():
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coordinates = camera_zone_config['coordinates']
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if isinstance(coordinates, list):
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self.zone_data[name]['contours'][camera] = np.array([[int(p.split(',')[0]), int(p.split(',')[1])] for p in coordinates])
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elif isinstance(coordinates, str):
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points = coordinates.split(',')
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self.zone_data[name]['contours'][camera] = np.array([[int(points[i]), int(points[i+1])] for i in range(0, len(points), 2)])
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else:
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print(f"Unable to parse zone coordinates for {name} - {camera}")
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# set colors for zones
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colors = plt.cm.get_cmap('tab10', len(self.zone_data.keys()))
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for i, zone in enumerate(self.zone_data.values()):
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zone['color'] = tuple(int(round(255 * c)) for c in colors(i)[:3])
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self.plasma_client = PlasmaManager(self.stop_event)
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def get_best(self, camera, label):
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if label in self.camera_data[camera]['best_objects']:
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return self.camera_data[camera]['best_objects'][label]['frame']
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else:
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return None
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def get_current_frame(self, camera):
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return self.camera_data[camera]['current_frame']
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def run(self):
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while True:
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if self.stop_event.is_set():
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print(f"Exiting object processor...")
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break
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try:
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camera, frame_time, current_tracked_objects = self.tracked_objects_queue.get(True, 10)
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except queue.Empty:
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continue
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camera_config = self.camera_config[camera]
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best_objects = self.camera_data[camera]['best_objects']
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current_object_status = self.camera_data[camera]['object_status']
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tracked_objects = self.camera_data[camera]['tracked_objects']
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current_ids = current_tracked_objects.keys()
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previous_ids = tracked_objects.keys()
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removed_ids = list(set(previous_ids).difference(current_ids))
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new_ids = list(set(current_ids).difference(previous_ids))
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updated_ids = list(set(current_ids).intersection(previous_ids))
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for id in new_ids:
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# only register the object here if we are sure it isnt a false positive
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if not filter_false_positives(current_tracked_objects[id]):
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tracked_objects[id] = current_tracked_objects[id]
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# publish events to mqtt
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self.client.publish(f"{self.topic_prefix}/{camera}/events/start", json.dumps(tracked_objects[id]), retain=False)
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self.event_queue.put(('start', camera, tracked_objects[id]))
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for id in updated_ids:
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tracked_objects[id] = current_tracked_objects[id]
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for id in removed_ids:
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# publish events to mqtt
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tracked_objects[id]['end_time'] = frame_time
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self.client.publish(f"{self.topic_prefix}/{camera}/events/end", json.dumps(tracked_objects[id]), retain=False)
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self.event_queue.put(('end', camera, tracked_objects[id]))
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del tracked_objects[id]
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self.camera_data[camera]['current_frame_time'] = frame_time
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# build a dict of objects in each zone for current camera
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current_objects_in_zones = defaultdict(lambda: [])
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for obj in tracked_objects.values():
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bottom_center = (obj['centroid'][0], obj['box'][3])
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# check each zone
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for name, zone in self.zone_data.items():
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current_contour = zone['contours'].get(camera, None)
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# if the current camera does not have a contour for this zone, skip
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if current_contour is None:
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continue
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# check if the object is in the zone and not filtered
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if (cv2.pointPolygonTest(current_contour, bottom_center, False) >= 0
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and not zone_filtered(obj, self.zone_config[name][camera].get('filters', {}))):
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current_objects_in_zones[name].append(obj['label'])
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###
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# Draw tracked objects on the frame
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###
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current_frame = self.plasma_client.get(f"{camera}{frame_time}")
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if not current_frame is plasma.ObjectNotAvailable:
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# draw the bounding boxes on the frame
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for obj in tracked_objects.values():
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thickness = 2
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color = COLOR_MAP[obj['label']]
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if obj['frame_time'] != frame_time:
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thickness = 1
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color = (255,0,0)
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# draw the bounding boxes on the frame
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box = obj['box']
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draw_box_with_label(current_frame, box[0], box[1], box[2], box[3], obj['label'], f"{int(obj['score']*100)}% {int(obj['area'])}", thickness=thickness, color=color)
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# draw the regions on the frame
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region = obj['region']
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cv2.rectangle(current_frame, (region[0], region[1]), (region[2], region[3]), (0,255,0), 1)
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if camera_config['snapshots']['show_timestamp']:
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time_to_show = datetime.datetime.fromtimestamp(frame_time).strftime("%m/%d/%Y %H:%M:%S")
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cv2.putText(current_frame, time_to_show, (10, 30), cv2.FONT_HERSHEY_SIMPLEX, fontScale=.8, color=(255, 255, 255), thickness=2)
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if camera_config['snapshots']['draw_zones']:
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for name, zone in self.zone_data.items():
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thickness = 2 if len(current_objects_in_zones[name]) == 0 else 8
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if camera in zone['contours']:
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cv2.drawContours(current_frame, [zone['contours'][camera]], -1, zone['color'], thickness)
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###
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# Set the current frame
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###
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self.camera_data[camera]['current_frame'] = current_frame
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# delete the previous frame from the plasma store and update the object id
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if not self.camera_data[camera]['object_id'] is None:
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self.plasma_client.delete(self.camera_data[camera]['object_id'])
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self.camera_data[camera]['object_id'] = f"{camera}{frame_time}"
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###
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# Maintain the highest scoring recent object and frame for each label
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###
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for obj in tracked_objects.values():
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# if the object wasn't seen on the current frame, skip it
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if obj['frame_time'] != frame_time:
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continue
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if obj['label'] in best_objects:
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now = datetime.datetime.now().timestamp()
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# if the object is a higher score than the current best score
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# or the current object is more than 1 minute old, use the new object
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if obj['score'] > best_objects[obj['label']]['score'] or (now - best_objects[obj['label']]['frame_time']) > 60:
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obj['frame'] = np.copy(self.camera_data[camera]['current_frame'])
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best_objects[obj['label']] = obj
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# send updated snapshot over mqtt
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best_frame = cv2.cvtColor(obj['frame'], cv2.COLOR_RGB2BGR)
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ret, jpg = cv2.imencode('.jpg', best_frame)
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if ret:
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jpg_bytes = jpg.tobytes()
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self.client.publish(f"{self.topic_prefix}/{camera}/{obj['label']}/snapshot", jpg_bytes, retain=True)
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else:
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obj['frame'] = np.copy(self.camera_data[camera]['current_frame'])
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best_objects[obj['label']] = obj
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###
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# Report over MQTT
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###
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# get the zones that are relevant for this camera
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relevant_zones = [zone for zone, config in self.zone_config.items() if camera in config]
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for zone in relevant_zones:
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# create the set of labels in the current frame and previously reported
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labels_for_zone = set(current_objects_in_zones[zone] + list(self.zone_data[zone]['object_status'][camera].keys()))
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# for each label
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for label in labels_for_zone:
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# compute the current 'ON' vs 'OFF' status by checking if any camera sees the object in the zone
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previous_state = any([c[label] == 'ON' for c in self.zone_data[zone]['object_status'].values()])
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self.zone_data[zone]['object_status'][camera][label] = 'ON' if label in current_objects_in_zones[zone] else 'OFF'
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new_state = any([c[label] == 'ON' for c in self.zone_data[zone]['object_status'].values()])
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# if the value is changing, send over MQTT
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if previous_state == False and new_state == True:
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self.client.publish(f"{self.topic_prefix}/{zone}/{label}", 'ON', retain=False)
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elif previous_state == True and new_state == False:
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self.client.publish(f"{self.topic_prefix}/{zone}/{label}", 'OFF', retain=False)
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# count by type
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obj_counter = Counter()
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for obj in tracked_objects.values():
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obj_counter[obj['label']] += 1
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# report on detected objects
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for obj_name, count in obj_counter.items():
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new_status = 'ON' if count > 0 else 'OFF'
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if new_status != current_object_status[obj_name]:
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current_object_status[obj_name] = new_status
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self.client.publish(f"{self.topic_prefix}/{camera}/{obj_name}", new_status, retain=False)
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# send the best snapshot over mqtt
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best_frame = cv2.cvtColor(best_objects[obj_name]['frame'], cv2.COLOR_RGB2BGR)
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ret, jpg = cv2.imencode('.jpg', best_frame)
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if ret:
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jpg_bytes = jpg.tobytes()
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self.client.publish(f"{self.topic_prefix}/{camera}/{obj_name}/snapshot", jpg_bytes, retain=True)
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# expire any objects that are ON and no longer detected
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expired_objects = [obj_name for obj_name, status in current_object_status.items() if status == 'ON' and not obj_name in obj_counter]
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for obj_name in expired_objects:
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current_object_status[obj_name] = 'OFF'
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self.client.publish(f"{self.topic_prefix}/{camera}/{obj_name}", 'OFF', retain=False)
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# send updated snapshot over mqtt
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best_frame = cv2.cvtColor(best_objects[obj_name]['frame'], cv2.COLOR_RGB2BGR)
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ret, jpg = cv2.imencode('.jpg', best_frame)
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if ret:
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jpg_bytes = jpg.tobytes()
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self.client.publish(f"{self.topic_prefix}/{camera}/{obj_name}/snapshot", jpg_bytes, retain=True)
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